肿瘤微环境
间质细胞
病理
腺癌
数字化病理学
肺癌
H&E染色
生物
基质
癌症
肺腺癌
免疫组织化学
癌症研究
医学
遗传学
作者
Shidan Wang,Ruichen Rong,Donghan M. Yang,Junya Fujimoto,Shirley Yan,Ling Cai,Lin Yang,Danni Luo,Carmen Behrens,Edwin R. Parra,Bo Yao,Lin Xu,Tao Wang,Xiaowei Zhan,Ignacio I. Wistuba,John D. Minna,Yang Xie,Guanghua Xiao
出处
期刊:Cancer Research
[American Association for Cancer Research]
日期:2020-01-08
卷期号:80 (10): 2056-2066
被引量:132
标识
DOI:10.1158/0008-5472.can-19-1629
摘要
Abstract The spatial organization of different types of cells in tumor tissues reveals important information about the tumor microenvironment (TME). To facilitate the study of cellular spatial organization and interactions, we developed Histology-based Digital-Staining, a deep learning-based computation model, to segment the nuclei of tumor, stroma, lymphocyte, macrophage, karyorrhexis, and red blood cells from standard hematoxylin and eosin–stained pathology images in lung adenocarcinoma. Using this tool, we identified and classified cell nuclei and extracted 48 cell spatial organization-related features that characterize the TME. Using these features, we developed a prognostic model from the National Lung Screening Trial dataset, and independently validated the model in The Cancer Genome Atlas lung adenocarcinoma dataset, in which the predicted high-risk group showed significantly worse survival than the low-risk group (P = 0.001), with a HR of 2.23 (1.37–3.65) after adjusting for clinical variables. Furthermore, the image-derived TME features significantly correlated with the gene expression of biological pathways. For example, transcriptional activation of both the T-cell receptor and programmed cell death protein 1 pathways positively correlated with the density of detected lymphocytes in tumor tissues, while expression of the extracellular matrix organization pathway positively correlated with the density of stromal cells. In summary, we demonstrate that the spatial organization of different cell types is predictive of patient survival and associated with the gene expression of biological pathways. Significance: These findings present a deep learning-based analysis tool to study the TME in pathology images and demonstrate that the cell spatial organization is predictive of patient survival and is associated with gene expression. See related commentary by Rodriguez-Antolin, p. 1912
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