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Methods for accounting for neighbourhoodself-selection in physical activity anddietary behaviour research: a systematicreviewKaren E. Lamb1,2,3* , Lukar E. Thornton1, Tania L. King4, Kylie Ball1, Simon R. White5, Rebecca Bentley4,Neil T. Coffee6 and Mark Daniel6,7
Abstract
Background: Self-selection into residential neighbourhoods is a widely acknowledged, but under-studied problemin research investigating neighbourhood influences on physical activity and diet. Failure to handle neighbourhoodself-selection can lead to biased estimates of the association between the neighbourhood environment andbehaviour. This means that effects could be over- or under-estimated, both of which have implications for publichealth policies related to neighbourhood (re)design. Therefore, it is important that methods to deal withneighbourhood self-selection are identified and reviewed. The aim of this review was to assess howneighbourhood self-selection is conceived and accounted for in the literature.
Methods: Articles from a systematic search undertaken in 2017 were included if they examined associationsbetween neighbourhood environment exposures and adult physical activity or dietary behaviour. Exposures couldinclude any objective measurement of the built (e.g., supermarkets), natural (e.g., parks) or social (e.g., crime)environment. Articles had to explicitly state that a given method was used to account for neighbourhood self-selection. The systematic review was registered with the PROSPERO International Prospective Register of SystematicReviews (number CRD42018083593) and was conducted in accordance with the Preferred Reporting Items forSystematic Reviews and Meta-Analyses (PRISMA) statement.
Results: Of 31 eligible articles, almost all considered physical activity (30/31); few examined diet (2/31). Methodsused to address neighbourhood self-selection varied. Most studies (23/31) accounted for items relating toparticipants’ neighbourhood preferences or reasons for moving to the neighbourhood using multi-variableadjustment in regression models (20/23) or propensity scores (3/23). Of 11 longitudinal studies, three controlled forneighbourhood self-selection as an unmeasured confounder using fixed effects regression.
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© The Author(s). 2020 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License,which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you giveappropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate ifchanges were made. The images or other third party material in this article are included in the article's Creative Commonslicence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commonslicence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtainpermission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to thedata made available in this article, unless otherwise stated in a credit line to the data.
* Correspondence: karen.lamb1@deakin.edu.au1School of Exercise and Nutrition Sciences, Institute for Physical Activity andNutrition (IPAN), Deakin University, Geelong, Australia2Clinical Epidemiology and Biostatistics Unit, Murdoch Children’s ResearchInstitute, Melbourne, AustraliaFull list of author information is available at the end of the article
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 https://doi.org/10.1186/s12966-020-00947-2
(Continued from previous page)
Conclusions: Most studies accounted for neighbourhood self-selection by adjusting for measured attributes ofneighbourhood preference. However, commonly the impact of adjustment could not be assessed. Future studiesusing adjustment should provide estimates of associations with and without adjustment for self-selection; considertemporality in the measurement of self-selection variables relative to the timing of the environmental exposure andoutcome behaviours; and consider the theoretical plausibility of presumed pathways in cross-sectional researchwhere causal direction is impossible to establish.
Keywords: Bias, Neighbourhood characteristics, Exercise, Diet, Environmental exposure, Adult
BackgroundConceptual models suggest that the neighbourhoods inwhich we live have the potential to affect health-relatedbehaviours such as physical activity and dietary behav-iours [1–4]. A growing body of research has investigatedlinks between the local built, natural and social environ-ment on modifiable health-related behaviours [5–7].While some consistent links have been found (e.g., neigh-bourhood walkability is associated with active transport[8]), much research on neighbourhood effects on phys-ical activity and dietary behaviours has shown mixedfindings [9, 10].Two challenges in identifying whether environmental
features have a causal effect on physical activity and diet-ary behaviours are that most studies have relied on ob-servational and cross-sectional data. It is rarely ethical orfeasible to randomly allocate individuals to live in oneneighbourhood or another; the Moving to OpportunityStudy in the US being an uncommon example of suchan intervention [11]. The preclusion of randomisation isa key obstacle in determining whether observed associa-tions are due to differences in the local environment orother, unmeasured, factors. So, too, does the lack oftemporal ordering (possible with longitudinal but notcross-sectional studies) pose challenges for causal infer-ence. A reliance on non-randomised, cross-sectionalstudies poses serious problems in ruling out a potentialimpact of neighbourhood self-selection on exposure toparticular environment features and health-related be-haviours presumed related to these.Neighbourhood self-selection (also referred to as resi-
dential self-selection), refers to people selecting neigh-bourhoods to live in that have the facilities andresources that suit their preferred lifestyle. If neighbour-hood self-selection bias exists, it can be difficult to dif-ferentiate the effect of neighbourhood features onbehavioural outcomes from the choice to be near fea-tures facilitating these preferred behaviours. Consider,for example, the issue of identifying the effect of livingnear some neighbourhood environment feature, such asparks or sports facilities, on a health-related behaviouraloutcome, such as physical activity. It could be that individ-ual preference for spending time walking or exercising in
parks drives the individual’s selection into a neighbour-hood with parks (i.e., the individual “self-selects” into aneighbourhood that supports their preference for walkingor exercising in parks). However, this preference also pre-dicts the individual’s health-related behaviour (i.e., theirphysical activity in this example), as shown in Fig. 1.Therefore, failure to account for this neighbourhood self-selection may bias the estimated effect of the neighbour-hood environment feature on the behavioural outcome.This means that the effect could be over- or under-estimated which has implications for public health policiesrelated to neighbourhood (re)design. Neighbourhood self-selection can also occur if people are restricted in theirchoice of neighbourhood due to the affordability ofhousing. As discussed by Boone-Heinonen, Gordon-Larsen [12], if lower socioeconomic status neighbour-hoods have limited or poor physical activity facilitiesand residents undertake less physical activity then therelationship between the neighbourhood environmentand physical activity could be overestimated. Whilst in-creasingly acknowledged, neighbourhood self-selectionremains an under-studied phenomenon.Methods for dealing with neighbourhood self-selection
have been discussed in physical activity research [12,13]. In their narrative review, Boone-Heinonen et al. [12]highlighted how longitudinal designs are preferable toenable neighbourhood self-selection to be taken into ac-count in observational research. These designs allow fortemporal ordering of exposure and outcome, as well asthe possibility of examining within-individual change. Ina systematic review of built environment and physicalactivity associations, McCormack and Shiell [13] identi-fied a range of methods for accounting for neighbour-hood self-selection, such as confounder adjustment(including the use of propensity scores) and instrumen-tal variables. The authors noted, however, that while fewcross-sectional studies adjust for neighbourhood self-selection, those studies contribute in great number tothe current evidence base. However, this systematic reviewfocussed primarily on the research findings themselves,rather than a discussion and critique of the methods for ac-counting for neighbourhood self-selection. To our know-ledge, there have been no systematic reviews focussed on
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 2 of 22
examining methods to account for neighbourhood self-selection in neighbourhood environment and physical ac-tivity research. Furthermore, there have been no reviewsexamining methods to deal with neighbourhood self-selection in neighbourhood environment and dietary be-haviour research.Given the potential for neighbourhood self-selection to
influence estimated associations between the neighbour-hood environment and both physical activity and dietarybehaviours, our aims were to identify, and critique,methods used to account for and reduce the impact ofself-selection on estimated associations. Specifically, ourresearch questions were: 1) How is neighbourhood self-selection conceived in the literature on research in relationto physical activity and dietary behaviour?; 2) Whatmethods are used to assess its impact?; and 3) amongststudies adjusting for neighbourhood self-selection (e.g.,using regression based confounder adjustment), to whatextent are results presented both with and without adjust-ment, and if so, what is the scope of variation in the studyfindings? Results were used to inform recommendationsregarding suitable approaches for future research onneighbourhood influences on physical activity and dietarybehaviour.
