| Literature DB >> 34482835 |
Sherrie Xie1, Jessica R Meeker1, Luzmercy Perez2, Whitney Eriksen3, Anna Localio2, Hami Park2, Alicia Jen1, Madison Goldstein1, Akua F Temeng4, Sarai M Morales5, Colin Christie1, Rebecca E Greenblatt1, Frances K Barg1,3, Andrea J Apter2, Blanca E Himes6.
Abstract
BACKGROUND: Exposure to fine particulate matter (PM2.5) increases the risk of asthma exacerbations, and thus, monitoring personal exposure to PM2.5 may aid in disease self-management. Low-cost, portable air pollution sensors offer a convenient way to measure personal pollution exposure directly and may improve personalized monitoring compared with traditional methods that rely on stationary monitoring stations. We aimed to understand whether adults with asthma would be willing to use personal sensors to monitor their exposure to air pollution and to assess the feasibility of using sensors to measure real-time PM2.5 exposure.Entities:
Keywords: Air pollution; Asthma; Particulate matter; Personal exposure; Personal monitors
Year: 2021 PMID: 34482835 PMCID: PMC8420032 DOI: 10.1186/s40733-021-00079-9
Source DB: PubMed Journal: Asthma Res Pract ISSN: 2054-7064
Characteristics of study participants (N = 15)
| Characteristic | n (%) |
|---|---|
| Female | 13 (87) |
| Male | 2 (13) |
| 18–34 | 3 (20) |
| 35–54 | 9 (60) |
| 55–74 | 3 (20) |
| Non-Hispanic Black | 11 (73) |
| Non-Hispanic White | 2 (13) |
| Hispanic White | 1 (7) |
| Declined to answer | 1 (7) |
| Medicaid | 8 (53) |
| Commercial ± Medicare | 5 (33) |
| Medicare only | 2 (13) |
| Well-controlled (≤ 0.75) | 3 (20) |
| Partially controlled (> 0.75 and < 1.5) | 3 (20) |
| Inadequately controlled (≥ 1.5) | 9 (60) |
Fig. 1Residential zip code of study participants mapped over the entire Greater Philadelphia Area (left panel) and zoomed in over Philadelphia county (right), with Philadelphia county outlined in grey
Comparison of outdoor PM2.5 measurements taken by AirBeam sensors vs. time-matched measurements taken by nearby EPA monitors
| Federal equivalent method | No | Yes | Yes | Yes |
| Measurement method | Optical sensor | Beta attenuation monitor | Beta attenuation monitor | Beta attenuation monitor |
| Measurement interval | 1 s | 1 h | 1 h | 1 h |
| Number of measurements | 117,510 | 52 | 41 | 42 |
| PM2.5, μg/m3, mean (range) | 6.8 (0.6, 97.6) | 10.3 (2.9, 22.6) | 7.1 (0, 11.9) | 9.2 (0.1, 19.7) |
| Data missingness, % | 0 | 1.8 | 22.6 | 20.8 |
Fig. 2Summary of sensor field trials and comparison with EPA estimates. A Regions sampled by AirBeam sensors are indicated in red and circumscribed by the black rectangle, and Philadelphia county is outlined in grey. The locations of EPA monitoring stations are denoted by pale yellow diamonds, with the three closest stations labeled by their site ID’s. Surveyed streets shaded according to B the number of sensor PM2.5 measurements taken on each block, C block-level mean PM2.5 measured by sensors, D block-level mean PM2.5 estimated from time-matched EPA measurements, and E difference between PM2.5 measured by sensors vs. estimated using EPA measurements. The black star indicates the location of the research lab in panels B-E
Fig. 3Sample walking route taken by a student research assistant carrying an AirBeam sensor on July 12, 2018. A The sampling route is circumscribed by the black rectangle, and the locations of nearby EPA monitoring stations are labeled according to site ID. Close-ups of the route colored according to B timestamps, C temperature (°C), D relative humidity (%), and E PM2.5 (μg/m3) recorded by the sensor, as well as F PM2.5 (μg/m3) estimates derived from EPA measurements via inverse-distance-squared-weighted interpolation. G Comparison of sensor and EPA measurements recorded during the sampling frame. The black star indicates the location of the research lab in panels A-F