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Dew point temperature affects ascospore release of allergenic genus Leptosphaeria

机译:露点温度会影响瘦细苯的乳酸雌激素释放

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The genus Leptosphaeria contains numerous fungi that cause the symptoms of asthma and also parasitize wild and crop plants. In search of a robust and universal forecast model, the ascospore concentration in air was measured and weather data recorded from 1 March to 31 October between 2006 and 2012. The experiment was conducted in three European countries of the temperate climate, i.e., Ukraine, Poland, and the UK. Out of over 150 forecast models produced using artificial neural networks (ANNs) and multivariate regression trees (MRTs), we selected the best model for each site, as well as for joint two-site combinations. The performance of all computed models was tested against records from 1 year which had not been used for model construction. The statistical analysis of the fungal spore data was supported by a comprehensive study of both climate and land cover within a 30-km radius from the air sampler location. High-performance forecasting models were obtained for individual sites, showing that the local micro-climate plays a decisive role in biology of the fungi. Based on the previous epidemiological studies, we hypothesized that dew point temperature (DPT) would be a critical factor in the models. The impact of DPT was confirmed only by one of the final best neural models, but the MRT analyses, similarly to the Spearman's rank test, indicated the importance of DPT in all but one of the studied cases and in half of them ranked it as a fundamental factor. This work applies artificial neural modeling to predict the Leptosphaeria airborne spore concentration in urban areas for the first time.
机译:瘦性的瘦性含有许多真菌,导致哮喘的症状,也促使野生和作物植物。寻找稳健且通用的预测模型,在2006年至2012年3月1日至10月31日至10月31日之间测量了空气中的Ascospore浓度。该实验是在三个欧洲温带气候,即乌克兰,波兰的欧洲国家进行的实验。和英国。在使用人工神经网络(ANNS)和多变量回归树(MRTS)产生的超过150个预测模型中,我们为每个站点选择了最佳型号,以及联合双站点组合。所有计算模型的性能都对1年的记录进行了测试,该记录尚未用于模型建设。真菌孢子数据的统计分析是通过从空气采样器位置30公里半径内的气候和陆地覆盖的综合研究支持。为个别部位获得了高性能预测模型,表明当地微观气候在真菌生物学中起着决定性作用。基于先前的流行病学研究,我们假设露点温度(DPT)是模型中的关键因素。 DPT的影响是仅通过最终最佳神经模型之一确认,但同样地分析了Spearman的等级测试,表明DPT在所有学习的情况下以及其中一半的案例中的重要性将其排名为A.基本因素。这项工作适用于人工神经建模,首次预测城市地区的瘦性孢子孢子浓度。

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