MethodsSearch strategySearch terms for neighbourhood self-selection werebased on terms used in articles identified in an initialscoping review in PubMed conducted by KEL in March2017. Search terms for physical activity were informedby those used elsewhere when examining associationsbetween the built environment and physical activity [13].The terms “strolling”, “leisure-time”, “recreation”, “inactivity”
and “pedestrian” were excluded from the physical activitysearch terms to focus the search on physical activity morebroadly. Search terms for diet were informed by those usedelsewhere to examine associations between the food envir-onment and diet [10]. The initial list of search termsproposed for physical activity and diet is presented inSupplementary Table 1.Searches of these initial terms were conducted separ-
ately for each list (i.e., neighbourhood terms, self-selectionterms, physical activity terms, and diet terms), as well asin combination using ‘or’ between items within each list,and ‘and’ between the different lists. Searches were con-ducted in Scopus, PubMed, Academic Search Complete,Education Source, ERIC, Global Health, MEDLINEComplete, SPORTDiscus, and PsycInfo through EBSCO-Host on 6th July 2017 by KEL and LET. This enabled as-sessment of the number of articles identified using thesesearch terms to aid in determining which terms should beincluded in the final search. The preliminary searcheswere conducted using a step by step process, first asses-sing the neighbourhood search terms and then adding theself-selection terms. As over 280,000 articles were identi-fied combining the neighbourhood and self-selectionterms, the search terms were reviewed to ensure rele-vance. This resulted in a decision to group the two neigh-bourhood and self-selection search terms, shown inSupplementary Table 1, together as a single neighbour-hood self-selection term (e.g., “neighbo#rhood self-select*”). The final list of search terms considered in thisreview by database is presented in Table 1. Identified arti-cles were transferred into EndNote. In total, 3953 articleswere identified in the search, which was conducted on19th July 2017, with 287 identified as duplicates leaving3666 articles for screening.
Fig. 1 Directed acyclic graph of neighbourhood self-selection as a confounder of the association between a neighbourhood environment featureand a health-related behavioural outcome
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 3 of 22
ScreeningTwo assessors independently conducted the title andabstract screening using the Rayyan app [14]. Asmethods for dealing with self-selection may not appearin the title or abstract, the assessors did not considerself-selection in the initial screening. To be included,articles had to: 1) be original research articles (i.e., notcommentary or review articles); 2) be published as arti-cles in refereed journals; 3) be published in English; 4)feature adult participants (i.e., ≥18 years of age); 5) in-clude a physical activity or dietary behaviour (includingfood purchasing behaviours) outcome; 6) include anobjectively-assessed measure of the built (e.g., foodoutlets, sport or recreational centres), natural (e.g.,parks) or social (e.g., neighbourhood disadvantage,crime) environment as an exposure variable (articlesthat dealt with perceived rather than objectivelyassessed neighbourhood environment measures wereexcluded; neighbourhood environment exposure could in-clude exposures defined for administrative units (e.g.,
postcode), as well as measures defined around the homeaddress, such as buffer or proximity measures); and 7) in-clude only community-dwelling participants (participantsin hospital settings or residential care settings were ex-cluded). Where there were disagreements, a third assessorexamined the title and abstracts according to the inclusioncriteria. Those that met the inclusion criteria (or, where itwas not clear from the abstract that the inclusion criteriahad been met) were considered in the full text assessment.Two assessors independently assessed the full text of the ar-ticles according to the same criteria applied for the title andabstract screening. A third assessment, conducted inde-pendently by two additional assessors, considered all arti-cles that met these inclusion criteria, in addition to anywhere it was unclear that the criteria had been met, to de-termine whether self-selection had been considered.
Data extractionA data extraction template was created in Excel. The fol-lowing information was collated from the articles
Table 1 Search conducted for the systematic review of methods to account for self-selection in neighbourhoods and physicalactivity and diet research
Database Search terms Restrictions Number ofarticles
EBSCOHost(Academic Search Complete,Education Source, ERIC,Global Health, MEDLINEComplete, SPORTDiscus,PsycInfo)
(“neighbo#rhood self-select*” OR “neighbo#rhood selfselect*” OR “neighbo#rhood select*” OR “residentialself-select*” OR “residential self select*” OR “residentialdecisions” OR “self-selection bias” OR “self selection bias”OR “residential location decision” OR “neighbo#rhoodchoice” OR “neighbo#rhood preference” OR “residentialmobility”)AND(“physical activit*” OR exercis* OR walk* OR cycl* ORbicycle* OR sport* OR “active transport*” OR “activetravel” OR diet* OR nutrition* OR consumption OR food)
Adult(19+ years)
EnglishlanguageAcademicjournals
1241
PubMed (“neighborhood self-select*” OR “neighbourhoodself-select*” OR “neighborhood self select*” OR “neighbourhood self select*” OR “neighborhood select*”OR “neighbourhood select*” OR “residential self-select*”OR “residential self select*” OR “residential decisions” OR“self-selection bias” OR “self selection bias” OR “residentiallocation decision” OR “neighborhood choice” OR“neighbourhood choice” OR “neighborhood preference”OR “neighbourhood preference” OR “residential mobility”)AND(“physical activit*” OR exercis* OR walk* OR cycl* ORbicycl* OR sport* OR “active transport*” OR “active travel”OR diet* OR nutrition* OR consumption OR food)
Adult(19+ years)EnglishlanguageHumans
1387
Scopus (“neighborhood self-select*” OR “neighbourhoodself-select*” OR “neighborhood self select*” OR“neighbourhood self select*” OR “neighborhood select*”OR “neighbourhood select*” OR “residential self-select*”OR “residential self select*” OR “residential decisions” OR“self-selection bias” OR “self selection bias” OR “residentiallocation decision” OR “neighborhood choice” OR“neighbourhood choice” OR “neighborhood preference”OR “neighbourhood preference” OR “residential mobility”)AND(“physical activit*” OR exercis* OR walk* OR cycl* ORbicycl* OR sport* OR “active transport*” OR “active travel”OR diet* OR nutrition* OR consumption OR food)
AdultEnglishlanguageJournalarticleHuman
1325
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 4 of 22
included in this review: author information, article title,study setting, study design (e.g., cross-sectional, longitu-dinal), characteristics of participants sampled (e.g., age,gender), neighbourhood environment exposure, physicalactivity or diet outcome details, confounder adjustmentin analyses, in addition to the method used to addressneighbourhood self-selection and any limitations statedabout this approach.
Review registrationThis review was registered with the PROSPERO Inter-national Prospective Register of Systematic Reviews(number CRD42018083593) and was conducted in ac-cordance with the Preferred Reporting Items for System-atic Reviews and Meta-Analyses (PRISMA) statement.
ResultsOf 3666 articles identified, 31 were included in the re-view (see Fig. 2).A summary of included articles is presented in Table 2.
Most articles reported on data from the USA (13/31) orAustralia (8/31). Twenty articles featured cross-sectionalanalysis, 10 longitudinal analysis and one both cross-sectional and longitudinal (Table 2). Data from somestudies featured in more than one article. For example,data from the Residential Environments Project (RES-IDE) featured in five of the articles [22, 23, 26, 31, 34].
OutcomesA majority of studies (30/31) considered a physical activ-ity outcome or outcomes, with walking the most com-monly considered (23/30). Only two studies considereda dietary behaviour outcome [15, 17], with one of thesealso considering physical activity outcomes [15].
ExposuresNineteen articles considered individual-level environ-ment exposure variables (e.g., total area of park spacewithin 1 km of each participant’s home address [30]), 11considered area-level exposure variables (e.g., percentageof green space within the census areal units in whichparticipants reside [37]) and one article considered anarea-level exposure variable but treated it as anindividual-level exposure variable in the analysis as therewere few individuals within each neighbourhood [18](Table 2). Seventeen studies considered only built envir-onment exposures (e.g., retail outlets [28]; residentialdensity [16]; food outlets [17, 21, 28]). Two consideredonly natural environment exposures (parks [30]; greenspace [37]), while three considered only social environ-ment exposures (socioeconomic disadvantage [15, 18];crime [23]). Nine studies considered mixed exposuretypes. Fourteen studies considered a single exposurevariable [15, 18, 19, 23, 24, 29, 30, 35–39, 42, 44],
although one was derived from a cluster analysis ofmixed environment exposure variables [35]. Walkabilitywas the most commonly considered of these single ex-posure variables [19, 25, 29, 35, 36, 38, 39, 42].
Approaches for dealing with neighbourhood self-selectionModel adjustmentTwenty articles used model adjustment to deal with mea-sured neighbourhood self-selection variables (Table 3).One article, after stratifying by gender, adjusted only
for age, education and marital status; these variables be-ing framed as important confounding factors influencingneighbourhood choice [15]. These variables were typic-ally adjusted for in the other articles included in this re-view, although they generally were not referred to asmeasures of neighbourhood self-selection. Instead, othermeasures relating to reasons for moving to or living in aneighbourhood were referred to as measures of neigh-bourhood self-selection, as described below.Most articles that used model adjustment attempted
to capture neighbourhood self-selection by measuringthe importance of characteristics (such as local access toschools or recreational facilities) for living or moving toa participant’s current neighbourhood or home (11/20)[22, 23, 25, 26, 29, 30, 34, 39–42], or when looking tomove (1/20) [28]. Others considered neighbourhoodpreference items (2/20) [37, 45], such as preference tolive in an urban or suburban environment [45], or boththe importance of characteristics and preference (2/20)[24, 38]. Two studies that reported using model adjust-ment provided little detail on the neighbourhood self-selection variables [27, 32].
