纳米比亚疟疾高分辨率时空风险绘图:综合分析。

IF 2.4 3区 医学 Q3 INFECTIOUS DISEASES
Song Zhang, Punam Amratia, Tasmin L Symons, Susan F Rumisha, Su Yun Kang, Mark Connell, Petrina Uusiku, Stark Katokele, Jerobeam Hamunyela, Nelly Ntusi, Wilma Soroses, Ernest Moyo, Ophilia Lukubwe, Chivimbiso Maponga, Dominic Lucero, Peter W Gething, Ewan Cameron
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引用次数: 0

摘要

背景:纳米比亚是一个以消除疟疾为目标的疟疾低传播国家,通过改善病例管理、广泛开展室内滞留喷洒和分发驱虫蚊帐,在减少疟疾负担方面取得了重大进展。该国地貌多样,包括人口密度和地理位置各不相同的地区,北部地区容易定期爆发疟疾。随着纳米比亚即将消灭疟疾,疟疾传播已聚集到不同的病灶,确定这些病灶对于部署有针对性的干预措施,以实现到 2030 年南部非洲消灭疟疾八大倡议的目标至关重要。地理空间建模为确定这些病灶提供了有效机制,它综合了常规收集的病例总数和网格环境协变量,将病例数据缩小到高分辨率风险地图中:本研究引入了创新的传染病绘图技术,以生成纳米比亚疟疾的高分辨率时空风险图。该研究采用两阶段方法绘制地图,利用贝叶斯统计建模将环境协变量、人口数据和 2018 年至 2021 年期间从例行监测系统收集的临床疟疾病例数结合起来:为年平均发病率绘制了精细的空间地方病分布图,随后对每周发病率的季节性波动进行了时空建模,并进一步汇总到地区一级。推断出了全国大部分地区的季节性特征,即病例从 12 月底/1 月初开始上升,到 4 月初左右达到高峰,然后从 7 月到 12 月迅速下降到较低水平。发病率在空间上存在高度异质性,北部地区的发病率要高得多,而在一些特定地区则时有发生局部流行病:虽然这项研究承认存在某些局限性,如人口流动性和临床病例报告不完整,但它强调了不断完善地理统计技术为消除疟疾工作提供及时准确支持的重要性。本研究提供的高分辨率空间风险地图有助于指导纳米比亚卫生和社会服务部确定疟疾预防工作的优先次序和目标。这种两阶段时空方法为确定热点和监测疟疾风险模式提供了宝贵的工具,最终有助于实现国家和国家以下各级消除疟疾的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-resolution spatio-temporal risk mapping for malaria in Namibia: a comprehensive analysis.

Background: Namibia, a low malaria transmission country targeting elimination, has made substantial progress in reducing malaria burden through improved case management, widespread indoor residual spraying and distribution of insecticidal nets. The country's diverse landscape includes regions with varying population densities and geographical niches, with the north of the country prone to periodic outbreaks. As Namibia approaches elimination, malaria transmission has clustered into distinct foci, the identification of which is essential for deployment of targeted interventions to attain the southern Africa Elimination Eight Initiative targets by 2030. Geospatial modelling provides an effective mechanism to identify these foci, synthesizing aggregate routinely collected case counts with gridded environmental covariates to downscale case data into high-resolution risk maps.

Methods: This study introduces innovative infectious disease mapping techniques to generate high-resolution spatio-temporal risk maps for malaria in Namibia. A two-stage approach is employed to create maps using statistical Bayesian modelling to combine environmental covariates, population data, and clinical malaria case counts gathered from the routine surveillance system between 2018 and 2021.

Results: A fine-scale spatial endemicity surface was produced for annual average incidence, followed by a spatio-temporal modelling of seasonal fluctuations in weekly incidence and aggregated further to district level. A seasonal profile was inferred across most districts of the country, where cases rose from late December/early January to a peak around early April and then declined rapidly to a low level from July to December. There was a high degree of spatial heterogeneity in incidence, with much higher rates observed in the northern part and some local epidemic occurrence in specific districts sporadically.

Conclusions: While the study acknowledges certain limitations, such as population mobility and incomplete clinical case reporting, it underscores the importance of continuously refining geostatistical techniques to provide timely and accurate support for malaria elimination efforts. The high-resolution spatial risk maps presented in this study have been instrumental in guiding the Namibian Ministry of Health and Social Services in prioritizing and targeting malaria prevention efforts. This two-stage spatio-temporal approach offers a valuable tool for identifying hotspots and monitoring malaria risk patterns, ultimately contributing to the achievement of national and sub-national elimination goals.

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来源期刊
Malaria Journal
Malaria Journal 医学-寄生虫学
CiteScore
5.10
自引率
23.30%
发文量
334
审稿时长
2-4 weeks
期刊介绍: Malaria Journal is aimed at the scientific community interested in malaria in its broadest sense. It is the only journal that publishes exclusively articles on malaria and, as such, it aims to bring together knowledge from the different specialities involved in this very broad discipline, from the bench to the bedside and to the field.
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