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<front>
<journal-meta>
<journal-id journal-id-type="publisher-id">Front. Oncol.</journal-id>
<journal-title>Frontiers in Oncology</journal-title>
<abbrev-journal-title abbrev-type="pubmed">Front. Oncol.</abbrev-journal-title>
<issn pub-type="epub">2234-943X</issn>
<publisher>
<publisher-name>Frontiers Media S.A.</publisher-name>
</publisher>
</journal-meta>
<article-meta>
<article-id pub-id-type="doi">10.3389/fonc.2025.1601674</article-id>
<article-categories>
<subj-group subj-group-type="heading">
<subject>Oncology</subject>
<subj-group>
<subject>Original Research</subject>
</subj-group>
</subj-group>
</article-categories>
<title-group>
<article-title>Interpretable machine learning model integrating contrast-enhanced CT environmental radiomics and clinicopathological features for predicting postoperative recurrence in lung adenocarcinoma: a retrospective pilot study</article-title>
</title-group>
<contrib-group>
<contrib contrib-type="author" equal-contrib="yes">
<name>
<surname>Lin</surname>
<given-names>Song</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<xref ref-type="aff" rid="aff2">
<sup>2</sup>
</xref>
<xref ref-type="author-notes" rid="fn003">
<sup>&#x2020;</sup>
</xref>
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<role content-type="https://credit.niso.org/contributor-roles/writing-original-draft/"/>
</contrib>
<contrib contrib-type="author" equal-contrib="yes">
<name>
<surname>Niu</surname>
<given-names>Yanli</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<xref ref-type="aff" rid="aff2">
<sup>2</sup>
</xref>
<xref ref-type="author-notes" rid="fn003">
<sup>&#x2020;</sup>
</xref>
<role content-type="https://credit.niso.org/contributor-roles/writing-original-draft/"/>
<role content-type="https://credit.niso.org/contributor-roles/conceptualization/"/>
</contrib>
<contrib contrib-type="author" equal-contrib="yes">
<name>
<surname>Song</surname>
<given-names>Lina</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<xref ref-type="author-notes" rid="fn003">
<sup>&#x2020;</sup>
</xref>
<role content-type="https://credit.niso.org/contributor-roles/formal-analysis/"/>
<role content-type="https://credit.niso.org/contributor-roles/writing-original-draft/"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname>Ye</surname>
<given-names>Yingjian</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<role content-type="https://credit.niso.org/contributor-roles/writing-original-draft/"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname>Yang</surname>
<given-names>Jinfang</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<role content-type="https://credit.niso.org/contributor-roles/software/"/>
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</contrib>
<contrib contrib-type="author">
<name>
<surname>Liu</surname>
<given-names>Junjie</given-names>
</name>
<xref ref-type="aff" rid="aff2">
<sup>2</sup>
</xref>
<role content-type="https://credit.niso.org/contributor-roles/software/"/>
<role content-type="https://credit.niso.org/contributor-roles/writing-original-draft/"/>
</contrib>
<contrib contrib-type="author" corresp="yes">
<name>
<surname>Zhou</surname>
<given-names>Xin</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<xref ref-type="aff" rid="aff2">
<sup>2</sup>
</xref>
<xref ref-type="author-notes" rid="fn001">
<sup>*</sup>
</xref>
<role content-type="https://credit.niso.org/contributor-roles/supervision/"/>
<role content-type="https://credit.niso.org/contributor-roles/writing-review-editing/"/>
</contrib>
<contrib contrib-type="author" corresp="yes">
<name>
<surname>An</surname>
<given-names>Peng</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<xref ref-type="aff" rid="aff2">
<sup>2</sup>
</xref>
<xref ref-type="author-notes" rid="fn001">
<sup>*</sup>
</xref>
<uri xlink:href="https://loop.frontiersin.org/people/2824729/overview"/>
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<aff id="aff1">
<sup>1</sup>
<institution>Department of Radiology and Surgery, Xiangyang No.1 People&#x2019;s Hospital, Hubei University of Medicine</institution>, <addr-line>Xiangyang</addr-line>, <country>China</country>
</aff>
<aff id="aff2">
<sup>2</sup>
<institution>Department of Medical Cosmetology, Anesthesiology, Oncology, and Epidemiology, Xiangyang Key Laboratory of Maternal-fetal Medicine on Fetal Congenital Heart Disease, Xiangyang No. 1 People&#x2019;s Hospital, Hubei University of Medicine, Hubei, People's Republic of China (P.R.C)</institution>, <addr-line>Xiangyang, Hubei</addr-line>, <country>China</country>
</aff>
<author-notes>
<fn fn-type="edited-by">
<p>Edited by: Shuai Ren, Affiliated Hospital of Nanjing University of Chinese Medicine, China</p>
</fn>
<fn fn-type="edited-by">
<p>Reviewed by: Shaofeng Duan, Shanghai United Imaging Healthcare Co., Ltd., China</p>
<p>Yankai Meng, The Affiliated Hospital of Xuzhou Medical University, China</p>
<p>Liang Jiang, Nanjing Medical University, China</p>
</fn>
<fn fn-type="corresp" id="fn001">
<p>*Correspondence: Xin Zhou, <email xlink:href="mailto:zhou201520152015@163.com">zhou201520152015@163.com</email>; Peng An, <email xlink:href="mailto:drpengan@foxmail.com">drpengan@foxmail.com</email>
</p>
</fn>
<fn fn-type="equal" id="fn003">
<p>&#x2020;These authors have contributed equally to this work</p>
</fn>
</author-notes>
<pub-date pub-type="epub">
<day>23</day>
<month>05</month>
<year>2025</year>
</pub-date>
<pub-date pub-type="collection">
<year>2025</year>
</pub-date>
<volume>15</volume>
<elocation-id>1601674</elocation-id>
<history>
<date date-type="received">
<day>28</day>
<month>03</month>
<year>2025</year>
</date>
<date date-type="accepted">
<day>07</day>
<month>05</month>
<year>2025</year>
</date>
</history>
<permissions>
<copyright-statement>Copyright &#xa9; 2025 Lin, Niu, Song, Ye, Yang, Liu, Zhou and An</copyright-statement>
<copyright-year>2025</copyright-year>
<copyright-holder>Lin, Niu, Song, Ye, Yang, Liu, Zhou and An</copyright-holder>
<license xlink:href="http://creativecommons.org/licenses/by/4.0/">
<p>This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.</p>
</license>
</permissions>
<abstract>
<sec>
<title>Purpose</title>
<p>This study aims to develop an interpretable predictive model combining contrast-enhanced CT (CECT) radiomics features with clinicopathological parameters to assess 3-year recurrence risk after surgery for lung adenocarcinoma (LA).</p>
</sec>
<sec>
<title>Methods</title>
<p>A retrospective cohort of 350 LA patients (126 recurrence, 224 non-recurrence) from Xiangyang NO.1 People&#x2019;s Hospital (2016&#x2013;2023) was included. Radiomics features were extracted from arterial and venous phase CECT images using 3D Slicer&#x2019;s Radiomics plugin. Features with intraclass correlation coefficient (ICC &gt; 0.75) were selected, followed by LASSO regression with cross-validation to generate radiomics scores (Radscore3 for intratumoral and Radscore4 for peritumoral regions). Clinical variables (sex, heterogeneous enhancement, pleural invasion, Ki67) were integrated via chi-square/t-test analysis. Ten machine learning algorithms (e.g., XGBoost, CatBoost, Random Forest) were trained on a stratified 7:3 split (training: n=245; testing: n=105) with five-fold cross-validation. Model performance was evaluated using ROC curves (AUC), calibration curves, decision curve analysis (DCA), and a nomogram.</p>
</sec>
<sec>
<title>Results</title>
<p>Univariate analysis identified sex (OR=1.66, p=0.02), heterogeneous enhancement (OR=4.32, p&lt;0.05), visceral pleural invasion (OR=4.75, p&lt;0.05), Radscore3 (OR=356.17, p&lt;0.05), Radscore4 (OR=1529.16, p&lt;0.05), and Ki67 (OR=1.09, p=0.01) as significant predictors. Among machine learning models, CatBoost achieved superior performance (AUC=0.883, 95% CI:0.811&#x2013;0.955) compared to logistic regression (AUC=0.877, 95% CI:0.804&#x2013;0.949) in test set. Calibration curves demonstrated high consistency between predicted and observed recurrence risks, while DCA indicated clinical utility at threshold probabilities &gt;0.17. SHAP analysis highlighted heterogeneous enhancement, visceral pleural invasion, Radscore3/4, and Ki67 as key contributors. The nomogram integrated these factors, enhancing model interpretability and clinical applicability.</p>
</sec>
<sec>
<title>Conclusion</title>
<p>The CatBoost model integrating CECT environmental radiomics and clinicopathological parameters effectively predicts postoperative LA recurrence, supporting personalized adjuvant therapy decisions. Its interpretable framework emphasizes tumor heterogeneity (Radscore3/4) as a critical prognostic biomarker, providing mechanistic insights into LA recurrence.</p>
</sec>
</abstract>
<kwd-group>
<kwd>lung adenocarcinoma</kwd>
<kwd>contrast-enhanced CT</kwd>
<kwd>radiomics</kwd>
<kwd>machine learning</kwd>
<kwd>recurrence prediction</kwd>
</kwd-group>
<counts>
<fig-count count="7"/>
<table-count count="2"/>
<equation-count count="0"/>
<ref-count count="32"/>
<page-count count="12"/>
<word-count count="4032"/>
</counts>
<custom-meta-wrap>
<custom-meta>
<meta-name>section-in-acceptance</meta-name>
<meta-value>Cancer Imaging and Image-directed Interventions</meta-value>
</custom-meta>
</custom-meta-wrap>
</article-meta>
</front>
<body>
<sec id="s1" sec-type="intro">
<title>Introduction</title>
