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Prediction of the risk of developing hepatocellular carcinoma in health screening examinees: a Korean cohort study

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저자
Chansik An ; Jong Won Choi ; Hyung Soon Lee ; Hyunsun Lim ; Seok Jong Ryu ; Jung Hyun Chang ; Hyun Cheol Oh
키워드 (영문)
big datamachine learningliver neoplasmsprecision medicine
발행연도
2021-06
발행기관
BioMed Central
유형
Article
초록
BackgroundAlmost all Koreans are covered by mandatory national health insurance and are required to undergo health screening at least once every 2 years. We aimed to develop a machine learning model to predict the risk of developing hepatocellular carcinoma (HCC) based on the screening results and insurance claim data. MethodsThe National Health Insurance Service-National Health Screening database was used for this study (NHIS-2020-2-146). Our study cohort consisted of 417,346 health screening examinees between 2004 and 2007 without cancer history, which was split into training and test cohorts by the examination date, before or after 2005. Robust predictors were selected using Cox proportional hazard regression with 1000 different bootstrapped datasets. Random forest and extreme gradient boosting algorithms were used to develop a prediction model for the 9-year risk of HCC development after screening. After optimizing a prediction model via cross validation in the training cohort, the model was validated in the test cohort. ResultsOf the total examinees, 0.5% (1799/331,694) and 0.4% (390/85,652) in the training cohort and the test cohort were diagnosed with HCC, respectively. Of the selected predictors, older age, male sex, obesity, abnormal liver function tests, the family history of chronic liver disease, and underlying chronic liver disease, chronic hepatitis virus or human immunodeficiency virus infection, and diabetes mellitus were associated with increased risk, whereas higher income, elevated total cholesterol, and underlying dyslipidemia or schizophrenic/delusional disorders were associated with decreased risk of HCC development (p < 0.001). In the test, our model showed good discrimination and calibration. The C-index, AUC, and Brier skill score were 0.857, 0.873, and 0.078, respectively. ConclusionsMachine learning-based model could be used to predict the risk of HCC development based on the health screening examination results and claim data.
저널명
BMC Cancer
저널정보
(2021-06). BMC Cancer, Vol.21(1), 755–755
ISSN
1471-2407
DOI
10.1186/s12885-021-08498-w
연구주제분류:
NHIMC 학술성과 > 1. 학술논문
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