Journal ArticleOpen Access
Hypothesis‐free deep survival learning applied to the tumour microenvironment in gastric cancer
Authors
Author Affiliations
Ministerio de Defensa, Maastricht University, University of Leeds, St James's University Hospital, ...
Published InThe Journal of Pathology Clinical Research
Year2020
Citations44
Abstract
The biological complexity reflected in histology images requires advanced approaches for unbiased prognostication. Machine learning and particularly deep learning methods are increasingly applied in the field of digital pathology. In this study, we propose new ways to predict risk for cancer-specific death from digital images of immunohistochemically (IHC) stained tissue microarrays (TMAs). Specifically, we evaluated a cohort of 248 gastric cancer patients using convolutional neural networks (CNNs) in an end-to-end weakly supervised scheme independent of subjective pathologist input. To account for the time-to-event characteristic of the outcome data, we developed new survival models to guide the network training. In addition to the standard H&E staining, we investigated the prognostic value of a panel of immune cell markers (CD8, CD20, CD68)…
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