恩替卡韦
肝细胞癌
逻辑回归
医学
接收机工作特性
机器学习
随机森林
人工智能
肝硬化
乙型肝炎病毒
慢性肝炎
算法
内科学
乙型肝炎
肿瘤科
计算机科学
免疫学
病毒
拉米夫定
作者
Yeonjung Ha,Seung‐Seok Lee,Jihye Lim,KJ Lee,Young Eun Chon,Joo Ho Lee,Kwan Sik Lee,Kang Mo Kim,Ju Hyun Shim,Danbi Lee,Dong Keon Yon,Jinseok Lee,Han Chu Lee
摘要
ABSTRACT Background and Aims This study aims to develop and validate a machine learning (ML) model predicting hepatocellular carcinoma (HCC) in chronic hepatitis B (CHB) patients after the first 5 years of entecavir (ETV) or tenofovir (TFV) therapy. Methods CHB patients treated with ETV/TFV for > 5 years and not diagnosed with HCC during the first 5 years of therapy were selected from two hospitals. We used 36 variables, including baseline characteristics (age, sex, cirrhosis, and type of antiviral agent) and laboratory values (at baseline, at 5 years, and changes between 5 years) for model development. Five machine learning algorithms were applied to the training dataset and internally validated using a test dataset. External validation was performed. Results In years 5–15, a total of 279/5908 (4.7%) and 25/562 (4.5%) patients developed HCC in the derivation and external validation cohorts, respectively. In the training dataset ( n = 4726), logistic regression showed the highest area under the receiver operating curve (AUC) of 0.803 and a balanced accuracy of 0.735, outperforming other ML algorithms. An ensemble model combining logistic regression and random forest performed best (AUC, 0.811 and balanced accuracy, 0.754). The results from the test dataset ( n = 1182) verified the good performance of the ensemble model (AUC, 0.784 and balanced accuracy, 0.712). External validation confirmed the predictive accuracy of our ensemble model (AUC, 0.862 and balanced accuracy, 0.771). A web‐based calculator was developed ( http://ai‐wm.khu.ac.kr/HCC/ ). Conclusions The proposed ML model excellently predicted HCC risk beyond year 5 of ETV/TFV therapy and, therefore, could facilitate individualised HCC surveillance based on risk stratification.
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