4.7 Article

Machine-Learning Algorithm for Predicting Fatty Liver Disease in a Taiwanese Population

期刊

JOURNAL OF PERSONALIZED MEDICINE
卷 12, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/jpm12071026

关键词

machine learning; fatty liver disease; predicting

资金

  1. Changhua Christian Hospital [109-CCH-IRP-008, 110-CCH-IRP-020, 111-CCH-IRP-011]

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This study used machine-learning algorithms to predict fatty liver disease in Taiwanese subjects and compared the performance with the fatty liver index. The xgBoost model showed the best performance in predicting fatty liver disease, and body mass index was identified as the most important predictor.
The rising incidence of fatty liver disease (FLD) poses a health challenge, and is expected to be the leading global cause of liver-related morbidity and mortality in the near future. Early case identification is crucial for disease intervention. A retrospective cross-sectional study was performed on 31,930 Taiwanese subjects (25,544 training and 6386 testing sets) who had received health checkups and abdominal ultrasounds in Changhua Christian Hospital from January 2009 to January 2019. Clinical and laboratory factors were included for analysis by different machine-learning algorithms. In addition, the performance of the machine-learning algorithms was compared with that of the fatty liver index (FLI). Totally, 6658/25,544 (26.1%) and 1647/6386 (25.8%) subjects had moderate-tosevere liver disease in the training and testing sets, respectively. Five machine-learning models were examined and demonstrated exemplary performance in predicting FLD. Among these models, the xgBoost model revealed the highest area under the receiver operating characteristic (AUROC) (0.882), accuracy (0.833), F1 score (0.829), sensitivity (0.833), and specificity (0.683) compared with those of neural network, logistic regression, random forest, and support vector machine-learning models. The xgBoost, neural network, and logistic regression models had a significantly higher AUROC than that of FLI. Body mass index was the most important feature to predict FLD according to the feature ranking scores. The xgBoost model had the best overall prediction ability for diagnosing FLD in our study. Machine-learning algorithms provide considerable benefits for screening candidates with FLD.

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