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A pathology foundation model for cancer diagnosis and prognosis prediction

Authors :
Wang, Xiyue
Zhao, Junhan
Marostica, Eliana
Yuan, Wei
Jin, Jietian
Zhang, Jiayu
Li, Ruijiang
Tang, Hongping
Wang, Kanran
Li, Yu
Wang, Fang
Peng, Yulong
Zhu, Junyou
Zhang, Jing
Jackson, Christopher R.
Zhang, Jun
Dillon, Deborah
Lin, Nancy U.
Sholl, Lynette
Denize, Thomas
Meredith, David
Ligon, Keith L.
Signoretti, Sabina
Ogino, Shuji
Golden, Jeffrey A.
Nasrallah, MacLean P.
Han, Xiao
Yang, Sen
Yu, Kun-Hsing
Source :
Nature; October 2024, Vol. 634 Issue: 8035 p970-978, 9p
Publication Year :
2024

Abstract

Histopathology image evaluation is indispensable for cancer diagnoses and subtype classification. Standard artificial intelligence methods for histopathology image analyses have focused on optimizing specialized models for each diagnostic task1,2. Although such methods have achieved some success, they often have limited generalizability to images generated by different digitization protocols or samples collected from different populations3. Here, to address this challenge, we devised the Clinical Histopathology Imaging Evaluation Foundation (CHIEF) model, a general-purpose weakly supervised machine learning framework to extract pathology imaging features for systematic cancer evaluation. CHIEF leverages two complementary pretraining methods to extract diverse pathology representations: unsupervised pretraining for tile-level feature identification and weakly supervised pretraining for whole-slide pattern recognition. We developed CHIEF using 60,530 whole-slide images spanning 19 anatomical sites. Through pretraining on 44 terabytes of high-resolution pathology imaging datasets, CHIEF extracted microscopic representations useful for cancer cell detection, tumour origin identification, molecular profile characterization and prognostic prediction. We successfully validated CHIEF using 19,491 whole-slide images from 32 independent slide sets collected from 24 hospitals and cohorts internationally. Overall, CHIEF outperformed the state-of-the-art deep learning methods by up to 36.1%, showing its ability to address domain shifts observed in samples from diverse populations and processed by different slide preparation methods. CHIEF provides a generalizable foundation for efficient digital pathology evaluation for patients with cancer.

Details

Language :
English
ISSN :
00280836 and 14764687
Volume :
634
Issue :
8035
Database :
Supplemental Index
Journal :
Nature
Publication Type :
Periodical
Accession number :
ejs67325036
Full Text :
https://doi.org/10.1038/s41586-024-07894-z