1. Introduction
Outdoor walking refers to total walking for different purposes—including transport, recreation and exercise—in outdoor space. It is a type of physical activity and has certain benefits for healthy aging [
1,
2]. Therefore, physical activity guidelines recommend older adults to take outdoor walks [
3,
4]. Despite this widespread knowledge, there is prevalence of physical inactivity among majority of older adults [
3,
5], particularly among older residents of high-deprivation areas (areas with high levels of social and economic disadvantages) of cities [
6,
7]. It has been shown that older residents of high-deprivation areas walk less than those of low-deprivation areas [
6,
8]. These findings highlight the importance of promoting outdoor walking levels among older adults, particularly among older residents of high-deprivation areas.
To promote outdoor walking levels, a growing body of literature has addressed the link between the built environment and walking [
9,
10,
11,
12]. Although the influences of the built environment on walking are not yet well understood [
13,
14], transportation and urban planning research has identified some relationships between neighborhood built environment and outdoor walking [
15,
16,
17,
18]. It has been argued that neighborhood built environment may support and encourage residents, especially older adults [
19], to walk. The extent to which the built environment supports and encourages walking is called walkability and it reflects a quality of the neighborhood [
12,
16].
Different neighborhood built environment attributes (e.g., residential density, street connectivity, traffic condition, and aesthetics) may influence neighborhood walkability [
17]. Three neighborhood built environment attributes have been identified as key elements of neighborhood walkability [
20,
21,
22,
23]: residential density, land use (mix and intensity), and street connectivity (defined in
Table 1). These three built environment attributes shape the overall design and structure of a neighborhood and are known as “macro built environment attributes” [
24,
25]. They have a synergy in creating a walkable neighborhood [
26]. Some research on walkability has addressed “neighborhood retail density” (defined in
Table 1), in addition to the attributes mentioned above [
16,
27].
High neighborhood residential density, land-use mix, (certain) land-use intensity, and retail density provide diverse attractive destinations—or places (e.g., green space)—for walking at close distances (
Table 1). High neighborhood street connectivity offers short and diverse walking routes to these destinations/places (
Table 1). Presence, proximity and attractiveness of destinations/places may give people reasons to go out and support them to walk for transport, recreation and exercise [
16,
28]. Proximity to destinations/places is especially important for older adults’ daily activities and may encourage these people to get walking into their routine [
29,
30].
Accordingly, findings on lower outdoor walking levels among older residents of high- versus low-deprivation areas trigger questions about neighborhood walkability: do older residents of high-deprivation areas have a less supportive neighborhood for outdoor walking than those of low-deprivation areas? How do neighborhood residential density, land-use mix and intensity, street connectivity, and retail density influence outdoor walking among older adults living in low- and high-deprivation areas? These questions are important for healthy urban planning aiming at creating walkable built environment for everyone [
35]. Urban planners incorporate these questions under the context of spatial inequality: the uneven provision of urban opportunities and resources among urban areas with different levels of socioeconomic deprivation [
36,
37]. Identifying inequalities in neighborhood walkability and finding shortcomings for supporting older adults’ outdoor walking in high-deprivation areas may benefit urban planning interventions.
To date, much research on neighborhood walkability has focused on associations between neighborhood residential density, land-use mix and intensity, street connectivity, and retail density and older adults’ walking levels, but they have reported inconsistent results [
14,
29]. Inequalities in neighborhood walkability and their influences on older adults’ outdoor walking levels in low- and high-deprivation areas have been rarely studied. Moreover, the scant existing studies on older adults’ walking in low- and high-deprivation areas have focused on perceived neighborhood built environment attributes [
8,
37,
38]. Using the perceived built environment has advantage of involving personal assessments of neighborhood built environment, but it may not reflect the actual built environment [
2]. Objectively measured neighborhood built environment may better reflect actual neighborhood built environment conditions. However, objective measurement approaches have been used only in a few studies on older adults’ walking [
39,
40], and have been scarcely employed in studies on older adults’ walking in low- and high-deprivation areas.
