Department of Public Health and Clinical Medicine, Sustainable Health Section, Umeå University, Umeå, Sweden.
Heidelberg Institute of Global Health and Interdisciplinary Centre for Scientific Computing, Heidelberg University, Heidelberg, Germany.
Front Public Health. 2023 Jun 1;11:1162535. doi: 10.3389/fpubh.2023.1162535. eCollection 2023.
Temperature, precipitation, relative humidity (RH), and Normalized Different Vegetation Index (NDVI), influence malaria transmission dynamics. However, an understanding of interactions between socioeconomic indicators, environmental factors and malaria incidence can help design interventions to alleviate the high burden of malaria infections on vulnerable populations. Our study thus aimed to investigate the socioeconomic and climatological factors influencing spatial and temporal variability of malaria infections in Mozambique.
We used monthly malaria cases from 2016 to 2018 at the district level. We developed an hierarchical spatial-temporal model in a Bayesian framework. Monthly malaria cases were assumed to follow a negative binomial distribution. We used integrated nested Laplace approximation (INLA) in R for Bayesian inference and distributed lag nonlinear modeling (DLNM) framework to explore exposure-response relationships between climate variables and risk of malaria infection in Mozambique, while adjusting for socioeconomic factors.
A total of 19,948,295 malaria cases were reported between 2016 and 2018 in Mozambique. Malaria risk increased with higher monthly mean temperatures between 20 and 29°C, at mean temperature of 25°C, the risk of malaria was 3.45 times higher (RR 3.45 [95%CI: 2.37-5.03]). Malaria risk was greatest for NDVI above 0.22. The risk of malaria was 1.34 times higher (1.34 [1.01-1.79]) at monthly RH of 55%. Malaria risk reduced by 26.1%, for total monthly precipitation of 480 mm (0.739 [95%CI: 0.61-0.90]) at lag 2 months, while for lower total monthly precipitation of 10 mm, the risk of malaria was 1.87 times higher (1.87 [1.30-2.69]). After adjusting for climate variables, having lower level of education significantly increased malaria risk (1.034 [1.014-1.054]) and having electricity (0.979 [0.967-0.992]) and sharing toilet facilities (0.957 [0.924-0.991]) significantly reduced malaria risk.
Our current study identified lag patterns and association between climate variables and malaria incidence in Mozambique. Extremes in climate variables were associated with an increased risk of malaria transmission, peaks in transmission were varied. Our findings provide insights for designing early warning, prevention, and control strategies to minimize seasonal malaria surges and associated infections in Mozambique a region where Malaria causes substantial burden from illness and deaths.
温度、降水、相对湿度(RH)和归一化差异植被指数(NDVI)影响疟疾传播动态。然而,了解社会经济指标、环境因素与疟疾发病率之间的相互作用有助于设计干预措施,以减轻疟疾感染对弱势群体的高负担。因此,我们的研究旨在探讨影响莫桑比克疟疾感染时空变化的社会经济和气候因素。
我们使用了 2016 年至 2018 年的区县级逐月疟疾病例。我们在贝叶斯框架下开发了一个分层时空模型。假设每月的疟疾病例遵循负二项分布。我们使用 R 中的集成嵌套拉普拉斯逼近(INLA)进行贝叶斯推断,并使用分布式滞后非线性模型(DLNM)框架探索气候变量与莫桑比克疟疾感染风险之间的暴露-反应关系,同时调整社会经济因素。
2016 年至 2018 年间,莫桑比克共报告了 19948295 例疟疾。每月平均气温在 20 至 29°C 之间时,疟疾风险随着温度升高而增加,在平均气温 25°C 时,疟疾风险增加 3.45 倍(RR 3.45 [95%CI:2.37-5.03])。NDVI 高于 0.22 时,疟疾风险最大。每月 RH 为 55%时,疟疾风险增加 1.34 倍(1.34 [1.01-1.79])。滞后 2 个月时,总月降水量为 480mm 时,疟疾风险降低 26.1%(0.739 [95%CI:0.61-0.90]),而总月降水量较低的 10mm 时,疟疾风险增加 1.87 倍(1.87 [1.30-2.69])。在调整气候变量后,较低的教育水平显著增加了疟疾风险(1.034 [1.014-1.054]),而拥有电力(0.979 [0.967-0.992])和共用厕所设施(0.957 [0.924-0.991])则显著降低了疟疾风险。
本研究确定了气候变量与莫桑比克疟疾发病率之间的滞后模式和关联。气候变量的极端情况与疟疾传播风险增加有关,传播高峰有所不同。我们的研究结果为设计预警、预防和控制策略提供了依据,以最大限度地减少莫桑比克疟疾的季节性激增和相关感染,该地区疟疾导致大量疾病和死亡。