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Novel machine learning models outperform risk scores in predicting hepatocellular carcinoma in patients with chronic viral hepatitis

Authors
 Grace Lai-Hung Wong  ;  Vicki Wing-Ki Hui  ;  Qingxiong Tan  ;  Jingwen Xu  ;  Hye Won Lee  ;  Terry Cheuk-Fung Yip  ;  Baoyao Yang  ;  Yee-Kit Tse  ;  Chong Yin  ;  Fei Lyu  ;  Jimmy Che-To Lai  ;  Grace Chung-Yan Lui  ;  Henry Lik-Yuen Chan  ;  Pong-Chi Yuen  ;  Vincent Wai-Sun Wong 
Citation
 JHEP REPORTS, Vol.4(3) : 100441, 2022-03 
Journal Title
JHEP REPORTS
Issue Date
2022-03
Keywords
Antiviral treatment ; Cirrhosis ; Liver cancer ; Mortality ; World Health Organization
Abstract
Background & aims: Accurate hepatocellular carcinoma (HCC) risk prediction facilitates appropriate surveillance strategy and reduces cancer mortality. We aimed to derive and validate novel machine learning models to predict HCC in a territory-wide cohort of patients with chronic viral hepatitis (CVH) using data from the Hospital Authority Data Collaboration Lab (HADCL).

Methods: This was a territory-wide, retrospective, observational, cohort study of patients with CVH in Hong Kong in 2000-2018 identified from HADCL based on viral markers, diagnosis codes, and antiviral treatment for chronic hepatitis B and/or C. The cohort was randomly split into training and validation cohorts in a 7:3 ratio. Five popular machine learning methods, namely, logistic regression, ridge regression, AdaBoost, decision tree, and random forest, were performed and compared to find the best prediction model.

Results: A total of 124,006 patients with CVH with complete data were included to build the models. In the training cohort (n = 86,804; 6,821 HCC), ridge regression (area under the receiver operating characteristic curve [AUROC] 0.842), decision tree (0.952), and random forest (0.992) performed the best. In the validation cohort (n = 37,202; 2,875 HCC), ridge regression (AUROC 0.844) and random forest (0.837) maintained their accuracy, which was significantly higher than those of HCC risk scores: CU-HCC (0.672), GAG-HCC (0.745), REACH-B (0.671), PAGE-B (0.748), and REAL-B (0.712) scores. The low cut-off (0.07) of HCC ridge score (HCC-RS) achieved 90.0% sensitivity and 98.6% negative predictive value (NPV) in the validation cohort. The high cut-off (0.15) of HCC-RS achieved high specificity (90.0%) and NPV (95.6%); 31.1% of patients remained indeterminate.

Conclusions: HCC-RS from the ridge regression machine learning model accurately predicted HCC in patients with CVH. These machine learning models may be developed as built-in functional keys or calculators in electronic health systems to reduce cancer mortality.

Lay summary: Novel machine learning models generated accurate risk scores for hepatocellular carcinoma (HCC) in patients with chronic viral hepatitis. HCC ridge score was consistently more accurate than existing HCC risk scores. These models may be incorporated into electronic medical health systems to develop appropriate cancer surveillance strategies and reduce cancer death.
Files in This Item:
T202204761.pdf Download
DOI
10.1016/j.jhepr.2022.100441
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Internal Medicine (내과학교실) > 1. Journal Papers
Yonsei Authors
Lee, Hye Won(이혜원) ORCID logo https://orcid.org/0000-0002-3552-3560
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/191291
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