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Classification and Regression Tree Approach for Prediction of Potential Hazards of Urban Airborne Bacteria during Asian Dust Events

机译:分类和回归树法预测亚洲沙尘事件中城市空中细菌的潜在危害

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摘要

Despite progress in monitoring and modeling Asian dust (AD) events, real-time public hazard prediction based on biological evidence during AD events remains a challenge. Herein, both a classification and regression tree (CART) and multiple linear regression (MLR) were applied to assess the applicability of prediction for potential urban airborne bacterial hazards during AD events using metagenomic analysis and real-time qPCR. In the present work, Bacillus cereus was screened as a potential pathogenic candidate and positively correlated with PM10 concentration (p < 0.05). Additionally, detection of the bceT gene with qPCR, which codes for an enterotoxin in B. cereus, was significantly increased during AD events (p < 0.05). The CART approach more successfully predicted potential airborne bacterial hazards with a relatively high coefficient of determination (R2) and small bias, with the smallest root mean square error (RMSE) and mean absolute error (MAE) compared to the MLR approach. Regression tree analyses from the CART model showed that the PM10 concentration, from 78.4 µg/m3 to 92.2 µg/m3, is an important atmospheric parameter that significantly affects the potential airborne bacterial hazard during AD events. The results show that the CART approach may be useful to effectively derive a predictive understanding of potential airborne bacterial hazards during AD events and thus has a possible for improving decision-making tools for environmental policies associated with air pollution and public health.
机译:尽管在监视和建模亚洲尘埃(AD)事件方面取得了进展,但基于AD事件期间生物学证据的实时公共危害预测仍然是一个挑战。在这里,分类和回归树(CART)和多元线性回归(MLR)均被用于评估使用兆基因组分析和实时qPCR预测AD事件期间城市潜在空气传播细菌危害的预测的适用性。在目前的工作中,蜡样芽胞杆菌被筛选为潜在的致病候选物,并且与PM10浓度呈正相关(p <0.05)。另外,在AD事件期间,用qPCR检测蜡状芽孢杆菌中肠毒素的bceT基因的检测显着增加(p <0.05)。 CART方法以较高的测定系数(R 2 )和较小的偏差,具有最小的均方根误差(RMSE)和平均绝对误差(MAE),可以更成功地预测潜在的空气传播细菌危害MLR方法。 CART模型的回归树分析表明,PM10浓度(从78.4µg / m 3 到92.2µµg / m 3 )是一个重要的大气参数,会极大地影响潜能。 AD事件期间的空气传播细菌危害。结果表明,CART方法可能有助于有效地获得对AD事件期间潜在的空气传播细菌危害的预测性理解,从而有可能改善与空气污染和公共卫生相关的环境政策的决策工具。

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