结直肠癌
组学
组织病理学
医学
病理
癌症
生物信息学
计算生物学
内科学
生物
作者
Pei-Chen Tsai,Tsung-Hua Lee,Kun-Chi Kuo,Fang-Yi Su,Michael T. Lee,Eliana Marostica,Tomotaka Ugai,Melissa Zhao,Mai Chan Lau,Juha P. Väyrynen,Marios Giannakis,Yasutoshi Takashima,Seyed Mousavi Kahaki,Kana Wu,Mingyang Song,Jeffrey A. Meyerhardt,Andrew T. Chan,Jung-Hsien Chiang,Jonathan A. Nowak,Shuji Ogino
标识
DOI:10.1038/s41467-023-37179-4
摘要
Histopathologic assessment is indispensable for diagnosing colorectal cancer (CRC). However, manual evaluation of the diseased tissues under the microscope cannot reliably inform patient prognosis or genomic variations crucial for treatment selections. To address these challenges, we develop the Multi-omics Multi-cohort Assessment (MOMA) platform, an explainable machine learning approach, to systematically identify and interpret the relationship between patients' histologic patterns, multi-omics, and clinical profiles in three large patient cohorts (n = 1888). MOMA successfully predicts the overall survival, disease-free survival (log-rank test P-value<0.05), and copy number alterations of CRC patients. In addition, our approaches identify interpretable pathology patterns predictive of gene expression profiles, microsatellite instability status, and clinically actionable genetic alterations. We show that MOMA models are generalizable to multiple patient populations with different demographic compositions and pathology images collected from distinctive digitization methods. Our machine learning approaches provide clinically actionable predictions that could inform treatments for colorectal cancer patients.
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