Machine learning predicts liver cancer risk from routine clinical data: a large population-based multicentric study
Jan Clusmann,
Paul-Henry Koop,
David Y. Zhang
et al.
Abstract:Background and aims: Hepatocellular carcinoma (HCC) is a highly fatal tumor, for which early detection and risk stratification is crucial, yet remains challenging. We aimed to develop an interpretable machine-learning framework for HCC risk stratification based on routinely collected clinical data. Methods: We leverage data obtained from over 900,000 individuals and 983 cases of HCC across two large-scale population-based cohorts: the UK Biobank study and the "All Of Us Research Program". For all of these pati… Show more
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