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Early Prediction of Gestational Diabetes Mellitus in the Chinese Population via Advanced Machine Learning
Author(s) -
Yanting Wu,
Chen-Jie Zhang,
Ben W. Mol,
Andrew Kawai,
Cheng Li,
Lei Chen,
Yu Wang,
JianZhong Sheng,
Jianxia Fan,
Yi Shi,
Hefeng Huang
Publication year - 2020
Publication title -
the journal of clinical endocrinology and metabolism
Language(s) - English
Resource type - Journals
eISSN - 1945-7197
pISSN - 0021-972X
DOI - 10.1210/clinem/dgaa899
Subject(s) - gestational diabetes , logistic regression , feature selection , body mass index , context (archaeology) , medicine , machine learning , pregnancy , population , predictive modelling , artificial intelligence , computer science , obstetrics , gestation , genetics , environmental health , biology , paleontology
Context Accurate methods for early gestational diabetes mellitus (GDM) (during the first trimester of pregnancy) prediction in Chinese and other populations are lacking. Objectives This work aimed to establish effective models to predict early GDM. Methods Pregnancy data for 73 variables during the first trimester were extracted from the electronic medical record system. Based on a machine learning (ML)-driven feature selection method, 17 variables were selected for early GDM prediction. To facilitate clinical application, 7 variables were selected from the 17-variable panel. Advanced ML approaches were then employed using the 7-variable data set and the 73-variable data set to build models predicting early GDM for different situations, respectively. Results A total of 16 819 and 14 992 cases were included in the training and testing sets, respectively. Using 73 variables, the deep neural network model achieved high discriminative power, with area under the curve (AUC) values of 0.80. The 7-variable logistic regression (LR) model also achieved effective discriminate power (AUC = 0.77). Low body mass index (BMI) (≤ 17) was related to an increased risk of GDM, compared to a BMI in the range of 17 to 18 (minimum risk interval) (11.8% vs 8.7%, P = .09). Total 3,3,5′-triiodothyronine (T3) and total thyroxin (T4) were superior to free T3 and free T4 in predicting GDM. Lipoprotein(a) was demonstrated a promising predictive value (AUC = 0.66). Conclusions We employed ML models that achieved high accuracy in predicting GDM in early pregnancy. A clinically cost-effective 7-variable LR model was simultaneously developed. The relationship of GDM with thyroxine and BMI was investigated in the Chinese population.

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