| Literature DB >> 28938911 |
Donatella D'Antoni1, Louise Smith2, Vivian Auyeung3, John Weinman3.
Abstract
BACKGROUND: Although evidence shows that poor air quality can harm human health, we have a limited understanding about the behavioural impact of air quality forecasts. Our aim was to understand to what extent air quality warning systems influence protective behaviours in the general public, and to identify the demographic and psychosocial factors associated with adherence and non-adherence to the health advice accompanying these warnings.Entities:
Keywords: Adherence; Air quality alerts; Behaviour change; Psychosocial factors; Systematic review
Mesh:
Year: 2017 PMID: 28938911 PMCID: PMC5610416 DOI: 10.1186/s12940-017-0307-4
Source DB: PubMed Journal: Environ Health ISSN: 1476-069X Impact factor: 5.984
Health advice accompanying the UK AQI
| Air pollution Banding | Value | Accompanying health messages for at-risk groups and the general population | |
|---|---|---|---|
| At-risk individualsa | General population | ||
| Low | 1–3 |
|
|
| Moderate | 4–6 | Adults and children with lung problems, and adults with heart problems, |
|
| High | 7–9 | Adults and children with lung problems, and adults with heart problems, should | Anyone experiencing discomfort such as sore eyes, cough or sore throat should |
| Very High | 10 | Adults and children with lung problems, adults with heart problems, and older people, should |
|
aAdults and children with heart or lung problems are at greater risk of symptoms
Italicised word in original [6]
Fig. 1PRISMA flow diagram with literature search. The last search was run on 9 August 2016
Data extraction showing methods used in the included studies
| Author | Publication | Study design | Setting | Sample size | Sample | Sample demographics |
|---|---|---|---|---|---|---|
| Evans et al. [ | JA | CSS | Los Angeles |
| Residents of Los Angeles | Not reported. The sample compared favourably to the 1980 U.S. census, with <5% error in gender and ethnic distribution (with more females and Caucasians) and <1% error in age) |
| Hartill [ | R | CSS | Southampton, UK 2011, 2014 | In 2011, | Air Alert system users | Not reported |
| Johnson [ | JA | QES | Philadelphia | N ~ 1000 | People awaiting for jury duty in city courts | Age = 20–81 range; Gender: female = 60% ( |
| Johnson [ | JA | QES | Philadelphia | N ~ 1000 | People awaiting for jury duty in city courts | Age (M) = 42.8 years (SD = 12.2, range 18–81); Gender: female = 60%; Ethnicity (White = 49%, African America |
| Kentucky Health Issues Poll [ | R | CSS | Kentucky | 1680 | Kentucky residents | Age (groups) =18–29 years = 22% ( |
| Kilbane-Dawe et al. [ | WP | CSS | Croydon, UK |
| Service users of the alert system | Not reported |
| Licskai et al. [ | JA | Pre-Post T | Windsor, Ontario |
| Convenience sample of adult users of the Primary Care Asthma Program | Age (M) = 47 years (SD = 12); Gender: female = 82% ( |
| Lyons et al. [ | JA | QES, R & P | South Wales |
| Asthmatics, COPD or coronary heart disease patients from local general practices | Age (Modal age group) = 65–74 years in the IG = 33.5% ( |
| Mak, et al. [ | CP | CSS | Hong Kong | Total | General public | Not reported |
| Mansfield et al. [ | R | CSS | United States |
| General public | Age (M) = 45 ( |
| Laube [ | T | CSS | London, UK |
| LondonAir mobile phone app users | Age (M) = 41.11 years (range 18–67 years); Gender: female = 32.9% ( |
| McDermott et al. [ | JA | CSS | Salt Lake, US |
| Parents taking their child to a paediatric asthma specialty clinic or attending a general paediatrics clinic | Child Age (M) = 10 years (asthmatics) 9 years (non-asthmatics), |
| Radisic, et al. [ | JA | QS | Hamilton, Ontario, |
