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Using data from online geocoding services for the assessment of environmental obesogenic factors: a feasibility study

机译:使用来自在线地理编码服务的数据进行环境抑制因素的评估:可行性研究

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The increasing prevalence of obesity is a major public health problem in many countries. Built environment factors are known to be associated with obesity, which is an important risk factor for type 2 diabetes. Online geocoding services could be used to identify regions with a high concentration of obesogenic factors. The aim of our study was to examine the feasibility of integrating information from online geocoding services for the assessment of obesogenic environments. We identified environmental factors associated with obesity from the literature and translated these factors into variables from the online geocoding services Google Maps and OpenStreetMap (OSM). We tested whether spatial data points can be downloaded from these services and processed and visualized on maps. True- and false-positive values, false-negative values, sensitivities and positive predictive values of the processed data were determined using search engines and in-field inspections within four pilot areas in Bavaria, Germany. Several environmental factors could be identified from the literature that were either positively or negatively correlated with weight outcomes in previous studies. The diversity of query variables was higher in OSM compared with Google Maps. In each pilot area, query results from Google showed a higher absolute number of true-positive hits and of false-positive hits, but a lower number of false-negative hits during the validation process. The positive predictive value of database hits was higher in OSM and ranged between 81 and 100% compared with a range of 63-89% for Google Maps. In contrast, sensitivities were higher in Google Maps (between 59 and 98%) than in OSM (between 20 and 64%). It was possible to operationalize obesogenic factors identified from the literature with data and variables available from geocoding services. The validity of Google Maps and OSM was reasonable. The assessment of environmental obesogenic factors via geocoding services could potentially be applied in diabetes surveillance.
机译:肥胖的普及日益普及是许多国家的主要公共卫生问题。已知建造的环境因子与肥胖有关,这是2型糖尿病的重要危险因素。在线地理编码服务可用于识别具有高浓度令人抑制因子的地区。我们的研究目的是审查将信息与在线地理编码服务的信息集成,以便评估obesogensic环境。我们确定了与文献中的肥胖相关的环境因素,并将这些因素翻译成来自在线地理编码服务Google地图和OpenStreetMap(OSM)的变量。我们测试了是否可以从这些服务下载空间数据点并在地图上处理和可视化。使用德国巴伐利亚巴伐利亚州巴伐利亚州的四个试点区域内的搜索引擎和现场检查确定了处理数据的假阴性值,假阴性值,敏感度和阳性预测值。可以从文献中鉴定几种环境因素,这些因素与先前研究中的重量结果有阳性或呈负相关。与Google地图相比,OSM的查询变量的多样性较高。在每个导频区域中,Google的查询结果显示了较高的真正匹配和假阳性击中的绝对次数,但在验证过程中的假阴性点击数量较少。数据库击中的阳性预测值较高,谷歌地图的范围为81至100%,范围为63-89%。相比之下,谷歌地图(59到98%之间)敏感性高于OSM(20至64%)。有可能使用地理编码服务可获得的数据和变量来运营从文献中识别的噬吞作者。谷歌地图和OSM的有效性是合理的。通过地理编码服务评估环境抑菌因素可能适用于糖尿病监测。

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