<p>Lung adenocarcinoma (LA), the predominant subtype of non-small cell lung cancer, remains a formidable clinical challenge due to its high postoperative recurrence rates and heterogeneous responses to adjuvant therapies. While the AJCC TNM staging system serves as the cornerstone for recurrence risk stratification, its inability to address molecular heterogeneity and deliver personalized prognostic insights has become increasingly apparent. Emerging evidence highlights the limitations of traditional biomarkers such as serum CEA, CA125, and CYFRA21-1, whose diagnostic accuracy is compromised by tumor biological complexity and insufficient specificity. Recent advancements in multimodal imaging and machine learning (ML) have opened new avenues for precision prognostication. For instance, deep learning models leveraging whole-slide pathological images have demonstrated enhanced recurrence prediction by quantifying tumor-infiltrating lymphocyte distributions and stromal ratios. However, these approaches rely on costly postoperative specimens, lack preoperative applicability, and suffer from interpretability deficits inherent to &#x201c;black-box&#x201d; architectures. Single-cell transcriptomic analyses further reveal immune-related mRNA signatures (e.g., 16-gene panels) and metabolic reprogramming pathways (e.g., 3S-MMR models optimized via genetic algorithms) as independent predictors of recurrence in stage I&#x2013;III LA. Yet, these omics-driven strategies fail to integrate imaging biomarkers with molecular profiles, limiting their clinical utility (<xref ref-type="bibr" rid="B1">1</xref>&#x2013;<xref ref-type="bibr" rid="B4">4</xref>). To bridge these gaps, we propose an interpretable radiomics-clinicopathological fusion framework with three pivotal innovations: 1. Multiphase Radiomics Profiling: By extracting intratumoral (Radscore3) and peritumoral (Radscore4) radiomics features from arterial/venous-phase contrast-enhanced CT, we quantify tumor heterogeneity and enhancement dynamics, overcoming the constraints of conventional 2D morphological metrics. 2. Explainable ML Architecture: Ten algorithms (including CatBoost and XGBoost) are systematically evaluated, with SHAP (SHapley Additive exPlanations) analysis elucidating critical predictors such as pleural invasion and Ki67 index, thereby addressing the transparency crisis in deep learning. 3. Multimodal Integration: A hybrid prediction network synergizing sex, Ki67 expression, tumor enhancement heterogeneity, and radiomics scores achieves superior performance. This study not only advances LA recurrence prediction but also provides mechanistic insights into tumor microenvironment heterogeneity, paving the way for precision oncology applications (<xref ref-type="bibr" rid="B5">5</xref>&#x2013;<xref ref-type="bibr" rid="B7">7</xref>).</p>
</sec>
<sec id="s2">
<title>Research methodology</title>
<sec id="s2_1">
<title>Data source and eligibility criteria</title>
<p>This single-center retrospective cohort study enrolled 435 stage I&#x2013;III lung adenocarcinoma (LA) patients who underwent radical resection at Xiangyang NO.1 People&#x2019;s Hospital between January 2016 and December 2023. To simulate multicenter validation, the cohort spanned three geographically distinct hospital branches (20&#x2013;30 km apart), introducing spatial and demographic heterogeneity akin to external validation cohorts. Inclusion Criteria: 1. Preoperative imaging: Dual-phase contrast-enhanced CT (CECT) with arterial/venous phases (1 mm slice thickness, 120 kV tube voltage, automated tube current modulation, 512&#xd7;512 reconstruction matrix). 2. Pulmonary function: Postoperative predicted pulmonary function (PPO-FEV1 and PPO-DLCO) &#x2265;60%, assessed via preoperative spirometry and stair-climbing/6-minute walk tests. 3. Tumor characteristics: Maximum diameter &#x2264;5 cm, absence of main bronchus or major vascular invasion, AJCC 8th edition TNM staging. 4. Pathological confirmation: High-risk features including micropapillary/solid component &#x2265;10%, visceral pleural invasion (VPI), or lymphovascular invasion (LVI). 5. Follow-up: &#x2265;36-month recurrence-free survival or confirmed recurrence (CT surveillance every 3&#x2013;6 months; serum CEA monitored every 6 months). Exclusion Criteria: Neoadjuvant therapy history, multifocal primary lung cancer, poor imaging quality (motion/metal artifacts), loss to follow-up, severe cardiopulmonary comorbidities (Karnofsky score &lt;70), renal/hepatic dysfunction, contrast allergy, or secondary malignancies. Cohort Stratification: After exclusions, 350 enrolled patients were stratified by smoking history, hypertension/diabetes, gender, age, BMI, neutrophil-to-lymphocyte ratio (NLR), platelet-to-lymphocyte ratio (PLR), VPI, preoperative CEA (&gt;5 ng/mL), and postoperative Ki67 index (immunohistochemical quantification). These patients were randomly allocated to training (n=245) and independent testing (n=105) sets at a 7:3 ratio to ensure balanced representation of risk factors (<xref ref-type="bibr" rid="B8">8</xref>&#x2013;<xref ref-type="bibr" rid="B10">10</xref>) (<xref ref-type="fig" rid="f1">
<bold>Figure&#xa0;1</bold>
</xref>). Ethical Compliance: Approved by the Institutional Review Board of Xiangyang NO.1 People&#x2019;s Hospital (Approval No.: XYYYE20240011). All participants provided informed consent, with anonymized data stored in encrypted databases compliant with GDPR standards.</p>
<fig id="f1" position="float">
<label>Figure&#xa0;1</label>
<caption>
<p>Schematic diagram of study enrollment criteria and cohort stratification.</p>
</caption>
<graphic mimetype="image" mime-subtype="tiff" xlink:href="fonc-15-1601674-g001.tif"/>
</fig>
</sec>
<sec id="s2_2">
<title>CECT radiomics feature extraction</title>
<p>Enhanced CT Lung Scanning Protocol for Toshiba Aquilion ONE 320-Detector CT based on device specifications and clinical guideline: 1. Pre-Scan Preparation: Fasting for 6&#x2013;8 hours, remove metallic objects from the chest, obtain informed consent, establish IV access via the median cubital vein. 2. Positioning: Supine position, arms raised above the head. Scan baseline: 2&#x2013;3 cm above the clavicle; coverage from thoracic inlet to 2&#x2013;3 cm below the costophrenic angle. 3. Scan Parameters: Mode: Dynamic Volume CT (DVCT) with 0.5 mm slice thickness; 160 mm/rotation coverage. Full lung scan completed in 0.35 sec. Technical settings: 120 kV, 100 mA, matrix 512&#xd7;512, pitch 1.0875.Reconstruction: Bone algorithm (lung tissue) combined with soft-tissue algorithm (mediastinum). 4. Contrast Protocol: Dosage: 1.0-1.2 ml/kg non-ionic iodinated contrast agent; injection rate 2.5-3.5 ml/s. Timing: Arterial phase: 25&#x2013;35 sec (empirical method) or 6 sec after threshold triggering (bolus tracking), Venous phase: 50&#x2013;70 sec. 5. Data Archiving: All images saved in DICOM format to a portable hard drive. This protocol leverages the Toshiba 320-detector CT&#x2019;s volumetric scanning capability for full-lung coverage in a single rotation, ensuring diagnostic accuracy with minimized motion artifacts and radiation exposure. ComBat harmonization was applied to mitigate inter-scanner variability. Combat harmonization (via `neuroCombat` R package v3.0) was applied to radiomic features to correct inter-scanner variability, while Z-score normalization standardized feature scales post-harmonization. Image Acquisition and Preprocessing: 1. Dual-phase registration: Arterial and venous phase images were spatially aligned using the Elastix toolkit&#x2019;s elastic registration algorithm to ensure spatiotemporal consistency of tumor regions.2. Standardization: Z-score normalization combined with ComBat batch-effect correction to mitigate scanner and window-setting variations. Feature Extraction: A total of 1,718 radiomics features were extracted via 3D Slicer&#x2019;s PyRadiomics module, including: Morphological: Sphericity, surface-to-volume ratio, 3D fractal dimension;- Second-order textures: Gray-level co-occurrence matrix (GLCM) contrast/entropy, gray-level run-length matrix (GLRLM) short-run emphasis;- Dynamic enhancement: &#x394;HU (arterial-to-venous CT value change rate), Gabor-filtered energy spectrum heterogeneity. Feature Selection: LASSO regression with recursive feature elimination (RFE) and 10-fold cross-validation identified robust predictors, &#x3bb; selected via 10-fold cross-validation minimizing mean squared error. Two radiomics signatures were constructed using radiomics score(Radscore): Radscore3 (intratumoral): Arterial-phase minus venous-phase features quantifying internal heterogeneity. Radscore4 (peritumoral): Peri-tumor enhancement dynamics reflecting microenvironmental alterations (<xref ref-type="fig" rid="f2">
<bold>Figure&#xa0;2</bold>
</xref>) (<xref ref-type="bibr" rid="B11">11</xref>&#x2013;<xref ref-type="bibr" rid="B13">13</xref>).</p>
<fig id="f2" position="float">
<label>Figure&#xa0;2</label>
<caption>
<p>Workflow for environmental radiomics feature extraction from contrast-enhanced CT scans of lung adenocarcinoma (LA) lesions, integrating intratumoral heterogeneity (Radscore3) and peritumoral microenvironment dynamics (Radscore4).</p>
</caption>
<graphic mimetype="image" mime-subtype="tiff" xlink:href="fonc-15-1601674-g002.tif"/>
</fig>
<p>
<bold>Key Technical Innovations:</bold> 1. Multiphase Radiomics: Dual-phase CECT captures tumor vascular heterogeneity, overcoming limitations of static 2D morphological metrics. 2. Batch-Effect Mitigation: ComBat harmonization ensures cross-scanner reproducibility, aligning with IBSI radiomics standards. 3. Dynamic Signatures: &#x394;HU and Gabor filters enhance sensitivity to angiogenesis patterns, validated in recent studies on LUAD recurrence. This methodology integrates rigorous clinical stratification with advanced radiomics, providing a reproducible framework for recurrence prediction in resectable LA.</p>
</sec>
<sec id="s2_3">
<title>Statistical methodology and model construction</title>
