Adams Quinn H, Gause Emma L, Baker Rachel E, Hamer Davidson H, Werneck Guilherme L, Hutyra Lucy R, Shioda Kayoko, Wellenius Gregory A
Center for Climate and Health, Boston University School of Public Health, Boston, Massachusetts, United States of America.
Department of Environmental Health, Boston University School of Public Health, Boston, Massachusetts, United States of America.
PLoS Negl Trop Dis. 2025 Jul 28;19(7):e0013316. doi: 10.1371/journal.pntd.0013316. eCollection 2025 Jul.
Vector-borne diseases are highly sensitive to environmental and climatic conditions, which can directly affect vector behavior, parasite development, and transmission dynamics. Identifying the key meteorological drivers of these diseases and understanding the timing of their impacts is crucial for enhancing public health preparedness. This study focuses on visceral leishmaniasis (VL) in Brazil; a parasitic vector-borne disease spread by the bite of infected sandflies whose distribution is heavily influenced by environmental conditions.
We analyzed monthly confirmed VL cases from 2007-2022 using distributed lag nonlinear models within a spatiotemporal Bayesian hierarchical model framework to assess the nonlinear, time-lagged associations between locally defined weather anomalies and VL risk across space. We evaluated the exposure-lag-response relationships between anomalies in monthly average temperature, precipitation, and relative humidity; and VL incidence across Brazilian microregions, considering lags ranging from 0 to 4 months.
Among the 53,968 VL cases reported during the study period, the majority occurred in the Northeast and Central North regions. Our model revealed statistically significant nonlinear relationships between meteorological anomalies and VL risk. Associations were most pronounced in rural and deforested microregions, where climatic extremes intensified transmission risk.
This analysis identified an increased VL risk at higher-than-usual temperatures and a lower risk with higher-than-usual humidity and precipitation across various lags. We offer novel foundational insights for the future development of early warning systems, especially relevant to regions like Brazil facing a substantial VL burden.
媒介传播疾病对环境和气候条件高度敏感,这些条件可直接影响病媒行为、寄生虫发育和传播动态。确定这些疾病的关键气象驱动因素并了解其影响时间对于加强公共卫生防范至关重要。本研究聚焦于巴西的内脏利什曼病(VL);这是一种由受感染的白蛉叮咬传播的寄生虫媒介传播疾病,其分布受环境条件的严重影响。
我们在时空贝叶斯分层模型框架内使用分布滞后非线性模型分析了2007年至2022年每月确诊的VL病例,以评估局部定义的天气异常与空间上VL风险之间的非线性、时间滞后关联。我们评估了月平均温度、降水量和相对湿度异常与巴西各微区域VL发病率之间的暴露-滞后-反应关系,考虑了从0到4个月的滞后。
在研究期间报告的53,968例VL病例中,大多数发生在东北部和中北部地区。我们的模型揭示了气象异常与VL风险之间具有统计学意义的非线性关系。这种关联在农村和森林砍伐地区最为明显,在这些地区极端气候加剧了传播风险。
该分析确定,在高于正常温度时VL风险增加,而在高于正常湿度和降水量时,在不同滞后情况下风险较低。我们为预警系统的未来发展提供了新的基础见解,尤其适用于像巴西这样面临大量VL负担的地区。