Development and interpretation of a pathomics-based model for the prediction of microsatellite instability in Colorectal Cancer

Rui Cao(Nanfang Hospital), Fan Yang(Tencent (China)), Si-Cong Ma(Nanfang Hospital), Li Liu(Southern Medical University), Yu Zhao(Tencent (China)), Yan Li(Huazhong University of Science and Technology), Dehua Wu(Nanfang Hospital), Tongxin Wang(Indiana University Bloomington), Weijia Lu(Tencent (China)), Weijing Cai, Hongbo Zhu(Southern Medical University), Xue‐Jun Guo(Nanfang Hospital), Yuwen Lu(Southern Medical University), Junjie Kuang(Nanfang Hospital), Wenjing Huan(Tencent Healthcare (China)), Weimin Tang(Tencent Healthcare (China)), Kun Huang(Indiana University School of Medicine), Junzhou Huang(Tencent (China)), Jianhua Yao(Tencent (China)), Zhong‐Yi Dong(Nanfang Hospital)
Theranostics
January 1, 2020
Cited by 256Open Access
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Abstract

Microsatellite instability (MSI) has been approved as a pan-cancer biomarker for immune checkpoint blockade (ICB) therapy. However, current MSI identification methods are not available for all patients. We proposed an ensemble multiple instance deep learning model to predict microsatellite status based on histopathology images, and interpreted the pathomics-based model with multi-omics correlation. Methods: Two cohorts of patients were collected, including 429 from The Cancer Genome Atlas (TCGA-COAD) and 785 from an Asian colorectal cancer (CRC) cohort (Asian-CRC). We established the pathomics model, named Ensembled Patch Likelihood Aggregation (EPLA), based on two consecutive stages: patch-level prediction and WSI-level prediction. The initial model was developed and validated in TCGA-COAD, and then generalized in Asian-CRC through transfer learning. The pathological signatures extracted from the model were analyzed with genomic and transcriptomic profiles for model interpretation.


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