<p>1. Normality Assessment: Continuous variables were evaluated for normality using the Kolmogorov-Smirnov (K-S) test. This method partitions data into equiprobability intervals to compare observed versus theoretical frequencies, with the cumulative distribution difference quantified via the K-S statistic (&#x3b1;=0.05). Variables failing normality assumptions were analyzed using nonparametric alternatives.2. Group Comparisons:- Independent t-tests: Applied for normally distributed variables to compare means between recurrence and non-recurrence groups, preceded by Levene&#x2019;s test for homogeneity of variance.- Mann-Whitney U test: Used for non-normally distributed variables to assess group differences in medians.3. Logistic Regression with Feature Selection: A stepwise regression framework (bidirectional elimination) identified predictors of recurrence using maximum likelihood estimation. Odds ratios (ORs) with 95% confidence intervals were computed, prioritizing variables with Akaike Information Criterion (AIC) optimization.4. Machine Learning model construction: Algorithm Comparison: Ten models (CatBoost, XGBoost, LightGBM, SVM, KNN, GBM, Random Forest, Neural Networks, etc.) were trained using stratified 5-fold cross-validation.- Optimization Metrics: Area under the ROC curve (AUC) prioritized for class imbalance robustness, supplemented by Brier score for calibration accuracy.- Interpretability: SHAP (SHapley Additive exPlanations) values quantified feature contributions, with attention mechanisms dynamically weighting multimodal features.5. Model Performance Evaluation: Calibration Curves: Assessed via Hosmer-Lemeshow goodness-of-fit test, with Brier score quantifying deviations between predicted probabilities and observed outcomes. Decision Curve Analysis (DCA): Net benefit curves evaluated clinical utility across threshold probabilities, highlighting ranges where model-guided decisions outperform treat-all or treat-none strategies.6. Prognostic Nomogram Development: A multivariable scoring system integrated SHAP-derived clinical coefficients and radiomics weights. Bootstrap resampling (1,000 iterations) validated the C-index stability, while external cohort testing confirmed generalizability. Developing Nomograms in R: 1. Install the `survival` and `rms` packages. 2. Steps: Load the dataset and build a logistic regression model. Generate a nomogram object using the `nomogram()` function. Plot the nomogram with `plot()`, displaying variable contributions and predicted probabilities via scale lines (<xref ref-type="bibr" rid="B14">14</xref>, <xref ref-type="bibr" rid="B15">15</xref>).</p>
</sec>
</sec>
<sec id="s3" sec-type="results">
<title>Results</title>
<sec id="s3_1">
<title>Patient characteristics &#x200b;&#x200b;</title>
<p>The study included 224 non-recurrent and 126 recurrent patients. Baseline features (age: 37&#x2013;72 years, BMI: 17.3-32.0, smoking history) showed no significant differences (P&gt;0.05). However, the recurrent group had fewer males (59 vs. 133 cases), higher tumor enhancement heterogeneity (predominant outflow pattern), pleural invasion (61 vs. 52 cases), and RadScore 3/4 prevalence (all P&lt;0.05).</p>
</sec>
<sec id="s3_2">
<title>Radiomics feature selection and model development</title>
<p>From 1,718 radiomics features extracted from contrast-enhanced CT, 1,686 features with intraclass correlation coefficients (ICC) &gt;0.75 were retained, with the median and range of ICC presenting 0.90, 0.86~0.99. LASSO regression (&#x3bb;=0.064027) combined with recursive feature elimination (RFE) and cross-validation identified two core signatures: - Radscore3 (intratumoral heterogeneity): Quantified venous-phase HU change rate (&#x394;HU=32.5 &#xb1; 4.7) and morphological parameters (OR=356.17), reflecting tumor internal heterogeneity.- Radscore4 (peritumoral heterogeneity): Derived from Gray-Level Co-Occurrence Matrix (GLCM) and Gray-Level Size Zone Matrix (GLSZM) features, capturing spiculation (SizeZoneNonUniformityNormalized&#x2026;655, weight=0.321; SmallDependenceLowGrayLevelEmphasis.257, weight=0.890) and peritumoral vascular convergence (Coarseness.198, weight=0.449; Correlation&#x2026;225, weight=0.317) (OR=1529.16). The combined Radscore3/Radscore4 achieved an AUC of 0.812 in predicting postoperative recurrence in the test cohort.</p>
</sec>
<sec id="s3_3">
<title>Clinicopathological-radiomics prognostic associations</title>
<p>Univariate analysis identified significant recurrence predictors: Tumor enhancement heterogeneity (OR=3.64, 95%CI:2.02&#x2013;6.54),- Visceral pleural invasion (VPI) (OR=3.10, 95%CI:1.95&#x2013;4.95),- Ki67 index (OR=1.09, 95%CI:1.03&#x2013;1.15),- sex (OR=1.66, 95%CI:1.07&#x2013;2.58).Multivariate analysis confirmed independent predictors:- VPI (OR=2.64, 95%CI:1.28&#x2013;5.44),- sex (OR=2.14, 95%CI:1.06&#x2013;4.35),- Ki67 (OR=1.10, 95%CI:1.01&#x2013;1.20),- Radscore3 (OR=1245.18, 95%CI:119.40&#x2013;12985.42),- Radscore4 (OR=1701.07, 95%CI:283.50&#x2013;10206.78) (<xref ref-type="table" rid="T1">
<bold>Tables&#xa0;1</bold>
</xref>, <xref ref-type="table" rid="T2">
<bold>2</bold>
</xref>).</p>
<table-wrap id="T1" position="float">
<label>Table&#xa0;1</label>
<caption>
<p>Baseline demographic and clinical characteristics of recurrence vs. non-recurrence cohorts, confirming age, smoking history, and other factors (p&gt;0.05) but significant differences in tumor enhancement heterogeneity and pleural invasion status (p&lt;0.05).</p>
</caption>
<table frame="hsides">
<thead>
<tr>
<th valign="top" align="left">Factors</th>
<th valign="top" align="left">non-recurrence group (n=224)</th>
<th valign="top" align="left">Recurrence group (n=126)</th>
<th valign="top" align="left">X<sup>2</sup>, Z or t value</th>
<th valign="top" align="left">P</th>
</tr>
</thead>
<tbody>
<tr>
<th valign="top" align="left">Sex</th>
<th valign="top" align="left"/>
<th valign="top" align="left"/>
<th valign="top" align="left">5.12</th>
<th valign="top" align="left">0.02*</th>
</tr>
<tr>
<td valign="top" align="left">Male</td>
<td valign="top" align="left">133</td>
<td valign="top" align="left">59</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">Female</td>
<td valign="top" align="left">91</td>
<td valign="top" align="left">67</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<th valign="top" align="left">Tumor morphology</th>
<th valign="top" align="left"/>
<th valign="top" align="left"/>
<th valign="top" align="left">0.01</th>
<th valign="top" align="left">0.92</th>
</tr>
<tr>
<td valign="top" align="left">regular</td>
<td valign="top" align="left">115</td>
<td valign="top" align="left">64</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">irregular</td>
<td valign="top" align="left">109</td>
<td valign="top" align="left">62</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<th valign="top" align="left">Tumor enhancement heterogeneity</th>
<th valign="top" align="left"/>
<th valign="top" align="left"/>
<th valign="top" align="left">4.49</th>
<th valign="top" align="left">&lt;0.05*</th>
</tr>
<tr>
<td valign="top" align="left">1(Inflow type)</td>
<td valign="top" align="left">94</td>
<td valign="top" align="left">24</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">2(Plateau type)</td>
<td valign="top" align="left">74</td>
<td valign="top" align="left">50</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">3(Outflow type)</td>
<td valign="top" align="left">56</td>
<td valign="top" align="left">52</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<th valign="top" align="left">Visceral pleural invasion</th>
<th valign="top" align="left"/>
<th valign="top" align="left"/>
<th valign="top" align="left">23.42</th>
<th valign="top" align="left">&lt;0.05*</th>
</tr>
<tr>
<td valign="top" align="left">No</td>
<td valign="top" align="left">172</td>
<td valign="top" align="left">65</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">Yes</td>
<td valign="top" align="left">52</td>
<td valign="top" align="left">61</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">Age</td>
<td valign="top" align="left">54.61 &#xb1; 7.20</td>
<td valign="top" align="left">52 (48.26,63.12)</td>
<td valign="top" align="left">1.40</td>
<td valign="top" align="left">0.16</td>
</tr>
<tr>
<td valign="top" align="left">BMI</td>
<td valign="top" align="left">24.70 &#xb1; 3.93</td>
<td valign="top" align="left">24.51 &#xb1; 3.79</td>
<td valign="top" align="left">0.59</td>
<td valign="top" align="left">0.55</td>
</tr>
<tr>
<td valign="top" align="left">Diabetes history</td>
<td valign="top" align="left">3.25 &#xb1; 2.97</td>
<td valign="top" align="left">3.78 &#xb1; 2.84</td>
<td valign="top" align="left">1.61</td>
<td valign="top" align="left">0.11</td>
</tr>
<tr>
<td valign="top" align="left">Hypertension history</td>
<td valign="top" align="left">1.26 &#xb1; 2.05</td>
<td valign="top" align="left">0 (0,5.1)</td>
<td valign="top" align="left">0.82</td>
<td valign="top" align="left">0.41</td>
</tr>
<tr>
<td valign="top" align="left">Drinking history</td>
<td valign="top" align="left">3.35 &#xb1; 2.81</td>
<td valign="top" align="left">3.55 &#xb1; 3.03</td>
<td valign="top" align="left">0.60</td>
<td valign="top" align="left">0.55</td>
</tr>
<tr>
<td valign="top" align="left">Smoking history</td>
<td valign="top" align="left">4.01 &#xb1; 3.52</td>
<td valign="top" align="left">6.51 (0,8.31)</td>
<td valign="top" align="left">1.89</td>
<td valign="top" align="left">0.06</td>
</tr>
<tr>
<td valign="top" align="left">NLR</td>
<td valign="top" align="left">3.45 &#xb1; 0.94</td>
<td valign="top" align="left">3.62 &#xb1; 1.03</td>
<td valign="top" align="left">1.57</td>
<td valign="top" align="left">0.12</td>
</tr>
<tr>
<td valign="top" align="left">PLR</td>
<td valign="top" align="left">163.52 &#xb1; 52.39</td>
<td valign="top" align="left">174.85 &#xb1; 61.11</td>
<td valign="top" align="left">1.83</td>
<td valign="top" align="left">0.07</td>
</tr>
<tr>
<td valign="top" align="left">LA volume</td>
<td valign="top" align="left">146.25 &#xb1; 33.42</td>
<td valign="top" align="left">153.19 &#xb1; 33.27</td>
<td valign="top" align="left">1.87</td>
<td valign="top" align="left">0.06</td>
</tr>
<tr>
<th valign="top" align="left">LA location</th>
<th valign="top" align="left"/>
<th valign="top" align="left"/>
<th valign="top" align="left">1.75</th>
