Literature DB >> 33948261

Biomarkers and indoor air quality: A translational research review.

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.
METHODS: We conducted a narrative review by searching several databases to identify studies published over the last decade that measured the response of blood, urine, and/or salivary biomarkers to variations (natural and intervention-induced) of changes in indoor air pollutant exposure.
RESULTS: Numerous studies reported on associations between IAQ exposures and biomarkers with heterogeneity across study designs and methods. This review summarizes the responses of 113 biomarkers described in 30 articles. The biomarkers which most frequently responded to variations in indoor air pollutant exposures were high sensitivity C-reactive protein (hsCRP), von Willebrand Factor (vWF), 8-hydroxy-2'-deoxyguanosine (8-OHdG), and 1-hydroxypyrene (1-OHP).
CONCLUSIONS: This review will guide the selection of biomarkers for translational studies evaluating the impact of indoor air pollutants on human health. © The Association for Clinical and Translational Science 2020.

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


Introduction

Air quality impacts human health [1,2]; airborne contaminants include fine particulate matter (PM2.5, airborne particles with diameters less than 2.5 µm), ozone (O3), volatile organic compounds (VOCs), and biological particles (e.g., allergens and pathogens). Since individuals spend about 90% of their time indoors, indoor air quality (IAQ) is a key driver of the effect of air quality on human health [3,4]. In particular, IAQ is linked to cardiovascular [5] and respiratory morbidity [6,7] and mortality [8-11]. Modeling data estimated that indoor exposure to PM2.5 accounts for the vast majority of the mortality burden being attributed to total exposure to PM2.5 [10]. To evaluate the effectiveness of interventions to improve IAQ, one must study relevant outcomes. Cardiovascular and respiratory events can take a long time to accrue and be challenging to study in a randomized design. Thus, intermediate endpoints that respond to natural or intervention-induced changes in IAQ are critical to research in this field. The American Heart Association Scientific Statement on air pollution and cardiovascular disease underscored the need to “better describe the physiological relevance in humans and the fundamental details of the mechanisms” [2]. The goal of the present review is to address this stated need and summarize current knowledge on biomarkers associated with IAQ exposure in order to guide the design of translational research studies on indoor air quality.

Methods

Data Sources and Search Strategies

A comprehensive search was conducted from January 1, 2000 to September 17, 2019 to identify studies that reported on blood, urine, and salivary biomarkers relevant to indoor air pollution exposure and toxicology. Breath biomarkers were beyond our intended scope and are not addressed herein. The search strategy was designed and conducted by an experienced librarian (L.C.H.) with input from investigators (A.M.S. and S.M.M.) and was performed in Ovid Medline, Ovid Embase, Ovid Cochrane Central Register of Controlled Trials, Ovid Cochrane Database of Systematic Reviews, and Scopus. Controlled vocabulary supplemented with keywords was used, the search was limited to the English language, and animal studies were excluded. The full search strategy is included in the online supplemental Appendix 1.

Study Selection

A total of 1124 papers were identified. Phase 1 involved 2 investigators (A.M.S. and S.M.M.) reviewing all titles and abstracts. We included all English language original research studies with at least 10 adult participants published over the last decade between January 1, 2010 and September 17, 2019. Only studies that measured biomarkers in blood, urine, or saliva and focused on indoor exposures were included. We 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. Studies with industrial settings were excluded because indoor pollutants that may be encountered in industrial settings are not representative of indoor exposures in most buildings, including homes, offices, schools, and healthcare settings. In doing so, we selected 53 full-text papers for analysis. Phase 2 involved 2 investigators (A.M.S. and S.M.M.) reviewing the full-text papers. Data reviewed included the type of biomarkers and specimen type (blood, urine, and saliva), country, setting (home, office, etc.), seasons, frequency of data collection, study length, intervention type, population type and size, air pollutant levels and types, and a summary of methods and results. Among these, 23 papers were excluded: 21 did not meet the inclusion criteria (1 article had no mention of biomarkers, 7 collected air exposure measurements off-site, 8 had no mention of IAQ exposures, 1 focused on factory workers, 3 used coal/biomass/open wood burning, 1 included participants with a disease), and 2 were inaccessible. Thirty articles were retained for the final analyses (Fig. 1).
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.

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.

Results

The thirty studies included sample sizes ranging from 20 to 200 participants (Table 1). Participants’ age ranged from 15 to 90, and originated from 11 countries (5 in the USA, 7 in China, 5 in Taiwan, 1 in South Korea, 8 in Europe, 1 in Iran, 1 in Senegal, and 2 in India). Most studies (18 out of 30) consisted of non-randomized comparisons across different settings with a few observational monitoring. Nineteen of the studies were observational and/or cross-sectional studies, while the remaining 11 studies were interventional and/or crossover trials. More details regarding study design can be found in Table 1. Almost half of the studies (n = 12) measured biomarkers at only one time point. Out of 30 studies, 3 provided an estimate of their statistical power to observe a change.
Table 1.

