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首页> 外文期刊>Science of the total environment >Clustering cities with similar fine participate matter exposure characteristics based on residential infiltration and in-vehide commuting factors
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Clustering cities with similar fine participate matter exposure characteristics based on residential infiltration and in-vehide commuting factors

机译:基于居民渗透和通勤通勤因素,将具有相似优良参与物质暴露特征的城市聚类

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Epidemiological studies have observed between city heterogeneity in PM_(2.5)-mortality risk estimates. These differences could potentially be due to the use of central-site monitors as a surrogate for exposure which do not account for an individual's activities or ambient pollutant infiltration to the indoor environment Therefore, relying solely on central-site monitoring data introduces exposure error in the epidemiological analysis. The amount of exposure error produced by using the central-site monitoring data may differ by city. The objective of this analysis was to cluster cities with similar exposure distributions based on residential infiltration and in-vehicle commuting characteristics. Factors related to residential infiltration and commuting were developed from the American Housing Survey (AHS) from 2001 to 2005 for 94 Core-Based Statistical Areas (CBSAs). We conducted two separate cluster analyses using a k-means clustering algorithm to cluster CBSAs based on these factors. The first only included residential infiltration factors (i.e. percent of homes with central air conditioning (AC) mean year home was built, and mean home size) while the second incorporated both infiltration and commuting (i.e. mean in-vehide commuting time and mean in-vehide commuting distance) factors. Clustering on residential infiltration factors resulted in 5 clusters, with two having distinct exposure distributions. Cluster 1 consisted of cities with older, smaller homes with less central AC while homes in Cluster 2 cities were newer, larger, and more likely to have central AC. Including commuting factors resulted in 10 clusters. Clusters with shorter in-vehicle commuting times had shorter in-vehide commuting distances. Cities with newer homes also tended to have longer commuting times and distances. This is the first study to employ cluster analysis to group cities based on exposure factors. Identifying cities with similar exposure distributions may help explain city-to-city heterogeneity in PM_(2.5) mortality risk estimates.
机译:流行病学研究在PM_(2.5)-死亡率风险估计中观察到城市异质性之间。这些差异可能是由于使用中心站点监控器作为暴露的替代品,而不是考虑个人活动或环境污染物向室内环境的渗透。因此,仅依靠中心站点监控数据会导致暴露误差。流行病学分析。使用中心站点监视数据所产生的曝光错误量可能因城市而异。该分析的目的是基于居民渗透率和车内通勤特征,将暴露分布相似的城市聚在一起。根据2001年至2005年的美国住房调查(AHS),针对94个基于核心统计区域(CBSA)得出了与住宅渗透和通勤有关的因素。我们基于这些因素,使用k-均值聚类算法对CBSA进行了两个单独的聚类分析。前者仅包括住宅渗透率(即,具有中央空调(AC)的房屋的百分比,即平均年房屋建造量和平均房屋大小),而后者则包括渗透和通勤(即,平均车内通勤时间和平均入户时间)。车辆通勤距离)因素。住宅渗透因子的聚类导致5个聚类,其中两个具有不同的暴露分布。集群1的城市拥有较旧,较小的房屋,中央空调较少,而集群2的城市的房屋较新,较大,并且具有中央空调的可能性更大。包括通勤因素,产生了10个集群。上下班时间短的集群上下班距离短。房屋较新的城市通勤时间和距离也往往更长。这是第一项采用聚类分析基于暴露因素对城市进行分组的研究。识别具有相似暴露分布的城市可能有助于解释PM_(2.5)死亡率风险估计中的城市间异质性。

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