Comrie Andrew C, Glueck Mary F
Department of Geography and Regional Development, University of Arizona, Tucson, Arizona 85721, USA.
Ann N Y Acad Sci. 2007 Sep;1111:83-95. doi: 10.1196/annals.1406.024. Epub 2007 Mar 7.
Understanding the predictive relationships between climate variability and coccidioidomycosis is of great importance for the development of an effective public health decision-support system. Preliminary regression-based climate modeling studies have shown that about 80% of the variance in seasonal coccidioidomycosis incidence for southern Arizona can be explained by precipitation and dust-related climate scenarios prior to and concurrent with outbreaks. In earlier studies, precipitation during the normally arid foresummer 1.5-2 years prior to the season of exposure was found to be the dominant predictor. Here, the sensitivity of the seasonal modeling approach is examined as it relates to data quality control (QC), data trends, and exposure adjustment methodologies. Sensitivity analysis is based on both the original period of record, 1992-2003, and updated coccidioidomycosis incidence and climate data extending the period of record through 2005. Results indicate that models using case-level data exposure adjustment do not suffer significantly if individual case report data are used "as is." Results also show that the overall increasing trend in incidence is beyond explanation through climate variability alone. However, results also confirm that climate accounts for much of the coccidioidomycosis incidence variability about the trend from 1992 to 2005. These strongly significant relationships between climate conditions and coccidioidomycosis incidence obtained through regression modeling further support the dual "grow and blow" hypothesis for climate-related coccidioidomycosis incidence risk.
了解气候变异性与球孢子菌病之间的预测关系对于开发有效的公共卫生决策支持系统至关重要。基于回归的初步气候建模研究表明,亚利桑那州南部季节性球孢子菌病发病率约80%的变化可由疫情爆发前及爆发期间与降水和沙尘相关的气候情景来解释。在早期研究中,发现暴露季节前1.5至2年正常干旱的夏初期间的降水量是主要预测因素。在此,研究了季节性建模方法与数据质量控制(QC)、数据趋势和暴露调整方法相关的敏感性。敏感性分析基于原始记录期(1992 - 2003年)以及更新后的球孢子菌病发病率和气候数据(记录期延长至2005年)。结果表明,如果直接使用个体病例报告数据,采用病例级数据暴露调整的模型不会受到显著影响。结果还表明,发病率的总体上升趋势仅通过气候变异性无法解释。然而,结果也证实,在1992年至2005年期间,气候是球孢子菌病发病率围绕趋势变化的主要原因。通过回归建模得出的气候条件与球孢子菌病发病率之间这些高度显著的关系,进一步支持了与气候相关的球孢子菌病发病风险的“生长与传播”双重假说。