Summary of IAR studies measuring physiological biomarkers and organic compounds in humans

CitationLocationSettingDesignNa Study duration and collection time pointsBiomarkers measured
Physiological biomarkers
Brugge (2017) [22]USAHomeDouble-blind, randomized crossover trial comparing HEPA versus sham filtration in the same group of participants23Blood collected 3x over 6 weeks (at baseline, week 3, and post-intervention) and air exposures measured continuouslyBlood: TNF-RII, IL-6, hsCRP
Chen (2015) [14]ChinaDormsRandomized double-blind crossover trial comparing air filtration purifier versus sham filtration among two independent groups35Blood 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 periodBlood: CRP, fibrinogen, P-selectin, MCP-1[*], IL-1β[*], IL-6, TNF-α, myeloperoxidase[*], sCD40L[*], PAI-1, t-PA[*], D-Dimer, endothelin-1, angiotensin-converting enzyme
Wang (2011) [34]ChinaKitchenCross-sectional comparison of occupational exposures between two independent groups of kitchen versus non-kitchen workers1101 day, with blood collected 1x and air exposures measured twice during lunch and dinner hoursBlood: lymphocytic BNMNs, Comet assay variables (tail length[*] and tail DNA%), SOD, and MDA[*] Urine: 1-OHP, 8-oxodG
Chuang (2017) [19]TaiwanHomeRandomized crossover intervention comparing air filtration intervention versus control (false air conditioner filter) in the same group of participants200Twelve visits at 2-month intervals over 2 years, with blood and air exposures collected at each visitBlood: hsCRP[*], 8-OHdG[*], and fibrinogen
Cui (2018) [23]ChinaHomeDouble-blind randomized crossover study comparing HEPA versus Sham filtration among the same group of participants704 days with blood collected before and after filtration systems and air exposures monitored before, during, and after filtration systemsBlood: IL-6[*], vWF[*], and sCD62PUrine: MDA
Day (2018) [12]ChinaOffice and dormsIntervention comparing three ventilation systems (F8-ESP-HEPA, F8 only, F8 + HEPA) across two independent groups895 weeks with four biomarker collections (pre-intervention, 2x during intervention, and post-intervention) and air exposures measured continuouslyBlood: CRP, 8-OHdG, sCD62P[*], VWF[*] Urine: MDA
Hassanvand (2017) [20]Tehran, IranRetirement home and dormCross-sectional study monitoring of pollutants across two independent groups841 year with six blood collections every 2 months and 24-hour exposure sampling every 2 monthsBlood: WBC[*], hsCRP[*], sTNF-RII[*], IL-6[*], vWF[*]
Jung (2014) [24]TaiwanOfficeCross-sectional study monitoring pollutants over 1-day physiological measurements collected at end of workday across the same group of participants1151 day with biomarkers collected at the end of the workday and air exposures monitored during office hoursUrine: epinephrine[*], norepinephrine[*], cortisol[*], creatinine, 8-OHdG[*] Saliva: IL-6 and TNF-a
Matthews (2010) [38]UKHomeCross-sectional comparison of heating types (piped gas, coal, electricity, liquid propane gas) across independent groups of participants80Air exposures measured every 5 min over 7 days and blood collected 2x: once during the week and post-6 months to account for seasonal effectsBlood: cGMP
Ndong Ba (2019) [25]SenegalHomeCross-sectional study monitoring pollutants over 18 days compared across jobs and rural residence among independent groups of participants116Air exposures measured during working hours over 2.5 weeks and urine collected at the end of each dayUrine: S-PMA[*], t,t-MA, 1- OHP[*], 8-OHdG[*], TNF-a, IL-1b, IL-6 and IL-8
Olsen (2014) [18]DenmarkHomeCross-sectional study monitoring pollutants over 2 days using personal and stationary monitoring across independent participants81Air exposures monitored over 2 days and blood collected after the monitoring.Blood: CRP, leukocytes[*]
Pan (2011) [33]TaiwanRestaurantIntervention comparing exposures before and after installation of embracing air curtain device in the same group of participants45Air monitoring and urine collected during the weekend before and 4 weeks after installationUrine: 8-OHdG[*], MDA[*]
Shao (2017) [13]ChinaHomeRandomized crossover intervention comparing HEPA versus Sham filtration in the same group of participants352 weeks of HEPA and 2 weeks of sham, with air exposures measured continuously and blood collected at baseline, end of HEPA, and end of shamBlood: IL-6, IL-8[*], CRP, Fibrinogen, 8-OHdG
Karottki (2013) [15]DenmarkHomeRandomized, double-blind crossover intervention comparing recirculated particle-filtered versus sham-filtered indoor air in the same group of participants48Air 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[*], hemoglobin
Karottki (2014) [17]DenmarkHomeCross-sectional study monitoring pollutants across independent participants78Air exposures continuously measured over 2 days and blood measured immediately afterBlood: CRP[*], HbA1c[*], Leukocytes[*], lymphocytes[*], monocytes[*], neutrophils, eosinophils[*], CD31, CD62L, CD11b[*], and CD49
