| Literature DB >> 35982331 |
Yongju Lee1, Jeong Hwan Park2,3, Sohee Oh4, Kyoungseob Shin1, Jiyu Sun4, Minsun Jung2,5, Cheol Lee2,6, Hyojin Kim2,7, Jin-Haeng Chung2,7, Kyung Chul Moon8,9, Sunghoon Kwon10,11,12,13,14,15.
Abstract
Methods of computational pathology applied to the analysis of whole-slide images (WSIs) do not typically consider histopathological features from the tumour microenvironment. Here, we show that a graph deep neural network that considers such contextual features in gigapixel-sized WSIs in a semi-supervised manner can provide interpretable prognostic biomarkers. We designed a neural-network model that leverages attention techniques to learn features of the heterogeneous tumour microenvironment from memory-efficient representations of aggregates of highly correlated image patches. We trained the model with WSIs of kidney, breast, lung and uterine cancers and validated it by predicting the prognosis of 3,950 patients with these four different types of cancer. We also show that the model provides interpretable contextual features of clear cell renal cell carcinoma that allowed for the risk-based retrospective stratification of 1,333 patients. Deep graph neural networks that derive contextual histopathological features from WSIs may aid diagnostic and prognostic tasks.Entities:
Year: 2022 PMID: 35982331 DOI: 10.1038/s41551-022-00923-0
Source DB: PubMed Journal: Nat Biomed Eng ISSN: 2157-846X Impact factor: 29.234