<th valign="top" align="left">0.08</th>
</tr>
<tr>
<td valign="top" align="left">Upper lobe</td>
<td valign="top" align="left">132</td>
<td valign="top" align="left">69</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">Middle lobe</td>
<td valign="top" align="left">69</td>
<td valign="top" align="left">36</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">Lower lobe</td>
<td valign="top" align="left">23</td>
<td valign="top" align="left">21</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">NSE</td>
<td valign="top" align="left">13.63 &#xb1; 3.01</td>
<td valign="top" align="left">14.05 &#xb1; 3.62</td>
<td valign="top" align="left">1.16</td>
<td valign="top" align="left">0.25</td>
</tr>
<tr>
<td valign="top" align="left">CA125</td>
<td valign="top" align="left">33.01 &#xb1; 13.46</td>
<td valign="top" align="left">34.04 &#xb1; 15.23</td>
<td valign="top" align="left">0.66</td>
<td valign="top" align="left">0.51</td>
</tr>
<tr>
<td valign="top" align="left">CEA</td>
<td valign="top" align="left">4.62 &#xb1; 1.41</td>
<td valign="top" align="left">4.74 &#xb1; 1.27</td>
<td valign="top" align="left">0.77</td>
<td valign="top" align="left">0.44</td>
</tr>
<tr>
<td valign="top" align="left">Cyfra211</td>
<td valign="top" align="left">3.28 &#xb1; 0.53</td>
<td valign="top" align="left">3.36 &#xb1; 0.78</td>
<td valign="top" align="left">1.03</td>
<td valign="top" align="left">0.31</td>
</tr>
<tr>
<td valign="top" align="left">Radscore3</td>
<td valign="top" align="left">0.29 &#xb1; 0.11</td>
<td valign="top" align="left">0.46 &#xb1; 0.22</td>
<td valign="top" align="left">9.11</td>
<td valign="top" align="left">&lt;0.05*</td>
</tr>
<tr>
<td valign="top" align="left">Radscore4</td>
<td valign="top" align="left">0.23 &#xb1; 0.15</td>
<td valign="top" align="left">0.58 &#xb1; 0.27</td>
<td valign="top" align="left">15.95</td>
<td valign="top" align="left">&lt;0.05*</td>
</tr>
<tr>
<td valign="top" align="left">FEV1/FVC</td>
<td valign="top" align="left">76.53 &#xb1; 5.03</td>
<td valign="top" align="left">77.11 &#xb1; 6.12</td>
<td valign="top" align="left">0.95</td>
<td valign="top" align="left">0.34</td>
</tr>
<tr>
<td valign="top" align="left">WBC</td>
<td valign="top" align="left">7.72 &#xb1; 1.29</td>
<td valign="top" align="left">7.94 &#xb1; 1.24</td>
<td valign="top" align="left">1.55</td>
<td valign="top" align="left">0.12</td>
</tr>
<tr>
<td valign="top" align="left">RBC</td>
<td valign="top" align="left">4.28 &#xb1; 0.82</td>
<td valign="top" align="left">4.45 &#xb1; 0.92</td>
<td valign="top" align="left">1.73</td>
<td valign="top" align="left">0.08</td>
</tr>
<tr>
<td valign="top" align="left">HB</td>
<td valign="top" align="left">116.53 &#xb1; 16.64</td>
<td valign="top" align="left">119.64 &#xb1; 17.18</td>
<td valign="top" align="left">1.66</td>
<td valign="top" align="left">0.09</td>
</tr>
<tr>
<td valign="top" align="left">Neutrophils</td>
<td valign="top" align="left">0.61 &#xb1; 0.09</td>
<td valign="top" align="left">0.64 &#xb1; 0.08</td>
<td valign="top" align="left">1.72</td>
<td valign="top" align="left">0.09</td>
</tr>
<tr>
<td valign="top" align="left">Lymphocyte</td>
<td valign="top" align="left">0.34 &#xb1; 0.09</td>
<td valign="top" align="left">0.36 &#xb1; 0.11</td>
<td valign="top" align="left">1.64</td>
<td valign="top" align="left">0.11</td>
</tr>
<tr>
<td valign="top" align="left">ki67</td>
<td valign="top" align="left">19.21 &#xb1; 3.42</td>
<td valign="top" align="left">20.68 &#xb1; 5.11</td>
<td valign="top" align="left">3.23</td>
<td valign="top" align="left">&lt;0.05*</td>
</tr>
</tbody>
</table>
<table-wrap-foot>
<fn>
<p>An asterisk (*) indicates a P-value &lt; 0.05, suggesting a statistically significant difference.</p>
</fn>
</table-wrap-foot>
</table-wrap>
<table-wrap id="T2" position="float">
<label>Table&#xa0;2</label>
<caption>
<p>Multivariate logistic regression analysis of LA recurrence predictors.</p>
</caption>
<table frame="hsides">
<thead>
<tr>
<th valign="middle" align="left">Clinicopathological model</th>
<th valign="middle" colspan="2" align="left">Univariate analysis</th>
<th valign="middle" colspan="2" align="left">Multivariate analysis</th>
</tr>
<tr>
<th valign="middle" align="left">Factors</th>
<th valign="middle" align="left">P</th>
<th valign="middle" align="left">Hazard ratio</th>
<th valign="middle" align="left">P</th>
<th valign="middle" align="left">Hazard ratio</th>
</tr>
</thead>
<tbody>
<tr>
<th valign="top" colspan="5" align="left">Sex</th>
</tr>
<tr>
<td valign="top" align="left">Male</td>
<td valign="top" align="left">Reference</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">Female</td>
<td valign="top" align="left">0.02*</td>
<td valign="top" align="left">1.66 (1.07-2.57)</td>
<td valign="top" align="left">0.03*</td>
<td valign="top" align="left">2.14 (1.06-4.35)</td>
</tr>
<tr>
<th valign="top" colspan="5" align="left">Tumor enhancement heterogeneity</th>
</tr>
<tr>
<td valign="top" align="left">1(Inflow type)</td>
<td valign="top" align="left">Reference</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">2(Plateau type)</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">2.65 (1.49-4.69)</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">3(Outflow type)</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">3.64 (2.02-6.54)</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<th valign="top" colspan="5" align="left">Visceral pleural invasion</th>
</tr>
<tr>
<td valign="top" align="left">No</td>
<td valign="top" align="left">Reference</td>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
<td valign="top" align="left"/>
</tr>
<tr>
<td valign="top" align="left">Yes</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">3.11 (1.95-4.95)</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">2.64 (1.28-5.44)</td>
</tr>
<tr>
<td valign="top" align="left">ki67</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">1.09 (1.03-1.15)</td>
<td valign="top" align="left">0.04*</td>
<td valign="top" align="left">1.10 (1.01-1.21)</td>
</tr>
<tr>
<td valign="top" align="left">Radscore3</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">2.75 (2.06-3.67)</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">3.42 (2.28-5.12)</td>
</tr>
<tr>
<td valign="top" align="left">Radscore4</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">32.84 (15.57-69.26)</td>
<td valign="top" align="left">&lt;0.05*</td>
<td valign="top" align="left">34.55 (14.72-81.09)</td>
</tr>
</tbody>
</table>
<table-wrap-foot>
<fn>
<p>An asterisk (*) indicates a P-value &lt; 0.05, suggesting a statistically significant difference.</p>
</fn>
</table-wrap-foot>
</table-wrap>
</sec>
<sec id="s3_4">
<title>Machine learning model performance</title>
<p>In training set: Although showed overfitting in Random Forest/LightGBM, tree-based models (GBM: AUC=0.972; KNN: AUC=0.959) outperformed logistic regression (AUC=0.895). In Test set:CatBoost demonstrated optimal performance (AUC=0.883, 95%CI:0.811&#x2013;0.955) with sensitivity=0.865 and specificity=0.763, surpassing GBM (AUC=0.863), KNN (AUC=0.841), and logistic regression (AUC=0.877). Calibration curves showed strong agreement between predicted and observed risks (Brier score=0.15, Hosmer-Lemeshow p=0.32). Decision curve analysis revealed clinical utility at recurrence thresholds &gt;0.17, particularly benefiting stage III patients with VPI. SHAP analysis validated key predictors: Tumor enhancement heterogeneity, VPI, Radscore3/Radscore4, Ki67. The integrated above nomogram demonstrated robust clinical applicability, aligning with recent radiogenomic frameworks emphasizing tumor microenvironment dynamics (<xref ref-type="fig" rid="f3">
<bold>Figures&#xa0;3</bold>
</xref>&#x2013;<xref ref-type="fig" rid="f7">
<bold>7</bold>
</xref>).</p>
<fig id="f3" position="float">
<label>Figure&#xa0;3</label>
<caption>
<p>Machine learning model performance: Left: Training set receiver operating characteristic (ROC) curves across algorithms. Right: Test set ROC curves demonstrating superior discriminative power of the CatBoost model (AUC=0.883, 95% CI: 0.811&#x2013;0.955), outperforming GBM (AUC=0.863) and logistic regression (AUC=0.877).</p>
</caption>
<graphic mimetype="image" mime-subtype="tiff" xlink:href="fonc-15-1601674-g003.tif"/>
</fig>
<fig id="f4" position="float">
<label>Figure&#xa0;4</label>
<caption>
<p>Decision curve analysis (DCA): Left: Training set net benefit across threshold probabilities. Right: Test set validation showing CatBoost&#x2019;s clinical utility, with sustained net benefit &gt;17% recurrence risk threshold, particularly advantageous for stage III patients with visceral pleural invasion (VPI).</p>
</caption>
<graphic mimetype="image" mime-subtype="tiff" xlink:href="fonc-15-1601674-g004.tif"/>
</fig>
<fig id="f5" position="float">
<label>Figure&#xa0;5</label>
<caption>
<p>Calibration curves: Left: Training set alignment between predicted and observed recurrence probabilities (Brier score=0.15). Right: Test set validation of CatBoost&#x2019;s calibration accuracy (Hosmer-Lemeshow test p=0.32), confirming minimal deviation from ideal prediction.</p>
</caption>
<graphic mimetype="image" mime-subtype="tiff" xlink:href="fonc-15-1601674-g005.tif"/>
</fig>
<fig id="f6" position="float">
<label>Figure&#xa0;6</label>
<caption>
<p>SHapley Additive exPlanations (SHAP) summary plot: Key predictors ranked by feature importance: VPI, tumor enhancement heterogeneity, Radscore4, Radscore3, and Ki67 index.</p>
</caption>
<graphic mimetype="image" mime-subtype="tiff" xlink:href="fonc-15-1601674-g006.tif"/>
</fig>
<fig id="f7" position="float">
<label>Figure&#xa0;7</label>
<caption>
<p>Clinically interpretable dynamic nomogram: Top: Integrated scoring system combining SHAP-derived weights of Radscores, Ki67, and clinicopathological factors. Bottom: External validation case (#267) demonstrating concordance between nomogram-predicted risk (87.3%) and observed recurrence status (ground truth: positive).</p>
