| Literature DB >> 26260474 |
Samantha Hajna1, Nancy A Ross2,3, Anne-Sophie Brazeau4, Patrick Bélisle5, Lawrence Joseph6,7, Kaberi Dasgupta8,9.
Abstract
BACKGROUND: Higher street connectivity, land use mix and residential density (collectively referred to as neighbourhood walkability) have been linked to higher levels of walking. The objective of our study was to summarize the current body of knowledge on the association between neighbourhood walkability and biosensor-assessed daily steps in adults.Entities:
Mesh:
Year: 2015 PMID: 26260474 PMCID: PMC4532296 DOI: 10.1186/s12889-015-2082-x
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Previous studies on the associations between GIS-derived walkability and daily steps in adults
| Overall Walking | Utilitarian Walking | ||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1st Author, Publication Date | N | Age | Location | Sampling Design | Neighbourhood Walkability Measurement ( | Measurement | Findings | Associationa | Difference in mean steps per day for people living in high versus low walkability neighbourhoods (95 % confidence interval) b | Measurement | Findings | Associationa | Difference in mean time walking for utilitarian purposes for people living in high versus low walkability neighbourhoods (95 % confidence interval) b |
| Kondo, 2009 | 112 | 30 to 69 | Hagi City, Japan | Sampling from high and low walkable neighbourhoods using a stratified random sampling method based on sex and 5-year age strata. | GIS-derived walkability based on street connectivity, residential density, land use mix | Accelerometer | High walkability: 9364 steps/day; SE 567 | INC | 1071 steps/day (95 % CI −399 to 2540) | Min/day (IPAQ)c | High walkability: 3.3 min/day; SE = 2.1 | 0 | −5 min/day (95 % CI −10 to 1) |
| Low walkability: 8294 steps per day; SE 491 | Low walkability: 8.0 min/day; SE = 2.0 | ||||||||||||
| Van Dyck, 2011 | 350 | 42.4 ± 13.2 | Flanders, Belgium | Sampling from high and low walkable neighbourhoods based on address list provided by the local government. | Urban | Pedometer | High walkability: 9323 steps/day; SD 3473 | INC | 548 steps/day (95 % CI −230 to 1326) | Min/week (NPAQ)c | High walkability: 97.5 min/week; SD = 96.4 |
| 76 min/week (95 % CI 58 to 94) |
| Low walkability: 8775 steps per day; SD 3942 | Low walkability: 21.9 min/week; SD = 72.3 | ||||||||||||
| Dygryn, 2010 | 70 | 20 to 64 | Olomouc, Czech Republic | Random selection of participants in city. Walkability was determined after inclusion into the study. | GIS-derived walkability based on street connectivity, residential density, floor area ratio, land use mix | Pedometer | High walkability: 11318 steps/day; SD 4091 |
| 2088 steps/day (95 % CI 440 to 3736) | n/a | n/a | n/a | n/a |
| Low walkability: 9230 steps per day; SD 2554 | |||||||||||||
| Van Dyck, 2009 | 120 | 20 to 65 | Sint-Niklaas, Flanders (Belgium) | Sampling from high and low walkable neighbourhoods. Letters of invitation sent to randomly selected people. Letters were followed up with house visits to recruit people. | Two neighbourhoods with greatest contrast in GIS-derived walkability based on street connectivity and residential density ( | Pedometer | High walkability: 9318 steps/day, SD 3055 | + | 1222 step/day (95 % CI 131 to 2313) | Min/week (NPAQ)c | High walkability: 104.33 min/week; SD = 95.1 |
| 82 min/week (95 % CI 53 to 110) |
| Low walkability: 8096 steps per day; SD 3044 | Low walkability: 22.83 min/week; SD = 61.0 | ||||||||||||
| Robertson, 2012 | 76 | 27 to 66 | Glasgow, Scotland | Sampling of people from Glasgow who were low active and part of low socioeconomic groups. Advertisement for participation was made in public locations (e.g., shops). Walkability was determined after inclusion into the study. | GIS-derived commercial and residential land use mix | Pedometer | A one-unit increase in land use mix (from no mix to a perfect mix) was associated with: | n/a | n/a | n/a | n/a | ||
| 1896 more steps/day (SE = 583) at | + | 1896 steps/day(95 % CI 754 to 3038) | |||||||||||
| 1260 more steps/day (SE = 622) at | + | 1260 steps /day(95 % CI 40 to 2479) | |||||||||||
| Zhang, 2014 | 1,100 | 46 to 80 | Shanghai, China | Stratified random samples based on even distribution of community types. Selected households were sent letters of invitation. Walkability was determined after inclusion into the study. | GIS-derived street connectivity | Pedometer | Living in a neighbourhood one-SD above the mean street connectivity was associated with accumulating 21 more steps/day | Unknown based on reported information | Confidence intervals around the linear regression estimate could not be calculated based on the information reported in the text. | n/a | n/a | n/a | n/a |
aPositive relationship (+); negative relationship (−); INC (inconclusive; more research is needed to better estimate this effect); 0 (no effect)
b95 % confidence intervals were recalculated based on information reported in the original manuscripts (i.e., group sample sizes, standard deviations/standard errors, and/or p-values)
cInternational Physical Activity Questionnaire (IPAQ); Dutch Version of the Neighbourhood Physical Activity Questionnaire (NPAQ)
Fig. 1Short Title: Forest plot of the results of previous studies on walkability and daily steps. Detailed Legend: Forest plot of the results of the previous studies that have been conducted on the association between Geographic Information Systems-derived measures of walkability (i.e., street connectivity, land use mix, and/or residential density) and pedometer and/or accelerometer-assessed steps per day in adults. The estimates represent the mean differences in daily steps between high and low walkability neighbourhoods (95 % credible intervals)