Drop-And-Spin Virtual Neighborhood Auditing: Assessing Built Environment for Linkage to Health Studies.

INTRODUCTION Various built environment factors might influence certain health behaviors and outcomes. Reliable, resource-efficient methods that are feasible for assessing built environment characteristics across large geographies are needed for larger, more robust studies. This paper reports the item response prevalence, reliability, and rating time of a new virtual neighborhood audit protocol, drop-and-spin auditing, developed for assessment of walkability and physical disorder characteristics across large geographic areas. METHODS Drop-and-spin auditing, a method where a Google Street View scene was rated by spinning 360° around a point location, was developed using a modified version of the virtual audit tool Computer Assisted Neighborhood Visual Assessment System. Approximately 8,000 locations within Essex County, New Jersey were assessed by 11 trained auditors. Using a standardized protocol, 32 built environment items per a location within Google Street View were audited. Test-retest and inter-rater κ statistics were from a 5% subsample of locations. Data were collected in 2017-2018 and analyzed in 2018. RESULTS Roughly 70% of Google Street View scenes had sidewalks. Among those, two thirds were in good condition. At least 5 obvious items of garbage or litter were present in 41% of Google Street View scenes. Maximum test-retest reliability indicated substantial agreement (κ ≥0.61) for all items. Inter-rater reliability of each item, generally, was lower than test-retest reliability. The median time to rate each item was 7.3 seconds. CONCLUSIONS Compared with segment-based protocols, drop-and-spin virtual neighborhood auditing is quicker and similarly reliable for assessing built environment characteristics. Assessment of large geographies may be more feasible using drop-and-spin virtual auditing.

[1]  T. Osypuk,et al.  Do Social and Economic Policies Influence Health? A Review , 2014, Current Epidemiology Reports.

[2]  H. Badland,et al.  Can Virtual Streetscape Audits Reliably Replace Physical Streetscape Audits? , 2010, Journal of Urban Health.

[3]  John R Bethlehem,et al.  The SPOTLIGHT virtual audit tool: a valid and reliable tool to assess obesogenic characteristics of the built environment , 2014, International Journal of Health Geographics.

[4]  William A Satariano,et al.  The impact of neighborhood social and built environment factors across the cancer continuum: Current research, methodological considerations, and future directions , 2015, Cancer.

[5]  Michelle C. Kondo,et al.  Citywide cluster randomized trial to restore blighted vacant land and its effects on violence, crime, and fear , 2018, Proceedings of the National Academy of Sciences.

[6]  Richard A Scribner,et al.  A Reliable, Feasible Method to Observe Neighborhoods at High Spatial Resolution. , 2017, American journal of preventive medicine.

[7]  Andy P. Jones,et al.  Developing and testing a street audit tool using Google Street View to measure environmental supportiveness for physical activity , 2013, International Journal of Behavioral Nutrition and Physical Activity.

[8]  J. R. Landis,et al.  The measurement of observer agreement for categorical data. , 1977, Biometrics.

[9]  Stephen J Mooney,et al.  Development and deployment of the Computer Assisted Neighborhood Visual Assessment System (CANVAS) to measure health-related neighborhood conditions. , 2015, Health & place.

[10]  Jacob Cohen A Coefficient of Agreement for Nominal Scales , 1960 .

[11]  Ann Forsyth,et al.  The Irvine-Minnesota inventory to measure built environments: development. , 2006, American journal of preventive medicine.

[12]  Jesse J. Plascak,et al.  Sidewalk Conditions in Northern New Jersey: Using Google Street View Imagery and Ordinary Kriging to Assess Infrastructure for Walking , 2019, Preventing chronic disease.

[13]  Carrie M. Geremia,et al.  Using an audit tool (MAPS Global) to assess the characteristics of the physical environment related to walking for transport in youth: reliability of Belgian data , 2016, International Journal of Health Geographics.

[14]  Stephen J Mooney,et al.  Use of Google Street View to Assess Environmental Contributions to Pedestrian Injury. , 2016, American journal of public health.

[15]  Hannah Badland,et al.  Public open space desktop auditing tool—Establishing appropriateness for use in Australian regional and urban settings , 2016 .

[16]  Jennifer Ailshire,et al.  Using Google Earth to conduct a neighborhood audit: reliability of a virtual audit instrument. , 2010, Health & place.

[17]  Keshia M Pollack,et al.  Novel Methods for Environmental Assessment of Pedestrian Injury: Creation and Validation of the Inventory for Pedestrian Safety Infrastructure , 2018, Journal of Urban Health.

[18]  G. Gee,et al.  Neighborhood Social Conditions Mediate the Association Between Physical Deterioration and Mental Health , 2007, American journal of community psychology.

[19]  Douglas K Miller,et al.  Assessing the built environment using omnidirectional imagery. , 2012, American journal of preventive medicine.

[20]  A. Caspi,et al.  Systematic social observation of children's neighborhoods using Google Street View: a reliable and cost-effective method. , 2012, Journal of child psychology and psychiatry, and allied disciplines.

[21]  MaryCarol R. Hunter,et al.  Spatial contagion: Gardening along the street in residential neighborhoods , 2012 .

[22]  K. Kershaw,et al.  Neighborhood Disorder and Obesity-Related Outcomes among Women in Chicago , 2018, International journal of environmental research and public health.

[23]  Daniel A. Rodriguez,et al.  The development and testing of an audit for the pedestrian environment , 2007 .

[24]  Stephen J Mooney,et al.  Validity of an ecometric neighborhood physical disorder measure constructed by virtual street audit. , 2014, American journal of epidemiology.

[25]  A. Rundle,et al.  Association of proximity and density of parks and objectively measured physical activity in the United States: A systematic review. , 2015, Social science & medicine.

[26]  J. Sallis,et al.  Role of Built Environments in Physical Activity, Obesity, and Cardiovascular Disease , 2012, Circulation.

[27]  Paul Wilkinson,et al.  Optimising measurement of health-related characteristics of the built environment: Comparing data collected by foot-based street audits, virtual street audits and routine secondary data sources , 2016, Health & place.

[28]  Ashton M. Shortridge,et al.  Systematic review of the use of Google Street View in health research: Major themes, strengths, weaknesses and possibilities for future research☆ , 2018, Health & place.

[29]  Francisco Escobar,et al.  Assessing Walking and Cycling Environments in the Streets of Madrid: Comparing On-Field and Virtual Audits , 2015, Journal of Urban Health.

[30]  S. Melly,et al.  Validation of Walk Scores and Transit Scores for estimating neighborhood walkability and transit availability: a small-area analysis , 2013 .

[31]  Andrew Curtis,et al.  Using google street view for systematic observation of the built environment: analysis of spatio-temporal instability of imagery dates , 2013, International Journal of Health Geographics.

[32]  Jeffrey S. Wilson,et al.  Using Google Street View to Audit the Built Environment: Inter-rater Reliability Results , 2013, Annals of behavioral medicine : a publication of the Society of Behavioral Medicine.

[33]  Stephen J Mooney,et al.  Street Audits to Measure Neighborhood Disorder: Virtual or In-Person? , 2017, American journal of epidemiology.

[34]  D. Griffith Effective Geographic Sample Size in the Presence of Spatial Autocorrelation , 2005 .