机器学习技术在预测儿童死亡率和识别相关风险因素中的应用

Elliot Mbunge, S. Fashoto, Benhildah Muchemwa, R. Millham, Garikayi B. Chemhaka, M. Sibiya, T. Dzinamarira, Jolly Buwerimwe
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引用次数: 2

摘要

尽管通过普及保健等方式不断作出不懈努力,增进儿童健康,但儿童死亡率仍然是全球范围内令人关切的重大公共卫生问题。儿童死亡率可归因于几个因素,包括出生窒息/创伤、人口和社会经济因素、早产和与分娩有关的并发症、肺炎、可预防和可治疗的疾病、先天性异常、难以获得优质保健、卫生和营养不良以及环境卫生等。在包括津巴布韦在内的许多撒哈拉以南非洲国家,使用机器学习技术预测儿童死亡率仍处于起步阶段。因此,本研究应用机器学习算法决策树、随机森林、逻辑回归和XGBoost,利用具有全国代表性的人口和健康调查数据建立儿童死亡率预测模型。逻辑回归分类器的准确率为74%,随机森林为72%,决策树为72%,XGBoost的准确率高达81%。所有5岁以下的预测模型都达到了95%的精度。然而,逻辑回归的召回率为76%,随机森林74%,决策树74%,XGBoost 84%。XGBoost Logistic回归的f1得分为84%,随机森林83%,决策树83%,89%。XGBoost的表现优于其他5岁以下的预测模型。将这些模型整合到卫生信息系统中可以极大地帮助决策者和卫生保健专业人员改善儿童的健康状况,获得高质量的保健,最重要的是,改善预防措施、免疫规划、政策和决策,以改善儿童健康。了解风险因素有助于设计旨在改善儿童健康同时降低儿童死亡率的干预方案。
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Application of machine learning techniques for predicting child mortality and identifying associated risk factors
Despite continuous persistent efforts to enhance child health through, among other things, universal access to care, child mortality remains a significant public health concern on a global scale. Child mortality is attributed to several factors including birth asphyxia/trauma, demographic and socioeconomic factors, preterm birth and intrapartum-related complications, pneumonia, preventable and treatable diseases, congenital anomalies, poor access to quality healthcare, poor hygiene and nutrition, and sanitation among others. In many sub-Saharan African nations, including Zimbabwe, the use of machine learning techniques to predict child mortality is still in its infancy. Therefore, this study applied machine learning algorithms decision trees, random forest, logistic regression and XGBoost to develop child mortality predictive models that utilize nationally representative demographic and health survey data. The logistic regression classifier achieved an accuracy of 74%, random forest 72%, Decision tree 72%, and XGBoost a high accuracy of 81%. All under-five predictive models achieved a precision of 95 %. However, logistic regression achieved a recall of 76%, random forest 74%, Decision tree 74%, and XGBoost 84%. Logistic Regression achieved F1-score of 84%, random forest 83%, Decision tree 83% and 89% for XGBoost. The XGBoost outperformed other under-five predictive models. Integrating such models into health information systems can significantly assist policymakers and healthcare professionals to improve the health status of children, access to quality care and most importantly, improve preventive measures, immunization programmes, policies, and decision-making to improve child health. Understanding the risk factors can assist in designing intervention programmes aimed at improve child health while reducing child mortality.
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