A hybrid boosting ensemble model for predicting maternal mortality and sustaining reproductive

Q2 Health Professions Smart Health Pub Date : 2022-12-01 DOI:10.1016/j.smhl.2022.100325
Isaac Kofi Nti , Bridgitte Owusu-Boadu
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引用次数: 1

Abstract

A successful pregnancy is a contingent upon a complex network of interdependent biological adaptations, including maternal immune responses and hormonal balance. Recent improvements in high-intelligence technology have enabled the combination of clinical and social data with multi-omics biological data can offer the opportunity to detect maternal risk during pregnancy. The United Nations' sustainable development goal (SDG 3) aims to improve maternal health and reduce child and maternal mortality by 2030. Nevertheless, maternal mortality has not decreased at the indicated rate, especially in developing countries like Ghana. This paper aims to establish an intelligent machine learning-based system for effectively monitoring and predicting pregnant women's risk levels. We assessed pregnant women's health data and risk variables to determine the maternal risk intensity level during pregnancy. Therefore, we proposed a hybrid ensemble algorithm (XGBoost and CatBoost) to determine the significant health factors associated with maternal health and predict the mother's risk level during pregnancy. The study outcome showed that blood sugar, age and body temperature were the most significant factors in determining the risk level of a pregnant woman in MM. Also, the prediction outcome (accuracy of 93.99%, AUC of 96.96%, recall 92.44%, and precision 93.46%) shows that our model performed well compared with other studies and machine learning algorithms.

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预测产妇死亡率和维持生殖的混合促进集合模型
成功的怀孕取决于相互依赖的生物适应的复杂网络,包括母体免疫反应和激素平衡。最近高智能技术的进步使临床和社会数据与多组学生物学数据的结合能够提供检测怀孕期间产妇风险的机会。联合国可持续发展目标(可持续发展目标3)旨在到2030年改善孕产妇健康,降低儿童和孕产妇死亡率。然而,产妇死亡率并没有按照规定的速度下降,特别是在加纳这样的发展中国家。本文旨在建立一个基于智能机器学习的系统,用于有效监测和预测孕妇的风险水平。我们评估了孕妇的健康数据和风险变量,以确定怀孕期间孕产妇的风险强度水平。因此,我们提出了一种混合集成算法(XGBoost和CatBoost)来确定与孕产妇健康相关的重要健康因素,并预测母亲在怀孕期间的风险水平。研究结果表明,血糖、年龄和体温是决定孕妇MM风险水平的最重要因素。预测结果(准确率为93.99%,AUC为96.96%,召回率为92.44%,精度为93.46%)表明,与其他研究和机器学习算法相比,我们的模型表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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