Therefore, this study aims to examine inequalities in neighborhood walkability (i.e., residential density, land-use mix and intensity, street connectivity, and retail density) in high- versus low-deprivation areas and their possible influences on disparities in older adults’ outdoor walking levels. For this end, it involves both objectively measured and perceived neighborhood built environment attributes and answers two research questions:
- (1)
How (un)equal are neighborhood residential density, land-use mix and intensity, street connectivity, and retail density in high- versus low-deprivation areas?
- (2)
What are the relationships between neighborhood residential density, land-use mix and intensity, street connectivity, and retail density, and older adults’ outdoor walking levels?
2. Materials and Methods
The study was administered in Birmingham, a superdiverse city [
41] of over one million residents in the United Kingdom, from 7 July to end of October 2012. A concurrent mixed-method design [
42] was employed in this study. By applying this research design, the authors tried to enrich the quantitative examinations (on “how objectively measured neighborhood built environment attributes and outdoor walking levels are”) with qualitative evidence (on “how perceived neighborhood built environment attributes may, in the view of older adults, influence outdoor walking levels”). Accordingly, qualitative findings were employed to help to support and interpret the quantitative findings.
This study used the sample (
n = 173) and data on outdoor walking levels from a previous research [
37]. The Geographic Positioning System (GPS) technology was used to objectively measure outdoor walking levels and a questionnaire was used to collect data on personal characteristics.
We collected data on neighborhood built environment attributes by using a Geographic Information System (GIS) and walking interviews. Detailed information on collecting data on neighborhood built environment attributes is presented later in this study.
2.1. Selection of Low- and High-Deprivation Areas
The Index of Multiple Deprivation (IMD) was employed for identifying low- and high-deprivation areas on electoral ward scale [
37]. The IMD is an aggregated score of seven domains of deprivation (i.e., income, employment, health and disability, education and skills, barriers to housing and services, crime, and living environment) used in the UK [
6,
43]. It is produced at the level of Lower Layer Super Output Areas (LSOAs): relatively homogenous geographic areas with 1500 residents on average [
43,
44]. Deprivation level for each ward was determined based on the ward’s area covered by the 20% most or 20% least deprived LSOAs. As a result, four low-deprivation areas and four high-deprivation areas were identified in Birmingham (
Figure 1). Participants were recruited from these selected areas [
37].
2.2. Participant Recruitment
A convenience sampling approach was applied to recruit participants from social centers (e.g., community centers, University of the Third Age, libraries, etc.) in all 8 selected wards [
37]. Applying a convenience sampling approach is often the norm in health behavior studies on older adults [
45]. By posting advertisements and arranging information sessions in social centers, older adults were informed about the research and process of participation in the research [
37]. Inclusion criteria were being age 65 or over, resident of one of the selected wards, able to walk, independent in daily life activities, and mentally healthy. English speaking was not an eligibility criterion. A translator/assistant assisted participants (
n = 58) who were non-English speakers or required help in filling the questionnaire. Quota sampling and UK census data (2001) were used to achieve maximum similarity to ethnic diversity in the total population of the selected wards. In total 216 participants received GPS tracking units, but 43 participants were excluded due to not using tracking units. Therefore, the final sample included 173 participants (
n = 93 and
n = 80 from low- and high-deprivation areas, respectively).
Based on participants’ availability and willingness to participate in walking interviews, a sub-sample was drown from the main sample [
37]. Quota sampling was used to achieve maximum ethnic similarity with the total sample. All participants (
n = 9 and
n = 10 from (different parts of) low- and high-deprivation areas, respectively) could speak English.
2.3. Measuring Outdoor Walking Level
For measuring participants’ outdoor walking levels, a GPS tracking unit (i-gotU GT-600) was used. All participants from low- and high-deprivation areas were trained and used the units (set on motion detector mode and 2-s recording interval) for a period of 3 to 8 days (
Mean = 4.95,
SD = 1.61), depending on their willingness and availability [
37]. By using tracking units, detailed data on the location (
x,
y), date and time of participants’ outdoor walking activities were collected. By employing a GIS, each participant’s outdoor walking level was measured within a home-based neighborhood: a 2-km Euclidean buffer around each participant’s home [
37]. All outdoor walking activities within this area were included in the measurement. For each participant, (average) outdoor walking level (minutes per day) was calculated in this way: (sum of durations of all walking activities)/(number of days that participant was loaned the GPS device).
