Mukabana Linda N, Mshani Issa H, Gachohi John, Minja Elihaika G, Jackson Frank M, Kahamba Najat F, Pinda Polius G, Muyaga Letus, Msaky Dickson S, Ngowo Halfan S, Mambo Susan N, Olwendo Amos, Bisanzio Donal, Okumu Fredros O
School of Public Health, Jomo Kenyatta University of Agriculture and Technology, Nairobi, Kenya.
Environmental Health, and Ecological Sciences Department, Ifakara Health Institute, Morogoro, United Republic of Tanzania.
Malar J. 2025 May 29;24(1):172. doi: 10.1186/s12936-025-05418-2.
As malaria-endemic countries progress towards elimination, distinct patterns of heterogeneous transmission are emerging. In south-eastern Tanzania, despite intensive control efforts, localized transmission shows prevalence ranging from under 1% to over 50% among nearby villages. This study investigated the socioeconomic and environmental factors driving this spatial heterogeneity.
A cross-sectional survey was conducted in the Kilombero and Ulanga districts of south-eastern Tanzania between 2022 and 2023, screening 3,249 individuals (ages 5-60) across 10 villages for malaria using rapid diagnostic tests (RDTs). Socioeconomic data was collected from all surveyed households and villages via questionnaires, while environmental data were obtained from remote sensing data sources. Associations between socioeconomic factors and malaria infection were analysed using a zero-inflated negative binomial model and employed a generalized additive model (GAM) to assess the impact of rainfall, and temperature on malaria infection.
Greater elevation and higher rainfall were positively associated with malaria infection (OR = 1.68, 95% CI 1.38-2.05, p < 0.001 and OR = 1.46, 95% CI 1.14-1.87, p < 0.05 respectively), while temperature showed no significant effect (OR = 0.70, 95% CI 0.51-1.13, p = 0.117). Households in densely vegetated areas had higher malaria infections compared to those in more developed, built-up areas. At the individual level, males had a higher prevalence (355; 28.6%) and displayed significantly greater odds of infection (OR = 1.53, 95% CI 1.15-2.03, p < 0.05) than females (433; 21.6%). School-aged children (5-17 years) had a higher prevalence (36.9%) compared to adults (18-60 years) (15.9%). The probability of infection declined with increasing age (OR = 0.28, 95% CI 0.25-0.31, p < 0.001). Larger household sizes (more than four members) were positively associated with malaria infection (OR = 1.72, 95% CI 1.29-2.29, p < 0.001). Open-eave housing was associated with higher odds of malaria, whereas closed eaves (OR = 0.56, 95% CI 0.38-0.82, p < 0.05) and metal roofs (OR = 0.62, 95% CI 0.44-0.87, p < 0.05) were protective factors. Open water sources were positively associated with malaria infection compared to protected water sources (OR = 0.57, 95% CI 0.38-0.85, p < 0.05). Lack of bed net use was positively associated with malaria but this was not statistically significant (OR = 1.54, 95% CI 0.68-3.48, p = 0.299).
This study highlights the complex interplay between socioeconomic and environmental factors contributing to the fine-scale spatial heterogeneity of malaria in south-eastern Tanzania. Understanding these localized drivers is essential for designing targeted, effective strategies that support broader malaria elimination goals.
随着疟疾流行国家朝着消除疟疾的目标迈进,不同的异质传播模式正在显现。在坦桑尼亚东南部,尽管进行了密集的防控工作,但局部传播在附近村庄的流行率仍在1%以下至50%以上之间。本研究调查了导致这种空间异质性的社会经济和环境因素。
2022年至2023年期间,在坦桑尼亚东南部的基洛梅罗和乌朗加地区进行了一项横断面调查,使用快速诊断测试(RDT)对10个村庄的3249名个体(5至60岁)进行疟疾筛查。通过问卷调查从所有接受调查的家庭和村庄收集社会经济数据,同时从遥感数据源获取环境数据。使用零膨胀负二项式模型分析社会经济因素与疟疾感染之间的关联,并采用广义相加模型(GAM)评估降雨和温度对疟疾感染的影响。
海拔升高和降雨量增加与疟疾感染呈正相关(OR = 1.68,95%CI 1.38 - 2.05,p < 0.001;OR = 1.46,95%CI 1.14 - 1.87,p < 0.05),而温度没有显著影响(OR = 0.70,95%CI 0.51 - 1.13,p = 0.117)。与植被较少的发达建成区相比,植被茂密地区的家庭疟疾感染率更高。在个体层面,男性的患病率更高(355例;28.6%),且感染几率显著高于女性(433例;21.6%)(OR = 1.53,95%CI 1.15 - 2.03,p < 0.05)。学龄儿童(5至17岁)的患病率(36.9%)高于成年人(18至60岁)(15.9%)。感染概率随年龄增长而下降(OR = 0.28,95%CI 0.25 - 0.31,p < 0.001)。家庭规模较大(超过四名成员)与疟疾感染呈正相关(OR = 1.72,95%CI 1.29 - 2.29,p < 0.001)。开放式屋檐住房与疟疾感染几率较高相关,而封闭式屋檐(OR = 0.56,95%CI 0.38 - 0.82,p < 0.05)和金属屋顶(OR = 0.62,95%CI 0.44 - 0.87,p < 0.05)是保护因素。与受保护的水源相比,开放水源与疟疾感染呈正相关(OR = 0.57,95%CI 0.38 - 0.85,p < 0.05)。未使用蚊帐与疟疾感染呈正相关,但无统计学意义(OR = 1.54,95%CI 0.68 - 3.48,p = 0.299)。
本研究强调了社会经济和环境因素之间复杂的相互作用,这些因素导致了坦桑尼亚东南部疟疾在微观尺度上的空间异质性。了解这些局部驱动因素对于设计支持更广泛疟疾消除目标的针对性有效策略至关重要。