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- 2018
Visceral fat mass as a novel risk factor for predicting gestational diabetes in obese pregnant womenKeywords: Gestational diabetes,obesity,visceral fat mass,predictive model,principal component analysis,machine learning Abstract: To develop a model to predict gestational diabetes mellitus incorporating classical and a novel risk factor, visceral fat mass. Three hundred two obese non-diabetic pregnant women underwent body composition analysis at booking by bioimpedance analysis. Of this cohort, 72 (24%) developed gestational diabetes mellitus. Principal component analysis was initially performed to identify possible clustering of the gestational diabetes mellitus and non-GDM groups. A machine learning algorithm was then applied to develop a GDM predictive model utilising random forest and decision tree modelling. The predictive model was trained on 227 samples and validated using an independent testing subset of 75 samples where the model achieved a validation prediction accuracy of 77.53%. According to the decision tree developed, visceral fat mass emerged as the most important variable in determining the risk of gestational diabetes mellitus. We present a model incorporating visceral fat mass, which is a novel risk factor in predicting gestational diabetes mellitus in obese pregnant women
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