Pathogen and Microbiome Institute, Northern Arizona Universitygrid.261120.6, Flagstaff, Arizona, USA.
School of Informatics, Computing, and Cyber Systems, Northern Arizona Universitygrid.261120.6, Flagstaff, Arizona, USA.
Microbiol Spectr. 2022 Apr 27;10(2):e0148321. doi: 10.1128/spectrum.01483-21. Epub 2022 Mar 23.
Coccidioidomycosis (Valley fever) is a disease caused by the fungal pathogens Coccidioides immitis and Coccidioides posadasii that are endemic to the southwestern United States and parts of Mexico and South America. Throughout the range where the pathogens are endemic, there are seasonal patterns of infection rates that are associated with certain climatic variables. Previous studies that looked at annual and monthly relationships of coccidioidomycosis and climate suggest that infection numbers are linked with precipitation and temperature fluctuations; however, these analytic methods may miss important nonlinear, nonmonotonic seasonal relationships between the response (Valley fever cases) and explanatory variables (climate) influencing disease outbreaks. To improve our current knowledge and to retest relationships, we used case data from three counties of high endemicity in southern Arizona paired with climate data to construct a generalized additive statistical model that explores which meteorological parameters are most useful in predicting Valley fever incidence throughout the year. We then use our model to forecast the pattern of Valley fever cases by month. Our model shows that maximum monthly temperature, average PM10, and total precipitation 1 month prior to reported cases (lagged model) were all significant in predicting Valley fever cases. Our model fits Valley fever case data in the region of endemicity of southern Arizona and captures the seasonal relationships that predict when the public is at higher risk of being infected. This study builds on and retests relationships described by previous studies regarding climate variables that are important for predicting risk of infection and understanding this fungal pathogen. The inhalation of environmental infectious propagules from the fungal pathogens and by susceptible mammals can result in coccidioidomycosis (Valley fever). Arizona is known to be a region where the pathogen is hyperendemic, and reported cases are increasing throughout the western United States. spp. are naturally occurring fungi in arid soils. Little is known about ecological factors that influence the growth of these fungi, and a higher environmental burden may result in increases in human exposure and therefore case rates. By examining case and climate data from Arizona and using generalized additive statistical models, we were able to examine the relationship between disease outbreaks and climatic variables and predict seasonal time points of increased infection risk.
球孢子菌病(山谷热)是一种由真菌病原体 Coccidioides immitis 和 Coccidioides posadasii 引起的疾病,这些病原体在美国西南部和墨西哥及南美洲的部分地区流行。在病原体流行的范围内,感染率存在季节性模式,与某些气候变量有关。之前的研究表明,球孢子菌病的年度和月度关系与感染数量与降水和温度波动有关;然而,这些分析方法可能会错过影响疾病爆发的反应(山谷热病例)和解释变量(气候)之间重要的非线性、非单调季节性关系。为了提高我们目前的知识水平并重新测试关系,我们使用了亚利桑那州南部三个高流行县的病例数据,并结合气候数据,构建了一个广义加性统计模型,该模型探讨了哪些气象参数在全年预测山谷热发病率方面最有用。然后,我们使用我们的模型按月预测山谷热病例的模式。我们的模型表明,报告病例前一个月的最高月均温度、平均 PM10 和总降水量(滞后模型)对预测山谷热病例均有重要意义。我们的模型适用于亚利桑那州南部流行地区的山谷热病例数据,并捕捉到了预测公众感染风险较高的季节性关系。这项研究建立在之前关于对感染风险预测和理解这种真菌病原体很重要的气候变量的研究关系的基础上,并对其进行了重新测试。环境传染性繁殖体的吸入由真菌病原体引起的疾病,易感哺乳动物可导致球孢子菌病(山谷热)。众所周知,亚利桑那州是该病原体高度流行的地区,在美国西部,报告的病例正在增加。 spp. 是干旱土壤中自然存在的真菌。关于影响这些真菌生长的生态因素知之甚少,较高的环境负担可能导致人类接触增加,因此病例率增加。通过检查来自亚利桑那州的病例和气候数据,并使用广义加性统计模型,我们能够检查疾病爆发与气候变量之间的关系,并预测感染风险增加的季节性时间点。