Propensity scoresThree articles used propensity scores to deal with mea-sured neighbourhood self-selection variables [33, 35, 36](Table 3). McCormack et al. (2012) estimated the condi-tional probabilities of participants living in each of threeneighbourhood clusters based on neighbourhood self-selection, in addition to the length of residence incurrent neighbourhood, attitude towards walking, socio-demographic characteristics, and the season the surveywas conducted [35]. Nineteen self-selection items wereincluded. A similar approach was used by McCormacket al. (2017) to examine associations between walkability(“maintainers”, “improvers”, “decliners”) and physicalactivity, with 13 self-selection items included [36].MacDonald et al. (2010) considered the propensity to bein a treatment (i.e., participants in employment whoused light rail transit daily) or “control” group (i.e., par-ticipants in employment who did not use light rail tran-sit to commute to work) based on sociodemographiccharacteristics, social and physical environment charac-teristics and intention to use light rail [33]. MacDonald
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 5 of 22
et al. (2010) also employed a pre-post study design todeal with neighbourhood self-selection, discussed furtherbelow.
Restricted populationFour articles placed restrictions on the population of par-ticipants considered, in order to deal with neighbourhoodself-selection [16, 19–21]. Two articles by the same leadauthor [19, 20] restricted the population to recent Cubanimmigrants to Florida, highlighting that this is a
population “who overwhelmingly reported little choice intheir selection of built environments” [20]. These studiesalso adjusted for age, gender and education (previouslymentioned characteristics that can at least partly accountfor neighbourhood selection), as well as body mass index,days resident in the USA, and habitual physical activity,when examining associations between built environmentcharacteristics, such as walkability, and physical activity[19, 20]. Another study restricted the population by onlyconsidering a small study area [16]. The fourth article
Fig. 2 Flowchart of the systematic literature search
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 6 of 22
Table
2Characteristicsof
thearticlesconsidered
inthesystem
aticreview
Autho
r(Year)
Cou
ntry
Stud
yname
Stud
yde
sign
Num
berof
participants
Outcome
Specific
outcom
eExpo
sure
Specificexpo
sure
Area-level
expo
sure
Area-type
Num
ber
ofareas
Alves,Silva
(2013)
[15]
Portug
alNoname
Cross-
sectional
2081
Dietary
behaviou
rand
physical
activity
Fruitand
vege
tables,
Sede
ntary
behaviou
r
Social
environm
ent
Disadvantage
Yes
Cen
susblock
1662
Boarne
t,Joh
(2011)
[16]
USA
Noname
Cross-
sectional
1365–1370
(dep
ending
on outcom
e)
Physical
activity
Walking
Built
environm
ent
Reside
ntiald
ensity,Block
size,
Intersectio
ns,C
ommercial
destinations
Yes
Neigh
bourho
od8
Boon
e-Heino
nen,
Gordo
n-Larsen
(2011)
[17]
USA
CARD
IALong
itudinal5115
Dietary
behaviou
rFastfood
consum
ption,
Fruitand
vege
table
intake,D
iet
quality
Built
environm
ent
Fastfood
chainrestaurants,
Supe
rmarkets,Smaller
grocerystores
No
N/A
N/A
Boon
e-Heino
nen,
DiezRo
ux(2011)
[18]
USA
CARD
IALong
itudinal4179
Physical
activity
Physicalactivity
inde
xSocial
environm
ent
Disadvantage
Yes
(treated
asan individu
allevel
expo
sure)
Cen
sustract
Not
stated
Brow
n,Pantin
(2013)
[19]
USA
Noname
Cross-
sectional
391
Physical
activity
Walking
Built
environm
ent
Walkability
No
N/A
N/A
Brow
n,Lombard
(2014)
[20]
USA
Noname
Cross-
sectional
391
Physical
activity
Walking
Built
environm
ent
Walkability,Distanceto
urban
developm
entbo
undary,
Distanceto
centralb
usiness
district
No
N/A
N/A
Cerin,Frank
(2011)
[21]
USA
SMARTRA
QandNEM
SCross-
sectional
274
Physical
activity
Walking
Built
environm
ent
Grocery
orconven
iencestores,
Restaurants
No
N/A
N/A
Christian,
Knuiman
(2013)
[22]
Australia
RESIDE
Long
itudinal1047
Physical
activity
Walking
Mixed
Neigh
bourho
odtype
(hybrid
,liveable,conven
tional)
No
N/A
N/A
Foster,H
oope
r(2016)
[23]
Australia
RESIDE
Long
itudinal1813
Physical
activity
Walking
Social
environm
ent
Crim
eNo
Subu
rbNot
stated
Frank,Saelen
s(2007)
[24]
USA
SMARTRA
QCross-
sectional
1455
and
2056
(dep
ending
onanalysis)
Physical
activity
Walking
Built
environm
ent
Walkability
No
N/A
N/A
Frank,
Kershaw
(2014)
[25]
Canada
Noname
Cross-
sectional
2748
Physical
activity
Walking
Mixed
Walkability,Hou
seho
ldincome
Yes
Forw
ard
SortationArea
(income)
orPo
stalCod
e(walkability)
Not
stated
Giles-Corti,
Australia
RESIDE
Long
itudinal1420
Physical
Walking
Mixed
Transport-relatedwalking
destinations
No
N/A
N/A
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 7 of 22
Table
2Characteristicsof
thearticlesconsidered
inthesystem
aticreview
(Con
tinued)
Autho
r(Year)
Cou
ntry
Stud
yname
Stud
yde
sign
Num
berof
participants
Outcome
Specific
outcom
eExpo
sure
Specificexpo
sure
Area-level
expo
sure
Area-type
Num
ber
ofareas
Bull(2013)
[26]
activity
(postoffices,b
usstop
s,de
licatessens,
supe
rmarkets,train
stations,sho
pping
centresor
CDor
DVD
stores),
Recreatio
n-relatedwalking
destinations
(beach,p
arkor
sportsfield)
Hajna,Ross
(2016)
[27]
Canada
Noname
Long
itudinal131
Physical
activity
Dailystep
sBu
ilten
vironm
ent
Walkability
No
N/A
N/A
Handy,C
ao(2008)
[28]
USA
Noname
Cross-
sectional
1352
and
1497
(dep
ending
onanalysis)
Physical
activity
Mod
erate-to-
vigo
rous
physicalactivity
Built
environm
ent
Institu
tionald
estin
ations
(bank,church,
library,p
ostoffice),M
ainten
ance
destinations
(grocery
store,ph
armacy),
Eatin
gou
tde
stinations
(bakery,pizza,
icecream,takeaway),leisurede
stinations
(health
club
,boo
kstore,b
ar,the
atre,
vide
orental)
No
N/A
N/A
Jack
and
McCormack
(2014)
[29]
Canada
Noname
Cross-
sectional
1967
Physical
activity
Walking
Built
environm
ent
Walkability
Yes
Postalcode
sNot
stated
Kaczynskiand
Mow
en(2011)
[30]
Canada
Noname
Cross-
sectional
585
Physical
activity
Park
based
physicalactivity
Natural
environm
ent
Park
No
N/A
N/A
Knuiman,
Christian
(2014)
[31]
Australia
RESIDE
Long
itudinal1703
Physical
activity
Walking
Mixed
Street
conn
ectivity,Residen
tiald
ensity,
Land
usemix,Service
destinations
(dry
cleane
rs,p
ostoffices,p
harm
acies,vide
ostores),Con
venien
cede
stinations
(delis,
gene
ralstores,supe
rmarkets,g
reen
grocers,seafoo
dshop
s,gasstations,
othe
rfood
shop
s,shop
ping
centres),
Publicop
enspacede
stinations
(parks,
sportsfields,be
ache
s),Railway
station
No
N/A
N/A
Lee,Ze
gras
(2013)
[32]
USA
Noname
Cross-
sectional
933
Physical
activity
Walking
Mixed
Net
density,Landusemix,O
penspace,
Traillen
gth,Intersectio
ns,H
illiness,
Retailde
stinations,Transpo
rtde
stinations,
Traffic
volume,Traffic
crashe
s
No
N/A
N/A
MacDon
