2020
DOI: 10.1155/2020/4168340
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Comparison of Machine Learning Methods and Conventional Logistic Regressions for Predicting Gestational Diabetes Using Routine Clinical Data: A Retrospective Cohort Study

Abstract: Background. Gestational diabetes mellitus (GDM) contributes to adverse pregnancy and birth outcomes. In recent decades, extensive research has been devoted to the early prediction of GDM by various methods. Machine learning methods are flexible prediction algorithms with potential advantages over conventional regression. Objective. The purpose of this study was to use machine learning methods to predict GDM and compare their performance with that of logistic regressions. Methods. We performed a retrospective, … Show more

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Cited by 72 publications
(69 citation statements)
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References 32 publications
(38 reference statements)
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“…Machine learning is well suited for predictive modeling of pregnancy outcomes [91,92] and is becoming more prevalent [93][94][95][96][97][98][99][100][101][102][103][104][105] due to its ability to model highly complex relationships between measured features and outcomes. The majority of previous work focused on modeling techniques that incorporate one or two data sources, including clinical [95] as well as derived numerical data from another source such as blood samples [39], Doppler ultrasound, echosonography, or magnetic resonance imaging (MRI) readings [101], or mental health assessments [106].…”
Section: Machine-learning Models For Adverse Pregnancy Outcomesmentioning
confidence: 99%
“…Machine learning is well suited for predictive modeling of pregnancy outcomes [91,92] and is becoming more prevalent [93][94][95][96][97][98][99][100][101][102][103][104][105] due to its ability to model highly complex relationships between measured features and outcomes. The majority of previous work focused on modeling techniques that incorporate one or two data sources, including clinical [95] as well as derived numerical data from another source such as blood samples [39], Doppler ultrasound, echosonography, or magnetic resonance imaging (MRI) readings [101], or mental health assessments [106].…”
Section: Machine-learning Models For Adverse Pregnancy Outcomesmentioning
confidence: 99%
“…Ye et al [ 51 ] compared the performance of many ML models and logistic regression for predicting gestational diabetes (GDM) using routine lab tests. They chose 104 variables (medical history, clinical assessment, ultrasonic screening data, biochemical data and data from Down’s screening), and they included 22,242 women in the study.…”
Section: Resultsmentioning
confidence: 99%
“…However, clarity and simplicity are the reasons why logistic regression was also frequently chosen [ 36 , 56 ], both as a stand-alone model and also as a baseline model to be compared with other, more complex (and hence less generalisable) models. Among the best models, those in the Ensemble family (e.g., XGB, GBT) were chosen both for their medium–high performance [ 21 , 30 , 32 , 33 , 44 , 51 , 58 , 61 ] and their training speed. Models in the DL family [ 27 , 35 , 37 , 49 , 52 , 53 , 60 ], especially RNN and ANN, have been increasingly chosen in recent years.…”
Section: Discussionmentioning
confidence: 99%
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