从匿名手机定位数据中得出邻里层面的饮食和身体活动测量数据,以加强肥胖估测。

IF 3 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH International Journal of Health Geographics Pub Date : 2022-12-30 DOI:10.1186/s12942-022-00321-4
Ryan Zhenqi Zhou, Yingjie Hu, Jill N Tirabassi, Yue Ma, Zhen Xu
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引用次数: 0

摘要

背景:肥胖症是一个严重的公共卫生问题:肥胖症是一个严重的公共卫生问题。现有研究表明,肥胖与个人的饮食和体育锻炼密切相关。如果我们将这种关联延伸到邻里层面,那么有关邻里居民饮食和体育锻炼的信息可能会改善邻里层面肥胖症患病率的估计,并有助于确定哪些邻里更有可能患有肥胖症。然而,通过调查和访谈来测量邻里层面的饮食和体育活动具有挑战性,尤其是在一个大的地理区域:方法:我们提出了一种从匿名手机定位数据中得出邻里级饮食和体育锻炼测量值的方法,并研究了除文献中通常使用的社会经济和人口变量外,这些测量值在多大程度上能提高肥胖估算的准确性。我们利用 SafeGraph 公司提供的匿名手机定位数据,在纽约市、洛杉矶市和水牛城这三个不同的美国城市进行了案例研究。我们采用了五种不同的统计和机器学习模型,以测试得出的测量值对肥胖估计的潜在提升作用:结果:我们发现,从匿名手机定位数据中推导出邻里层面的饮食和身体活动测量值是可行的。与使用一套全面的社会经济和人口变量相比,衍生测量结果仅能为肥胖估算提供微小的帮助。不过,仅使用这些衍生测量值就能达到中等肥胖估算精度,而且在无法获得全面的社会经济和人口数据时(例如在一些发展中国家),这些测量值还能提供更高的精度。从方法论的角度来看,在邻里层面的肥胖估算中,空间显式模型的总体表现优于非空间模型:我们提出的方法可用于从匿名手机数据中得出邻里层面的饮食和身体活动测量值。推导出的测量值可提高肥胖估算的准确性,在无法获得全面的社会经济和人口数据时尤其有用。此外,这些推导出的测量值还可用于研究与肥胖相关的健康行为,如社区居民光顾快餐店的频率,以及识别导致肥胖相关问题的主要场所。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Deriving neighborhood-level diet and physical activity measurements from anonymized mobile phone location data for enhancing obesity estimation.

Background: Obesity is a serious public health problem. Existing research has shown a strong association between obesity and an individual's diet and physical activity. If we extend such an association to the neighborhood level, information about the diet and physical activity of the residents of a neighborhood may improve the estimate of neighborhood-level obesity prevalence and help identify the neighborhoods that are more likely to suffer from obesity. However, it is challenging to measure neighborhood-level diet and physical activity through surveys and interviews, especially for a large geographic area.

Methods: We propose a method for deriving neighborhood-level diet and physical activity measurements from anonymized mobile phone location data, and examine the extent to which the derived measurements can enhance obesity estimation, in addition to the socioeconomic and demographic variables typically used in the literature. We conduct case studies in three different U.S. cities, which are New York City, Los Angeles, and Buffalo, using anonymized mobile phone location data from the company SafeGraph. We employ five different statistical and machine learning models to test the potential enhancement brought by the derived measurements for obesity estimation.

Results: We find that it is feasible to derive neighborhood-level diet and physical activity measurements from anonymized mobile phone location data. The derived measurements provide only a small enhancement for obesity estimation, compared with using a comprehensive set of socioeconomic and demographic variables. However, using these derived measurements alone can achieve a moderate accuracy for obesity estimation, and they may provide a stronger enhancement when comprehensive socioeconomic and demographic data are not available (e.g., in some developing countries). From a methodological perspective, spatially explicit models overall perform better than non-spatial models for neighborhood-level obesity estimation.

Conclusions: Our proposed method can be used for deriving neighborhood-level diet and physical activity measurements from anonymized mobile phone data. The derived measurements can enhance obesity estimation, and can be especially useful when comprehensive socioeconomic and demographic data are not available. In addition, these derived measurements can be used to study obesity-related health behaviors, such as visit frequency of neighborhood residents to fast-food restaurants, and to identify primary places contributing to obesity-related issues.

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来源期刊
International Journal of Health Geographics
International Journal of Health Geographics PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH -
CiteScore
10.20
自引率
2.00%
发文量
17
审稿时长
12 weeks
期刊介绍: A leader among the field, International Journal of Health Geographics is an interdisciplinary, open access journal publishing internationally significant studies of geospatial information systems and science applications in health and healthcare. With an exceptional author satisfaction rate and a quick time to first decision, the journal caters to readers across an array of healthcare disciplines globally. International Journal of Health Geographics welcomes novel studies in the health and healthcare context spanning from spatial data infrastructure and Web geospatial interoperability research, to research into real-time Geographic Information Systems (GIS)-enabled surveillance services, remote sensing applications, spatial epidemiology, spatio-temporal statistics, internet GIS and cyberspace mapping, participatory GIS and citizen sensing, geospatial big data, healthy smart cities and regions, and geospatial Internet of Things and blockchain.
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