Karottki (2015) [16]DenmarkHomeIntervention comparing air filtration versus sham filtration in the same group of participants48Seven 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 visitBlood: Blood leukocyte counts, monocyte expression of adhesion molecules (CD31, CD62, CD11b[*], CD49), CRP, CC16, SPD, total cholesterol, HDL, LDL, and triglycerides
Lin (2013) [21]TaiwanHomeIntervention comparing:(windows open, closed, closed with AC on) in the same group of participants300Six home visits over 6 weeks, collecting 24 hour continuous air exposures and blood during each home visitBlood: hsCRP[*], 8-OHdG[*], and fibrinogen[*]
Organic compounds
Fitzgerald (2011) [43]USAHomeCross-sectional comparison of independent residents with high versus low levels of PCB exposure253Air samples were collected over 1 day and blood were collected afterBlood: PCB congeners 28[*], 74, 99, 105[*], 118, 138, 153/132, 170, 180, 183, 187, 194, and sum PCBs
Cequier (2015) [46]NorwayHomeCross-sectional study monitoring of pollutants one time in living rooms of independent mother–child cohorts102Air samples were collected over 1 day and blood were collected afterBlood: HBB, DDC-DBF, anti-DDC-CO, syn-DDC-CO, BTBPE, DDC-Ant, DBHCTD, DBDPE, sum DDC-CO
Bennett (2015) [47]USAHomeLongitudinal observational study monitoring pollutants twice a year apart throughout the same group of participants139Air and blood collected at baseline and 1 year laterBlood: pentaBDE congeners, including BDE47[*], 99[*], 100, 153, 154
Ke (2016) [35]ChinaKitchenComparative observational study comparing exposures in independent groups of staff according to frying oil exposure236Air samples collected over 12 hours during 2 days and urine collected pre- and post-shiftsUrine: 1-OHP[*], 8-OHdG[*], MDA
Kraft (2018) [62]GermanyOfficeCross-sectional study comparing different PCBs among independent participants35Blood collected 1x and air sampling was measured during working hoursBlood: PCB 4[*], 22[*], 26[*], 28[*], 31[*]
Kwon (2018) [30]South KoreaHospitalIntervention comparing exposures when moved from old to new hospital building in the same group of participants34Air exposures measured in both buildings just before moving and urine collected 7 days pre-move and 7 days post-moveUrine: tt-MA[*]; HA; MA; PGA; MHA[*]; MDA, 8-OHdG, uLTE4[*]
Lai (2013) [32]TaiwanOffice and kitchenLongitudinal observational study comparing exposures in two independent groups of cooks versus office-based soldiers98Urine collected pre- and post-shifts and air sampling collected over 5 daysUrine: 1-OHP[*] and 8-OHdG[*]
Li (2019) [50]ChinaUniversity dorms, offices, labs)Observational pilot study monitoring pollutants across the same group of participants20Air samples were collected on 7 consecutive days in four seasons of 1 year and urine collected 1x each seasonUrine: urinary OH-PAHs (1-OHPyr[*], 1-OHNap[*], 2-OHNap[*], 2-OHFlu, 9-OHFlu[*], 1-OHPhe, 2-OHPhe, 3-OHPhe, 4-OHPhe[*], 9-OHPhe[*])
Meyer (2013) [44]DenmarkHomeStratified cross-sectional study comparing two independent groups of participants living in non-contaminated PCB flats versus contaminated PCB flats273Air samples were collected over 2 months and blood collected 1x at the beginning of the studyBlood: 27 PCB congeners in plasma (congener 28[*], 52[*], 66[*], 74[*], 77, 81, 99[*], 101[*], 105, 114*, 118*, 123*, 126, 138, 153, 156, 157, 167, 169, 170, 178, 180, 182, 183, 187, 189, and 190)
Fraser (2012) [42]USAOfficeCross-sectional comparison of exposures in independent groups of participants working in new building, building renovated 1 year prior and buildings with no recent renovation31Air samples were collected over 4 days and blood was collected at the end of the studyBlood: PFCs (PFOA[*], PFNA[*], PFDA, PFHxS, PFOS)
Fraser (2013) [41]USAOffice, homes, and vehiclesCross-sectional comparison of exposures in independent groups of participants working in new building, building renovated 1 year prior and buildings with no recent renovation31Air samples were collected over 4 days and blood was collected at the end of the studyBlood: PFCs (PFOA[*], PFNA, PFDA, PFHxS, PFOS)
Singh, Chandrasek-haran (2016) [49]IndiaKitchenCross-sectional comparison of exposures in independent groups of kitchen workers versus controls188Air samples were collected over 1 day and urine was collected 1xUrine: PAH metabolites (1-NAP[*], 9-PHN[*], 1-OHP[*], 3-HF[*], 2-OHFlu[*], 9-OHFlu[*])
Singh, Kamal (2016) [48]IndiaKitchenCross-sectional comparison of exposures in independent groups of kitchen workers versus controls188Air samples were collected over 1 day and urine was collected 1xUrine: PAH metabolites (1-NAP[*], 9-PHN[*], 1-OHP[*], 3-HF[*], 2-OHFlu[*], 9-OHFlu[*])

aN indicates the sample size of each study.

