Abstract

This study reviews the current status and future prospective of knowledge on the use of artificial intelligence for the prediction of spontaneous preterm labor and birth (“preterm birth” hereafter). The summary of review suggests that different machine learning approaches would be optimal for different types of data regarding the prediction of preterm birth: the artificial neural network, logistic regression and/or the random forest for numeric data; the support vector machine for electrohysterogram data; the recurrent neural network for text data; and the convolutional neural network for image data. The ranges of performance measures were 0.79–0.94 for accuracy, 0.22–0.97 for sensitivity, 0.86–1.00 for specificity, and 0.54–0.83 for the area under the receiver operating characteristic curve. The following maternal variables were reported to be major determinants of preterm birth: delivery and pregestational body mass index, age, parity, predelivery systolic and diastolic blood pressure, twins, below high school graduation, infant sex, prior preterm birth, progesterone medication history, upper gastrointestinal tract symptom, gastroesophageal reflux disease, Helicobacter pylori, urban region, calcium channel blocker medication history, gestational diabetes mellitus, prior cone biopsy, cervical length, myomas and adenomyosis, insurance, marriage, religion, systemic lupus erythematosus, hydroxychloroquine sulfate, and increased cerebrospinal fluid and reduced cortical folding due to impaired brain growth.

Highlights

  • This study focuses on spontaneous preterm labor and birth (“preterm birth” hereafter), which takes the largest proportion

  • The summary of review suggests that different machine learning approaches would be optimal for different types of data regarding the prediction of preterm birth: the artificial neural network, logistic regression and/or the random forest for numeric data, the support vector machine for electrohysterogram data, the recurrent neural network for text data, and the convolutional neural network for image data

  • The summary of review indicates that the following maternal variables can be considered to be major determinants of preterm birth: delivery and pregestational body mass index, age, parity, predelivery systolic and diastolic blood pressure, twins, below high school graduation, infant sex, prior preterm birth, progesterone medication history, upper gastrointestinal tract symptom, gastroesophageal reflux disease, Helicobacter pylori, urban region, calcium channel blocker medication history, gestational diabetes mellitus, prior cone biopsy, cervical length, myomas and adenomyosis, insurance, marriage, religion, systemic lupus erythematosus, hydroxychloroquine sulfate, and increased cerebrospinal fluid and reduced cortical folding due to impaired brain growth

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Summary

Preterm Birth

Preterm birth is a major cause of disease burden for newborns and children in the world [1,2,3,4]. The factors of preterm birth are unknown generally but existing literature considers the following maternal variables to be its major determinants: socioeconomic status such as education, income, workload; health conditions including body mass index, hypertensive disorder, diabetes mellitus; and other obstetric variables including. Health conditions including body mass index, hypertensive disorder, diabetes mellitus; and other obstetric variables including cesarean section, infection, in vitro fertilization or intracytoplasmic cesareaninjection section, infection, in vitro fertilization intracytoplasmic sperm injection sperm pregnancy, parity, placenta or abruption, placenta previa, priorpregnancy, abortion, parity, prior placenta abruption, placenta previa, prior abortion, prior preterm birth, short cervix, and vaginal preterm birth, short cervix, and vaginal bleeding [5,6,7,8,9,10,11,12,13].

Artificial Intelligence
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Aims of of Study
Methods of Study
Duke University Medical Center Study
Korea University Anam Hospital Study
Ljubljana University Medical Center Study
Summary of Study
Method
Findings
Current Limitations and Future Perspectives
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