Development and deployment of the Computer Assisted Neighborhood Visual Assessment System (CANVAS) to measure health-related neighborhood conditions
Public health research has shown that neighborhood conditions are associated with health behaviors and outcomes. Systematic neighborhood audits have helped researchers measure neighborhood conditions that they deem theoretically relevant but not available in existing administrative data. Systematic...
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Veröffentlicht in: | Health & place 2015-01, Vol.31, p.163-172 |
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creator | Bader, Michael D.M. Mooney, Stephen J. Lee, Yeon Jin Sheehan, Daniel Neckerman, Kathryn M. Rundle, Andrew G. Teitler, Julien O. |
description | Public health research has shown that neighborhood conditions are associated with health behaviors and outcomes. Systematic neighborhood audits have helped researchers measure neighborhood conditions that they deem theoretically relevant but not available in existing administrative data. Systematic audits, however, are expensive to conduct and rarely comparable across geographic regions. We describe the development of an online application, the Computer Assisted Neighborhood Visual Assessment System (CANVAS), that uses Google Street View to conduct virtual audits of neighborhood environments. We use this system to assess the inter-rater reliability of 187 items related to walkability and physical disorder on a national sample of 150 street segments in the United States. We find that many items are reliably measured across auditors using CANVAS and that agreement between auditors appears to be uncorrelated with neighborhood demographic characteristics. Based on our results we conclude that Google Street View and CANVAS offer opportunities to develop greater comparability across neighborhood audit studies.
•Develops online application to improve neighborhood data collected using Google Street View.•Application provides reliable measures of neighborhood walkability and disorder from a national sample.•Rater disagreements are largely uncorrelated with neighborhood characteristics.•Application can be used to improve consistency across studies and lower technological barriers. |
doi_str_mv | 10.1016/j.healthplace.2014.10.012 |
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Systematic neighborhood audits have helped researchers measure neighborhood conditions that they deem theoretically relevant but not available in existing administrative data. Systematic audits, however, are expensive to conduct and rarely comparable across geographic regions. We describe the development of an online application, the Computer Assisted Neighborhood Visual Assessment System (CANVAS), that uses Google Street View to conduct virtual audits of neighborhood environments. We use this system to assess the inter-rater reliability of 187 items related to walkability and physical disorder on a national sample of 150 street segments in the United States. We find that many items are reliably measured across auditors using CANVAS and that agreement between auditors appears to be uncorrelated with neighborhood demographic characteristics. Based on our results we conclude that Google Street View and CANVAS offer opportunities to develop greater comparability across neighborhood audit studies.
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subjects | Auditing Disorder Environment Design Geographic Information Systems - instrumentation Google Street View Health policy Health technology assessment Humans Neighborhood audit Neighbourhoods New York City Public health Reproducibility of Results Residence Characteristics Systematic social observation Urban environment Walkability |
title | Development and deployment of the Computer Assisted Neighborhood Visual Assessment System (CANVAS) to measure health-related neighborhood conditions |
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