Denotes significant changes seen in biomarkers.

Summary of IAR studies measuring physiological biomarkers and organic compounds in humans aN indicates the sample size of each study. Denotes significant changes seen in biomarkers. One-hundred and thirteen biomarkers were identified within the 30 articles: 83 blood biomarkers, 24 urine biomarkers, 4 found in blood or urine, and 2 were found in blood, urine, or saliva. Biomarkers are presented according to the biological pathways studied, which are centered chiefly around inflammation, coagulation, and oxidative stress (Table 1). Organic compounds are considered separately. Figure 2 shows the biomarkers listed in order of most frequently reported variations in response to IAQ exposures.
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.

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.

Inflammation

C-reactive protein (CRP) is the most frequently reported biomarker. Among 11 studies, 7 measured CRP and 4 hsCRP. Five studies evaluated a filtration system in home and/or office settings [12-16] while the remaining two monitored pollutants over time in home and/or office settings [17,18]. Only one study detected an association between PM2.5 and CRP [12-15,17]. Exposures evaluated included: mostly PM2.5 mass concentrations and/or total VOCs; [12-21] particle number concentrations (PNCs), black carbon and O3 [12,13,16-18]. Among the four hsCRP studies, two studies evaluated a filtration system [19,22], one evaluated an air conditioning (AC) unit [21], and one monitored pollutants over time [20]. Most studies detected significant relationships between PM2.5 mass concentrations and hsCRP in a home setting. Levels of hsCRP also increased with increased total VOC exposures in a home setting [19,21] and PM10, PM10–2.5, and PM1–2.5 mass concentrations in a retirement home setting [20]. There were no associations between hsCRP and CO2 or CO [21]. Interleukins were measured in numerous studies, with IL-6 being the most reported. Of seven papers, four compared a sham filtration system with an active filtration system [13,14,22,23] and three monitored pollutants over 1 day [24] or over time [20,25]. With regards to exposures, five papers measured PM2.5 mass concentrations [13,14,20,23,24]. Additional exposures were measured: CO, CO2, and TVOCs [24]; PM10, PM10–2.5, PM1–2.5, and PM1 [20]; black carbon; [13] O3, NO2, and PNC; [23] PNC; [22] and VOCs and PM10 [25]. Only two papers detected an association between IL-6 and PM10, PM10–2.5, and PM1–2.5 [20]. A decrease in IL-6 was reported 1 day after the installation of a high-efficiency particulate air (HEPA) filtration system [23]. The evidence of an association between air pollution and IL-8 and IL-1β is scarce. Four studies measured blood fibrinogen in home or dormitories: three compared a sham and active filtration system [13,14,19], and one compared air quality when windows were open, closed, and when AC was on [21]. All four studies measured indoor PM2.5. Additional exposures measured included black carbon; [13] TVOCs; [19] and PM10, TVOCs, CO2, and CO [21]. Only one [21] study detected an association between fibrinogen and PM2.5 and TVOCs. Fibrinogen approached statistical significance in one study where participants were exposed to relatively higher PM2.5 and TVOCs [19]. The value of fibrinogen to study IAQ pollution appears marginal, calling for further research. Tumor Necrosis Factor-α (TNF-α) was measured in three studies: one study compared true air filtration with a sham system; [14] two studies monitored pollutants over time [24,25]. The following exposures were measured: PM2.5 [14,24], VOCs [24,25], PM10 [25], CO [24], and CO2 [24]. No significant association was found between TNF-α and any indoor air pollutants measured. Of note, a prior review of air pollution biomarkers that combined indoor and outdoor air studies indicated that TNF-α was a reliable indicator of inflammation [26]. This discrepancy underscores the importance of stratifying the review of the literature by location as performed herein. Tumor necrosis factor-receptor II (TNF-RII) and tumor necrosis factor-soluble receptor-II (sTNF-RII) were measured in two studies: one study compared sham filtration and HEPA filtration systems [22] and another study monitored pollutants over time [20]. No association was detected between PNC and TNF-RII [22]. However, an association was detected between sTNF-RII and PM2.5, PM1, and PM1–2.5 [20]. This is another domain where more research is clearly needed. Leukocytes including lymphocytes, monocytes, and granulocytes (neutrophils and eosinophils) were measured in five studies; lymphocytes and monocytes were measured in four; granulocytes, neutrophils, and eosinophils were measured in two. Two studies compared sham and active filtration systems [15,16], while three monitored pollutants over time [17,18,20]. One report pertained to PM2.5 [15], three measured indoor air exposures to PM2.5 and PNC [16-18], and one measured PM10, PM10–2.5, PM2.5, PM1–2.5, and PM1 [20]. Significant associations were seen for the following: leukocyte counts and PNC [17,18] or PM10, PM10–2.5, and PM1–2.5; [20] lymphocytes and PNC [17] and PM2.5; [18] increased neutrophil counts with PNC; [18] and eosinophil counts with PM2.5 [17,18] and PNC [18]. Measurements of leukocyte, lymphocyte, neutrophil, and eosinophil counts may be useful in determining relationships between indoor air pollutant exposures and inflammation. Monocyte activation plays an important role in inflammation. CD11b, CD31, CD62/CD62L, and CD49/CD49d are different types of expressions of adhesion markers found on monocytes. Two studies evaluated the different air exposures during active filtration and sham filtration [15,16], while one study monitored pollutants over time [17]. Three studies examined the association between these biomarkers and PM2.5 and PNC [15-17]. Two studies detected associations between CD11b with PM2.5 [16] and PNC [17]. An association with CD62L and active filtration was also detected, though biomarker concentrations were not analyzed against PM2.5 concentrations [15]. No association was reported with CD49/CD49d or CD31. More research is needed to determine if there may be an association between monocyte activation and indoor air exposures. Monocyte chemoattractant protein-1 (MCP-1) regulates migration and infiltration of monocytes/macrophages [27] while myeloperoxidase (MPO) is an enzyme released by neutrophils during inflammation [28]. One study measured these two biomarkers alongside PM2.5 to compare true and sham air filtrations in dormitories of college students [14]. An association was detected between a decrease in MCP-1 and MPO during the true filtration scenario and an increase in MCP-1 with continuous exposure to PM2.5 [14]. Urine leukotriene E4 (uLTE4) is used to assess changes in cysteinyl-leukotriene levels [29]. One study measured uLTE4 to evaluate VOC indoor air exposures on airway inflammation by measuring urine and indoor VOCs 7 days pre- and post-move from an old to new hospital [30]. Although levels of uLTE4 significantly increased, no correlations were observed between VOCs and uLTE4 [30]. While uLTE4 may play a role in environmental exposures related to asthma [29,30], there is insufficient evidence to support its use in studies of indoor air exposures.

