首页> 外文会议>International Conference on Pervasive Computing and Communications Workshops >Sensor Self-Report Alignment (SSRA): Reducing Sun Exposure Assessment Error
【24h】

Sensor Self-Report Alignment (SSRA): Reducing Sun Exposure Assessment Error

机译:传感器自我报告对准(SSRA):减少阳光照射评估错误

获取原文

摘要

In population and clinical-based studies, UV wearable sensors are increasingly being used to estimate UV exposure and time spent in physical activity outdoors, which is critical for understanding people's sun exposure behavior. This is particularly important in young adults at risk of developing melanoma as well as melanoma survivors, who want to continue engaging in outdoor activities which are a normal source of recreational physical activity. While wearable sensors provide objective and timely measures in free-living populations, self-report data are needed to provide important contextual information (e.g. sunscreen applied, clothing to protect from the sun) that improve our understanding of health behaviors. However, lack of proper time alignment between sensor and self-report data hinders analyses incorporating these data streams. We formulate this problem of alignment as a network flow graph and propose a Sensor Self-Report Alignment (SSRA) framework to fuse and align data from a chest-worn UV sensor, a hip-worn physical activity sensor, and a self-report. We performed a study on 40 participants (20 melanoma survivors, 20 young adults, who were first-degree relatives of melanoma survivors) who wore a chest-worn UV sensor and a hip-worn physical activity sensor for 7 consecutive summer days (total of 254 days assessed) and provided end-of-day self-reports of sun protection. The proposed SSRA framework provides a new approach to aligning sensor and self-report data, which results in significant changes in measures of time outdoors, as assessed by UV or physical activity sensors. This paper highlights the importance of using wearable sensors and alignment to self-report to reduce sun exposure assessment error, while laying the groundwork for integrating such a framework into population-based studies.
机译:在基于人群和临床的研究中,越来越多地使用可穿戴式紫外线传感器来估计紫外线暴露和户外活动所花费的时间,这对于了解人们的日照行为至关重要。这对于有患黑色素瘤风险的年轻人以及黑色素瘤幸存者尤其重要,他们希望继续从事户外活动,而户外活动是娱乐性体育活动的正常来源。尽管可穿戴式传感器为自由活动的人群提供了客观,及时的措施,但仍需要自我报告数据来提供重要的背景信息(例如,使用防晒霜,保护衣服免受阳光照射),以增进我们对健康行为的了解。但是,传感器和自我报告数据之间缺乏适当的时间对齐会妨碍对包含这些数据流的分析。我们将对齐问题表达为网络流程图,并提出了一种传感器自报告对齐(SSRA)框架,以融合和对齐来自胸部佩戴的UV传感器,臀部佩戴的体力活动传感器和自我报告的数据。我们对40名参与者进行了一项研究(20名黑素瘤幸存者,20名年轻成年人,他们是黑素瘤幸存者的一级亲属),他们连续7天戴着胸戴式紫外线传感器和髋关节戴式体力活动传感器(总计评估了254天),并提供了日末防晒保护的自我报告。拟议的SSRA框架提供了一种对齐传感器和自我报告数据的新方法,这将导致户外时间的测量发生重大变化,如UV或体力活动传感器所评估的那样。本文强调了使用可穿戴式传感器和对准装置进行自我报告以减少阳光照射评估误差的重要性,同时为将该框架整合到基于人口的研究中奠定了基础。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号