ald,
Stokes
(2010)
[33]
USA
Noname
Cross-
sectional
and
Long
itudinal
498
Physical
activity
Physicalactivity,
Walking
Mixed
Ligh
trailtransitintrod
uctio
n[long
itudinal],reside
ntiald
ensity
[cross-sectio
nal],park
[cross-sectio
nal],
Food
(grocery,con
venien
ce,restaurants)
andalcoho
ldestin
ations
[cross-sectio
nal]
No
N/A
N/A
McCormack,
Shiell(2012)
[34]
Australia
RESIDE
Cross-
sectional
1813
Physical
activity
Walking
Built
environm
ent
Street
conn
ectivity,Land-usemix,
Reside
ntiald
ensity
No
N/A
N/A
McCormack,
Friede
nreich
(2012)
[35]
Canada
Noname
Cross-
sectional
4034
Physical
activity
Walking
Mixed
Walkability,Bu
sine
ssde
stinations,Bus
stop
s,Parks,Recreatio
nalfacilities,
Side
walkleng
th,Residen
tiald
ensity,
Green
space,Cyclepaths
Yes
Adm
inistrative
neighb
ourhoo
dbo
undary
194
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 8 of 22
Table
2Characteristicsof
thearticlesconsidered
inthesystem
aticreview
(Con
tinued)
Autho
r(Year)
Cou
ntry
Stud
yname
Stud
yde
sign
Num
berof
participants
Outcome
Specific
outcom
eExpo
sure
Specificexpo
sure
Area-level
expo
sure
Area-type
Num
ber
ofareas
McCormack,
McLaren
(2017)
[36]
Canada
Noname
Cross-
sectional
915
Physical
activity
Physicalactivity,
Walking
,Cycling
Built
environm
ent
Walkability
Yes
Neigh
bourho
od12
Nichani,D
irks
(2016)
[37]
New
Zealand
GrowingUp
inNew
Zealand
Cross-
sectional
6772
Physical
activity
Mod
erate-to-
vigo
rous
physicalactivity
Natural
environm
ent
Green
space
Yes
Cen
susarea
unit
413
Norman,
Carlson
(2013)
[38]
USA
Noname
Cross-
sectional
240
Physical
activity
Walking
Built
environm
ent
Walkability
No
N/A
N/A
Owen
,Cerin
(2007)
[39]
Australia
PLACE
Cross-
sectional
2560
Physical
activity
Walking
Built
environm
ent
Walkability
Yes
Cen
sus
collectors
district
32
Saelen
s,Sallis
(2012)
[40]
USA
Neigh
bourho
odQualityof
Life
Long
itudinal2121
Physical
activity
Mod
erate-to-
vigo
rous
physicalactivity,
Walking
Mixed
Reside
ntiald
ensity,Landusemix,
Intersectio
nde
nsity,Retaild
estin
ations,
Parks
No
N/A
N/A
Sallis,Saelen
s(2009)
[41]
USA
Neigh
bourho
odQualityof
Life
Cross-
sectional
2199
Physical
activity
Mod
erate-to-
vigo
rous
physicalactivity,
Walking
Mixed
Walkability,Hou
seho
ldincome
Yes
Cen
susblock
grou
p32
VanDyck,
Cardo
n(2011)
[42]
Belgium
BEPA
SCross-
sectional
412
Physical
activity
Mod
erate-to-
vigo
rous
physicalactivity,
Physicalactivity
Built
environm
ent
Walkability
Yes
Neigh
bourho
od24
Wellsand
Yang
(2008)
[43]
USA
Noname
Long
itudinal32
and70
(dep
ending
onanalysis)
Physical
activity
Walking
Built
environm
ent
Land
usemix,Landusede
nsity,Street
netw
orkpattern
No
N/A
N/A
Westand
Shores
(2015)
[44]
USA
Noname
Long
itudinal273
Physical
activity
Walking
Built
environm
ent
Green
way
No
N/A
N/A
Witten
,Blakely
(2012)
[45]
New
Zealand
URBAN
Cross-
sectional
2033
Physical
activity
Physicalactivity,
Walking
Built
environm
ent
Street
conn
ectivity,D
wellingde
nsity,
Land
usemix,Service
andam
enity
destinations,U
rbanicity
Yes
Neigh
bourho
od(five
contiguo
usmeshb
locks)
48
URB
ANUnd
erstan
ding
theRe
latio
nshipbe
tweenActivity
andNeigh
bourho
ods,CA
RDIA
Coron
aryArteryRisk
Develop
men
tin
Youn
gAdu
lts,PLACE
Physical
Activity
inLo
calitiesan
dCom
mun
ityEn
vironm
ents,SMARTRA
QStrategies
forMetropo
litan
Atla
nta’sRe
gion
alTran
sportatio
nan
dAirQua
lity,NEM
SNutritionEn
vironm
entMeasuresStud
y,RESIDERe
side
ntialE
nviro
nmen
tsProject,
SPOTLIGHTSu
staina
blePreven
tionof
Obe
sity
Throug
hIntegrated
Strategies
project,BEPA
SBe
lgianEn
vironm
entalP
hysicalA
ctivity
Stud
y
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 9 of 22
Table 3 Methods used to account for neighbourhood self-selection in the articles considered in the systematic review
Author(Year)
Studydesign
Outcome Exposure Method to accountfor neighbourhoodself-selection
Neighbourhoodself-selectionvariable(s)
Items/variablesin derivedneighbourhoodself-selectionvariable(s)
Comparisonwith andwithout self-selection
Alves, Silva(2013) [15]
Cross-sectional
Dietarybehaviourandphysicalactivity
Disadvantage Model adjustment Sociodemographiccharacteristics
3 variables:i) Age;ii) Education;iii) Marital status
No
Boarnet, Joh(2011) [16]
Cross-sectional
Physicalactivity
Residentialdensity, Blocksize, Intersections,Commercialdestinations
Restricted population(only consider a smallstudy area, arguing “Ifresidential locationchoice mostlydetermines the studyarea where persons live,but not where alongthe corridor residentslive, then travelbehaviour differenceswithin the corridorswill be due to directeffects of differencesin the built environmentand businessconcentration, and notresidential preferences.”)
N/A N/A No
Boone-Heinonen,Gordon-Larsen(2011) [17]
Longitudinal Physicalactivity
Disadvantage Model adjustment andFixed effects regression(Considered both mixedand fixed effectsregression)
i)Sociodemographiccharacteristics
5 variables:i) Education;ii) Income;iii) Race;iv) Marital status;v) Children
Yes
Boone-Heinonen,Diez Roux(2011) [18]
Longitudinal Dietarybehaviour
Fast food chainrestaurants,Supermarkets,Smaller grocerystores
Fixed effects regression N/A N/A No
Brown,Pantin(2013) [19]
Cross-sectional
Physicalactivity
Walkability Restricted population(only considered recentCuban immigrants whooverwhelminglyreported that they didnot select theirneighbourhood basedon built environmentcharacteristics)
N/A N/A No
Brown,Lombard(2014) [20]
Cross-sectional
Physicalactivity
Walkability,Distance tourbandevelopmentboundary,Distance tocentral businessdistrict
Restricted population(only considered recentCuban immigrants whooverwhelminglyreported that they didnot select theirneighbourhood basedon built environmentcharacteristics)
N/A N/A No
Cerin, Frank(2011) [21]
Cross-sectional
Physicalactivity
Land use mix Restricted population(limited to middle andhigh-incomeresidents who couldself-select for reasonsother than affordability)
N/A N/A No
Christian,Knuiman(2013) [22]
Longitudinal Physicalactivity
Neighbourhoodtype (hybrid,liveable,conventional)
Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
21 items [not provided;referenced anotherarticle]. Factor analysisidentified 5 factors:i) streets are pedestrianand cycling friendly;ii) access to services,
No
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 10 of 22
Table 3 Methods used to account for neighbourhood self-selection in the articles considered in the systematic review (Continued)
Author(Year)
Studydesign
Outcome Exposure Method to accountfor neighbourhoodself-selection
Neighbourhoodself-selectionvariable(s)
Items/variablesin derivedneighbourhoodself-selectionvariable(s)
Comparisonwith andwithout self-selection
jobs or place of study;iii) access to school;iv) close to parks andrecreational facilities;v) safe, diverse and easyliving community.
