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Nonalcoholic fatty liver disease and early prediction of gestational diabetes mellitus using machine learning methods

Authors
 Seung Mi Lee  ;  Suhyun Hwangbo  ;  Errol R Norwitz  ;  Ja Nam Koo  ;  Ig Hwan Oh  ;  Eun Saem Choi  ;  Young Mi Jung  ;  Sun Min Kim  ;  Byoung Jae Kim  ;  Sang Youn Kim  ;  Gyoung Min Kim  ;  Won Kim  ;  Sae Kyung Joo  ;  Sue Shin  ;  Chan-Wook Park  ;  Taesung Park  ;  Joong Shin Park 
Citation
 CLINICAL AND MOLECULAR HEPATOLOGY, Vol.28(1) : 105-116, 2022-01 
Journal Title
CLINICAL AND MOLECULAR HEPATOLOGY
ISSN
 2287-2728 
Issue Date
2022-01
MeSH
Diabetes, Gestational* / diagnosis ; Female ; Humans ; Machine Learning ; Male ; Non-alcoholic Fatty Liver Disease* / diagnosis ; Pregnancy ; Prospective Studies ; Risk Factors
Keywords
Diabetes, Gestational ; Machine learning ; Nonalcoholic fatty liver disease ; Prediction ; Pregnancy, High-risk
Abstract
Background/aims: To develop an early prediction model for gestational diabetes mellitus (GDM) using machine learning and to evaluate whether the inclusion of nonalcoholic fatty liver disease (NAFLD)-associated variables increases the performance of model.

Methods: This prospective cohort study evaluated pregnant women for NAFLD using ultrasound at 10-14 weeks and screened them for GDM at 24-28 weeks of gestation. The clinical variables before 14 weeks were used to develop prediction models for GDM (setting 1, conventional risk factors; setting 2, addition of new risk factors in recent guidelines; setting 3, addition of routine clinical variables; setting 4, addition of NALFD-associated variables, including the presence of NAFLD and laboratory results; and setting 5, top 11 variables identified from a stepwise variable selection method). The predictive models were constructed using machine learning methods, including logistic regression, random forest, support vector machine, and deep neural networks.

Results: Among 1,443 women, 86 (6.0%) were diagnosed with GDM. The highest performing prediction model among settings 1-4 was setting 4, which included both clinical and NAFLD-associated variables (area under the receiver operating characteristic curve [AUC] 0.563-0.697 in settings 1-3 vs. 0.740-0.781 in setting 4). Setting 5, with top 11 variables (which included NAFLD and hepatic steatosis index), showed similar predictive power to setting 4 (AUC 0.719-0.819 in setting 5, P=not significant between settings 4 and 5).

Conclusion: We developed an early prediction model for GDM using machine learning. The inclusion of NAFLDassociated variables significantly improved the performance of GDM prediction. (ClinicalTrials.gov Identifier: NCT02276144).
Files in This Item:
T202205138.pdf Download
DOI
10.3350/cmh.2021.0174
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Radiology (영상의학교실) > 1. Journal Papers
Yonsei Authors
Kim, Gyoung Min(김경민) ORCID logo https://orcid.org/0000-0001-6768-4396
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/191155
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