Thrombosis and Coagulation

Three studies measured von Willebrand Factor (vWF) in office, dormitory, and home settings: [12,20,23] two compared different ventilation systems [12,23] while one monitored pollutants over time [20]. All three papers measured PM2.5, and two additionally measured O3 [12,23]. Other exposures measured included: NO2 and PNC [23], PM10, PM10–2.5, PM1–2.5, and PM1 [20]. All three papers showed significant associations: vWF was weakly associated with PM1–2.5, PM2.5, PM10–2.5, and PM10; [20] true filtration significantly lowered vWF by 26.9% when compared to sham filtration; [23] and removal of an electrostatic precipitator (ESP) was significantly associated with an increase in vWF [12]. This suggests PM2.5 can interfere with hemostasis by preventing the creation of the platelet plug. Of the hemostatic biomarkers reviewed, IAQ exhibited the strongest association with vWF. Soluble adhesion molecule P-selectin (also known as sCD62P) binds vWF, acting as an anchor to the surface of endothelial cells for platelet adhesion [31]. Three studies studied the association of PM2.5 with P-selectin in office, dormitories, and homes and compared filtration systems [12,14,23]. O3 and PNC were also measured [12,23]. A 793 ppb/hr O3 exposure increase was associated with a 16.1% increase in P-selectin [12]. With PM2.5 exposure, no change in this biomarker was detected [14,23]. Two studies [12,23] also suggested O3 exposure may impact the binding of vWF to endothelial cells, but more research is needed on PM2.5 and its possible effect on P-selectin. Soluble CD40 ligand (sCD40L), plasminogen activator inhibitor-1 (PAI-1), tissue plasminogen activator (t-PA), and D-Dimer were measured when comparing true and sham filtration systems in dormitories over a 2-day period [14]. Both sCD40L and t-PA significantly increased with an increase in PM2.5, while D-Dimer and PAI-1 showed no association [14]. Further research is needed to better understand the relationship between the fibrinolytic system and PM2.5.

