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Optimizing Scoring and Sampling Methods for Assessing Built Neighborhood Environment Quality in Residential Areas

机译:优化计分和抽样方法以评估住宅区的建筑邻里环境质量

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Optimization of existing measurement tools is necessary to explore links between aspects of the neighborhood built environment and health behaviors or outcomes. We evaluate a scoring method for virtual neighborhood audits utilizing the Active Neighborhood Checklist (the Checklist), a neighborhood audit measure, and assess street segment representativeness in low-income neighborhoods. Eighty-two home neighborhoods of Washington, D.C. Cardiovascular Health/Needs Assessment (NCT01927783) participants were audited using Google Street View imagery and the Checklist (five sections with 89 total questions). Twelve street segments per home address were assessed for (1) Land-Use Type; (2) Public Transportation Availability; (3) Street Characteristics; (4) Environment Quality and (5) Sidewalks/Walking/Biking features. Checklist items were scored 0–2 points/question. A combinations algorithm was developed to assess street segments’ representativeness. Spearman correlations were calculated between built environment quality scores and Walk Score ? , a validated neighborhood walkability measure. Street segment quality scores ranged 10–47 (Mean = 29.4 ± 6.9) and overall neighborhood quality scores, 172–475 (Mean = 352.3 ± 63.6). Walk scores ? ranged 0–91 (Mean = 46.7 ± 26.3). Street segment combinations’ correlation coefficients ranged 0.75–1.0. Significant positive correlations were found between overall neighborhood quality scores, four of the five Checklist subsection scores, and Walk Scores ? ( r = 0.62, p < 0.001). This scoring method adequately captures neighborhood features in low-income, residential areas and may aid in delineating impact of specific built environment features on health behaviors and outcomes.
机译:必须优化现有的测量工具,以探索邻里建筑环境与健康行为或结果之间的联系。我们使用主动邻里检查表(该检查表),一种邻里审计方法来评估虚拟邻里审计的评分方法,并评估低收入邻里中的街道网段代表性。使用Google街景图像和清单(五个部分,共89个问题)对华盛顿特区心血管健康/需求评估(NCT01927783)参与者的82个居委会进行了审核。对每个家庭住址的十二个街道段进行了评估(1)土地使用类型; (2)公共交通可用性; (3)街道特征; (4)环境质量和(5)人行道/步行/自行车功能。清单项目得分为0–2分/问题。开发了一种组合算法来评估街道段的代表性。在建筑环境质量得分和步行得分之间计算Spearman相关性。 ,一种经过验证的邻里步行能力量度。街道路段质量得分在10-47之间(平均值= 29.4±6.9),而总体邻里质量得分在172-475之间(平均值= 352.3±63.6)。步行分数?范围为0-91(平均值= 46.7±26.3)。街道段组合的相关系数在0.75-1.0之间。在总体邻里质量得分,五个清单小节得分中的四个得分和步行得分之间发现显着正相关。 (r = 0.62,p <0.001)。这种评分方法可以充分捕捉低收入居民区中的邻里特征,并且可以帮助描绘特定建筑环境特征对健康行为和结果的影响。

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