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Foundation Model for Predicting Prognosis and Adjuvant Therapy Benefit From Digital Pathology in GI Cancers
17
Zitationen
19
Autoren
2025
Jahr
Abstract
PURPOSE: Artificial intelligence (AI) holds significant promise for improving cancer diagnosis and treatment. Here, we present a foundation AI model for prognosis prediction on the basis of standard hematoxylin and eosin-stained histopathology slides. METHODS: In this multinational cohort study, we developed AI models to predict prognosis from histopathology images of patients with GI cancers. First, we trained a foundation model using over 130 million patches from 104,876 whole-slide images on the basis of self-supervised learning. Second, we fine-tuned deep learning models for predicting survival outcomes and validated them across seven cohorts, including 1,619 patients with gastric and esophageal cancers and 2,594 patients with colorectal cancer. We further assessed the model for predicting survival benefit from adjuvant chemotherapy. RESULTS: = .01 and .006) for stage II/III gastric and colorectal cancer, respectively. CONCLUSION: The pathology foundation model can accurately predict survival outcomes and complement clinicopathologic factors in GI cancers. Pending prospective validation, it may be used to improve risk stratification and inform personalized adjuvant therapy.
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Autoren
Institutionen
- Stanford University(US)
- Wake Forest University(US)
- Qingdao University(CN)
- Yuhuangding Hospital(CN)
- Sun Yat-sen University(CN)
- Sun Yat-sen University Cancer Center(CN)
- Sichuan University(CN)
- West China Hospital of Sichuan University(CN)
- Fresenius (Germany)(DE)
- Harvard University(US)
- The University of Sydney(AU)
- UNSW Sydney(AU)
- Nanfang Hospital(CN)
- Beijing Tsinghua Chang Gung Hospital(CN)
- Southern Medical University(CN)
- Tsinghua University(CN)