2020-2023年尼泊尔结核病流行与环境因素的空间自相关分析

IF 5.5 1区 医学
Roshan Kumar Mahato, Kyaw Min Htike, Alex Bagas Koro, Rajesh Kumar Yadav, Vijay Sharma, Alok Kafle, Suvash Chandra Ojha
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引用次数: 0

摘要

背景:尽管全球努力减少结核病发病率,但尼泊尔每年仍有大约7万例新病例,2022年的发病率为每10万人229例。本研究调查了尼泊尔2020 - 2023财政年度结核病通报的地理格局,重点关注地表温度、城市化、降水和耕地覆盖率等环境决定因素。方法:利用地理信息系统(GIS)技术、空间关联双变量局部指标(LISA)和空间回归分析,研究尼泊尔地区环境因素与结核病流行之间的空间关联。结核病流行数据来自尼泊尔国家结核病控制中心(NTCC) 2020-2023财政年度。结果:在三个财政年度中,结核病高流行率始终集中在Banke、Parsa和Rautahat等地区,而低流行率地区包括Mustang和Kaski。环境因素与结核病患病率呈显著的空间正相关。地表温度(日)的Moran’s I值分别为0.379、0.424和0.423;LST (night)分别为0.383、0.420和0.425;耕地覆盖率分别为0.325、0.339、0.373;城市化为0.197、0.245和0.246;降水量在2020-2021年、2021-2022年和2022-2023年分别为0.222、0.349和0.104。包括普通最小二乘(OLS)、空间滞后模型(SLM)和空间误差模型(SEM)在内的回归分析表明,地表温度夜(LSTN)、城市化和降水显著影响结核病患病率,解释了2021-2022财年高达72.1%的方差(R2: 0.721)。结论:环境因素对尼泊尔结核病的空间分布有显著影响。这强调了将疾病管理战略与环境卫生政策结合起来有效解决结核病流行问题的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial autocorrelation with environmental factors related to tuberculosis prevalence in Nepal, 2020-2023.

Background: Despite global efforts to reduce tuberculosis (TB) incidence, Nepal remains burdened by approximately 70,000 new cases annually, with an incidence rate of 229 per 100,000 people in 2022. This study investigated the geographic patterns of TB notifications in Nepal from fiscal year 2020 to 2023, focusing on environmental determinants such as land surface temperature (LST), urbanization, precipitation and cropland coverage.

Methods: This study examined the spatial association between environmental factors and TB prevalence in Nepal at the district level, utilizing Geographic Information System (GIS) techniques, bivariate Local Indicators of Spatial Association (LISA) and spatial regression analyses. The tuberculosis prevalence data were obtained from the National Tuberculosis Control Center (NTCC) Nepal for the fiscal years (FY) 2020-2023.

Results: Over the three fiscal years, high TB prevalence consistently clustered in districts such as Banke, Parsa, and Rautahat, while low prevalence areas included Mustang and Kaski. Significant positive spatial autocorrelation was found between environmental factors and TB prevalence. Moran's I values were as follows: for LST (day), 0.379, 0.424, and 0.423; for LST (night), 0.383, 0.420, and 0.425; for cropland coverage, 0.325, 0.339, and 0.373; for urbanization, 0.197, 0.245, and 0.246; and for precipitation, 0.222, 0.349, and 0.104 across FY 2020-2021, FY 2021-2022 and FY 2022-2023, respectively. Regression analyses, including Ordinary Least Squares (OLS), Spatial Lag Model (SLM), and Spatial Error Model (SEM), demonstrated that Land Surface Temperature Night (LSTN), urbanization, and precipitation significantly influenced TB prevalence, explaining up to 72.1% of the variance in FY 2021-2022 (R2: 0.721).

Conclusions: Environmental factors significantly influence the spatial distribution of TB in Nepal. This underscores the importance of integrating disease management strategies with environmental health policies in effectively addressing TB prevalence.

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来源期刊
Infectious Diseases of Poverty
Infectious Diseases of Poverty INFECTIOUS DISEASES-
自引率
1.20%
发文量
368
期刊介绍: Infectious Diseases of Poverty is an open access, peer-reviewed journal that focuses on addressing essential public health questions related to infectious diseases of poverty. The journal covers a wide range of topics including the biology of pathogens and vectors, diagnosis and detection, treatment and case management, epidemiology and modeling, zoonotic hosts and animal reservoirs, control strategies and implementation, new technologies and application. It also considers the transdisciplinary or multisectoral effects on health systems, ecohealth, environmental management, and innovative technology. The journal aims to identify and assess research and information gaps that hinder progress towards new interventions for public health problems in the developing world. Additionally, it provides a platform for discussing these issues to advance research and evidence building for improved public health interventions in poor settings.
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