Spatial transcriptome reveals histology-correlated immune signature learnt by deep learning attention mechanism on H&E–stained images for ovarian cancer prognosis
Chun Wai Ng,
Kwong-Kwok Wong,
Berrett C. Lawson
et al.
Abstract:Background: The ability to predict the prognosis of patients with ovarian cancer can greatly improve disease management. However, the knowledge on the mechanism of the prediction is limited. We sought to deconvolute the attention feature learnt by a deep learning convolutional neural networks trained with whole-slide images (WSIs) of hematoxylin-and-eosin (H&E)–stained tumor samples using spatial transcriptomic data.
Methods: In this study, 773 WSIs of H&E–stained tumor sections from 335 patients with… Show more
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