计算机科学
人工智能
亚型
细胞角蛋白
病理
H&E染色
免疫染色
翻译(生物学)
概化理论
深度学习
模式识别(心理学)
染色
免疫组织化学
医学
生物
信使核糖核酸
数学
基因
统计
生物化学
程序设计语言
作者
Erik Burlingame,Mary McDonnell,Geoffrey Schau,Guillaume Thibault,Christian Lanciault,Terry K. Morgan,Brett Johnson,Christopher L. Corless,Joe W. Gray,Young Hwan Chang
标识
DOI:10.1038/s41598-020-74500-3
摘要
Abstract Spatially-resolved molecular profiling by immunostaining tissue sections is a key feature in cancer diagnosis, subtyping, and treatment, where it complements routine histopathological evaluation by clarifying tumor phenotypes. In this work, we present a deep learning-based method called speedy histological-to-immunofluorescent translation (SHIFT) which takes histologic images of hematoxylin and eosin (H&E)-stained tissue as input, then in near-real time returns inferred virtual immunofluorescence (IF) images that estimate the underlying distribution of the tumor cell marker pan-cytokeratin (panCK). To build a dataset suitable for learning this task, we developed a serial staining protocol which allows IF and H&E images from the same tissue to be spatially registered. We show that deep learning-extracted morphological feature representations of histological images can guide representative sample selection, which improved SHIFT generalizability in a small but heterogenous set of human pancreatic cancer samples. With validation in larger cohorts, SHIFT could serve as an efficient preliminary, auxiliary, or substitute for panCK IF by delivering virtual panCK IF images for a fraction of the cost and in a fraction of the time required by traditional IF.
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