2.4. Measuring Personal Characteristics
A questionnaire was used to collect data on six personal characteristics: age (65–74 years old or 75 years old and over); gender; marital status (single or in relationship); ethnicity (black and minority ethnic (BME) groups—i.e., Asian, Black, or mixed ethnic heritage—or white British [
46]); educational attainment (sub-GCSE (General Certificates of Secondary Education or its equivalents) or GCSE and higher); and perceived health status over the last twelve months (poor or good). Missing data on each personal characteristic was less than 5%—except 11% missing data on educational attainment [
37].
2.5. Measuring Neighborhood Built Environment Attributes
2.5.1. GIS-Based Measurements
A GIS (ArcGIS 10.4, ESRI, Redlands, CA, USA) and data presented in
Table 2 were used to objectively measure neighborhood built environment attributes within each participant’s home-based neighborhood (the same area used for measuring outdoor walking levels).
We used Points of Interest (PoI) data to generate a land-use map, distinguishing residential and non-residential land uses. For this purpose, PoI was overlain with Topography Layer of OSMM and non-residential buildings were identified. Similar to a previous study [
29], we considered one use for each building. After identifying non-residential buildings, we digitized plots relevant to non-residential buildings. By excluding non-residential plots and buildings within these plots, residential buildings were identified and residential plots were digitized. Boundaries of all residential and non-residential plots were cross-referenced with Google Earth images. To identify “public” green spaces, we cross-referenced “recreational lands” (generated from PoI) with data on open spaces provided by Birmingham City Council [
50].
To measure neighborhood residential density, we used data on number of household space at LSOA level [
51], because each home-based neighborhood contains and also intersects with several LSOAs. To calculate neighborhood residential density, we used the following equation (where RD = residential density for a home-based neighborhood,
i = the LSOA, D
i = residential density of the LSOA (total number of household space in the LSOA/total LSOA’s residential land-use area (hectare)),
ki = the proportion of the LSOA’s residential land-use area (hectare) located within a home-based neighborhood against total LSOA’s residential land-use area (hectare),
n = the number of LSOAs):
To measure neighborhood land-use mix, we generated land-use entropy score which represents the degree of land-use diversity in a home-based neighborhood. For this purpose, like previous studies [
26,
32], we included residential land use and (five types of) non-residential land uses that may encourage daily outdoor walking (
Table 3) and we applied an equation (see
Supplementary Materials: Note S1) used in a UK study [
49]. The entropy score ranged from 0 representing homogeneity (all land uses are of a single type) to 1 representing the most land-use diversity (the neighborhood is evenly distributed among all land-use categories) [
16].
To measure land-use intensity, we considered 7 types of non-residential land uses that may encourage or discourage daily outdoor walking among older adults (
Table 3). We measured area (hectare) of land covered by each type of uses within each participant’s home-based neighborhood (a 2-km Euclidean buffer). To compare intensity of different types of land uses in neighborhoods, we calculated the percentage of neighborhood land devoted to each type of use: (area (hectare) of each type of land use/total area (hectare) of the home-based neighborhood) × 100.
To measure street connectivity, we used ITN layer and UP Theme layer of OSMM (
Table 2). These layers of OSMM topographically represent roads and urban paths as links and the junctions as nodes [
49]. We used the method explained by Stockton, Duke-Williams, Stamatakis, Mindell, Brunner and Shelton [
49]—we combined ITN and UP networks by using the Network Analyst extension in ArcGIS—and created a pedestrian route network dataset. Motorways and slip roads were excluded from this network dataset, since they are forbidden routes for pedestrians in the UK [
65]. Junction density was used as an indicator for neighborhood street connectivity [
16,
66]. We counted number of junctions (points identified from the pedestrian route network dataset) that connecting three or more roads/paths within participants’ home-based neighborhoods [
49] and we calculated neighborhood street connectivity in this way: the number of junctions in a home-based neighborhood/the area (hectare) of the home-based neighborhood [
16].
