Performance of a negative binomial-GLM in spatial scan statistic: a case study of low-birth weights in Pakistan.

IF 1 4区 医学 Q4 HEALTH CARE SCIENCES & SERVICES Geospatial Health Pub Date : 2024-09-03 DOI:10.4081/gh.2024.1313
Sami Ullah, Mushtaq Ahmad Khan Barakzai, Tianfa Xie
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Abstract

Spatial cluster analyses of health events are useful for enabling targeted interventions. Spatial scan statistic is the stateof- the-art method for this kind of analysis and the Poisson Generalized Linear Model (GLM) approach to the spatial scan statistic can be used for count data for spatial cluster detection with covariate adjustment. However, its use for modelling is limited due to data over-dispersion. A Generalized Linear Mixed Model (GLMM) has recently been proposed for modelling this kind of over-dispersion by incorporating random effects to model area-specific intrinsic variation not explained by other covariates in the model. However, these random effects may exhibit a geographical correlation, which may lead to a potential spatial cluster being undetected. To handle the over-dispersion in the count data, this study aimed to evaluate the performance of a negative binomial- GLM in spatial scan statistic on real-world data of low birth weights in Khyber-Pakhtunkhwa Province, Pakistan, 2019. The results were compared with the Poisson-GLM and GLMM, showing that the negative binomial-GLM is an ideal choice for spatial scan statistic in the presence of over-dispersed data. With a covariate (maternal anaemia) adjustment, the negative binomial-GLMbased spatial scan statistic detected one significant cluster covering Dir lower district. Without the covariate adjustment, it detected two clusters, each covering one district. The district of Peshawar was seen as the most likely cluster and Battagram as the secondary cluster. However, none of the clusters were detected by GLMM spatial scan statistic, which might be due to the spatial correlation of the random effects in GLMM.

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负二叉-GLM 在空间扫描统计中的表现:巴基斯坦低出生体重儿案例研究。
对健康事件进行空间聚类分析有助于采取有针对性的干预措施。空间扫描统计是此类分析的最新方法,泊松广义线性模型(GLM)的空间扫描统计方法可用于计数数据的空间聚类检测,并进行协变量调整。然而,由于数据过度分散,该方法在建模方面的应用受到限制。最近有人提出了广义线性混合模型(GLMM),通过加入随机效应来模拟模型中其他协变量无法解释的特定区域内在变化,从而对这种过度分散进行建模。然而,这些随机效应可能表现出地理相关性,这可能导致潜在的空间集群未被发现。为处理计数数据中的过度离散问题,本研究旨在评估负二叉-GLM 在空间扫描统计中的性能,该模型适用于 2019 年巴基斯坦开伯尔-普赫图赫瓦省的低出生体重实际数据。结果与泊松-GLM 和 GLMM 进行了比较,表明负二叉-GLM 是在数据过度分散的情况下进行空间扫描统计的理想选择。在进行协变量(孕产妇贫血)调整后,基于负二叉-GLM 的空间扫描统计发现了一个重要的群组,该群组覆盖了 Dir 下区。在未进行协变量调整的情况下,它检测到两个群组,每个群组覆盖一个区。白沙瓦区被认为是最有可能的聚类,而巴塔格拉姆则是次要聚类。然而,GLMM 空间扫描统计没有检测到任何一个聚类,这可能是由于 GLMM 中随机效应的空间相关性造成的。
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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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