Foster,Hooper(2016) [23]
Longitudinal Physicalactivity
Crime Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
1 item: i) Importance ofsafety from crime
No
Frank,Saelens(2007) [24]
Cross-sectional
Physicalactivity
Walkability,Householdincome
Model adjustment i) Importance ofcharacteristics forliving in or movingto neighbourhood/new house, ii)Neighbourhoodpreference
10 items in reasons formoving:i) Low crime,ii) Affordability,iii) Closeness to job,iv) Near shops and services,v) Near major roads andinterstates, vi) Ease ofwalking, vii) Lowtransportation costs,viii) Near outdoor recreation,ix) Quality of schools, x) Nearto public transit.Principal components analysisidentified 1 factor with lowtransportation costs, near topublic transit and ease ofwalking having highest loads.The average score of thesethree items was split intoquartiles and used as theself-selection variable. 7trade-offs used to assesspreferences: i) walkability vs.commercial-residential landuse separation, ii) commutedistance vs. residentialdensity, iii) urban vitality vs.low-density and single-useneighbourhoods,iv) commute distance vs.living on quieter cul-de-sacstreet, v) availability ofalternatives to the car vs.home size, vi) accommodationof automobile vs.accommodation of pedestriansand cyclists, vii) availability ofalternatives to the car vs.neighbourhood privacy.Principal components analysisidentified 1 factor. This wasnormalised and split intoquartiles.
No
Frank,Kershaw(2014) [25]
Cross-sectional
Physicalactivity
Walkability Model adjustment Neighbourhoodpreference
7 trade-offs used to assesspreferences in walkable vs.auto-orientatedneighbourhoods: i) Closenessto shops and services; ii)Level of activity and mix ofhousing; iii) Home size andtravel options; iv) Lot sizeand commute distance;v) Street design and traveloptions; vi) Public recreationand lot size; vii) Access to
No
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 11 of 22
Table 3 Methods used to account for neighbourhood self-selection in the articles considered in the systematic review (Continued)
Author(Year)
Studydesign
Outcome Exposure Method to accountfor neighbourhoodself-selection
Neighbourhoodself-selectionvariable(s)
Items/variablesin derivedneighbourhoodself-selectionvariable(s)
Comparisonwith andwithout self-selection
and size of food stores.Trade-offs were evaluatedusing 11-point scales foreach of three questions: 1)“Your neighbourhoodpreference is … “, 2) “Indicateif your current neighbourhoodis more like “A” or “B” … “,3) “Regarding [the describedattributes], the neighbourhoodyou’d hope to find would be[more like “A” or “B”] thanyour current neighbourhood”.Principal component analysiswas used to extract a singleneighbourhood preferencecomponent. This was splitinto quartiles.
Giles-Corti,Bull (2013)[26]
Longitudinal Physicalactivity
Transport-relatedwalking destinations(post offices, busstops, delicatessens,supermarkets, trainstations, shoppingcentres or CD orDVD stores),Recreation-relatedwalking destinations(beach, park or sportsfield)
Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
21 items [not provided;referenced another article].Factor analysis identified 5factors: i) streets arepedestrian and cyclingfriendly; ii) access to services,jobs or place of study; iii)access to school; iv) close toparks and recreational facilities;v) safe, diverse, easy livingcommunity. These five wereincluded as separatecategorical variables (Notimportant or not importantat all/Somewhat important/Important). In addition, aself-selection scale (notimportant or somewhatimportant) used in previousstudies was considered.
Yes
Hajna, Ross(2016) [27]
Longitudinal Physicalactivity
Walkability Model adjustment Residential self-selection
Residential self-selection: 11items from theNeighbourhood Quality ofLife Study questionnaire(reference but no detailsprovided)
Yes
Handy, Cao(2008) [28]
Cross-sectional
Physicalactivity
Institutionaldestinations (bank,church, library, postoffice), Maintenancedestinations (grocerystore, pharmacy),Eating outdestinations (bakery,pizza, ice cream,takeaway), leisuredestinations (healthclub, bookstore, bar,theatre, video rental)
Model adjustment Importance ofcharacteristics whenlooking to move toneighbourhood/new house
34 items [not all provided]:i) Easy access to a regionalshopping mall, ii) Easy accessto downtown, iii) Otheramenities such as a pool orcommunity centre availablenearby, iv) Shopping areaswithin walking distance, v)Easy access to the freeway,vi) Good public transit service(bus or rail), vii) Good bicycleroutes beyond neighbourhood,viii) Sidewalks throughoutneighbourhood, ix) Parks andopen spaces nearby, x) Quietneighbourhood, xi) Low crimerate within neighbourhood,xii) Low level of car traffic onneighbourhood streets,xiii) Safe neighbourhood forwalking, xiv) Safeneighbourhood for kids toplay outdoors, xv) Good street
No
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 12 of 22
Table 3 Methods used to account for neighbourhood self-selection in the articles considered in the systematic review (Continued)
Author(Year)
Studydesign
Outcome Exposure Method to accountfor neighbourhoodself-selection
Neighbourhoodself-selectionvariable(s)
Items/variablesin derivedneighbourhoodself-selectionvariable(s)
Comparisonwith andwithout self-selection
lighting, xvi) Diverseneighbourhoods in terms ofethnicity, race, and age,xvii) Lots of people out andabout within myneighbourhood, xviii) Lots ofinteraction among neighbours,xix) Economic level ofneighbours similar to mylevel, xx) Attractive appearanceof neighbourhood, xxi) Highlevel of upkeep inneighbourhood, xxii) Varietyin housing styles, xxiii) Bigstreet trees, xxiv) Largebackyards, xxv) Large frontyards, xxvi) Lots of off-streetparking (garages or driveways).Principal components analysisidentified six factors:accessibility, physical activityoptions, attractiveness,outdoor spaciousness, safety,and socialising.
Jack andMcCormack(2014) [29]
Cross-sectional
Physicalactivity
Walkability Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
19 items [not provided].Principal components analysisidentified four factors: accessto places that supportphysical activity, access tolocal services, sense ofcommunity, ease of driving.These were transformed intoz-scores.
No
Kaczynskiand Mowen(2011) [30]
Cross-sectional
Physicalactivity
Park Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
1 item: i) Importance ofcloseness to open space
Yes
Knuiman,Christian(2014) [31]
Longitudinal Physicalactivity
Street connectivity,Residential density,Land use mix, Servicedestinations (drycleaners, post offices,pharmacies, videostores), Conveniencedestinations (delis,general stores,supermarkets, greengrocers, seafoodshops, gas stations,other food shops,shopping centres),Public open spacedestinations (parks,sports fields, beaches),Railway station
Fixed effects regression N/A N/A Yes
Lee, Zegras(2013) [32]
Cross-sectional
Physicalactivity
Net density, Land usemix, Open space, Traillength, Intersections,Hilliness, Retaildestinations,Transportdestinations, Trafficvolume, Trafficcrashes
Model adjustment Self-selection Unclear. Used structuralequation modelling to enablethe inclusion of latentcharacteristics to control forself-selection.
Yes
MacDonald, Cross- Physical Light rail transit Propensity score and i) Sociodemographic variables No
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 13 of 22
Table 3 Methods used to account for neighbourhood self-selection in the articles considered in the systematic review (Continued)
Author(Year)
Studydesign
Outcome Exposure Method to accountfor neighbourhoodself-selection
Neighbourhoodself-selectionvariable(s)
Items/variablesin derivedneighbourhoodself-selectionvariable(s)
Comparisonwith andwithout self-selection
Stokes(2010) [33]
sectionalandLongitudinal
activity introduction[longitudinal],residential density[cross-sectional], park[cross-sectional],Food (grocery,convenience,restaurants) andalcohol destinations[cross-sectional]
Quasi-experiment Sociodemographicvariables, ii) Plans touse light rail transit
/baseline characteristicsincluded 7 items: i) gender,ii) race, iii) age, iv) employed,v) miles to work,vi) education level, vii) rent
McCormack,Shiell (2012)[34]
Cross-sectional
Physicalactivity
Street connectivity,Land-use mix,Residential density
Propensity score i) Importance ofcharacteristics forliving in or movingto neighbourhood/new house; ii)Number of years incurrentneighbourhood; iii)Sociodemographiccharacteristics
19 items for characteristics:i) Affordability, ii) Proximity toparks, iii) Proximity to job/school, iv) Proximity to transit,v) Proximity to stores/services,vi) Ease of walking, vii) Senseof community, viii) Safetyfrom crime, ix) Proximity torecreation facilities, x) Accessto highways, xi) Attractivestreets, xii) Proximity tofamily/friends, xiii) Views ofscenery (e.g., mountains),xiv) Cleanliness of streets,xv) Proximity to downtown,xvi) Proximity to trails,xvii) Places to be physicallyactive, xviii) Places to walk/cycle to, xix) Ease of driving.Sociodemographiccharacteristics: i) homeownership status, ii) gender,iii) age, iv) education,v) number of dependents <18 years at home
No
McCormack,Friedenreich(2012) [35]
Cross-sectional
Physicalactivity
Walkability Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
21 items [not provided;referenced another article].Factor analysis identified 5factors: i) Pedestrian andcycling friendly streets;ii) Accessible services for dailyliving; iii) Accessible schoolsor places of study;iv) Accessible parks andrecreation facilities;5) Housing affordability andchoice. Factors included ascovariates in the models.
