Spatio-temporal modeling to identify factors associated with stunting in Indonesia using a Modified Generalized Lasso

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Spatial and Spatio-Temporal Epidemiology Pub Date : 2024-09-27 DOI:10.1016/j.sste.2024.100694
Septian Rahardiantoro , Alfidhia Rahman Nasa Juhanda , Anang Kurnia , Aswi Aswi , Bagus Sartono , Dian Handayani , Agus Mohamad Soleh , Yusma Yanti , Susanna Cramb
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Abstract

This study investigates the factors associated with stunting prevalence in Indonesia, utilizing a generalized lasso framework with modified penalty matrices to accommodate spatio-temporal data structures. Novel approaches are introduced to construct the penalty matrices, with particular focus on defining neighborhood structures. The proposed method is applied to data from 34 Indonesian provinces, covering the years 2019 to 2023. The primary outcome is stunting prevalence, modeled against nine predictor variables: poverty, exclusive breastfeeding, low birth weight (LBW), high school completion, access to proper sanitation, unmet health service needs, Gross Domestic Product (GDP), calorie consumption, and protein consumption. A total of nine spatio-temporal models were compared, including a modified generalized lasso with three distinct penalty matrices for each two tuning selection methods and a generalized ridge regression with three penalty matrices. Results indicate that the generalized lasso model with a 3-nearest neighbor adjacency matrix outperformed the alternatives. Temporal variations were observed in the effects of exclusive breastfeeding, LBW, high school completion, and unmet health service needs. Positive associations with stunting prevalence were identified for poverty, exclusive breastfeeding, LBW, and unmet health service needs, while negative associations were found for high school completion rates, access to proper sanitation, GDP, calorie intake, and protein consumption. The strongest associations were observed in parts of Sumatra, Sulawesi, and Jakarta. These findings suggest that government interventions aimed at improving education, healthcare access, and poverty reduction may help alleviate stunting in Indonesia, particularly in regions with the greatest need.
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利用改良广义套索建立时空模型,确定印度尼西亚发育迟缓的相关因素
本研究利用广义拉索框架和修改后的惩罚矩阵,对印度尼西亚发育迟缓患病率的相关因素进行了调查,以适应时空数据结构。研究介绍了构建惩罚矩阵的新方法,尤其侧重于定义邻域结构。所提出的方法适用于印度尼西亚 34 个省的数据,时间跨度为 2019 年至 2023 年。主要结果是发育迟缓发生率,并根据以下九个预测变量建立模型:贫困、纯母乳喂养、出生体重过轻(LBW)、高中毕业、获得适当卫生设施、未满足的医疗服务需求、国内生产总值(GDP)、卡路里消耗量和蛋白质消耗量。共对九个时空模型进行了比较,其中包括针对每两种调谐选择方法设置了三个不同惩罚矩阵的修正广义拉索模型和设置了三个惩罚矩阵的广义脊回归模型。结果表明,带有 3 个最近邻邻接矩阵的广义拉索模型优于其他模型。纯母乳喂养、低体重儿、高中毕业和未满足的医疗服务需求的影响存在时间上的差异。贫困、纯母乳喂养、低体重儿和未满足的医疗服务需求与发育迟缓发生率呈正相关,而高中毕业率、获得适当的卫生设施、国内生产总值、卡路里摄入量和蛋白质消耗量则呈负相关。苏门答腊岛、苏拉威西岛和雅加达部分地区的相关性最强。这些研究结果表明,旨在改善教育、医疗保健和减贫的政府干预措施可能有助于缓解印度尼西亚的发育迟缓问题,尤其是在需求最大的地区。
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来源期刊
Spatial and Spatio-Temporal Epidemiology
Spatial and Spatio-Temporal Epidemiology PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
5.10
自引率
8.80%
发文量
63
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