Katial R K, Zhang Y, Jones R H, Dyer P D
Department of Allergy and Immunology, Fitzsimons Army Medical Center, Aurora, Co 80045, USA.
Int J Biometeorol. 1997 Jul;41(1):17-22. doi: 10.1007/s004840050048.
Fungal spore counts of Cladosporium, Alternaria, and Epicoccum were studied during 8 years in Denver, Colorado. Fungal spore counts were obtained daily during the pollinating season by a Rotorod sampler. Weather data were obtained from the National Climatic Data Center. Daily averages of temperature, relative humidity, daily precipitation, barometric pressure, and wind speed were studied. A time series analysis was performed on the data to mathematically model the spore counts in relation to weather parameters. Using SAS PROC ARIMA software, a regression analysis was performed, regressing the spore counts on the weather variables assuming an autoregressive moving average (ARMA) error structure. Cladosporium was found to be positively correlated (P < 0.02) with average daily temperature, relative humidity, and negatively correlated with precipitation. Alternaria and Epicoccum did not show increased predictability with weather variables. A mathematical model was derived for Cladosporium spore counts using the annual seasonal cycle and significant weather variables. The model for Alternaria and Epicoccum incorporated the annual seasonal cycle. Fungal spore counts can be modeled by time series analysis and related to meteorological parameters controlling for seasonallity; this modeling can provide estimates of exposure to fungal aeroallergens.
在科罗拉多州丹佛市,对枝孢菌属、链格孢属和附球菌属的真菌孢子计数进行了为期8年的研究。在授粉季节,通过旋转棒采样器每日获取真菌孢子计数。天气数据来自国家气候数据中心。研究了每日平均温度、相对湿度、日降水量、气压和风速。对数据进行了时间序列分析,以建立孢子计数与天气参数之间关系的数学模型。使用SAS PROC ARIMA软件进行回归分析,在假设自回归移动平均(ARMA)误差结构的情况下,将孢子计数对天气变量进行回归。发现枝孢菌属与日平均温度、相对湿度呈正相关(P < 0.02),与降水量呈负相关。链格孢属和附球菌属与天气变量之间未显示出更高的可预测性。利用年度季节周期和重要天气变量,得出了枝孢菌属孢子计数的数学模型。链格孢属和附球菌属的模型纳入了年度季节周期。真菌孢子计数可以通过时间序列分析进行建模,并与控制季节性的气象参数相关;这种建模可以提供真菌气传变应原暴露的估计值。