Yes
McCormack,McLaren(2017) [36]
Cross-sectional
Physicalactivity
Walkability, Businessdestinations, Busstops, Parks,Recreational facilities,Sidewalk length,Residential density,Green space, Cyclepaths
Propensity score Importance ofcharacteristics forliving in or movingto neighbourhood/new house
13 items: i) Proximity totransit, ii) Proximity torecreational destinations,iii) Proximity to non-recreational destinations,iv) Proximity to work,v) Proximity to schools,vi) Proximity to downtown,vii) Access to highways andmajor roads, viii) Access tocommunity associations,ix) Sense of community,x) Attractiveness,xi) Cleanliness of streets,xii) Housing type variety,xiii) quality of recreationalfacilities. Responses to eachitem were collapsed from“not at all”, “somewhat” and
No
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 14 of 22
Table 3 Methods used to account for neighbourhood self-selection in the articles considered in the systematic review (Continued)
Author(Year)
Studydesign
Outcome Exposure Method to accountfor neighbourhoodself-selection
Neighbourhoodself-selectionvariable(s)
Items/variablesin derivedneighbourhoodself-selectionvariable(s)
Comparisonwith andwithout self-selection
“very important” into “notimportant” and “important”.Propensity scores were created.
Nichani,Dirks(2016) [37]
Cross-sectional
Physicalactivity
Green space Model adjustment Neighbourhoodpreference
1 item: “Why do you live inthis neighbourhood?: I likethe local lifestyle.” No/Yes.Local lifestyle included accessto community resources (e.g.green space, recreationalfacilities, public transport,shopping, education,healthcare, social and culturalfacilities).
Yes
Norman,Carlson(2013) [38]
Cross-sectional
Physicalactivity
Walkability Model adjustment i) Importance ofcharacteristics forliving in or movingto neighbourhood/new house; ii)Neighbourhoodpreference
4 items in moving: i) Ease ofwalking; ii) Near public transit;iii) Near shops and services;iv) Near outdoor recreation.The average rating of theseitems, all measured on5-point scales, was split at themedian to categorise as low/high importance of walkability.3 items in preference: i)residential density; ii) landuse; iii) street connectivity.The average rating of theseitems, all measured on11-point scales, was split atthe median to categorise aslow/high preference for ahigh-walkabilityneighbourhood.
No
Owen, Cerin(2007) [39]
Cross-sectional
Physicalactivity
Walkability Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
4 items: i) Closeness to job orschool; ii) Closeness to publictransportation; iii) Desire fornearby shops and services;iv) Ease of walking. Theaverage rating of these items,all on 5-point scales, wasused as neighbourhood self-selection measure.
Yes
Saelens,Sallis(2012) [40]
Longitudinal Physicalactivity
Residential density,Land use mix,Intersection density,Retail destinations,Parks
Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
3 items [chosen based onfactor analysis of 11 residentialselection items]: i) Closenessto public transportation;ii) Desire for nearby shopsand services; iii) Ease ofwalking. The average ratingof these items, all on 5-pointscales, was used as residentialselection variable.
No
Sallis,Saelens(2009) [41]
Cross-sectional
Physicalactivity
Walkability,Household income
Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
3 items: i) Desire for nearbyshops and services; ii) Easeof walking; iii) Closeness torecreational facilities. Theaverage rating of these items,[scale not provided butreference to paper provided]was used as measure ofwalkability-relatedself-selection of neighbourhoods.
Yes
Van Dyck,Cardon(2011) [42]
Cross-sectional
Physicalactivity
Walkability Model adjustment Importance ofcharacteristics forliving in or movingto neighbourhood/new house
21 items: i) House price;ii) Importance of living in citycentre; iii) Importance ofliving in a quietneighbourhood; iv-vii) Social
Yes
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 15 of 22
restricted the population to only consider those who couldself-select, namely those of middle and high-incomewhose choice was not restricted for financial reasons [21].
Fixed effects regressionThree articles used fixed effects regression to deal withneighbourhood self-selection in their longitudinal ana-lyses [17, 18, 31]; one article used both this approachand mixed models with model adjustment [18]. Thesearticles also included potential time-varying confoundersin their models, such as income, marriage and children,although none included a measure of neighbourhood
preference or reasons for living in current neighbour-hood, such as those described in the model adjustmentsection.
Pre-post designThree articles used a pre-post longitudinal design to dealwith neighbourhood self-selection [33, 43, 44]. One studyused a quasi-experimental pre-post design with a compari-son group, with a 1 year follow-up after the introduction ofa greenway [44]. Another article employed a pre-postdesign among a small subsample of participants whomoved to a new neighbourhood, to examine differences in
Table 3 Methods used to account for neighbourhood self-selection in the articles considered in the systematic review (Continued)
Author(Year)
Studydesign
Outcome Exposure Method to accountfor neighbourhoodself-selection
Neighbourhoodself-selectionvariable(s)
Items/variablesin derivedneighbourhoodself-selectionvariable(s)
Comparisonwith andwithout self-selection
/emotional reasons (e.g. livingclose to family and friends);viii-xxi) Walkability relateditems (e.g. importance ofcloseness to shops, closenessto work/school, traffic safety,amount and quality ofsidewalks/footpaths). All itemswere scored on a 5-point scale.A single variable was createdbut it is not clear how thiswas defined. Those scoringhigher than the median wereconsidered to have walkabilityas an important reason forneighbourhood selection.
Wells andYang(2008) [43]
Longitudinal Physicalactivity
Land use mix, Landuse density, Streetnetwork pattern
Quasi-experiment(examine post-move -pre-move change inexposure on post-moveoutcome controlling forpre-move outcome)
N/A N/A No
West andShores(2015) [44]
Longitudinal Physicalactivity
Greenway Quasi-experiment(pre-post design withcontrol group)
N/A N/A No
Witten,Blakely(2012) [45]
Cross-sectional
Physicalactivity
Street connectivity,Dwelling density,Land use mix, Serviceand amenitydestinations,Urbanicity
Model adjustment i)Sociodemographiccharacteristics, andii) Neighbourhoodpreference
8 sociodemographic variables:i) Age; ii) Sex; iii) Ethnicity;iv) Marital status; v) Householdincome; vi) Educationalqualifications; vii) Occupation;viii) Household car access.2 items: i) Prefer lower-densitysuburban neighbourhoodsuburban or urbanenvironment located 10–15min by car from commondestinations or a higher-density urban neighbourhoodwith most destinationsaccessible on foot or by publictransportation within 10–15min; ii) Strength of preferencefor suburban or urbanenvironment. Responses werecombined as: strongly preferwalkable, moderately preferwalkable, neutral, moderatelyprefer less walkable, stronglyprefer less walkable.
Yes
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 16 of 22
pre- versus post-move physical activity associated with achanged environment [43]. The authors asserted that self-selection was addressed as the sample consisted of womenpartnered with a housing program who did not have achoice between neighbourhood types as only one neigh-bourhood was built within each region. The third studyassessed the impact of the introduction of light-rail transiton physical activity, adopting a pre-post design and utilisingpropensity scores, but without a comparison group [33].
Impact of accounting for self-selectionTwelve articles compared results of analyses that accountedfor neighbourhood self-selection with results of analysesthat did not (Table 3). Most (10/12) had used a model ad-justment approach, adjusting for measures of neighbour-hood self-selection, and thus compared models with andwithout adjustment for self-selection variable(s) [26, 27, 30,32, 34, 37, 39, 41, 42, 45].Three of these 12 articles presented results from one
model only, either with or without adjustment for neigh-bourhood self-selection, asserting in the results sectionthat adjustment for neighbourhood self-selection hadlittle effect on findings [27, 32], or that results wereattenuated consequent to adjustment [30]. Six articlespresented results for models both with and without ad-justment, indicative of only small changes in coefficientsor effect estimates for the exposure(s) of interest afteradjustment [26, 34, 37, 39, 41, 45]. In one article exam-ining neighbourhood walkability and physical activity,rather than present findings with and without adjustment,results were presented for the full sample of participantsin addition to only those with high neighbourhood self-selection (i.e., those for whom walkability characteristicswere important in their selection of neighbourhood) [42].The results were similar in both sets of analyses.Two articles assessed the impact of accounting for
neighbourhood self-selection by comparing findingsfrom fixed effects regression models to those frommixed models [18, 31]. Knuiman et al. (2014) highlightedthat the findings from fixed effects regression were simi-lar to those of the mixed model (and to a model fittedusing generalised estimating equations which was alsoconsidered) [31]. Boone-Heinonen reported that slightlydifferent results were produced depending on the ap-proach taken, highlighting that confounding by unmeas-ured time-invariant confounders (such as neighbourhoodself-selection) was minimal among black participants andstronger among white participants, but that the directionof the effect was consistent [18].
