AUTHOR=Yao Hui , Yang Mengxue , Jiang Xin , Jia Hao , Sun Tao , Li Molin , Wang Taiping , Tang Xuefeng TITLE=Research on the application of a multi-model cascaded deep learning framework in the pathological diagnosis of osteosarcoma JOURNAL=Oncology Reviews VOLUME=Volume 19 - 2025 YEAR=2025 URL=https://www.frontiersin.org/journals/oncology-reviews/articles/10.3389/or.2025.1592408 DOI=10.3389/or.2025.1592408 ISSN=1970-5557 ABSTRACT=IntroductionOsteosarcoma is the most common malignant tumor of bone tissue in adolescents, and precise pathological diagnosis is the primary foundation for establishing the most effective treatment plan. The pathological evaluation of tumor necrosis after chemotherapy is crucial for assessing therapeutic efficacy in osteosarcoma patients. However, pathologists often face several challenges during the diagnosis and evaluation process.MethodsTo address these needs, we designed and developed a multi-model cascaded deep learning framework utilizing an advanced Vision Mamba (ViM) model as the core network architecture. The study employed one of the most comprehensive osteosarcoma datasets, sourced from: (1) real-world data from 68 osteosarcoma patients collected at Chongqing General Hospital, and (2) publicly available osteosarcoma assessment data from the University of Texas Southwestern/UT Dallas. Pathological images were annotated using the Palgo pathology image artificial intelligence self-training platform according to algorithm requirements. A triple verification mechanism of annotation, review, and archiving was implemented, and Palgo’s integrated interactive algorithm correction mechanism was used to continuously refine the data annotation process.Results and DiscussionThe model demonstrated Dice coefficient values of 0.83 or higher in tumor segmentation, osteosarcoma osteoid matrix segmentation, necrotic area segmentation, lung metastatic tumor segmentation, and lung metastatic osteoid matrix segmentation. For necrosis classification, overall osteosarcoma subtypes, and localized osteosarcoma subtypes, the area under the receiver operating characteristics curve (AUC), sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) all exceeded 90%. The proposed model exhibited excellent performance, indicating high potential for future clinical application in osteosarcoma patients. This framework shows promise for enhancing the precision and efficiency of pathological diagnosis and evaluation in osteosarcoma management.