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Time-Series Analysis of Continuously Monitored Blood Glucose: The Impacts of Geographic and Daily Lifestyle Factors

机译:连续监测血糖的时间序列分析:地理和日常生活方式因素的影响

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摘要

Type 2 diabetes is known to be associated with environmental, behavioral, and lifestyle factors. However, the actual impacts of these factors on blood glucose (BG) variation throughout the day have remained relatively unexplored. Continuous blood glucose monitors combined with human activity tracking technologies afford new opportunities for exploration in a naturalistic setting. Data from a study of 40 patients with diabetes is utilized in this paper, including continuously monitored BG, food/medicine intake, and patient activity/location tracked using global positioning systems over a 4-day period. Standard linear regression and more disaggregated time-series analysis using autoregressive integrated moving average (ARIMA) are used to explore patient BG variation throughout the day and over space. The ARIMA models revealed a wide variety of BG correlating factors related to specific activity types, locations (especially those far from home), and travel modes, although the impacts were highly personal. Traditional variables related to food intake and medications were less often significant. Overall, the time-series analysis revealed considerable patient-by-patient variation in the effects of geographic and daily lifestyle factors. We would suggest that maps of BG spatial variation or an interactive messaging system could provide new tools to engage patients and highlight potential risk factors.
机译:已知2型糖尿病与环境,行为和生活方式因素有关。但是,这些因素对全天血糖(BG)变异的实际影响尚待探索。连续血糖监测仪与人类活动跟踪技术相结合,为在自然主义环境中进行探索提供了新的机会。本文利用来自40位糖尿病患者的研究数据,包括连续监测的BG,食物/药物摄入以及使用全球定位系统在4天时间内跟踪的患者活动/位置。使用标准线性回归和使用自回归综合移动平均值(ARIMA)进行更细化的时间序列分析,来研究患者全天和整个空间的BG变化。 ARIMA模型揭示了与特定活动类型,地点(尤其是离家较远的地方)和出行方式相关的各种各样的BG相关因素,尽管这些影响是高度个人化的。与食物摄入量和药物治疗相关的传统变量较少那么重要。总体而言,时间序列分析显示,在地理位置和日常生活方式因素的影响上,各个患者之间存在很大差异。我们建议BG空间变化图或交互式消息传递系统可以提供新的工具来吸引患者并突出潜在的危险因素。

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