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Computational pathology in precision oncology: Evolution from task-specific models to foundation models

Computational pathology in precision oncology: Evolution from task-specific models to foundation models

摘要With the rapid development of artificial intelligence, computational pathology has been seamlessly integrated into the entire clinical workflow, which encompasses diagnosis, treatment, prognosis, and biomarker discovery. This integration has significantly enhanced clinical accuracy and efficiency while reducing the workload for clinicians. Traditionally, research in this field has depended on the collection and labeling of large datasets for specific tasks, followed by the development of task-specific computational pathology models. However, this approach is labor intensive and does not scale efficiently for open-set identification or rare diseases. Given the diversity of clinical tasks, training individual models from scratch to address the whole spectrum of clinical tasks in the pathology workflow is impractical, which highlights the urgent need to transition from task-specific models to foundation models (FMs). In recent years, pathological FMs have proliferated. These FMs can be classified into three categories, namely, pathology image FMs, pathology image-text FMs, and pathology image-gene FMs, each of which results in distinct functionalities and application scenarios. This review provides an overview of the latest research advancements in pathological FMs, with a particular emphasis on their applications in oncology. The key challenges and opportunities presented by pathological FMs in precision oncology are also explored.

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abstractsWith the rapid development of artificial intelligence, computational pathology has been seamlessly integrated into the entire clinical workflow, which encompasses diagnosis, treatment, prognosis, and biomarker discovery. This integration has significantly enhanced clinical accuracy and efficiency while reducing the workload for clinicians. Traditionally, research in this field has depended on the collection and labeling of large datasets for specific tasks, followed by the development of task-specific computational pathology models. However, this approach is labor intensive and does not scale efficiently for open-set identification or rare diseases. Given the diversity of clinical tasks, training individual models from scratch to address the whole spectrum of clinical tasks in the pathology workflow is impractical, which highlights the urgent need to transition from task-specific models to foundation models (FMs). In recent years, pathological FMs have proliferated. These FMs can be classified into three categories, namely, pathology image FMs, pathology image-text FMs, and pathology image-gene FMs, each of which results in distinct functionalities and application scenarios. This review provides an overview of the latest research advancements in pathological FMs, with a particular emphasis on their applications in oncology. The key challenges and opportunities presented by pathological FMs in precision oncology are also explored.

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作者 Wang Yuhao [1] Gu Yunjie [1] Zhang Xueyuan [2] Wang Baizhi [1] Wang Rundong [1] Li Xiaolong [1] Liu Yudong [3] Qu Fengmei [4] Ren Fei [3] Yan Rui [1] Zhou S. Kevin [1] 学术成果认领
作者单位 School of Biomedical Engineering, Division of Life Sciences and Medicine, University of Science and Technology of China, Anhui, Hefei 230026, China [1] Chongqing Zhijian Life Technology Co., Ltd., Chongqing 400039, China [2] State Key Lab of Processors, Institute of Computing Technology, CAS, Beijing 100190, China [3] Jinfeng Laboratory, Chongqing 401329, China [4]
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DOI 10.1097/CM9.0000000000003790
发布时间 2026-03-17(万方平台首次上网日期,不代表论文的发表时间)
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中华医学杂志英文版

中华医学杂志英文版

2025年138卷22期

2868-2878页

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