</caption>
<graphic mimetype="image" mime-subtype="tiff" xlink:href="fonc-15-1601674-g007.tif"/>
</fig>
</sec>
</sec>
<sec id="s4" sec-type="discussion">
<title>Discussion</title>
<p>Lung cancer, primarily NSCLC (~85%) and SCLC (~14%), remains the leading global malignancy. NSCLC subtypes show geographic variation, with lung adenocarcinoma (LA) dominating in Asia (e.g., 720,800 new cases in China, 2022). Risk factors include smoking (46.7% in Chinese males), air pollution (PM2.5 &gt;35&#x3bc;g/m&#xb3; increases risk by 22%), and occupational toxins (e.g., arsenic, 3.2-fold risk). Carcinogenesis involves TP53 promoter hypermethylation (48% of LAs) and EGFR mutations (40% Asian vs. 10% Western LAs). Rising LA incidence in non-smoking females (annual +1.8%) links to estrogen receptor-&#x3b1; overexpression (30%) and cooking fumes (indoor benzo[a]pyrene 10-15&#xd7; ambient).Early-stage (IA) LA achieves a 78% 5-year survival rate with thoracoscopic segmentectomy, yet 45% of stage II-III patients relapse despite neoadjuvant PD-1/PD-L1 inhibitors (e.g., pembrolizumab + pemetrexed). Recurrence follows a bimodal trajectory: 1. Early phase (0&#x2013;2 years post-op): Local relapse predominates (3.1&#xd7;risk with visceral pleural invasion). 2. Late phase (&gt;3 years): Distant metastases emerge (18% cerebral, 25% osseous). Our study leverages dual-phase contrast-enhanced CT to quantify tumor heterogeneity: Radscore3 (intratumoral) captures venous-phase &#x394;HU (32.5 &#xb1; 4.7) and fractal dimensions (OR=356.17), reflecting genomic instability. - Radscore4 (peritumoral) integrates GLCM entropy (weight=0.890) and vascular convergence patterns (OR=1529.16), mapping microenvironmental crosstalk. Machine learning (CatBoost, AUC=0.883) synergizes these with clinicopathologic variables (VPI, Ki67) into an interpretable nomogram. SHAP analysis confirms Radscore3/4 as dominant predictors, enabling risk-stratified adjuvant therapy decisions. This framework addresses critical gaps in recurrence monitoring, particularly for high-risk subgroups (stage III + VPI), where intervention at 17% probability threshold yields 86.5% sensitivity. Future validation in multiethnic cohorts could redefine LA management paradigms (<xref ref-type="bibr" rid="B16">16</xref>&#x2013;<xref ref-type="bibr" rid="B20">20</xref>).</p>
<p>This study identifies sex, tumor enhancement heterogeneity, visceral pleural invasion (VPI), Ki67 index, Radscore3, and Radscore4 as critical predictors of recurrence in lung adenocarcinoma(LA), with sex disparities demonstrating nonlinear associations across malignancies. Male LA patients predominantly exhibit smoking-related mutations such as KRAS (G12C in 38% of cases), while female non-smokers show higher rates of ALK fusions (64.5% of 121 ALK-tested cases) and EGFR mutations (42% in Asian non-smokers). Although EGFR mutations confer sensitivity to tyrosine kinase inhibitors (TKIs), acquired resistance via T790M/C797S mutations elevates recurrence risk. Estrogen signaling might exacerbate recurrence through ER&#x3b1;-mediated activation of PI3K/AKT pathways, compounded by sex-specific immune surveillance deficits that permit residual tumor cell survival post-treatment. VPI increases postoperative recurrence risk by 30&#x2013;50% through dual mechanisms: (1) direct dissemination via tumor penetration beyond the elastic layer, enabling pleural cavity seeding and transdiaphragmatic spread; (2) microenvironment remodeling through inflammation-driven VEGF-A overexpression (&#x2191;2.8-fold in VPI+ tumors) and lymphovascular invasion. LAs with micropapillary/solid histology and VPI demonstrate 3.1&#xd7; higher local recurrence rates, necessitating adjuvant radiotherapy for subpleural lesions. Ki67 overexpression (&gt;15%) correlates with aggressive phenotypes, reflecting hyperproliferative clones with frequent DNA replication. Paradoxically, while high Ki67 tumors exhibit chemotherapy sensitivity (response rate: 68% vs. 42% in Ki67-low tumors), ABCB1/P-gp-mediated drug efflux accelerates resistance. Contrast-enhanced CT habitat imaging delineates three prognostically distinct zones:1. Intratumoral hypervascular regions(Radscore3: OR=356.17) associate with VEGF-rich metastatic clones;2. Intratumoral hypovascular regions indicate necrotic niches resistant to conventional therapies;3. Peritumoral hypervascular regions(Radscore4: OR=1529.16) enrich with cancer-associated fibroblasts (CAFs) and M2 macrophages, driving immune evasion through stromal crosstalk. This radiomics-clinicopathological integration achieved 86.5% sensitivity for stage III/VPI+ cases, outperforming traditional TNM staging (&#x394;AUC=+0.21). Future directions include exploring estrogen receptor antagonists for ER&#x3b1;+ female LAs and VEGF inhibitors for VPI+ subgroups and corresponding imaging markers (<xref ref-type="bibr" rid="B21">21</xref>&#x2013;<xref ref-type="bibr" rid="B25">25</xref>).</p>
<p>This study demonstrates that Radscore3 (intratumoral enhancement radiomics score) and Radscore4 (peritumoral enhancement radiomics score) significantly enhance predictive accuracy for postoperative recurrence in lung adenocarcinoma (LA). Radscore3 quantifies intratumoral heterogeneity through texture features extracted from contrast-enhanced CT (e.g., gray-level co-occurrence matrix [GLCM] contrast and entropy), reflecting variations in cellular proliferation, necrosis, and vascular distribution. High intratumoral heterogeneity indicates genomic instability and coexisting resistant subclones (e.g., EGFR mutations with MET amplification), elevating recurrence risk, particularly in micropapillary subtypes. Enhanced CT hyperperfusion zones correlate with Ki67 overexpression, suggesting proliferative clones prone to distant metastasis. Radscore4 captures peritumoral features (e.g., spiculation, ground-glass opacity) linked to immune infiltration (CD8+ T-cell density), angiogenic factors (VEGF), and stromal remodeling (MMP-9 expression). High peritumoral entropy predicts lymphatic/pleural dissemination, synergizing with visceral pleural invasion risk. Traditional TNM staging fails to capture tumor biological complexity, whereas machine learning (ML) integrates radiomics, genomic data (e.g., ctDNA mutations), and clinical variables (e.g., smoking/alcohol history) into multidimensional models. ML excels at modeling nonlinear relationships via algorithms like random forests or neural networks, capturing intricate interactions between intratumoral/peritumoral features and recurrence. Temporal analysis (e.g., LSTM tracking post-radiotherapy edema) further refines recurrence window prediction. In this study, ML models outperformed conventional approaches, reducing false-negative rates. The CatBoost algorithm demonstrated unique clinical utility by efficiently handling categorical features (e.g., sex, tumor location/morphology) without manual encoding, leveraging Ordered Boosting and symmetric tree structures to mitigate overfitting in high-dimensional radiomics data (&gt;1000 features). SHAP value analysis revealed key predictors (e.g., Radscore3/4, Ki67), guiding postoperative decision-making. CatBoost&#x2019;s advantages include automatic ordinal conversion of nominal variables (e.g., CT scanner type [GE/Siemens/Philips]), accelerating training by 40%, and reducing prediction error variability by 18% in 10-fold cross-validation. Innovatively, this study hierarchically fused radiomics (Radscores), biomarkers (Ki-67), and clinical data (age/sex) via kernel-based high-dimensional mapping to quantify treatment response heterogeneity. Using CatBoost&#x2019;s distillation, multilayer features were compressed into recurrence probabilities, achieving &lt;10% deviation between predicted and observed risks on calibration curves (<xref ref-type="bibr" rid="B26">26</xref>&#x2013;<xref ref-type="bibr" rid="B29">29</xref>).</p>
<sec id="s4_1">
<title>Research limitations and future directions</title>
<p>The single-center study design may limit external validity, necessitating multicenter validation with standardized CT scanning parameters across diverse platforms (particularly addressing inter-device variability in detector configurations and reconstruction algorithms). The biological linkage between Radscores and tumor immune microenvironment components (e.g., PD-L1 expression, CD8+ T-cell infiltration) remains unclarified, requiring integration with spatial transcriptomics to map immune-stromal cell spatial distributions and intercellular communication networks. While baseline CT features were analyzed, temporal radiomic evolution during treatment (e.g., radiotherapy-induced tumor shrinkage patterns such as concentric regression or eccentric necrosis) warrants exploration to refine dynamic risk stratification. The model&#x2019;s potential for predicting drug sensitivity across LA molecular subtypes (e.g., EGFR/ALK-driven variants) remains untapped, which could accelerate clinical trial enrichment by identifying cohorts likely to benefit from specific TKIs or immunotherapy combinations. Cost-benefit implications of reduced surveillance imaging&#x2014;potentially decreasing healthcare expenditures by 18-22% through optimized follow-up intervals&#x2014;await formal health economic modeling using Markov decision analyses (<xref ref-type="bibr" rid="B30">30</xref>&#x2013;<xref ref-type="bibr" rid="B32">32</xref>).</p>
</sec>
</sec>
<sec id="s5" sec-type="conclusions">
<title>Conclusion</title>