Oxidative Stress

8-hydroxy-2′-deoxyguanosine (8-OHdG) is a marker of oxidative stress that can be detected in blood or urine [24,32,33]. Eleven studies measured 8-OHdG; four compared functioning filtration system with a sham filtration system or control [12,13,19,33], four compared different populations based on occupation [25,32,34,35], one study monitored pollutants over time [24], one compared windows open, windows closed, and AC on conditions [21], and one report compared air exposures in different buildings [30]. Indoor air exposures included PM1 [33], PM2.5 [12,13,19,21,24,33,35], PM10 [21,25,33,34], polyaromatic hydrocarbons (PAHs) [32,33,35], VOCs [19,21,24,25,30], O3 [12], CO [21,24], CO2 [21,24], black carbon [13], and PNCs [35]. Seven studies detected association between 8-OHdG and the following air pollutants: PM1 [33], PM2.5 [19,21,33], VOCs [19,21,25], PAHs [32,33,35], UFPs [35], and CO2 [24]. 8-OHdG was frequently associated with changes in indoor air pollution, suggesting it may be of value for IAQ studies. Malondialdehyde (MDA) is a product of lipid peroxidation that can be detected in blood or urine [26,35]. Six studies measured MDA: four in a home setting [23,33-35], one in an office and dormitory [12], and one in a hospital setting [30]. Two studies compared different participant occupations [34,35], two studies compared HEPA with sham filtration [12,23], one study compared air exposures in different buildings [30], and one study compared exposures before and after installation of a cooking emissions control device [33]. PM1 [33], PM2.5 [12,23,33,35], PM10 [33,34], O3 [12], PAHs [35], PNCs [23,35], and VOCs [30] were measured in these studies. A significant association was reported between MDA and the following indoor air exposures: PM10 [34] and the PAH benzo(a)pyrene (BaP) [33]. Additional oxidative stress biomarkers measured in one study included binucleated micronucleus (BNMN) frequency, comet tail length, comet tail DNA %, and superoxide dismutase (SOD) [34]. An association with PM was detected solely for comet tail length. However, there was a significant difference found in BNMNs and tail length when comparing kitchen workers and non-kitchen workers [34]. Both BNMNs and tail length were significantly higher in kitchen workers that were exposed to cooking oil fumes. While 8-OHdG and MDA appear to be valuable biomarkers to assess oxidative stress in indoor air exposures, more research is needed on other markers.

Other Biomarkers

Catecholamines (epinephrine and norepinephrine) and cortisol were found to be associated with CO2 concentration in office space [24]. Biomarkers were not measured individually, so it is unclear if CO2 was associated with epinephrine, norepinephrine, or cortisol alone. This report suggests a relationship between urinary catecholamine and CO2 exposure, but more research is clearly needed on this topic. Clara cell pneumoproteins (CC16) and surfactant protein D (SPD) are produced in the lungs and denote epithelial damage in the lower airways. Two studies evaluated their relationship with residential filtration, compared functioning filtration systems to sham filtration systems and measured PM2.5, and PNC of particles with diameters between 10 and 280 nm [15,16]. No association was detected between these biomarkers and filtration systems, PM2.5 exposure, or PNC exposure [15,16]. While SPD and CC16 are associated with chronic obstructive pulmonary disease [36,37], available data do not support their use in studies of indoor air exposures. Angiotensin-converting enzyme and endothelin-1 were also measured when comparing true and sham filtration systems in dormitories over a 2-day period, but showed no association with PM2.5 [14]. Glycosylated hemoglobin (HbA1c), was measured in urban homes of volunteers in Denmark. PM2.5 [15,17] and PNC [17] were monitored and an association with HbA1c was detected only for PNC. Thus, while recent studies reported an association between diabetes mellitus and air pollution, available data do not support the use of HbA1c in studies of indoor air exposures. Cyclic 3’: 5’ guanosine monophosphate (cGMP) can increase when soluble guanylate cyclase is activated, which occurs with exposure to CO or NO [38,39]. One study examined differences in levels of chronic exposure to CO across four types of residential heating (piped natural gas, coal, electricity, and liquid propane gas) and its association with cGMP; [38] cGMP was higher in homes heated with liquid propane than in those heated with piped natural gas. However, CO exposures in the homes were too low to be the cause of this change, so it was hypothesized that NO may be a confounding factor [38]. NO can trigger the production of cGMP, but there is not enough research to determine if CO also triggers this production [39,40]. While cGMP may be a good indicator for NO exposure, more research is needed to determine if the biomarker is a good indicator of CO exposure.

