Experiences from a Wearable-Mobile Acquisition System for Ambulatory Assessment of Diet and Activity

Kristof Van Laerhoven, Mario Wenzel, A. Geelen, Christopher Hübel, M. Wolters, A. Hebestreit, L. Andersen, P. Veer, T. Kubiak
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引用次数: 2

Abstract

Public health trends are currently monitored and diagnosed based on large studies that often rely on pen-and-paper data methods that tend to require a large collection campaign. With the pervasiveness of smart-phones and -watches throughout the general population, we argue in this paper that such devices and their built-in sensors can be used to capture such data more accurately with less of an effort. We present a system that targets a pan-European and harmonised architecture, using smartphones and wrist-worn activity loggers to enable the collection of data to estimate sedentary behavior and physical activity, plus the consumption of sugar-sweetened beverages. We report on a unified pilot study across three countries and four cities (with different languages, locale formats, and data security and privacy laws) in which 83 volunteers were asked to log beverages consumption along with a series of surveys and longitudinal accelerometer data. Our system is evaluated in terms of compliance, obtained data, and first analyses.
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可穿戴-移动采集系统对饮食和活动动态评估的经验
目前对公共卫生趋势的监测和诊断是基于大型研究,这些研究往往依赖于纸笔数据方法,往往需要大规模的收集活动。随着智能手机和智能手表在普通人群中的普及,我们在本文中认为,这些设备及其内置的传感器可以用来更准确地捕获这些数据,而不需要付出太多努力。我们提出了一个针对泛欧和协调架构的系统,使用智能手机和手腕上的活动记录器来收集数据,以估计久坐行为和身体活动,以及含糖饮料的消耗。我们报告了一项统一的试点研究,涉及三个国家和四个城市(不同的语言、地区格式和数据安全和隐私法),其中83名志愿者被要求记录饮料消费以及一系列调查和纵向加速度计数据。我们的系统根据合规性、获得的数据和首次分析进行评估。
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