计算机科学
人工智能
RNA序列
微卫星不稳定性
深度学习
鉴定(生物学)
注释
计算生物学
转录组
模式识别(心理学)
基因表达
机器学习
基因
生物
微卫星
遗传学
植物
等位基因
作者
Benoît Schmauch,Alberto Romagnoni,Elodie Pronier,Charlie Saillard,Pascale Maillé,Julien Caldéraro,Aurélie Kamoun,Meriem Sefta,Sylvain Toldo,Mikhail Zaslavskiy,Thomas Clozel,Matahi Moarii,Pierre Courtiol,Gilles Wainrib
标识
DOI:10.1038/s41467-020-17678-4
摘要
Deep learning methods for digital pathology analysis are an effective way to address multiple clinical questions, from diagnosis to prediction of treatment outcomes. These methods have also been used to predict gene mutations from pathology images, but no comprehensive evaluation of their potential for extracting molecular features from histology slides has yet been performed. We show that HE2RNA, a model based on the integration of multiple data modes, can be trained to systematically predict RNA-Seq profiles from whole-slide images alone, without expert annotation. Through its interpretable design, HE2RNA provides virtual spatialization of gene expression, as validated by CD3- and CD20-staining on an independent dataset. The transcriptomic representation learned by HE2RNA can also be transferred on other datasets, even of small size, to increase prediction performance for specific molecular phenotypes. We illustrate the use of this approach in clinical diagnosis purposes such as the identification of tumors with microsatellite instability.
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