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Automated Machine Learning (AutoML)-Derived Preconception Predictive Risk Model to Guide Early Intervention for Gestational Diabetes Mellitus

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Listed:
  • Mukkesh Kumar

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Bioinformatics Institute, Agency for Science Technology and Research, Singapore 138632, Singapore
    Saw Swee Hock School of Public Health, National University of Singapore, National University Health System, Singapore 119077, Singapore)

  • Li Ting Ang

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Bioinformatics Institute, Agency for Science Technology and Research, Singapore 138632, Singapore)

  • Hang Png

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Bioinformatics Institute, Agency for Science Technology and Research, Singapore 138632, Singapore)

  • Maisie Ng

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Bioinformatics Institute, Agency for Science Technology and Research, Singapore 138632, Singapore)

  • Karen Tan

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore)

  • See Ling Loy

    (Obstetrics & Gynaecology Academic Clinical Programme, Duke-NUS Medical School, Singapore 169857, Singapore
    Department of Reproductive Medicine, KK Women’s and Children’s Hospital, Singapore 229899, Singapore)

  • Kok Hian Tan

    (Obstetrics & Gynaecology Academic Clinical Programme, Duke-NUS Medical School, Singapore 169857, Singapore
    Division of Obstetrics and Gynecology, KK Women’s and Children’s Hospital, Singapore 229899, Singapore)

  • Jerry Kok Yen Chan

    (Obstetrics & Gynaecology Academic Clinical Programme, Duke-NUS Medical School, Singapore 169857, Singapore
    Department of Reproductive Medicine, KK Women’s and Children’s Hospital, Singapore 229899, Singapore
    Cancer and Stem Cell Biology, Duke-NUS Medical School, Singapore 169857, Singapore
    Human Potential Translational Research Programme, Department of Obstetrics and Gynaecology, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 119077, Singapore)

  • Keith M. Godfrey

    (MRC Lifecourse Epidemiology Centre, NIHR Southampton Biomedical Research Centre, University Hospital Southampton NHS Foundation Trust, University of Southampton, Southampton SO17 1BJ, UK)

  • Shiao-yng Chan

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Human Potential Translational Research Programme, Department of Obstetrics and Gynaecology, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 119077, Singapore)

  • Yap Seng Chong

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Human Potential Translational Research Programme, Department of Obstetrics and Gynaecology, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 119077, Singapore)

  • Johan G. Eriksson

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Human Potential Translational Research Programme, Department of Obstetrics and Gynaecology, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 119077, Singapore
    Department of General Practice and Primary Health Care, University of Helsinki, 00100 Helsinki, Finland
    Folkhälsan Research Center, 00250 Helsinki, Finland)

  • Mengling Feng

    (Saw Swee Hock School of Public Health, National University of Singapore, National University Health System, Singapore 119077, Singapore
    Institute of Data Science, National University of Singapore, Singapore 119077, Singapore
    Joint Senior Authors.)

  • Neerja Karnani

    (Singapore Institute for Clinical Sciences, Agency for Science Technology and Research, Singapore 138632, Singapore
    Bioinformatics Institute, Agency for Science Technology and Research, Singapore 138632, Singapore
    Department of Biochemistry, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 119077, Singapore
    Joint Senior Authors.)

Abstract

The increasing prevalence of gestational diabetes mellitus (GDM) is contributing to the rising global burden of type 2 diabetes (T2D) and intergenerational cycle of chronic metabolic disorders. Primary lifestyle interventions to manage GDM, including second trimester dietary and exercise guidance, have met with limited success due to late implementation, poor adherence and generic guidelines. In this study, we aimed to build a preconception-based GDM predictor to enable early intervention. We also assessed the associations of top predictors with GDM and adverse birth outcomes. Our evolutionary algorithm-based automated machine learning (AutoML) model was implemented with data from 222 Asian multi-ethnic women in a preconception cohort study, Singapore Preconception Study of Long-Term Maternal and Child Outcomes (S-PRESTO). A stacked ensemble model with a gradient boosting classifier and linear support vector machine classifier (stochastic gradient descent training) was derived using genetic programming, achieving an excellent AUC of 0.93 based on four features (glycated hemoglobin A 1c (HbA 1c ), mean arterial blood pressure, fasting insulin, triglycerides/HDL ratio). The results of multivariate logistic regression model showed that each 1 mmol/mol increase in preconception HbA 1c was positively associated with increased risks of GDM ( p = 0.001, odds ratio (95% CI) 1.34 (1.13–1.60)) and preterm birth ( p = 0.011, odds ratio 1.63 (1.12–2.38)). Optimal control of preconception HbA 1c may aid in preventing GDM and reducing the incidence of preterm birth. Our trained predictor has been deployed as a web application that can be easily employed in GDM intervention programs, prior to conception.

Suggested Citation

  • Mukkesh Kumar & Li Ting Ang & Hang Png & Maisie Ng & Karen Tan & See Ling Loy & Kok Hian Tan & Jerry Kok Yen Chan & Keith M. Godfrey & Shiao-yng Chan & Yap Seng Chong & Johan G. Eriksson & Mengling Fe, 2022. "Automated Machine Learning (AutoML)-Derived Preconception Predictive Risk Model to Guide Early Intervention for Gestational Diabetes Mellitus," IJERPH, MDPI, vol. 19(11), pages 1-17, June.
  • Handle: RePEc:gam:jijerp:v:19:y:2022:i:11:p:6792-:d:830109
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    Cited by:

    1. Zhiyuan Hao & Jie Ma & Wenjing Sun, 2022. "The Technology-Oriented Pathway for Auxiliary Diagnosis in the Digital Health Age: A Self-Adaptive Disease Prediction Model," IJERPH, MDPI, vol. 19(19), pages 1-23, September.

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