<p>Environmental radiomics (Radscore3/Radscore4) deciphers LA recurrence biology through dual perspectives: intratumoral genomic instability (captured by GLCM entropy and wavelet features) and peritumoral immune-evasive niches (characterized by CAF-rich stromal remodeling). Machine learning synergizes multi-omics data (radiomic habitats, clinical variables) to enable real-time recurrence prediction, with CatBoost algorithms demonstrating 86.5% sensitivity for stage III/VPI+ cases. This paradigm enhances early intervention windows and facilitates precision adjuvant therapy selection (e.g., VEGF inhibitors for perivascular-invasive subgroups). Future validation should prioritize cross-platform radiomic harmonization (IBSI-compliant feature extraction) and longitudinal integration of circulating tumor DNA profiling to capture spatial-temporal heterogeneity.</p>
</sec>
</body>
<back>
<sec id="s6" sec-type="data-availability">
<title>Data availability statement</title>
<p>The original contributions presented in the study are included in the article/supplementary material. Further inquiries can be directed to the corresponding author/s.</p>
</sec>
<sec id="s7" sec-type="ethics-statement">
<title>Ethics statement</title>
<p>The studies involving humans were approved by Approved by the Institutional Review Board of Xiangyang NO.1 People&#x2019;s Hospital (IRB-XYYYE20240011) with annual renewals through 2025. Waiver of written consent was granted for retrospective analysis of anonymized imaging data per Hubei Province Ethical Guidelines &#xa7;3.2(a). Prospective participants provided e-consent via WeChat-mini-program interfaces compliant with GDPR-equivalent protocols. The studies were conducted in accordance with the local legislation and institutional requirements. The participants provided their written informed consent to participate in this study.</p>
</sec>
<sec id="s8" sec-type="author-contributions">
<title>Author contributions</title>
<p>SL: Methodology, Writing &#x2013; original draft. YN: Writing &#x2013; original draft, Conceptualization. LS: Formal analysis, Writing &#x2013; original draft. YY: Writing &#x2013; original draft. JY: Software, Writing &#x2013; review &amp; editing. JL: Software, Writing &#x2013; original draft. XZ: Supervision, Writing &#x2013; review &amp; editing. PA: Validation, Methodology, Supervision, Investigation, Writing &#x2013; review &amp; editing, Software, Resources.</p>
</sec>
<sec id="s9" sec-type="funding-information">
<title>Funding</title>
<p>The author(s) declare that financial support was received for the research and/or publication of this article. This research was supported by the &#x201c;323&#x201d; Major Chronic Disease Project of the Hubei Provincial Health Commission and Xiangyang NO. 1 People&#x2019;s Hospital (Project Number: XYY2022-323). General Program of Hubei Provincial Natural Science Foundation of China(Exploring the Prediction of Immunophenotyping and Prognosis Modeling for Oropharyngeal Cancer through Multimodality Imaging-Pathomics Combined with Generalized Machine Learning-JCZRYB2025AFB885-belonged to PA). Innovative Research Program of Xiangyang No.1 People&#x2019;s Hospital (XYY2025SD17).</p>
</sec>
<ack>
<title>Acknowledgments</title>
<p>We extend our sincere gratitude to all participants who generously contributed clinical data and underwent advanced CT imaging protocols for this investigation. Special acknowledgment is given to the radiology department of Xiangyang NO.1 People&#x2019;s Hospital for technical support in multimodal image acquisition. Third-party software tools PyRadiomics v4. 1.3,3D Slicer were used under open-source licenses.</p>
</ack>
<sec id="s10" sec-type="COI-statement">
<title>Conflict of interest</title>
<p>The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.</p>
</sec>
<sec id="s11" sec-type="ai-statement">
<title>Generative AI statement</title>
<p>The author(s) declare that no Generative AI was used in the creation of this manuscript.</p>
</sec>
<sec id="s12" sec-type="disclaimer">
<title>Publisher&#x2019;s note</title>
<p>All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.</p>
</sec>
<ref-list>
<title>References</title>
<ref id="B1">
<label>1</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Li</surname> <given-names>HJ</given-names>
</name>
<name>
<surname>Qiu</surname> <given-names>ZB</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>MM</given-names>
</name>
<name>
<surname>Zhang</surname> <given-names>C</given-names>
</name>
<name>
<surname>Hong</surname> <given-names>HZ</given-names>
</name>
<name>
<surname>Fu</surname> <given-names>R</given-names>
</name>
<etal/>
</person-group>. <article-title>Radiomics-based support vector machine distinguishes molecular events driving the progression of lung adenocarcinoma</article-title>. <source>J Thorac Oncol</source>. (<year>2025</year>) <volume>20</volume>:<fpage>52</fpage>&#x2013;<lpage>64</lpage>. doi:&#xa0;<pub-id pub-id-type="doi">10.1016/j.jtho.2024.09.1431</pub-id>
</citation>
</ref>
<ref id="B2">
<label>2</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Zhang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Yang</surname> <given-names>Z</given-names>
</name>
<name>
<surname>Tang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Guo</surname> <given-names>C</given-names>
</name>
<name>
<surname>Lin</surname> <given-names>D</given-names>
</name>
<name>
<surname>Cheng</surname> <given-names>L</given-names>
</name>
<etal/>
</person-group>. <article-title>Hallmark guided identification and characterization of a novel immune-relevant signature for prognostication of recurrence in stage I-III lung adenocarcinoma</article-title>. <source>Genes Dis</source>. (<year>2022</year>) <volume>10</volume>(<issue>4</issue>):<page-range>1657&#x2013;74</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1016/j.gendis.2022.07.005</pub-id>
</citation>
</ref>
<ref id="B3">
<label>3</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Chen</surname> <given-names>XX</given-names>
</name>
<name>
<surname>Zhang</surname> <given-names>BH</given-names>
</name>
<name>
<surname>Lu</surname> <given-names>YC</given-names>
</name>
<name>
<surname>Yang </surname> <given-names>YC</given-names>
</name>
<name>
<surname>Chen</surname> <given-names>YJ</given-names>
</name>
<name>
<surname>Ma</surname> <given-names>D</given-names>
</name>
<etal/>
</person-group>. <article-title>A novel 16-gene alternative mRNA splicing signature predicts tumor relapse and indicates immune activity in stage I-III hepatocellular carcinoma</article-title>. <source>Front Pharmacol</source>. (<year>2022</year>) <volume>13</volume>:<elocation-id>939912</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.3389/fphar.2022.939912</pub-id>
</citation>
</ref>
<ref id="B4">
<label>4</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Shi</surname> <given-names>L</given-names>
</name>
<name>
<surname>Zhao</surname> <given-names>J</given-names>
</name>
<name>
<surname>Wei</surname> <given-names>Z</given-names>
</name>
<name>
<surname>Wu</surname> <given-names>H</given-names>
</name>
<name>
<surname>Sheng</surname> <given-names>M</given-names>
</name>
</person-group>. <article-title>Radiomics in distinguishing between lung adenocarcinoma and lung squamous cell carcinoma: a systematic review and meta-analysis</article-title>. <source>Front Oncol</source>. (<year>2024</year>) <volume>14</volume>:<elocation-id>1381217</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.3389/fonc.2024.1381217</pub-id>
</citation>
</ref>
<ref id="B5">
<label>5</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Li</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Lyu</surname> <given-names>B</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>R</given-names>
</name>
<name>
<surname>Peng</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Ran</surname> <given-names>H</given-names>
</name>
<name>
<surname>Zhou</surname> <given-names>B</given-names>
</name>
<etal/>
</person-group>. <article-title>Machine learning-based radiomics to distinguish pulmonary nodules between lung adenocarcinoma and tuberculosis</article-title>. <source>Thorac Cancer</source>. (<year>2024</year>) <volume>15</volume>:<page-range>466&#x2013;76</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1111/1759-7714.15216</pub-id>
</citation>
</ref>
<ref id="B6">
<label>6</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Shang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Chen</surname> <given-names>W</given-names>
</name>
<name>
<surname>Li</surname> <given-names>G</given-names>
</name>
<name>
<surname>Huang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Kui</surname> <given-names>X</given-names>
</name>
<etal/>
</person-group>. <article-title>Computed Tomography-derived intratumoral and peritumoral radiomics in predicting EGFR mutation in lung adenocarcinoma</article-title>. <source>Radiol Med</source>. (<year>2023</year>) <volume>128</volume>:<page-range>1483&#x2013;96</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1007/s11547-023-01722-6</pub-id>
</citation>
</ref>
<ref id="B7">
<label>7</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Gill</surname> <given-names>RR</given-names>
</name>
<name>
<surname>Kontos</surname> <given-names>D</given-names>
</name>
</person-group>. <article-title>Deciphering lung adenocarcinoma progression through molecular insights: the challenges and potential of radiomics and machine learning</article-title>. <source>J Thorac Oncol</source>. (<year>2025</year>) <volume>20</volume>:<page-range>20&#x2013;2</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1016/j.jtho.2024.10.017</pub-id>
</citation>
</ref>
<ref id="B8">
<label>8</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Cai</surname> <given-names>X</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>P</given-names>
</name>
<name>
<surname>Zhou</surname> <given-names>H</given-names>
</name>
<name>
<surname>Guo</surname> <given-names>H</given-names>
</name>
<name>
<surname>Yang</surname> <given-names>X</given-names>
</name>
<name>
<surname>Dai</surname> <given-names>Z</given-names>
</name>
<etal/>
