Department of Health Informatics, School of Public Health, Debre Berhan University, Debre Birhan, Ethiopia.
Department of Epidemiology and Biostatistics, School of Public Health, Debre Berhan University, Debre Birhan, Ethiopia.
Front Public Health. 2024 Sep 2;12:1413090. doi: 10.3389/fpubh.2024.1413090. eCollection 2024.
Delayed breastfeeding initiation is a significant public health concern, and reducing the proportion of delayed breastfeeding initiation in East Africa is a key strategy for lowering the Child Mortality rate. However, there is limited evidence on this public health issue assessed using advanced models. Therefore, this study aimed to assess prediction of delayed initiation of breastfeeding initiation and associated factors among women with less than 2 months of a child in East Africa using the machine learning approach.
A community-based, cross-sectional study was conducted using the most recent Demographic and Health Survey (DHS) dataset covering the years 2011 to 2021. Using statistical software (Python version 3.11), nine supervised machine learning algorithms were applied to a weighted sample of 31,640 women and assessed using performance measures. To pinpoint significant factors and predict delayed breastfeeding initiation in East Africa, this study also employed the most widely used outlines of Yufeng Guo's steps of supervised machine learning.
The pooled prevalence of delayed breastfeeding initiation in East Africa was 31.33% with 95% CI (24.16-38.49). Delayed breastfeeding initiation was highest in Comoros and low in Burundi. Among the nine machine learning algorithms, the random forest model was fitted for this study. The association rule mining result revealed that home delivery, delivered by cesarean section, poor wealth status, poor access to media outlets, women aged between 35 and 49 years, and women who had distance problems accessing health facilities were associated with delayed breastfeeding initiation in East Africa.
The prevalence of delayed breastfeeding initiation was high. The findings highlight the multifaceted nature of breastfeeding practices and the need to consider socioeconomic, healthcare, and demographic variables when addressing breastfeeding initiation timelines in the region. Policymakers and stakeholders pay attention to the significant factors and we recommend targeted interventions to improve healthcare accessibility, enhance media outreach, and support women of lower socioeconomic status. These measures can encourage timely breastfeeding initiation and address the identified factors contributing to delays across the region.
延迟开始母乳喂养是一个重大的公共卫生问题,降低东非地区延迟开始母乳喂养的比例是降低儿童死亡率的关键策略。然而,使用先进模型评估这一公共卫生问题的证据有限。因此,本研究旨在使用机器学习方法评估东非地区 2 个月以下儿童的母亲延迟开始母乳喂养的预测因素和相关因素。
本研究采用基于社区的横断面研究方法,使用最新的人口与健康调查(DHS)数据集,涵盖了 2011 年至 2021 年的数据。使用统计软件(Python 版本 3.11),对 31640 名妇女的加权样本应用了九种有监督的机器学习算法,并使用性能指标进行了评估。为了确定东非地区显著的因素并预测延迟开始母乳喂养,本研究还采用了最广泛使用的于国营的监督机器学习步骤概述。
东非地区延迟开始母乳喂养的总流行率为 31.33%,95%CI(24.16-38.49)。延迟开始母乳喂养的比例在科摩罗最高,在布隆迪最低。在这九种机器学习算法中,本研究采用了随机森林模型。关联规则挖掘结果表明,在家分娩、剖宫产分娩、贫困的财富状况、媒体渠道获取情况较差、年龄在 35 至 49 岁之间的妇女以及在获得卫生设施方面存在距离问题的妇女与东非地区延迟开始母乳喂养有关。
延迟开始母乳喂养的流行率很高。研究结果突出了母乳喂养实践的多方面性质,需要考虑社会经济、医疗保健和人口统计学变量,以解决该地区的母乳喂养开始时间问题。政策制定者和利益相关者应关注这些重要因素,并建议采取有针对性的干预措施,以提高医疗保健的可及性、加强媒体宣传,并支持社会经济地位较低的妇女。这些措施可以鼓励及时开始母乳喂养,并解决该地区延迟母乳喂养的相关因素。