DiscussionThis review examined methods used to account for neigh-bourhood self-selection in studies examining associationsbetween the built, natural and social environment on adult
physical activity and dietary behaviours. In the followingwe provide a summary of the approaches used, an outlineof the limitations of these approaches, a discussion of thevariation in study findings due to accounting for neigh-bourhood self-selection, and an overview of other ap-proaches that may be considered.
Summary and limitations of approaches used to accountfor neighbourhood self-selectionIn our review, the most common approach used to ac-count for neighbourhood self-selection was model ad-justment. The main drawback of the model adjustmentapproach is that this assumes that all of the importantcharacteristics of neighbourhood self-selection are notonly accurately measured and taken into account, butalso that these are valid measures of self-selection. Thismay not be the case, particularly among those that weresolely reliant on individual characteristics (e.g., age, sex)as proxies for neighbourhood self-selection, or thosewhich only accounted for one aspect of neighbourhoodself-selection deemed important to the exposure ofinterest. While individual characteristics such as age andsex may influence choice of neighbourhood, requiringaccounting for in analyses, they are unlikely to be the onlycharacteristics that influence neighbourhood choice. Ana-lyses only adjusting for selected socio-demographic char-acteristics assume that only these characteristics influenceneighbourhood selection. This ignores the fact that othersociodemographic characteristics, such as the presence ofchildren in the household, as well as individual prefer-ences, are likely to influence choice. Findings may bebiased if other important characteristics that influenceboth the environmental exposure and the outcome arenot accounted for. Therefore, it is important that re-searchers are cautious when identifying neighbourhoodself-selection characteristics. If some of these characteris-tics are unmeasured, researchers should acknowledge thisas a limitation of their study, noting that findings may bebiased.Regarding the validity of indicators of neighbourhood
self-selection, a key challenge is the temporal ordering ofvariables in a causal sequence, an issue often challengingto assess given most studies are cross-sectional. For ex-ample, in a cross-sectional study examining the effect ofpark availability on physical activity, the importance ofresiding close to open space (e.g., parks) was assessed asan indicator of neighbourhood self-selection for partici-pants’ choices for moving to their neighbourhood [30].While this seems reasonable, it is possible that, for indi-viduals already undertaking high levels of physical activ-ity prior to moving, these existing high levels of physicalactivity would subsequently relate both to residing nearopen space and continued high levels of physical activity.Therefore, study results suggesting that greater park
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 17 of 22
availability is related to physical activity behaviour, evenif independent of a given preference to reside close toopen space, may not wholly account for self-selection is-sues which should ideally be assessed temporally: retro-spectively for cross-sectional studies, and prospectivelyfor longitudinal studies.The above example is supported by the extent of vari-
ation we uncovered in the characteristics used to ac-count for neighbourhood self-selection. It was notobvious that any of the variables used were derivedthrough application of an explicitly stated socio-behavioural theory. Whilst it is not the purpose of thisarticle to explain social-behavioural theories that mayapply, it should go without saying that population healthresearch demands theoretical underpinnings [46, 47].Theory is highly relevant to variable specification in re-search on environments and health, given behaviour canbe explained in terms of a reciprocal interaction betweencognitive, behavioural, and environmental determinants[48, 49]. A greater use of theory in variable selectionwould provide more support for defensible choices and,correspondingly, reduce ad hoc selection associated withlarge variations in choices made. This creates confusionabout what should be measured to account for neigh-bourhood self-selection in future studies. Statistical at-tempts to account for neighbourhood self-selection thatare devoid of theory-driven specifications of relevantmeasures may increase the potential for residual con-founding and generate biased estimates of associationsof interest. Researchers examining the effects of neigh-bourhood environment exposures on health-related be-haviour should clearly define which attributes are mostrelevant and important to assess as predictors of neigh-bourhood self-selection.Beyond model adjustment, propensity scores were also
used to account for neighbourhood self-selection, al-though much less frequently than standard variable ad-justment in regression models. Propensity scores arecommonly used when dealing with a binary exposure (i.e.,where there is an exposed and unexposed group), with apropensity score defined as the conditional probability ofreceiving the exposure given the observed covariates [50].If it can be assumed that there are no unmeasured con-founders (which may be infeasible – see above), then ac-counting for propensity scores (either via matching,stratification, as a covariate in model adjustment, orinverse-probability weighting) can enable estimation ofthe causal effect of the exposure. Thus, as with the modeladjustment approach, propensity scores can only preventbias from neighbourhood self-selection if all potentialneighbourhood self-selection indicators are valid, mea-sured accurately and reflected in the propensity score.A third method used to deal with neighbourhood self-
selection was to restrict the population under
consideration. As argued by Brown et al. [20] and Brownet al. [19] in their studies restricted to recent immi-grants, this approach is perhaps appropriate if the popu-lation considered truly does not have the ability tochoose where they live. However, restriction of otherpopulations, such as middle- and high-income groups, isunlikely to be sufficient to account for neighbourhoodself-selection if the investigators do not also examineand account for the preferences that guided the particu-lar choice of neighbourhood. Furthermore, it is ques-tionable to assume that restriction to a particular smallgeographical area deals with neighbourhood self-selection, as was the case in one article considered inthis review. In using this approach, Boarnet et al. (2011)argued that self-selection relates more to the area, orneighbourhood, in which people live, rather than a pre-cise residential location in that neighbourhood [16].However, this ignores the fact that there may be time-varying neighbourhood characteristics; such that the rea-sons people chose to live in, or continue to live in, agiven neighbourhood may vary depending on theirlength of residence. For example, recent residents mayhave chosen to move to a particular neighbourhood dueto the accessibility of resources (which may have beennon-existent for earlier residents), while early residentsmay have moved there due to affordability of property(which may now be unaffordable for many aspiring resi-dents). Finally, the restricted population approach is notappropriate for assessing the effect of a neighbourhoodenvironment attribute on a health-related behaviour inthe broader population, because it limits the generalis-ability of the findings to the particular sub-groupanalysed.Longitudinal studies offer the best potential for observa-
tional studies to address how changes in the environmentinfluence changes in behaviour. However, addressingneighbourhood self-selection prior to or during such stud-ies remains a challenge. One approach used was to con-duct within-person analyses of change using fixed effectsregression which can account for any time-invariant con-founding, irrespective of whether it was measured. Thisapproach to analysing longitudinal data can be used to an-swer questions about how changes in an exposure affectchanges in an outcome [51]. As this is a within-individualanalytical approach, both measured and unmeasuredtime-invariant confounders such as neighbourhood self-selection, are accounted for without the need to explicitlyinclude them in the model. This means that if the reasonsfor living in a neighbourhood do not change over time,these are accounted for by using this method, whether ornot they were measured. Although this appears advanta-geous, it is perhaps unrealistic to assume that neighbour-hood preference does not change over the life course.Individual preferences and reasons for choosing to reside
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 18 of 22
in a particular neighbourhood may differ dependent onlife stage. For example, choosing to reside near goodschools may become important for those with young chil-dren, while residing in more walkable neighbourhoodsmay become more important as individuals age. Further-more, fixed effects regression specifically assesses bothchanges in the exposure and outcome. Therefore, if thereis little change in the neighbourhood environment expos-ure, or the outcome, over the time period of the studythen fixed effects regression is not a suitable approach toadopt. As highlighted by Grafova et al. [52], this methodrequires longitudinal data covering a long period of timeto ensure sufficient variation. Often, unfortunately, this isnot available in neighbourhood and health studies [18].Studies conducted over time can allow the use of
quasi- or natural-experimental designs to assess howchange influences behaviour. Of the pre-post studiesconsidered in this review, only one had a comparatorgroup that did not experience the change in environ-ment. A comparison group is required to ensure thatany changes over time are not attributable to anotherfactor (or factors) unrelated to the neighbourhood envir-onment that changed over that period. Furthermore, al-though a quasi-experiment enables assessing howchange in an environmental characteristic shapes changein behaviour, the absence of randomisation to experi-mental conditions does require accounting for potentialconfounders in analyses. Such variables could includemeasures of neighbourhood self-selection. Finally, thisreview identified few natural experiments in this areadespite recognition that such designs are important andneeded to improve inference on neighbourhood effectson health [53–55]. This may be due to the practicalchallenges of collecting suitable pre-change data whenresearchers become aware of the environmental change.However, as discussed by Heinen et al., although quasi-or natural-experiments are recommended to aid in un-derstanding the impact of neighbourhood features onbehaviours, these still pose methodological challengesrelating to neighbourhood self-selection. Residential re-location during the study, for example, poses a particularproblem for quasi- or natural experiments and must beconsidered when undertaking analyses [56].
