| Literature DB >> 25860147 |
Wenjing Ji1, Bin Zhao1.
Abstract
Following an extensive review of the literature, we further analyze the published data to examine the health effects of indoor exposure to particulate matter (PM) of outdoor origin. We obtained data on all-cause, cardiovascular, and respiratory mortality per 10 μg/m3 increase in outdoor PM10 or PM2.5; the infiltration factors for buildings; and estimated time spent outdoors by individuals in the United States, Europe, China, and globally. These data were combined log-linear exposure-response model to estimate the all-cause, cardiovascular, and respiratory mortality of exposure to indoor PM pollution of outdoor origin. Indoor PM pollution of outdoor origin is a cause of considerable mortality, accounting for 81% to 89% of the total increase in mortality associated with exposure to outdoor PM pollution for the studied regions. The findings suggest that enhancing the capacity of buildings to protect occupants against exposure to outdoor PM pollution has significant potential to improve public health outcomes.Entities:
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Year: 2015 PMID: 25860147 PMCID: PMC4393180 DOI: 10.1371/journal.pone.0124238
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Parameters used to evaluate of the effects on mortality of indoor exposure to particulates of outdoor origin.
| Location | Reference | Values | Remarks | |
|---|---|---|---|---|
|
| Overall world | Anderson et al. [ | 0.9% (0.6%, 1.3%) | Mean (95%CI) all-cause mortality; PM2.5. |
| 1.3% (0.5%, 2.2%) | Mean (95%CI) cardiovascular mortality; PM2.5. | |||
| 1.1% (0.2%, 2.0%) | Mean (95%CI) respiratory mortality; PM2.5. | |||
| United States | Daniels [ | 0.54% (0.33%, 0.76%) | Mean (95%CI) all-cause mortality; PM10. | |
| Zanobetti and Schwartz [ | 0.98% (0.75%, 1.22%) | Mean (95%CI) all-cause mortality; PM2.5. | ||
| 0.85% (0.46%, 1.24%) | Mean (95%CI) cardiovascular mortality; PM2.5. | |||
| 1.68% (1.04%, 2.33%) | Mean (95%CI) respiratory mortality; PM2.5. | |||
| Europe | Anderson et al. [ | 0.6% (0.4%, 0.8%) | Mean (95%CI) all-cause mortality; PM10. | |
| 0.9% (0.5%, 1.3%) | Mean (95%CI) cardiovascular mortality; PM10. | |||
| 1.3% (0.5%, 2.0%) | Mean (95%CI) respiratory mortality; PM10. | |||
| China | Chen et al. [ | 0.35% (0.18%, 0.52%) | Mean (95%CI) all-cause mortality; PM10. | |
| 0.44% (0.23%, 0.64%) | Mean (95%CI) cardiovascular mortality; PM10. | |||
| 0.56% (0.31%, 0.81%) | Mean (95%CI) respiratory mortality; PM10. | |||
| Cao et al. [ | 0.20% (0.1%, 0.3%) | Mean (95%CI) all-cause mortality; PM2.5. | ||
| 0.3% (0.1%, 0.40%) | Mean (95%CI) cardiovascular mortality; PM2.5. | |||
| 0.4% (0.2%, 0.6%) | Mean (95%CI) respiratory mortality; PM2.5. | |||
|
| 10 μg/m3 | Each 10 μg/m3 increased in outdoor PM10 or PM2.5. |
Review of infiltration factors for PM10 and PM2.5 in the United States, Europe, and China.
| Reference | Values | Location | |
|---|---|---|---|
| PM10 infiltration | Ozkaynak et al. [ | 0.51 | Riverside. USA |
| 0.52 | Riverside. USA | ||
| Ozkaynak et al. [ | 0.60 | Riverside. USA | |
| Ott et al. [ | 0.55 | Riverside. USA | |
| Lazaridis et al. [ | 0.45 | Oslo. Norway | |
| Hoek et al. [ | 0.17 | Helsinki, Finland | |
| 0.28 | Athens, Greece | ||
| 0.41 | Amsterdam, Netherlands | ||
| 0.27 | Birmingham, UK | ||
| Diapouli et al. [ | 0.56 | Athens, Greece | |
| Zhou and Zhao [ | 0.33 | Anshan | |
| 0.34 | Beijing | ||
| 0.42 | Fuzhou | ||
| 0.42 | Guangzhou | ||
| 0.38 | Hangzhou | ||
| 0.45 | Hong Kong | ||
| 0.29 | Lanzhou | ||
| 0.38 | Shanghai | ||
| 0.30 | Shenyang | ||
| 0.37 | Suzhou | ||
| 0.31 | Taiyuan | ||
| 0.33 | Tangshan | ||
| 0.34 | Tianjin | ||
| 0.30 | Urumqi | ||
| 0.37 | Wuhan | ||
| 0.35 | Xi'an | ||
| PM2.5 infiltration | Ozkaynak et al. [ | 0.70 | Riverside. USA |
| 0.56 | Riverside. USA | ||
| Lee et al. [ | 0.62 | Chongju. Korea | |
| Lachenmyer and Hidy [ | 0.66 | Birmingham. USA | |
| Wallace et al. [ | 0.48 | Seven cities. USA | |
| Williams et al. [ | 0.45 | North Carolina. USA | |
| Reff et al. [ | 0.51 | Three cities. USA | |
| Wallace and Williams [ | 0.55 | North Carolina. USA | |
| Sarnat et al. [ | 0.48 | L.A. USA | |
| Hoek et al. [ | 0.63 | Three Cities, USA | |
| Ozkaynak et al. [ | 0.71 | Riverside. USA | |
| Polidori et al. [ | 0.47 | Los Angeles | |
| Allen et al. [ | 0.62 | USA | |
| 0.47 | USA | ||
| 0.82 | USA | ||
| Meng et al. [ | 0.56 | USA | |
| Haonninen et al. [ | 0.70 | Athens. Greece | |
| 0.63 | Basle. Switzerland | ||
| 0.59 | Helsinki. Finland | ||
| 0.61 | Prague. Czech | ||
| Wichmann et al. [ | 0.55 | Stockholm, Sweden | |
| Diapouli et al. [ | 0.71 | Athens, Greece | |
| Calculated according to literature data | 0.69 | China | |
| 0.32 | China |
Parameters used to evaluate the effects on human health of indoor exposure to particulates of outdoor origin.
| PM10 infiltration factor | PM2.5 infiltration factor | Tout (h) | ||
|---|---|---|---|---|
| United States | Mean | 0.55 | 0.58 | 1.8 |
| max | 0.60 | 0.82 | 2.7 | |
| min | 0.51 | 0.45 | 0.9 | |
| Europe | Mean | 0.36 | 0.63 | 1.8 |
| max | 0.56 | 0.71 | 2.7 | |
| min | 0.17 | 0.55 | 0.9 | |
| China | Mean | 0.36 | 0.51 | 1.6 |
| max | 0.45 | 0.69 | 2.4 | |
| min | 0.29 | 0.32 | 0.8 | |
| Global | Mean | 0.38 | 0.59 | 1.7 |
| max | 0.60 | 0.82 | 2.7 | |
| min | 0.17 | 0.32 | 0.8 |
Fig 1Mortality attributable to indoor exposure to particulates of outdoor origin.
Fig 2Comparison of mortality due to direct exposure to outdoor particles versus indoor exposure to particulates of outdoor origin.
Fig 3Comparison of mortality due to indoor exposure to particles of outdoor origin, according to maximum/minimum duration of outdoor exposure.