使用机器学习方法进行模型和变量选择,并将其应用于孟加拉国的儿童发育迟缓。

IF 2.5 4区 医学 Q2 HEALTH CARE SCIENCES & SERVICES Informatics for Health & Social Care Pub Date : 2021-12-02 Epub Date: 2021-04-14 DOI:10.1080/17538157.2021.1904938
Jahidur Rahman Khan, Jabed H Tomal, Enayetur Raheem
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引用次数: 5

摘要

儿童发育迟缓是孟加拉国一个严重的公共卫生问题。早期的研究使用传统的统计方法来识别发育迟缓的风险因素,对于机器学习(ML)方法的应用和有用性知之甚少,机器学习(ML)方法可以根据复杂的数据识别各种健康状况的风险因素。本研究利用2014年孟加拉国人口与健康调查数据,评估机器学习方法在预测5岁以下儿童发育迟缓方面的表现。此外,本文还确定了预测孟加拉国发育迟缓的重要变量。在选择的机器学习方法中,梯度增强在预测发育迟缓方面的误分类误差最小,其次是随机森林、支持向量机、分类树和具有前向逐步选择的逻辑回归。能更好地预测孟加拉国儿童发育迟缓的前10个重要变量(按重要性排序)是儿童年龄、财富指数、母亲教育程度、产前间隔、父亲教育程度、分工、家庭规模、母亲初产年龄、母亲营养状况和父母年龄。我们的研究表明,机器学习可以支持预测模型的建立,并强调人口、社会经济、营养和环境因素,以了解孟加拉国的发育迟缓情况。
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Model and variable selection using machine learning methods with applications to childhood stunting in Bangladesh.

Childhood stunting is a serious public health concern in Bangladesh. Earlier research used conventional statistical methods to identify the risk factors of stunting, and very little is known about the applications and usefulness of machine learning (ML) methods that can identify the risk factors of various health conditions based on complex data. This research evaluates the performance of ML methods in predicting stunting among under-5 aged children using 2014 Bangladesh Demographic and Health Survey data. Besides, this paper identifies variables which are important to predict stunting in Bangladesh. Among the selected ML methods, gradient boosting provides the smallest misclassification error in predicting stunting, followed by random forests, support vector machines, classification tree and logistic regression with forward-stepwise selection. The top 10 important variables (in order of importance) that better predict childhood stunting in Bangladesh are child age, wealth index, maternal education, preceding birth interval, paternal education, division, household size, maternal age at first birth, maternal nutritional status, and parental age. Our study shows that ML can support the building of prediction models and emphasizes on the demographic, socioeconomic, nutritional and environmental factors to understand stunting in Bangladesh.

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来源期刊
CiteScore
6.10
自引率
4.20%
发文量
21
审稿时长
>12 weeks
期刊介绍: Informatics for Health & Social Care promotes evidence-based informatics as applied to the domain of health and social care. It showcases informatics research and practice within the many and diverse contexts of care; it takes personal information, both its direct and indirect use, as its central focus. The scope of the Journal is broad, encompassing both the properties of care information and the life-cycle of associated information systems. Consideration of the properties of care information will necessarily include the data itself, its representation, structure, and associated processes, as well as the context of its use, highlighting the related communication, computational, cognitive, social and ethical aspects. Consideration of the life-cycle of care information systems includes full range from requirements, specifications, theoretical models and conceptual design through to sustainable implementations, and the valuation of impacts. Empirical evidence experiences related to implementation are particularly welcome. Informatics in Health & Social Care seeks to consolidate and add to the core knowledge within the disciplines of Health and Social Care Informatics. The Journal therefore welcomes scientific papers, case studies and literature reviews. Examples of novel approaches are particularly welcome. Articles might, for example, show how care data is collected and transformed into useful and usable information, how informatics research is translated into practice, how specific results can be generalised, or perhaps provide case studies that facilitate learning from experience.
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