Impact of adjustment for neighbourhood self-selection onfindingsAlthough an aim of this review was to examine thescope of variation in the study findings after accountingfor neighbourhood self-selection, unfortunately it wasunclear what the impact of adjusting for neighbourhoodself-selection was. Few studies described findings withand without accounting for self-selection. Of those stud-ies that reported results both ways, marginal changes inthe parameter estimates and thus minor changes in
study conclusions, cannot be interpreted as meaning thatself-selection was fully accounted for and had little im-pact. Providing both models can assist understanding ofhow the estimated effects differed dependent on adjust-ment, but unfortunately, as highlighted by Oakes, it isnot possible to identify which neighbourhood self-selection variables are important to account for in theanalysis [57]. Thus, it is not possible to argue an absenceof residual confounding.
Accounting for neighbourhood self-selection in physicalactivity and dietary behaviour researchIt is notable that most articles identified in this reviewconsidered physical activity outcomes, with very fewconsidering dietary behaviour outcomes. This could bebecause neighbourhood self-selection is simply not con-sidered in this field, or that it is perceived to be of lessimportance in neighbourhood environment and dietarybehaviour research than in physical activity research.However, this ignores the potential for the food environ-ment to be an important aspect of neighbourhood selec-tion or preference. It is possible that individuals desireto live in neighbourhoods where they have a range offood outlets. This may be particularly true of those witha preference for consuming meals out and takeawayfoods. Therefore, the possibility of neighbourhood self-selection influencing associations in studies of dietarybehaviour should not be overlooked. Future research isneeded to examine the influence of neighbourhood self-selection in this area.
Other approaches for dealing with neighbourhood self-selectionAlthough emphasised as necessary to understand neigh-bourhood environment effects on physical activity anddietary behaviour, it is clearly challenging to obtain lon-gitudinal or quasi-experimental data in this field. Thismeans that a continued predominance of cross-sectionalresearch is likely. Unfortunately, this has major implica-tions on our ability to establish the temporal ordering ofthe relationships under consideration and thus to moreconvincingly account for self-selection, even if applyingtheory to determine suitable indicators of self-selectionto account for. Hence other approaches for accountingfor neighbourhood self-selection suitable for use incross-sectional research are required. Use of instrumen-tal variables is one such promising approach, as it candeal with time-invariant as well as time-varying con-founders [12]. An instrumental variable is associatedwith the exposure of interest and associated with theoutcome only through that exposure. This technique hasbeen used in other areas of neighbourhood environmentand health research. For example, Bilger and Carrieriused neighbourhood urbanisation as an instrument
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when examining the association between neighbourhoodproblems and health [58], while Zick et al. used multipleinstrumental variables (the number of churches, numberof schools and proportion of the neighbourhood under16 years of age) to examine the association betweenneighbourhood walkability and body mass index [59].Although offering potential for research on neighbour-hood environment and physical activity or dietary behav-iour research, identifying suitable instrumental variablescan be challenging as it is difficult to identify a variablethat is only associated with the outcome through thatparticular environmental exposure. For example, it islikely that neighbourhood urbanisation, considered aninstrumental variable by Bilger and Carrieri [58], couldin addition to leading to neighbourhood problems, alsolead to increased access to services, such as recreationalfacilities or supermarkets, which have been found to beassociated with health. Therefore, any association be-tween neighbourhood urbanisation and heath identifiedmay not be due to neighbourhood problems as hypothe-sised but may be due to other alternative pathways.
Strengths and limitationsStrengths of this review include a priori registration andreporting according to PRISMA; extensive pilot work togenerate final search terms; and multiple reviewers usedat each stage. The search strategy was limited to articlespublished in the English language and, thus, may nothave included all relevant papers. By only including arti-cles that explicitly referred to the use of methods dealingwith neighbourhood self-selection, we may have missedother relevant articles which considered approaches fordealing with unmeasured confounders. Furthermore, asthis review explicitly included search terms relating toneighbourhood self-selection, to identify methods usedto handle this problem, the findings are not generalisableto the broader literature on objective environmental as-sociations with physical activity and dietary behaviour.Articles that did not adjust for neighbourhood self-selection and did not mention it as a limitation did notappear in this search. In addition, this review only con-sidered objective environmental exposures, not per-ceived exposures. Perceived measures become conflatedwith neighbourhood self-selection measures when par-ticipants report the reasons they live in particular neigh-bourhoods based on their perceptions of what is in theirlocal environment (same-source bias).Finally, like all systematic reviews, our analysis was
conducted over a specific time period and developmentsand changes in the field that have occurred subsequentlywill not be reflected. While there is no strong indicationin the research literature of rapid advances in methodsin this space since 2017, a follow-up review should beundertaken in the future.
ConclusionsMethods to account for neighbourhood self-selection areunder-developed in research exploring links betweenneighbourhood environments and physical activity anddietary behaviour outcomes. Although adjusting for mea-sured neighbourhood preference or choice attributes hasthe potential to reduce bias, it may be important to con-sider adjustment for multiple items. Future studies shouldconsider appropriate neighbourhood self-selection mea-sures for the environment-behaviour association underexamination. Those using adjustment should: 1) provideestimates of associations with and without adjustment forneighbourhood self-selection; 2) consider temporality inthe measurement of alleged self-selection variables relativeto the timing of the environmental exposure and outcomebehaviours in longitudinal designs; and 3) also carefullyconsider the theoretical plausibility of presumed pathways,and bi-directional relationships, in cross-sectional researchwhere causal direction is impossible to establish. This willhelp gain a greater understanding of the impact of adjust-ment. Instrumental variables provide promise for deal-ing with neighbourhood self-selection, but these are notwithout their own challenges. Finally, longitudinal studiesover longer periods, or quasi-experiments with appropri-ate comparators, may provide the most promise to under-stand how the neighbourhood environment influencesthese behaviours. However, ultimately, regardless of studydesign, it is recommended that future research in this fieldcollects comprehensive information relating to neighbour-hood choice and preference, as well as individual charac-teristics relating to these.
Supplementary informationSupplementary information accompanies this paper at https://doi.org/10.1186/s12966-020-00947-2.
Additional file 1: Table S1. Search terms considered in initial search.
AbbreviationsPRISMA: Preferred Reporting Items for Systematic Reviews and Meta-Analyses; RESIDE: Residential environments
AcknowledgementsThe authors would also like to thank our two research assistants, Ricki Minterand Ekaterina Woods, for their assistance with article screening for thisreview.
Authors’ contributionsKEL led the review and searching process, conducted the data extractionand led the writing of the article. KEL and LET reviewed the full text articlesfor self-selection criteria. TLK reviewed articles in the case of disagreements.All authors contributed to the review plan, searching process, article draftand approved the final version for submission.
FundingThis work was supported by an Australian Research Council DiscoveryProject Grant [DP 170100751]. RB is supported by an Australian ResearchCouncil Future Fellowship [FT 150100131]. SRW was supported by theMedical Research Council (Unit Programme number U105292687). The other
Lamb et al. International Journal of Behavioral Nutrition and Physical Activity (2020) 17:45 Page 20 of 22
authors declare they have no actual or potential competing financialinterests. These funding sources had no role in conceptualising, designing orconducting this study.
Availability of data and materialsAll data generated or analysed during this study are included in thispublished article.
Ethics approval and consent to participateThis study is a systematic review. No ethics approval was required toconduct this review.
Consent for publicationNot applicable.
Competing interestsThe authors declare that they have no competing interests.
Author details1School of Exercise and Nutrition Sciences, Institute for Physical Activity andNutrition (IPAN), Deakin University, Geelong, Australia. 2Clinical Epidemiologyand Biostatistics Unit, Murdoch Children’s Research Institute, Melbourne,Australia. 3Department of Paediatrics, The University of Melbourne,Melbourne, Australia. 4Centre for Health Equity, Melbourne School ofPopulation and Global Health, The University of Melbourne, Melbourne,Australia. 5Medical Research Council Biostatistics Unit, University ofCambridge, Cambridge, UK. 6Health Research Institute, University ofCanberra, Canberra, Australia. 7Department of Medicine, St Vincent’s Hospital,The University of Melbourne, Fitzroy, Victoria, Australia.
Received: 30 September 2019 Accepted: 20 March 2020
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