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ARTÍCULO
TITULO

Prediction of Preeclampsia Using Machine Learning and Deep Learning Models: A Review

Sumayh S. Aljameel    
Manar Alzahrani    
Reem Almusharraf    
Majd Altukhais    
Sadeem Alshaia    
Hanan Sahlouli    
Nida Aslam    
Irfan Ullah Khan    
Dina A. Alabbad and Albandari Alsumayt    

Resumen

Preeclampsia is one of the illnesses associated with placental dysfunction and pregnancy-induced hypertension, which appears after the first 20 weeks of pregnancy and is marked by proteinuria and hypertension. It can affect pregnant women and limit fetal growth, resulting in low birth weights, a risk factor for neonatal mortality. Approximately 10% of pregnancies worldwide are affected by hypertensive disorders during pregnancy. In this review, we discuss the machine learning and deep learning methods for preeclampsia prediction that were published between 2018 and 2022. Many models have been created using a variety of data types, including demographic and clinical data. We determined the techniques that successfully predicted preeclampsia. The methods that were used the most are random forest, support vector machine, and artificial neural network (ANN). In addition, the prospects and challenges in preeclampsia prediction are discussed to boost the research on artificial intelligence systems, allowing academics and practitioners to improve their methods and advance automated prediction.

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