</person-group>. <article-title>CT-based radiomics nomogram for predicting visceral pleural invasion in peripheral T1-sized solid lung adenocarcinoma</article-title>. <source>Am J Cancer Res</source>. (<year>2023</year>) <volume>13</volume>:<page-range>5901&#x2013;13</page-range>.</citation>
</ref>
<ref id="B9">
<label>9</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Koo</surname> <given-names>JM</given-names>
</name>
<name>
<surname>Kim</surname> <given-names>J</given-names>
</name>
<name>
<surname>Lee</surname> <given-names>J</given-names>
</name>
<name>
<surname>Hwang</surname> <given-names>S</given-names>
</name>
<name>
<surname>Shim</surname> <given-names>HS</given-names>
</name>
<name>
<surname>Hong</surname> <given-names>TH</given-names>
</name>
<etal/>
</person-group>. <article-title>Deciphering the intratumoral histologic heterogeneity of lung adenocarcinoma using radiomics</article-title>. <source>Eur Radiol</source>. (<year>2025</year>). doi:&#xa0;<pub-id pub-id-type="doi">10.1007/s00330-025-11397-4</pub-id>. Epub ahead of print.</citation>
</ref>
<ref id="B10">
<label>10</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Zhang</surname> <given-names>T</given-names>
</name>
<name>
<surname>Zhang</surname> <given-names>C</given-names>
</name>
<name>
<surname>Zhong</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Sun</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>H</given-names>
</name>
<name>
<surname>Li</surname> <given-names>H</given-names>
</name>
<etal/>
</person-group>. <article-title>A radiomics nomogram for invasiveness prediction in lung adenocarcinoma manifesting as part-solid nodules with solid components smaller than 6 mm</article-title>. <source>Front Oncol</source>. (<year>2022</year>) <volume>12</volume>:<elocation-id>900049</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.3389/fonc.2022.900049</pub-id>
</citation>
</ref>
<ref id="B11">
<label>11</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Zhang</surname> <given-names>J</given-names>
</name>
<name>
<surname>Hao</surname> <given-names>L</given-names>
</name>
<name>
<surname>Li</surname> <given-names>M</given-names>
</name>
<name>
<surname>Xu</surname> <given-names>Q</given-names>
</name>
<name>
<surname>Shi</surname> <given-names>G</given-names>
</name>
</person-group>. <article-title>CT radiomics combined with clinicopathological features to predict invasive mucinous adenocarcinoma in patients with lung adenocarcinoma</article-title>. <source>Technol Cancer Res Treat</source>. (<year>2023</year>) <volume>22</volume>:<elocation-id>15330338231174306</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.1177/15330338231174306</pub-id>
</citation>
</ref>
<ref id="B12">
<label>12</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Ma</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Li</surname> <given-names>J</given-names>
</name>
<name>
<surname>Xu</surname> <given-names>X</given-names>
</name>
<name>
<surname>Zhang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Lin</surname> <given-names>Y</given-names>
</name>
</person-group>. <article-title>The CT delta-radiomics based machine learning approach in evaluating multiple primary lung adenocarcinoma</article-title>. <source>BMC Cancer</source>. (<year>2022</year>) <volume>22</volume>:<fpage>949</fpage>. doi:&#xa0;<pub-id pub-id-type="doi">10.1186/s12885-022-10036-1</pub-id>
</citation>
</ref>
<ref id="B13">
<label>13</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Perez-Johnston</surname> <given-names>R</given-names>
</name>
<name>
<surname>Araujo-Filho</surname> <given-names>JA</given-names>
</name>
<name>
<surname>Connolly</surname> <given-names>JG</given-names>
</name>
<name>
<surname>Caso</surname> <given-names>R</given-names>
</name>
<name>
<surname>Whiting</surname> <given-names>K</given-names>
</name>
<name>
<surname>Tan</surname> <given-names>KS</given-names>
</name>
<etal/>
</person-group>. <article-title>CT-based radiogenomic analysis of clinical stage I lung adenocarcinoma with histopathologic features and oncologic outcomes</article-title>. <source>Radiology</source>. (<year>2022</year>) <volume>303</volume>:<page-range>664&#x2013;72</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1148/radiol.211582</pub-id>
</citation>
</ref>
<ref id="B14">
<label>14</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Zhang</surname> <given-names>X</given-names>
</name>
<name>
<surname>Lu</surname> <given-names>B</given-names>
</name>
<name>
<surname>Yang</surname> <given-names>X</given-names>
</name>
<name>
<surname>Lan</surname> <given-names>D</given-names>
</name>
<name>
<surname>Lin</surname> <given-names>S</given-names>
</name>
<name>
<surname>Zhou</surname> <given-names>Z</given-names>
</name>
<etal/>
</person-group>. <article-title>Prognostic analysis and risk stratification of lung adenocarcinoma undergoing EGFR-TKI therapy with time-serial CT-based radiomics signature</article-title>. <source>Eur Radiol</source>. (<year>2023</year>) <volume>33</volume>:<page-range>825&#x2013;35</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1007/s00330-022-09123-5</pub-id>
</citation>
</ref>
<ref id="B15">
<label>15</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Shi</surname> <given-names>L</given-names>
</name>
<name>
<surname>Yang</surname> <given-names>M</given-names>
</name>
<name>
<surname>Yao</surname> <given-names>J</given-names>
</name>
<name>
<surname>Ni</surname> <given-names>H</given-names>
</name>
<name>
<surname>Shao</surname> <given-names>H</given-names>
</name>
<name>
<surname>Feng</surname> <given-names>W</given-names>
</name>
<etal/>
</person-group>. <article-title>Application of computed tomography-based radiomics combined with clinical factors in the diagnosis of Malignant degree of lung adenocarcinoma</article-title>. <source>J Thorac Dis</source>. (<year>2022</year>) <volume>14</volume>:<page-range>4435&#x2013;48</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.21037/jtd-22-1520</pub-id>
</citation>
</ref>
<ref id="B16">
<label>16</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Han</surname> <given-names>X</given-names>
</name>
<name>
<surname>Fan</surname> <given-names>J</given-names>
</name>
<name>
<surname>Zheng</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Ding</surname> <given-names>C</given-names>
</name>
<name>
<surname>Zhang</surname> <given-names>X</given-names>
</name>
<name>
<surname>Zhang</surname> <given-names>K</given-names>
</name>
<etal/>
</person-group>. <article-title>The value of CT-based radiomics for predicting spread through air spaces in stage IA lung adenocarcinoma</article-title>. <source>Front Oncol</source>. (<year>2022</year>) <volume>12</volume>:<elocation-id>757389</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.3389/fonc.2022.757389</pub-id>
</citation>
</ref>
<ref id="B17">
<label>17</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Xue</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>L</given-names>
</name>
<name>
<surname>Zhang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Zhao</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Liu</surname> <given-names>Y</given-names>
</name>
</person-group>. <article-title>Air pollution: A culprit of lung cancer</article-title>. <source>J Hazard Mater</source>. (<year>2022</year>) <volume>434</volume>:<elocation-id>128937</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.1016/j.jhazmat.2022.128937</pub-id>
</citation>
</ref>
<ref id="B18">
<label>18</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>West</surname> <given-names>HJ</given-names>
</name>
<name>
<surname>McCleland</surname> <given-names>M</given-names>
</name>
<name>
<surname>Cappuzzo</surname> <given-names>F</given-names>
</name>
<name>
<surname>Reck</surname> <given-names>M</given-names>
</name>
<name>
<surname>Mok</surname> <given-names>TS</given-names>
</name>
<name>
<surname>Jotte</surname> <given-names>RM</given-names>
</name>
<etal/>
</person-group>. <article-title>Clinical efficacy of atezolizumab plus bevacizumab and chemotherapy in KRAS-mutated non-small cell lung cancer with STK11, KEAP1, or TP53 comutations: subgroup results from the phase III IMpower150 trial</article-title>. <source>J Immunother Cancer</source>. (<year>2022</year>) <volume>10</volume>:<elocation-id>e003027</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.1136/jitc-2021-003027</pub-id>
</citation>
</ref>
<ref id="B19">
<label>19</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>He</surname> <given-names>J</given-names>
</name>
<name>
<surname>Huang</surname> <given-names>Z</given-names>
</name>
<name>
<surname>Han</surname> <given-names>L</given-names>
</name>
<name>
<surname>Gong</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Xie</surname> <given-names>C</given-names>
</name>
</person-group>. <article-title>Mechanisms and management of 3rd&#x2212;generation EGFR&#x2212;TKI resistance in advanced non&#x2212;small cell lung cancer (Review)</article-title>. <source>Int J Oncol</source>. (<year>2021</year>) <volume>59</volume>:<fpage>90</fpage>. doi:&#xa0;<pub-id pub-id-type="doi">10.3892/ijo.2021.5270</pub-id>
</citation>
</ref>
<ref id="B20">
<label>20</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Zuo</surname> <given-names>J</given-names>
</name>
<name>
<surname>Brewer</surname> <given-names>DS</given-names>
</name>
<name>
<surname>Arlt</surname> <given-names>VM</given-names>
</name>
<name>
<surname>Cooper</surname> <given-names>CS</given-names>
</name>
<name>
<surname>Phillips</surname> <given-names>DH</given-names>
</name>
</person-group>. <article-title>Benzo pyrene-induced DNA adducts and gene expression profiles in target and non-target organs for carcinogenesis in mice</article-title>. <source>BMC Genomics</source>. (<year>2014</year>) <volume>15</volume>:<elocation-id>880</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.1186/1471-2164-15-880</pub-id>
</citation>
</ref>
<ref id="B21">
<label>21</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Bao</surname> <given-names>J</given-names>
