MRC Centre for Global Infectious Disease Analysis, Department of Infectious Disease Epidemiology, Imperial College London, London, United Kingdom.
PLoS Negl Trop Dis. 2021 Jan 11;15(1):e0008974. doi: 10.1371/journal.pntd.0008974. eCollection 2021 Jan.
In the last 20 years yellow fever (YF) has seen dramatic changes to its incidence and geographic extent, with the largest outbreaks in South America since 1940 occurring in the previously unaffected South-East Atlantic coast of Brazil in 2016-2019. While habitat fragmentation and land-cover have previously been implicated in zoonotic disease, their role in YF has not yet been examined. We examined the extent to which vegetation, land-cover, climate and host population predicted the numbers of months a location reported YF per year and by each month over the time-period. Two sets of models were assessed, one looking at interannual differences over the study period (2003-2016), and a seasonal model looking at intra-annual differences by month, averaging over the years of the study period. Each was fit using hierarchical negative-binomial regression in an exhaustive model fitting process. Within each set, the best performing models, as measured by the Akaike Information Criterion (AIC), were combined to create ensemble models to describe interannual and seasonal variation in YF. The models reproduced the spatiotemporal heterogeneities in YF transmission with coefficient of determination (R2) values of 0.43 (95% CI 0.41-0.45) for the interannual model and 0.66 (95% CI 0.64-0.67) for the seasonal model. For the interannual model, EVI, land-cover and vegetation heterogeneity were the primary contributors to the variance explained by the model, and for the seasonal model, EVI, day temperature and rainfall amplitude. Our models explain much of the spatiotemporal variation in YF in South America, both seasonally and across the period 2003-2016. Vegetation type (EVI), heterogeneity in vegetation (perhaps a proxy for habitat fragmentation) and land cover explain much of the trends in YF transmission seen. These findings may help understand the recent expansions of the YF endemic zone, as well as to the highly seasonal nature of YF.
在过去的 20 年里,黄热病(YF)的发病率和地理范围发生了巨大变化,自 1940 年以来,南美洲最大的疫情发生在 2016 年至 2019 年以前未受影响的巴西东南大西洋沿岸。虽然生境破碎化和土地覆盖物以前与人畜共患病有关,但它们在 YF 中的作用尚未得到检验。我们研究了植被、土地覆盖、气候和宿主种群在多大程度上预测了一个地点每年报告 YF 的月份数以及该时间段内每个月的报告数。评估了两套模型,一套模型研究了研究期间(2003-2016 年)的年际差异,另一套季节性模型研究了按月的年内差异,平均了研究期间的年份。每个模型都使用分层负二项回归在详尽的模型拟合过程中进行拟合。在每个集合中,根据赤池信息量准则(AIC)进行衡量,表现最好的模型被组合在一起,创建描述 YF 年际和季节性变化的综合模型。这些模型再现了 YF 传播的时空异质性,年际模型的决定系数(R2)值为 0.43(95%CI 0.41-0.45),季节性模型的 R2 值为 0.66(95%CI 0.64-0.67)。对于年际模型,EVI、土地覆盖和植被异质性是模型解释方差的主要因素,而对于季节性模型,EVI、日温度和降雨幅度是模型解释方差的主要因素。我们的模型解释了南美洲 YF 的大部分时空变化,包括季节性变化和 2003-2016 年期间的变化。植被类型(EVI)、植被异质性(可能是生境破碎化的代理)和土地覆盖解释了 YF 传播趋势的大部分。这些发现可能有助于了解 YF 流行地区的近期扩张,以及 YF 高度季节性的性质。