印度尼西亚儿童发育迟缓:评估贝叶斯空间条件自回归模型的性能。

IF 1 4区 医学 Q4 HEALTH CARE SCIENCES & SERVICES Geospatial Health Pub Date : 2024-10-03 DOI:10.4081/gh.2024.1321
Aswi Aswi, Septian Rahardiantoro, Anang Kurnia, Bagus Sartono, Dian Handayani, Nurwan Nurwan, Susanna Cramb
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引用次数: 0

摘要

发育迟缓仍然是一个重要的健康问题,尤其是在发展中国家,印度尼西亚的发病率在东南亚排名第三。本研究通过实施包含协变量的各种贝叶斯空间条件自回归(CAR)模型,对印度尼西亚发育迟缓的风险和影响因素进行了研究。共运行了 750 个模型,包括五个不同的贝叶斯空间自回归模型(贝萨格-约克-莫利模型(BYM)、勒鲁自回归模型和三种形式的局部自回归模型),每个模型有 30 个协变量组合和五个不同的超先验组合。发育迟缓病例计数模型采用泊松分布。在对所使用的所有模型选择标准进行综合评估后,贝叶斯局部 CAR 模型中的三个协变量更受青睐,该模型允许最多 2 个方差超前值为反伽马(1,0.1)的群集,或允许 3 个方差超前值为反伽马(1,0.01)的群集。贫困和最近出生的低出生体重儿与发育迟缓风险的增加有显著关系,而儿童饮食多样性与发育迟缓风险成反比。模型结果表明,巴拉特苏拉威西省的发育迟缓风险最高,雅加达DKI省最低。这些发育迟缓高发地区需要采取干预措施,以减少贫困、低体重儿的出生和增加儿童饮食多样性。
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Childhood stunting in Indonesia: assessing the performance of Bayesian spatial conditional autoregressive models.

Stunting continues to be a significant health issue, particularly in developing nations, with Indonesia ranking third in prevalence in Southeast Asia. This research examined the risk of stunting and influencing factors in Indonesia by implementing various Bayesian spatial conditional autoregressive (CAR) models that include covariates. A total of 750 models were run, including five different Bayesian spatial CAR models (Besag-York-Mollie (BYM), CAR Leroux and three forms of localised CAR), with 30 covariate combinations and five different hyperprior combinations for each model. The Poisson distribution was employed to model the counts of stunting cases. After a comprehensive evaluation of all model selection criteria utilized, the Bayesian localised CAR model with three covariates were preferred, either allowing up to 2 clusters with a variance hyperprior of inverse-gamma (1, 0.1) or allowing 3 clusters with a variance hyperprior of inverse-gamma (1, 0.01). Poverty and recent low birth weight (LBW) births are significantly associated with an increased risk of stunting, whereas child diet diversity is inversely related to the risk of stunting. Model results indicated that Sulawesi Barat Province has the highest risk of stunting, with DKI Jakarta Province the lowest. These areas with high stunting require interventions to reduce poverty, LBW births and increase child diet diversity.

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来源期刊
Geospatial Health
Geospatial Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
2.40
自引率
11.80%
发文量
48
审稿时长
12 months
期刊介绍: The focus of the journal is on all aspects of the application of geographical information systems, remote sensing, global positioning systems, spatial statistics and other geospatial tools in human and veterinary health. The journal publishes two issues per year.
期刊最新文献
Childhood stunting in Indonesia: assessing the performance of Bayesian spatial conditional autoregressive models. A two-stage location model covering COVID-19 sampling, transport and DNA diagnosis: design of a national scheme for infection control. The distribution of cardiovascular diseases in Tanzania: a spatio-temporal investigation. Performance of a negative binomial-GLM in spatial scan statistic: a case study of low-birth weights in Pakistan. Tuberculosis in Aceh Province, Indonesia: a spatial epidemiological study covering the period 2019-2021.
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