Organic Compounds

Indoor exposure to organic compounds (Fig. 3) can lead to measurable concentrations of these compounds or their metabolites in the blood or urine. Two studies measured office spaces’ PFCs and blood biomarkers PFNA and PFOS [41,42] (Table 1). Both studies compared air exposures in new buildings, partially new buildings, and old buildings while one study [41] additionally collected dust samples from participants’ offices, homes, and vehicles. Serum PFCs followed a consistent pattern with the FTOHs in the buildings’ air [42]. Serum PFOA was significantly associated with 8:2FTOH and 10:2FTOH [41] and positively associated with time spent in the office each week, suggesting PFOA bioaccumulation in participants [42]. Blood PFDA, PFOS, and PFHxS concentrations had no significant association with air PFCs [42]. Glossary of organic compounds. Thirty-three PCB compounds were measured across three studies. One study evaluated the association between residential air PCBs and serum PCB compounds in high and low PCB areas [43], another study evaluated PCB exposure and blood between residents of PCB-contaminated and non-contaminated flats [44], and another study investigated the association between office air PCBs and office workers’ blood [45]. PCB 28 was the only measured compound that was reported to have statistical significance in all three studies. Two studies compared household air samples to residents’ PBDE blood samples [46,47]. BDE-47 and BDE-99 showed significant associations with air PBDE [47]. Eight halogenated flame retardants were detected in participants’ serum, but none were associated with home PDBE exposures [46]. Thirteen urine PAH biomarkers were measured across seven papers [25,32,34,35,48-50]. Two studies [48,49] assessed PAH exposure and urinary PAH levels in kitchen and non-kitchen workers, while one study measured indoor PM2.5-bound PAH concentrations in dormitories, offices, and laboratories alongside urinary OH-PAHs [50]. The other five studies are described above [25,32,34,35,50]. Five papers showed significance between 1-OHP and indoor PAH exposures [32,35,48,49], and benzene, toluene, xylene in urban housemaids [25]. Three studies measured the remaining 12 PAH biomarkers [48-50]. 2-OHFlu, 9-OHFlu, 1-NAP, 9-PHN, and 3-HF showed significant associations with air PAHs [48,49] while 1-OHNap, 2-OHNap, 9-OHFlu, 4-OHPhe, and 9-OHPhe showed significant associations with exhaled FeNO [50]. 1-OHPhe, 2-OHPhe, and 3-OHPhe showed no associations with air exposures. The literature, alongside a 2004 review [51], suggests 1-OHP is a reliable biomarker when measuring indoor PAHs. Two benzene biomarkers found in the literature were t,t-MA and S-PMA; the studies were described previously [25,30]. A significant decrease in t,t-MA was seen after moving from an old to new building [30], but no significant associations were found between t,t-MA and other exposures. Significantly higher levels of S-PMA were seen in city housemaids compared to drivers, traders, and rural housemaids [25]. S-PMA concentration may be a better indicator of benzene exposure, and is supported in previous literature [26,52]. Gas-phase benzene, toluene, ethylbenzene, styrene, o-, m-, and p-xylenes were measured in one study along with their counterpart urinary biomarkers [30]. Only o-, m-, and p-MHA levels significantly increased after the move from an old to new building, along with an increase in levels of TVOCs and all individual VOCs [30].

Discussion

The World Health Organization (WHO) defines biomarkers as “any measurement reflecting an interaction between a biological system and a potential hazard, which may be chemical, physical, or biological” [53]. Biomarkers can serve as surrogate endpoints if they are associated with clinical outcomes [54]. The present review focused on studies of biomarkers indicative of changes in indoor air pollution exposure and of responses such as inflammation, oxidative stress, and coagulation. These biomarkers, therefore, constitute attractive intermediate endpoints for studies of IAQ. Herein, we summarize the current evidence pertaining to blood, urine, and saliva biomarkers used in IAQ research. Indoor air exposures are a mixture of ambient air pollution brought indoors via ventilation and infiltration and indoor generated pollution emitted from combustion (i.e., candles, stove, fireplace), building materials and furnishings, and human behaviors such as smoking, cooking, and cleaning products [55-61]. Common indoor air pollutants include inorganic gases [e.g., carbon monoxide (CO), carbon dioxide (CO2)], reactive gases (e.g., O3, nitric oxides (NOX)], a wide range of VOCs and semi-volatile organic compounds (SVOCs), and particulate matter (PM), ranging from about 1 nm to 10 µm in diameter. Some compounds, such as polycyclic aromatic hydrocarbons (PAHs), perfluorinated compounds (PFCs), polychlorinated biphenyl (PCBs), and polybrominated diphenyl ethers (PBDE), are found in both the gas and particulate phases depending on partitioning behavior and emission source. Poor air quality is associated with adverse clinical outcomes, which however take a long time to accrue and are thus challenging to use in translational research studies. Hence, the ability to rely on biomarkers as surrogate endpoints is critical to the conduct of observational studies as well as interventions. A previous review suggested that common mechanisms included inflammation and oxidative stress [26]. However, this study combined indoor and outdoor air pollution and its applicability to other settings or to indoor air pollution only is uncertain. The present review extends prior knowledge by summarizing available data on the associations between biomarkers and IAQ. The mechanistic pathways associated with variations in IAQ include inflammation, coagulation, and oxidative stress. These pathways are known to be associated with chronic diseases, including cardiovascular diseases, respiratory diseases, and cancers supporting the biological plausibility of these associations.

Limitations, Strengths, and Applications

Some limitations of the reviewed studies should be mentioned. Most studies were cross-sectional and almost half of the studies measured biomarkers at only one time point during the course of the study. Methods varied considerably across studies and hence direct comparison was challenging. Randomized intervention studies measuring paired groups of individuals are recommended for future IAQ biomarker studies to reduce confounding variables and improve quality research. Additionally, power was mentioned in only 3 of the 30 reviewed papers, therefore precluding its systematic assessment. Six biomarkers were measured in more than one type of specimen (blood, urine, or saliva), however, methods of measurements were not compared across specimen type. Thus, it is unclear if one specimen is more useful in measuring a particular biomarker than the other. Our review has a number of important strengths. We conducted a comprehensive literature review using a rigorous methodology. Our review provides the most current review of the literature over the last decade and useful guidance for the selection of biomarkers in translational studies of IAQ.