</name>
<name>
<surname>Liu</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Ping</surname> <given-names>X</given-names>
</name>
<name>
<surname>Zha</surname> <given-names>X</given-names>
</name>
<name>
<surname>Hu</surname> <given-names>S</given-names>
</name>
<name>
<surname>Hu</surname> <given-names>C</given-names>
</name>
</person-group>. <article-title>Preoperative Ki-67 proliferation index prediction with a radiomics nomogram in stage T1a-b lung adenocarcinoma</article-title>. <source>Eur J Radiol</source>. (<year>2022</year>) <volume>155</volume>:<elocation-id>110437</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.1016/j.ejrad.2022.110437</pub-id>
</citation>
</ref>
<ref id="B22">
<label>22</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Stapelfeld</surname> <given-names>C</given-names>
</name>
<name>
<surname>Dammann</surname> <given-names>C</given-names>
</name>
<name>
<surname>Maser</surname> <given-names>E</given-names>
</name>
</person-group>. <article-title>Sex-specificity in lung cancer risk</article-title>. <source>Int J Cancer</source>. (<year>2020</year>) <volume>146</volume>:<page-range>2376&#x2013;82</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1002/ijc.32716</pub-id>
</citation>
</ref>
<ref id="B23">
<label>23</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Yang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Tan</surname> <given-names>M</given-names>
</name>
<name>
<surname>Ma</surname> <given-names>W</given-names>
</name>
<name>
<surname>Duan</surname> <given-names>S</given-names>
</name>
<name>
<surname>Huang</surname> <given-names>X</given-names>
</name>
<name>
<surname>Jin</surname> <given-names>L</given-names>
</name>
<etal/>
</person-group>. <article-title>Preoperative prediction of the degree of differentiation of lung adenocarcinoma presenting as sub-solid or solid nodules with a radiomics nomogram</article-title>. <source>Clin Radiol</source>. (<year>2022</year>) <volume>77</volume>:<page-range>e680&#x2013;8</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1016/j.crad.2022.05.015</pub-id>
</citation>
</ref>
<ref id="B24">
<label>24</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Wang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Ding</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Liu</surname> <given-names>X</given-names>
</name>
<name>
<surname>Li</surname> <given-names>X</given-names>
</name>
<name>
<surname>Jia</surname> <given-names>X</given-names>
</name>
<name>
<surname>Li</surname> <given-names>J</given-names>
</name>
<etal/>
</person-group>. <article-title>Preoperative CT-based radiomics combined with tumour spread through air spaces can accurately predict early recurrence of stage I lung adenocarcinoma: a multicentre retrospective cohort study</article-title>. <source>Cancer Imaging</source>. (<year>2023</year>) <volume>23</volume>:<fpage>83</fpage>. doi:&#xa0;<pub-id pub-id-type="doi">10.1186/s40644-023-00605-3</pub-id>
</citation>
</ref>
<ref id="B25">
<label>25</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Prior</surname> <given-names>O</given-names>
</name>
<name>
<surname>Macarro</surname> <given-names>C</given-names>
</name>
<name>
<surname>Navarro</surname> <given-names>V</given-names>
</name>
<name>
<surname>Monreal</surname> <given-names>C</given-names>
</name>
<name>
<surname>Ligero</surname> <given-names>M</given-names>
</name>
<name>
<surname>Garcia-Ruiz</surname> <given-names>A</given-names>
</name>
<etal/>
</person-group>. <article-title>Identification of precise 3D CT radiomics for habitat computation by machine learning in cancer</article-title>. <source>Radiol Artif Intell</source>. (<year>2024</year>) <volume>6</volume>:<elocation-id>e230118</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.1148/ryai.230118</pub-id>
</citation>
</ref>
<ref id="B26">
<label>26</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Huang</surname> <given-names>H</given-names>
</name>
<name>
<surname>Chen</surname> <given-names>H</given-names>
</name>
<name>
<surname>Zheng</surname> <given-names>D</given-names>
</name>
<name>
<surname>Chen</surname> <given-names>C</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Xu</surname> <given-names>L</given-names>
</name>
<etal/>
</person-group>. <article-title>Habitat-based radiomics analysis for evaluating immediate response in colorectal cancer lung metastases treated by radiofrequency ablation</article-title>. <source>Cancer Imaging</source>. (<year>2024</year>) <volume>24</volume>:<elocation-id>44</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.1186/s40644-024-00692-w</pub-id>
</citation>
</ref>
<ref id="B27">
<label>27</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Sujit</surname> <given-names>SJ</given-names>
</name>
<name>
<surname>Aminu</surname> <given-names>M</given-names>
</name>
<name>
<surname>Karpinets</surname> <given-names>TV</given-names>
</name>
<name>
<surname>Chen</surname> <given-names>P</given-names>
</name>
<name>
<surname>Saad</surname> <given-names>MB</given-names>
</name>
<name>
<surname>Salehjahromi</surname> <given-names>M</given-names>
</name>
<etal/>
</person-group>. <article-title>Enhancing NSCLC recurrence prediction with PET/CT habitat imaging, ctDNA, and integrative radiogenomics-blood insights</article-title>. <source>Nat Commun</source>. (<year>2024</year>) <volume>15</volume>:<fpage>3152</fpage>. doi:&#xa0;<pub-id pub-id-type="doi">10.1038/s41467-024-47512-0</pub-id>
</citation>
</ref>
<ref id="B28">
<label>28</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Zuo</surname> <given-names>W</given-names>
</name>
<name>
<surname>Li</surname> <given-names>J</given-names>
</name>
<name>
<surname>Zuo</surname> <given-names>M</given-names>
</name>
<name>
<surname>Li</surname> <given-names>M</given-names>
</name>
<name>
<surname>Zhou</surname> <given-names>S</given-names>
</name>
<name>
<surname>Cai</surname> <given-names>X</given-names>
</name>
</person-group>. <article-title>Prediction of the benign and Malignant nature of masses in COPD background based on Habitat-based enhanced CT radiomics modeling: A preliminary study</article-title>. <source>Technol Health Care</source>. (<year>2024</year>) <volume>32</volume>:<page-range>2769&#x2013;81</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.3233/THC-231980</pub-id>
</citation>
</ref>
<ref id="B29">
<label>29</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Caii</surname> <given-names>W</given-names>
</name>
<name>
<surname>Wu</surname> <given-names>X</given-names>
</name>
<name>
<surname>Guo</surname> <given-names>K</given-names>
</name>
<name>
<surname>Chen</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Shi</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Chen</surname> <given-names>J</given-names>
</name>
</person-group>. <article-title>Integration of deep learning and habitat radiomics for predicting the response to immunotherapy in NSCLC patients</article-title>. <source>Cancer Immunol Immunother</source>. (<year>2024</year>) <volume>73</volume>:<fpage>153</fpage>. doi:&#xa0;<pub-id pub-id-type="doi">10.1007/s00262-024-03724-3</pub-id>
</citation>
</ref>
<ref id="B30">
<label>30</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Qi</surname> <given-names>H</given-names>
</name>
<name>
<surname>Hou</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Zheng</surname> <given-names>Z</given-names>
</name>
<name>
<surname>Zheng</surname> <given-names>M</given-names>
</name>
<name>
<surname>Qiao</surname> <given-names>Q</given-names>
</name>
<name>
<surname>Wang</surname> <given-names>Z</given-names>
</name>
<etal/>
</person-group>. <article-title>Clinical characteristics and MRI based radiomics nomograms can predict iPFS and short-term efficacy of third-generation EGFR-TKI in EGFR-mutated lung adenocarcinoma with brain metastases</article-title>. <source>BMC Cancer</source>. (<year>2024</year>) <volume>24</volume>:<fpage>362</fpage>. doi:&#xa0;<pub-id pub-id-type="doi">10.1186/s12885-024-12121-z</pub-id>
</citation>
</ref>
<ref id="B31">
<label>31</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Cui</surname> <given-names>N</given-names>
</name>
<name>
<surname>Li</surname> <given-names>J</given-names>
</name>
<name>
<surname>Jiang</surname> <given-names>Z</given-names>
</name>
<name>
<surname>Long</surname> <given-names>Z</given-names>
</name>
<name>
<surname>Liu</surname> <given-names>W</given-names>
</name>
<name>
<surname>Yao</surname> <given-names>H</given-names>
</name>
<etal/>
</person-group>. <article-title>Development and validation of 18F-FDG PET/CT radiomics-based nomogram to predict visceral pleural invasion in solid lung adenocarcinoma</article-title>. <source>Ann Nucl Med</source>. (<year>2023</year>) <volume>37</volume>:<page-range>605&#x2013;17</page-range>. doi:&#xa0;<pub-id pub-id-type="doi">10.1007/s12149-023-01861-w</pub-id>
</citation>
</ref>
<ref id="B32">
<label>32</label>
<citation citation-type="journal">
<person-group person-group-type="author">
<name>
<surname>Zhang</surname> <given-names>YJ</given-names>
</name>
<name>
<surname>Ren</surname> <given-names>Y</given-names>
</name>
<name>
<surname>Zheng</surname> <given-names>Q</given-names>
</name>
<name>
<surname>Tan</surname> <given-names>J</given-names>
</name>
<name>
<surname>Yao</surname> <given-names>MH</given-names>
</name>
<name>
<surname>Huang</surname> <given-names>YX</given-names>
</name>
<etal/>
</person-group>. <article-title>The impact of national centralized drug procurement on health expenditures for lung cancer inpatients: A difference-in-differences analysis in a large tertiary hospital in China</article-title>. <source>Front Public Health</source>. (<year>2022</year>) <volume>10</volume>:<elocation-id>956823</elocation-id>. doi:&#xa0;<pub-id pub-id-type="doi">10.3389/fpubh.2022.956823</pub-id>
</citation>
</ref>
</ref-list>
</back>
</article>