Author:
Wang Yuxing,Wang Wenguan,Liu Dongfang,Hou Wenpin,Zhou Tianfei,Ji Zhicheng
Abstract
AbstractWhen analyzing data from in situ RNA detection technologies, cell segmentation is an essential step in identifying cell boundaries, assigning RNA reads to cells, and studying the gene expression and morphological features of cells. We developed a deep-learning-based method, GeneSegNet, that integrates both gene expression and imaging information to perform cell segmentation. GeneSegNet also employs a recursive training strategy to deal with noisy training labels. We show that GeneSegNet significantly improves cell segmentation performances over existing methods that either ignore gene expression information or underutilize imaging information.
Funder
School of Medicine, Duke University
Publisher
Springer Science and Business Media LLC
Cited by
18 articles.
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