| Literature DB >> 33948261 |
Araliya M Senerat1, Sheila M Manemann2, Nicholas S Clements1, Robert D Brook3, Leslie C Hassett4, Véronique L Roger1,2,5.
Abstract
INTRODUCTION: Air pollution is linked to mortality and morbidity. Since humans spend nearly all their time indoors, improving indoor air quality (IAQ) is a compelling approach to mitigate air pollutant exposure. To assess interventions, relying on clinical outcomes may require prolonged follow-up, which hinders feasibility. Thus, identifying biomarkers that respond to changes in IAQ may be useful to assess the effectiveness of interventions.Entities:
Keywords: Indoor air quality; air pollution; ambient air; biomarkers; inflammation; oxidative stress
Year: 2020 PMID: 33948261 PMCID: PMC8057458 DOI: 10.1017/cts.2020.532
Source DB: PubMed Journal: J Clin Transl Sci ISSN: 2059-8661
Fig. 1.Flow diagram illustrating the methods applied to the review. aPhase 1 of the review involved reviewing the title and abstract, and excluded studies that involved only children, factory workers, or pregnant women, involved biomass, coal, or open wood-burning studies; focused only on tobacco, lead, or dust exposures. bPhase 2 involved reviewing the full-text papers and used the same exclusion criteria as Phase 1.
Summary of IAR studies measuring physiological biomarkers and organic compounds in humans
| Citation | Location | Setting | Design | Na | Study duration and collection time points | Biomarkers measured |
|---|---|---|---|---|---|---|
| Physiological biomarkers | ||||||
| Brugge (2017) [ | USA | Home | Double-blind, randomized crossover trial comparing HEPA versus sham filtration in the same group of participants | 23 | Blood collected 3x over 6 weeks (at baseline, week 3, and post-intervention) and air exposures measured continuously | Blood: TNF-RII, IL-6, hsCRP |
| Chen (2015) [ | China | Dorms | Randomized double-blind crossover trial comparing air filtration purifier versus sham filtration among two independent groups | 35 | Blood collected 3x (at baseline, after 2 days of air filtration purifier, and after 2 days of sham filtration) and air exposures measured on an hourly basis for 4 days over a 2-week period | Blood: CRP, fibrinogen, P-selectin, MCP-1[ |
| Wang (2011) [ | China | Kitchen | Cross-sectional comparison of occupational exposures between two independent groups of kitchen versus non-kitchen workers | 110 | 1 day, with blood collected 1x and air exposures measured twice during lunch and dinner hours | Blood: lymphocytic BNMNs, Comet assay variables (tail length[ |
| Chuang (2017) [ | Taiwan | Home | Randomized crossover intervention comparing air filtration intervention versus control (false air conditioner filter) in the same group of participants | 200 | Twelve visits at 2-month intervals over 2 years, with blood and air exposures collected at each visit | Blood: hsCRP[ |
| Cui (2018) [ | China | Home | Double-blind randomized crossover study comparing HEPA versus Sham filtration among the same group of participants | 70 | 4 days with blood collected before and after filtration systems and air exposures monitored before, during, and after filtration systems | Blood: IL-6[ |
| Day (2018) [ | China | Office and dorms | Intervention comparing three ventilation systems (F8-ESP-HEPA, F8 only, F8 + HEPA) across two independent groups | 89 | 5 weeks with four biomarker collections (pre-intervention, 2x during intervention, and post-intervention) and air exposures measured continuously | Blood: CRP, 8-OHdG, sCD62P[ |
| Hassanvand (2017) [ | Tehran, Iran | Retirement home and dorm | Cross-sectional study monitoring of pollutants across two independent groups | 84 | 1 year with six blood collections every 2 months and 24-hour exposure sampling every 2 months | Blood: WBC[ |
| Jung (2014) [ | Taiwan | Office | Cross-sectional study monitoring pollutants over 1-day physiological measurements collected at end of workday across the same group of participants | 115 | 1 day with biomarkers collected at the end of the workday and air exposures monitored during office hours | Urine: epinephrine[ |
| Matthews (2010) [ | UK | Home | Cross-sectional comparison of heating types (piped gas, coal, electricity, liquid propane gas) across independent groups of participants | 80 | Air exposures measured every 5 min over 7 days and blood collected 2x: once during the week and post-6 months to account for seasonal effects | Blood: cGMP |
| Ndong Ba (2019) [ | Senegal | Home | Cross-sectional study monitoring pollutants over 18 days compared across jobs and rural residence among independent groups of participants | 116 | Air exposures measured during working hours over 2.5 weeks and urine collected at the end of each day | Urine: S-PMA[ |
| Olsen (2014) [ | Denmark | Home | Cross-sectional study monitoring pollutants over 2 days using personal and stationary monitoring across independent participants | 81 | Air exposures monitored over 2 days and blood collected after the monitoring. | Blood: CRP, leukocytes[ |
| Pan (2011) [ | Taiwan | Restaurant | Intervention comparing exposures before and after installation of embracing air curtain device in the same group of participants | 45 | Air monitoring and urine collected during the weekend before and 4 weeks after installation | Urine: 8-OHdG[ |
