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从 2012 年到 2019 年旁遮普邦发热病热点的稳定性映射——空间聚类和回归分析。

Mapping the stability of febrile illness hotspots in Punjab from 2012 to 2019- a spatial clustering and regression analysis.

机构信息

Department of Community and Family Medicine, All India Institute of Medical Sciences, Bathinda, Punjab, India.

Centre for Technology Alternatives for Rural Areas (CTARA), Indian Institute of Technology Bombay, Mumbai, Maharashtra, India.

出版信息

BMC Public Health. 2023 Oct 16;23(1):2014. doi: 10.1186/s12889-023-16930-y.

Abstract

INTRODUCTION

Febrile illnesses (FI) represent a typical spectrum of diseases in low-resource settings, either in isolation or with other common symptoms. They contribute substantially to morbidity and mortality in India. The primary objective was to study the burden of FI based on Integrated Disease Surveillance Programme (IDSP) data in Punjab, analyze geospatial and temporal trends and patterns, and identify the potential hotspots for effective intervention.

METHODS

A retrospective ecological study used the district-level IDSP reports between 2012 and 2019. Diseases responsible for FI on a large scale, like Dengue, Chikungunya, Malaria (Plasmodium Falciparum, P. Vivax), Enteric fever, and Pyrexia of Unknown Origin (PUO), were included in the analysis. The digital map of Punjab was obtained from GitHub. Spatial autocorrelation and cluster analysis were done using Moran's I and Getis-Ord G* to determine hotspots of FI using the incidence and crude disease numbers reported under IDSP. Further, negative binomial regression was used to determine the association between Spatio-temporal and population variables per the census 2011. Stable hotspots were depicted using heat maps generated from district-wise yearly data.

RESULTS

PUO was the highest reported FI. We observed a rising trend in the incidence of Dengue, Chikungunya, and Enteric fever, which depicted occasional spikes during the study period. FI expressed significant inter-district variations and clustering during the start of the study period, with more dispersion in the latter part of the study period. P.Vivax malaria depicted stable hotspots in southern districts of Punjab. In contrast, P. Falciparum malaria, Chikungunya, and PUO expressed no spatial patterns. Enteric Fever incidence was high in central and northeastern districts but depicted no stable spatial patterns. Certain districts were common incidence hotspots for multiple diseases. The number of cases in each district has shown over-dispersion for each disease and has little dependence on population, gender, or residence as per regression analysis.

CONCLUSIONS

The study demonstrates that information obtained through IDSP can describe the spatial epidemiology of FI at crude spatial scales and drive concerted efforts against FI by identifying actionable points.

摘要

简介

发热性疾病(FI)在资源匮乏的环境中代表了一组典型的疾病谱,无论是单独存在还是与其他常见症状一起存在。它们在印度造成了大量的发病率和死亡率。主要目标是根据旁遮普邦综合疾病监测计划(IDSP)的数据研究 FI 的负担,分析地理空间和时间趋势和模式,并确定有效的干预潜在热点。

方法

本研究采用回顾性生态研究方法,使用 2012 年至 2019 年的区县级 IDSP 报告。纳入了大规模发热疾病,如登革热、基孔肯雅热、疟疾(恶性疟原虫、间日疟原虫)、肠热症和不明原因发热(PUO)。旁遮普邦的数字地图从 GitHub 获得。使用 Moran's I 和 Getis-Ord G*进行空间自相关和聚类分析,以根据 IDSP 报告的发病率和粗发病率确定 FI 的热点。此外,使用 2011 年人口普查的时空和人口变量进行负二项回归。使用生成的热点地图显示来自各区的年度数据。

结果

PUO 是报告最多的 FI。我们观察到登革热、基孔肯雅热和肠热症的发病率呈上升趋势,在研究期间偶尔出现高峰。FI 表现出显著的区际差异和聚类,在研究开始时较为集中,在研究后期较为分散。南部区的间日疟原虫疟疾呈现稳定的热点。相比之下,恶性疟原虫疟疾、基孔肯雅热和 PUO 没有表现出空间模式。肠热症发病率在中部和东北部地区较高,但没有稳定的空间模式。某些地区是多种疾病的常见发病热点。根据回归分析,每个区的病例数量表现出过度离散,并且与人口、性别或居住无关。

结论

本研究表明,通过 IDSP 获得的信息可以描述 FI 的粗空间尺度的空间流行病学,并通过识别可操作的点来推动对抗 FI 的协同努力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/82e8/10580620/76a5a9ae7c9f/12889_2023_16930_Fig1_HTML.jpg

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