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首页> 外文期刊>International Journal of Biometeorology: Journal of the International Society of Biometeorology >Development and validation of a 5-day-ahead hay fever forecast for patients with grass-pollen-induced allergic rhinitis
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Development and validation of a 5-day-ahead hay fever forecast for patients with grass-pollen-induced allergic rhinitis

机译:草花粉过敏性鼻炎患者提前5天花粉症预测的建立和验证

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One-third of the Dutch population suffers from allergic rhinitis, including hay fever. In this study, a 5-day-ahead hay fever forecast was developed and validated for grass pollen allergic patients in the Netherlands. Using multiple regression analysis, a two-step pollen and hay fever symptom prediction model was developed using actual and forecasted weather parameters, grass pollen data and patient symptom diaries. Therefore, 80 patients with a grass pollen allergy rated the severity of their hay fever symptoms during the grass pollen season in 2007 and 2008. First, a grass pollen forecast model was developed using the following predictors: (1) daily means of grass pollen counts of the previous 10 years; (2) grass pollen counts of the previous 2-week period of the current year; and (3) maximum, minimum and mean temperature (R (2) = 0.76). The second modeling step concerned the forecasting of hay fever symptom severity and included the following predictors: (1) forecasted grass pollen counts; (2) day number of the year; (3) moving average of the grass pollen counts of the previous 2 week-periods; and (4) maximum and mean temperatures (R (2) = 0.81). Since the daily hay fever forecast is reported in three categories (low-, medium- and high symptom risk), we assessed the agreement between the observed and the 1- to 5-day-ahead predicted risk categories by kappa, which ranged from 65 % to 77 %. These results indicate that a model based on forecasted temperature and grass pollen counts performs well in predicting symptoms of hay fever up to 5 days ahead
机译:荷兰人口的三分之一患有变应性鼻炎,包括花粉症。在这项研究中,针对荷兰的草粉花粉过敏患者,制定并验证了提前5天的花粉症。使用多元回归分析,使用实际和预测的天气参数,草花粉数据和患者症状日记,建立了两步花粉和花粉症症状预测模型。因此,有80名草花粉过敏患者对2007年和2008年草花粉季节中花粉症症状的严重程度进行了评估。首先,使用以下预测因子开发了草花粉预测模型:(1)每天的草粉花粉计数方法前10年; (2)本年度前2周的草花粉计数; (3)最高,最低和平均温度(R(2)= 0.76)。第二步建模涉及花粉症症状严重程度的预测,并包括以下预测因素:(1)预测草花粉数量; (2)一年中的天数; (3)前两个星期的草花粉计数的移动平均值; (4)最高和平均温度(R(2)= 0.81)。由于每日花粉症的预测报告分为三类(低,中,高症状风险),因此我们通过kappa评估了观察到的和提前1至5天预测的风险类别之间的一致性,其范围从65 %至77%。这些结果表明,基于预测的温度和草粉花粉数量的模型在预测花粉症的症状之前(长达5天)表现良好

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