| Shao (2017) [ | China | Home | Randomized crossover intervention comparing HEPA versus Sham filtration in the same group of participants | 35 | 2 weeks of HEPA and 2 weeks of sham, with air exposures measured continuously and blood collected at baseline, end of HEPA, and end of sham | Blood: IL-6, IL-8[ |
| Karottki (2013) [ | Denmark | Home | Randomized, double-blind crossover intervention comparing recirculated particle-filtered versus sham-filtered indoor air in the same group of participants | 48 | Air exposures continuously measured over 4 weeks (2 weeks of each intervention) and blood collected at baseline and at days 2, 7, and 14 of each exposure scenario. | Blood: CRP, leukocytes, CC16, SPD, CD11b, CD31, CD49, CD62L[ |
| Karottki (2014) [ | Denmark | Home | Cross-sectional study monitoring pollutants across independent participants | 78 | Air exposures continuously measured over 2 days and blood measured immediately after | Blood: CRP[ |
| Karottki (2015) [ | Denmark | Home | Intervention comparing air filtration versus sham filtration in the same group of participants | 48 | Seven home visits occurred over a 4-week period across 1.5 years, with air exposures measured on a weekly basis and blood collected during each home visit | Blood: Blood leukocyte counts, monocyte expression of adhesion molecules (CD31, CD62, CD11b[ |
| Lin (2013) [ | Taiwan | Home | Intervention comparing: | 300 | Six home visits over 6 weeks, collecting 24 hour continuous air exposures and blood during each home visit | Blood: hsCRP[ |
| Organic compounds | ||||||
| Fitzgerald (2011) [ | USA | Home | Cross-sectional comparison of independent residents with high versus low levels of PCB exposure | 253 | Air samples were collected over 1 day and blood were collected after | Blood: PCB congeners 28[ |
| Cequier (2015) [ | Norway | Home | Cross-sectional study monitoring of pollutants one time in living rooms of independent mother–child cohorts | 102 | Air samples were collected over 1 day and blood were collected after | Blood: HBB, DDC-DBF, anti-DDC-CO, syn-DDC-CO, BTBPE, DDC-Ant, DBHCTD, DBDPE, sum DDC-CO |
| Bennett (2015) [ | USA | Home | Longitudinal observational study monitoring pollutants twice a year apart throughout the same group of participants | 139 | Air and blood collected at baseline and 1 year later | Blood: pentaBDE congeners, including BDE47[ |
| Ke (2016) [ | China | Kitchen | Comparative observational study comparing exposures in independent groups of staff according to frying oil exposure | 236 | Air samples collected over 12 hours during 2 days and urine collected pre- and post-shifts | Urine: 1-OHP[ |
| Kraft (2018) [ | Germany | Office | Cross-sectional study comparing different PCBs among independent participants | 35 | Blood collected 1x and air sampling was measured during working hours | Blood: PCB 4[ |
| Kwon (2018) [ | South Korea | Hospital | Intervention comparing exposures when moved from old to new hospital building in the same group of participants | 34 | Air exposures measured in both buildings just before moving and urine collected 7 days pre-move and 7 days post-move | Urine: tt-MA[ |
| Lai (2013) [ | Taiwan | Office and kitchen | Longitudinal observational study comparing exposures in two independent groups of cooks versus office-based soldiers | 98 | Urine collected pre- and post-shifts and air sampling collected over 5 days | Urine: 1-OHP[ |
| Li (2019) [ | China | University dorms, offices, labs) | Observational pilot study monitoring pollutants across the same group of participants | 20 | Air samples were collected on 7 consecutive days in four seasons of 1 year and urine collected 1x each season | Urine: urinary OH-PAHs (1-OHPyr[ |
| Meyer (2013) [ | Denmark | Home | Stratified cross-sectional study comparing two independent groups of participants living in non-contaminated PCB flats versus contaminated PCB flats | 273 | Air samples were collected over 2 months and blood collected 1x at the beginning of the study | Blood: 27 PCB congeners in plasma (congener 28[ |
| Fraser (2012) [ | USA | Office | Cross-sectional comparison of exposures in independent groups of participants working in new building, building renovated 1 year prior and buildings with no recent renovation | 31 | Air samples were collected over 4 days and blood was collected at the end of the study | Blood: PFCs (PFOA[ |
| Fraser (2013) [ | USA | Office, homes, and vehicles | Cross-sectional comparison of exposures in independent groups of participants working in new building, building renovated 1 year prior and buildings with no recent renovation | 31 | Air samples were collected over 4 days and blood was collected at the end of the study | Blood: PFCs (PFOA[ |
| Singh, Chandrasek-haran (2016) [ | India | Kitchen | Cross-sectional comparison of exposures in independent groups of kitchen workers versus controls | 188 | Air samples were collected over 1 day and urine was collected 1x | Urine: PAH metabolites (1-NAP[ |
| Singh, Kamal (2016) [ | India | Kitchen | Cross-sectional comparison of exposures in independent groups of kitchen workers versus controls | 188 | Air samples were collected over 1 day and urine was collected 1x | Urine: PAH metabolites (1-NAP[ |
aN indicates the sample size of each study.
Denotes significant changes seen in biomarkers.
Fig. 2.Blood, urine, and saliva biomarkers identified in IAQ papers.aaBiomarkers are listed in order of most frequently reported variations in response to IAQ exposures. bAbbreviations can be found in Fig. 3.
Fig. 3.Glossary of organic compounds.