Department of Civil and Environmental Engineering, Stanford University, Stanford, CA, USA.
Indoor Air. 2014 Feb;24(1):59-70. doi: 10.1111/ina.12049. Epub 2013 May 23.
Identifying and quantifying secondhand tobacco smoke (SHS) that drifts between multiunit homes is critical to assessing exposure. Twenty-three different gaseous and particulate measurements were taken during controlled emissions from smoked cigarettes and six other common indoor source types in 60 single-room and 13 two-room experiments. We used measurements from the 60 single-room experiments for (i) the fitting of logistic regression models to predict the likelihood of SHS and (ii) the creation of source profiles for chemical mass balance (CMB) analysis to estimate source apportionment. We then applied these regression models and source profiles to the independent data set of 13 two-room experiments. Several logistic regression models correctly predicted the presence of cigarette smoke more than 80% of the time in both source and receptor rooms, with one model correct in 100% of applicable cases. CMB analysis of the source room provided significant PM2.5 concentration estimates of all true sources in 9 of 13 experiments and was half-correct (i.e., included an erroneous source or missed a true source) in the remaining four. In the receptor room, CMB provided significant estimates of all true sources in 9 of 13 experiments and was half-correct in another two.
识别和量化多户住宅之间飘移的二手烟(SHS)对于评估暴露情况至关重要。在 60 个单室和 13 个双室实验中,对吸烟香烟和其他六种常见室内源类型的受控排放进行了 23 次不同的气态和颗粒测量。我们使用 60 个单室实验的测量值:(i)拟合逻辑回归模型来预测 SHS 的可能性,(ii)创建化学质量平衡(CMB)分析的源谱,以估计源分配。然后,我们将这些回归模型和源谱应用于 13 个双室实验的独立数据集。几个逻辑回归模型正确预测了源室和接收室中香烟烟雾存在的时间超过 80%,其中一个模型在所有适用情况下都是正确的。源室的 CMB 分析在 13 个实验中的 9 个中提供了所有真实源的显著 PM2.5 浓度估计,在其余 4 个中则存在一半的错误(即包括错误的源或遗漏了真实的源)。在接收室中,CMB 在 13 个实验中的 9 个中提供了所有真实源的显著估计,在另外两个中则存在一半的错误。