肝细胞癌
医学
逻辑回归
放射基因组学
无线电技术
肿瘤科
活检
放射科
内科学
作者
Tuyana Boldanova,Geoffrey Fucile,Jan Vosshenrich,Aleksei Suslov,Caner Ercan,Mairene Coto‐Llerena,Luigi Terracciano,Christoph J. Zech,Daniel T. Boll,Stefan Wieland,Markus H. Heim
标识
DOI:10.1016/j.xcrm.2021.100444
摘要
Although transarterial chemoembolization (TACE) is the most widely used treatment for intermediate-stage, unresectable hepatocellular carcinoma (HCC), it is only effective in a subset of patients. In this study, we combine clinical, radiological, and genomics data in supervised machine-learning models toward the development of a clinically applicable predictive classifier of response to TACE in HCC patients. Our study consists of a discovery cohort of 33 tumors through which we identify predictive biomarkers, which are confirmed in a validation cohort. We find that radiological assessment of tumor area and several transcriptomic signatures, primarily the expression of FAM111B and HPRT1, are most predictive of response to TACE. Logistic regression decision support models consisting of tumor area and RNA-seq gene expression estimates for FAM111B and HPRT1 yield a predictive accuracy of ∼90%. Reverse transcription droplet digital PCR (RT-ddPCR) confirms these genes in combination with tumor area as a predictive classifier for response to TACE.
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