Department of Health & Environmental Science, Korea University, Seoul 02841, Korea.
BK21PLUS Program in Embodiment: Health-Society Interaction, Department of Public Health Sciences, Graduate School, Korea University, Seoul 02841, Korea.
Int J Environ Res Public Health. 2020 Oct 3;17(19):7237. doi: 10.3390/ijerph17197237.
Indoor microbiological air quality, including airborne bacteria and fungi, is associated with hospital-acquired infections (HAIs) and emerging as an environmental issue in hospital environment. Many studies have been carried out based on culture-based methods to evaluate bioaerosol level. However, conventional biomonitoring requires laborious process and specialists, and cannot provide data quickly. In order to assess the concentration of bioaerosol in real-time, particles were subdivided according to the aerodynamic diameter for surrogate measurement. Particle number concentration (PNC) and meteorological conditions selected by analyzing the correlation with bioaerosol were included in the prediction model, and the forecast accuracy of each model was evaluated by the mean absolute percentage error (MAPE). The prediction model for airborne bacteria demonstrated highly accurate prediction ( = 0.804, MAPE = 8.5%) from PNC1-3, PNC3-5, and PNC5-10 as independent variables. Meanwhile, the fungal prediction model showed reasonable, but weak, prediction results ( = 0.489, MAPE = 42.5%) with PNC3-5, PNC5-10, PNC > 10, and relative humidity. As a result of external verification, even when the model was applied in a similar hospital environment, the bioaerosol concentration could be sufficiently predicted. The prediction model constructed in this study can be used as a pre-assessment method for monitoring microbial contamination in indoor environments.
室内微生物空气质量,包括空气传播细菌和真菌,与医院获得性感染(HAIs)有关,并在医院环境中成为一个环境问题。许多研究已经基于培养方法进行,以评估生物气溶胶水平。然而,传统的生物监测需要繁琐的过程和专家,并且无法快速提供数据。为了实时评估生物气溶胶的浓度,根据空气动力学直径对颗粒进行了细分,以进行替代测量。将颗粒数浓度(PNC)和气象条件纳入预测模型,通过分析与生物气溶胶的相关性进行选择,并通过平均绝对百分比误差(MAPE)评估每个模型的预测准确性。用于空气传播细菌的预测模型显示,从 PNC1-3、PNC3-5 和 PNC5-10 作为独立变量,对细菌的预测具有高度准确性( = 0.804,MAPE = 8.5%)。同时,真菌预测模型显示出合理但较弱的预测结果( = 0.489,MAPE = 42.5%),其预测变量包括 PNC3-5、PNC5-10、PNC > 10 和相对湿度。通过外部验证,即使在类似的医院环境中应用该模型,也可以充分预测生物气溶胶浓度。本研究构建的预测模型可作为室内环境微生物污染监测的预评估方法。