Conclusion

Herein, we summarize the current evidence on the biomarkers which most frequently responded to variations in IAQ. The biomarkers which exhibit the most consistent association with IAQ were high sensitivity CRP, vWF, 8-OHdG, and 1-hydroxypyrene (1-OHP. This summary provides a guide to select the biomarkers for translational studies evaluating the impact of indoor air pollutants on human health.
  55 in total

Review 1.  Role of von Willebrand factor in the haemostasis.

Authors:  Flora Peyvandi; Isabella Garagiola; Luciano Baronciani
Journal:  Blood Transfus       Date:  2011-05       Impact factor: 3.443

2.  Air Pollution and Mortality in the Medicare Population.

Authors:  Qian Di; Yan Wang; Antonella Zanobetti; Yun Wang; Petros Koutrakis; Christine Choirat; Francesca Dominici; Joel D Schwartz
Journal:  N Engl J Med       Date:  2017-06-29       Impact factor: 91.245

3.  Individual exposure level following indoor and outdoor air pollution exposure in Dakar (Senegal).

Authors:  A Ndong Ba; A Verdin; F Cazier; G Garcon; J Thomas; M Cabral; D Dewaele; P Genevray; A Garat; D Allorge; A Diouf; J M Loguidice; D Courcot; M Fall; M Gualtieri
Journal:  Environ Pollut       Date:  2019-02-16       Impact factor: 8.071

4.  Cardiorespiratory responses of air filtration: A randomized crossover intervention trial in seniors living in Beijing: Beijing Indoor Air Purifier StudY, BIAPSY.

Authors:  Danqing Shao; Yipeng Du; Shuo Liu; Bert Brunekreef; Kees Meliefste; Qian Zhao; Jie Chen; Xiaoming Song; Meng Wang; Juan Wang; Hongbing Xu; Rongshan Wu; Tong Wang; Baihuan Feng; Candice Shih-Chun Lung; Xian Wang; Bei He; Wei Huang
Journal:  Sci Total Environ       Date:  2017-06-20       Impact factor: 7.963

5.  Comparative study of oxidative stress biomarkers in urine of cooks exposed to three types of cooking-related particles.

Authors:  Yuebin Ke; Lihua Huang; Junjie Xia; Xinyun Xu; Honghe Liu; Y Robert Li
Journal:  Toxicol Lett       Date:  2016-05-18       Impact factor: 4.372

Review 6.  Biomarkers in Pulmonary Vascular Disease: Gauging Response to Therapy.

Authors:  Timothy J McMahon; Nathan S Bryan
Journal:  Am J Cardiol       Date:  2017-10-15       Impact factor: 2.778

7.  Cardiorespiratory responses to low-level ozone exposure: The inDoor Ozone Study in childrEn (DOSE).

Authors:  Jing Huang; Yi Song; Mengtian Chu; Wei Dong; Mark R Miller; Miranda Loh; Junhui Xu; Di Yang; Rui Chi; Xuan Yang; Shaowei Wu; Xinbiao Guo; Furong Deng
Journal:  Environ Int       Date:  2019-07-24       Impact factor: 9.621

8.  Allostatic load model associated with indoor environmental quality and sick building syndrome among office workers.

Authors:  Chien-Cheng Jung; Hsiu-Hao Liang; Hui-Ling Lee; Nai-Yun Hsu; Huey-Jen Su
Journal:  PLoS One       Date:  2014-04-23       Impact factor: 3.240

9.  Circulating surfactant protein D as a potential lung-specific biomarker of health outcomes in COPD: a pilot study.

Authors:  Don D Sin; Rochelle Leung; Wen Q Gan; Sf Paul Man
Journal:  BMC Pulm Med       Date:  2007-10-08       Impact factor: 3.317

10.  Exposure to volatile organic compounds and airway inflammation.

Authors:  Jae-Woo Kwon; Hee-Won Park; Woo Jin Kim; Man-Goo Kim; Seung-Joon Lee
Journal:  Environ Health       Date:  2018-08-07       Impact factor: 5.984

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  1 in total

1.  Factors Associated with Urinary 1-Hydroxypyrene and Malondialdehyde among Adults near a Petrochemical Factory: Implications for Sex and Lifestyle Modification.

Authors:  Cheng-Hsien Huang; Tung-Jung Huang; Yu-Chih Lin; Chia-Ni Lin; Mei-Yen Chen
Journal:  Int J Environ Res Public Health       Date:  2022-01-26       Impact factor: 3.390

  1 in total

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