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基于机器学习方法,通过孕产妇临床病史对孕前子痫前期进行风险评估。

Risk Assessment for Preeclampsia in the Preconception Period Based on Maternal Clinical History via Machine Learning Methods.

作者信息

Kaya Yeliz, Bütün Zafer, Çelik Özer, Salik Ece Akça, Tahta Tuğba

机构信息

Department of Gynecology and Obstetrics Nursing, Faculty of Health Sciences, Eskişehir Osmangazi University, Eskişehir 26040, Türkiye.

Hoşnudiye Mah. Ayşen Sokak Dorya Rezidans, A Blok no:28/77, Eskişehir 26130, Türkiye.

出版信息

J Clin Med. 2024 Dec 30;14(1):155. doi: 10.3390/jcm14010155.

Abstract

: This study was aimed to identify the most effective machine learning (ML) algorithm for predicting preeclampsia based on sociodemographic and obstetric factors during the preconception period. : Data from pregnant women admitted to the obstetric clinic during their first trimester were analyzed, focusing on maternal age, body mass index (BMI), smoking status, history of diabetes mellitus, gestational diabetes mellitus, and mean arterial pressure. The women were grouped by whether they had a preeclampsia diagnosis and by whether they had one or two live births. Predictive models were then developed using five commonly applied ML algorithms. : The study included 100 mothers divided into four groups: 22 nulliparous mothers with preeclampsia, 25 nulliparous mothers without preeclampsia, 28 parous mothers with preeclampsia, and 25 parous mothers without preeclampsia. Analysis showed that maternal BMI and family history of diabetes mellitus were the most significant predictive variables. Among the predictive models, the extreme gradient boosting (XGB) classifier demonstrated the highest accuracy, achieving 70% and 72.7% in the respective groups. : A predictive model utilizing an ML algorithm based on maternal sociodemographic data and obstetric history could serve as an early detection tool for preeclampsia.

摘要

本研究旨在确定基于孕前社会人口统计学和产科因素预测子痫前期最有效的机器学习(ML)算法。分析了孕早期入住产科诊所的孕妇数据,重点关注产妇年龄、体重指数(BMI)、吸烟状况、糖尿病史、妊娠期糖尿病史和平均动脉压。根据是否患有子痫前期诊断以及是否有一次或两次活产对这些女性进行分组。然后使用五种常用的ML算法开发预测模型。该研究纳入了100名母亲,分为四组:22名单胎子痫前期母亲、25名单胎非子痫前期母亲、28名经产妇子痫前期母亲和25名经产妇非子痫前期母亲。分析表明,产妇BMI和糖尿病家族史是最显著的预测变量。在预测模型中,极端梯度提升(XGB)分类器表现出最高的准确率,在各自组中分别达到70%和72.7%。利用基于产妇社会人口统计学数据和产科病史的ML算法建立的预测模型可作为子痫前期的早期检测工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4467/11721638/d272eb806669/jcm-14-00155-g001.jpg

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