| Overall = 6 health care providers, 16 parents, 13 elderly, 15 with respiratory conditions. | Age (groups) (FG): 18–34 = 29% ( |
| Radisic et al. [ | JA | CSS | Hamilton, Ontario, Jun - Oct 2012 |
| General public | Age (groups) 18–34 = 25% ( |
| Reams et al. [ | JA | CSS | Upper Industrial CorridorLouisiana 2011 |
| Attendees of 3 East Baton Rouge Metropolitan Council meetings | Age: ≥50 age group = 80%; Gender: female = 54%. |
| Semenza et al. [ | JA | CSS | Portland, OR and Houston, TX, Summers 2005–2006 |
| Residents of two US cities | (Data reported for Portland and Houston respectively) Age (M) = 52 years (SD =16.08) & 48.4 (SD = 16.28), |
| Skov et al. [ | JA | CSS | Copenhagen area, Apr 1989 |
| Adult residents in Copenhagen (also people from a league for lung-diseased patients) | Age (groups) = above 55 years (in the patient league sample) = 75%; above 55 years (in the population sample) = 27%; Health: people with lung disease: |
| Smallbone [ | R | CSS | London and other locations in the UK 2010 |
| General public | Age ( |
| Stieb et al. [ | JA | CSS | Four areas in Canada 1994 |
| Residents of four areas of Canada, following a smog forecast | Age (M) = New Brunswick =45 years (SD = 17); Toronto =42 (17); Norfolk =46 (16); Vancouver =41 (15); Gender: female: New Brunswick: 61%; Toronto: 57%; Norfolk: 57%; Vancouver: 52%; Health: individual with heart or lung disease in the household: New Brunswick =38%; Toronto =37%; Norfolk =38%; Vancouver =30%. |
| Sugerman et al. [ | JA | CSS | San Diego |
| Community of San Diego present during wildfire | Age (group) ( |
| Wen et al. [ | JA | CSS | Colorado, Florida, Indiana, Kansas, Massachusetts, & Wisconsin 2005 | N = 33,888: for the relevant questions response rate ranged from n = 13,979 to | Residents of six US states | Health (N = 28,693 considered): self-reported asthma ( |
CP Conference Proceeding, CSS Cross-sectional survey, ICS Inhaled corticosteroid, ICS+ LABA Combination therapy (ICS + Long-acting beta agonist), JA Journal article, Pre-Post T One-group pre- post-test (no randomisation or control group), QES R & P Retrospective & prospective data linkage cohort study, QES quasi-experimental study cross-sectional study, QS Qualitative study, R Report, T Thesis, WP Working paper
Assessment of risk of bias in included studies
| Author | Selection bias | Detection bias | Reporting bias | Other sources of bias |
|---|---|---|---|---|
| Evans et al. [ | L | M | M | L |
| Hartill [ | H | M | H | H |
| Johnson [ | M | M | H | L |
| Johnson [ | M | M | M | L |
| Kentucky Health Issues Poll [ | H | M | H | L |
| Kilbane-Dawe et al. [ | H | M | H | L |
| Licskai et al. [ | H | H | H | H |
| Lyons et al. [ | L | L | L | L |
| Mak, et al. [ | H | M | H | L |
| Mansfield et al. [ | L | M | M | L |
| Laube [ | M | M | M | H |
| McDermott et al. [ | H | M | H | L |
| Radisic, et al. [ | M | L | L | L |
| Radisic et al. [ | M | M | H | L |
| Reams et al. [ | H | H | H | M |
| Semenza et al. [ | M | M | H | L |
| Skov et al. [ | L | M | H | L |
| Smallbone [ | H | M | H | L |
| Stieb et al. [ | M | H | H | L |
| Sugerman et al. [ | L | M | M | L |
| Wen et al. [ | M | M | L | L |
H high risk of bias, M moderate risk of bias, L low risk of bias, N/A not applicable
Factors influencing adherence to health advice provided in association with air quality information services (demographic factors not included)
| CAPABILITY | MOTIVATION | OPPORTUNITY |
|---|---|---|
|
|
|
|
| • Knowing where to check AQHI (Air Quality Health Index) numbers [ | • Health messages able to reduce both concern about, and perceived susceptibility to, air pollution [ | • Wearable device option/smartphone applications [ |
|
|
|
|
| • Depression [ | • Professional health care network promotion/GP advice [ |