For neighborhood retail density, the area (hectare) of retail buildings and plots were measured within participants’ home-based neighborhoods. The neighborhood retail density was calculated being area of retail buildings in a home-based neighborhood/total area of retail plots in a home-based neighborhood [
16].
Data on each neighborhood built environment attribute was produced and was exported to a statistical software (SPSS 24, IBM, Armonk, NY, USA) for statistical analyses. Similar to previous studies [
32,
67], we did not combine neighborhood built environment attributes to create a single composite “walkability index”, in the hope to better distinguish the respective role of each neighborhood built environment attribute—and subsequently, spatial inequalities—in high- and low-deprivation areas.
2.5.2. Walking Interview
Walking interviews are an ideal technique for collecting rich qualitative data on perceived neighborhood built environment [
68,
69]. We conducted individual open-question walking interviews with participants from low- and high-deprivation areas (
Table 4). Participants were informed about the purpose of the research. The interviews were performed in English. A GPS unit and a digital recorder were used for recording data. Participants were asked to determine walking routes to take the interviewer around the neighborhood and to explain about advantages and disadvantages of their neighborhoods for walking. Through walking interviews, participants were enabled to express their assessments of their neighborhoods’ built environment and to provide information on how their neighborhoods support them to take outdoor walks. They talked about their neighborhoods’ facilities and explained: how these facilities encourage/discourage them to take outdoor walks; how they get to different destinations; and how they move from one place to another place in their neighborhoods. Participants also showed us examples of different issues that they were talking about. The interviews lasted 30 to 60 min, depending on participants’ willingness to walk.
2.6. Data Analysis
2.6.1. Quantitative Analysis
Descriptive statistics was used to analyze the participants’ personal characteristics. The spatial distributions of outdoor walking levels and (objectively measured) neighborhood built environment attributes were analyzed using GIS. For this purpose, Natural Breaks in data sets were used to classify data in three levels (e.g., low, medium, and high).
We used independent sample t-tests to compare the average outdoor walking levels, as well as (objectively measured) neighborhood built environment attributes, between low- and high-deprivation areas.
To study the relationships between neighborhood built environment attributes and outdoor walking levels, we applied a statistical approach used in previous studies [
32,
37]: we employed hierarchical linear regression analyses and we examined each neighborhood built environment attribute (i.e., residential density, land-use mix, intensity of different types of land uses, street connectivity, and retail density) individually. In each regression model, we tested the interaction between the neighborhood built environment attribute and area deprivation. When the interaction was significant, analyses were conducted for low- and high-deprivation areas separately.
We controlled each regression model for two personal characteristics (i.e., marital status and ethnicity), since only these two personal characteristics were significantly related to outdoor walking levels [
37]. Comparing to single or BME groups, participants who were in a relationship or white British were more likely to walk outside home (correlations between these two personal characteristics and objectively measured neighborhood built environment attributes were tested and reported in
Supplementary Materials: Table S1). In all regression models the missing data was excluded listwise and logarithmic transformation was applied on all variables (
x +
1) to reduce heteroscedasticity. All statistical analyses were conducted considering a
p-value < 0.05 as significant. There was no significant difference between averaged GPS lending period (number of days) in low- and high-deprivation areas [
37].
2.6.2. Qualitative Analysis
We used qualitative analyses to examine participants’ perceptions of the same neighborhood built environment attributes (i.e., residential density, land-use mix and intensity, street connectivity, and retail density) in order to triangulate and corroborate [
70] the quantitative results. Thus, we used a deductive approach for the qualitative study. First, we conducted open coding to ensure that the important aspects of the qualitative data were not missed [
71]. Then, we followed a thematic analysis approach [
72] and defined four main themes (i.e., residential density, land-use mix and intensity, street connectivity and retail density). Codes were categorized by linking them to the themes. To improve the reliability of analysis, we continued the process until data analysis reached saturation. We rechecked the consistency of coding by repeating the process [
73]. All process was done by employing a Computer Aided Qualitative Data Analysis (CAQDAS) software (ATLAS.ti Scientific Software Development GmbH, Berlin, Germany).