Blood glucose level monitoring is of great importance, especially for subjects experiencing type 1 diabetes. Accurate monitoring of their blood glucose level prevents dangerous and life-threatening situations that might be experienced by those subjects. In addition, precise monitoring of blood glucose levels over long periods of time helps establishing knowledge about the daily mealtime routine which aids the medical staff to monitor subjects and properly intervene in hazardous cases such as hypo- or hyperglycemia. Establishing such knowledge will play a potential role when designing proper treatment intervention plan. In this research, we present a complete IoT framework, starting from hardware acquisition system to data analysis approaches that gives a hand for medical staff when long periods of blood glucose monitoring are essential for subjects. Also, this framework is validated with real-time data collection from 7 subjects over 10 successive days with temporal resolution of 5 minutes allowing for near real-time monitoring and analysis. Our results show the precisely estimated daily mealtime routines for 4 subjects out of the 7 with discard of 3 subjects due to huge data loss mainly. The daily mealtime routines for the 4 subjects are found to be matching to have a pattern of 4 periods of blood glucose level changes corresponding to the breakfast around 8 AM, the lunch around 5 PM, the dinner around 8 PM, and finally a within-day snack around 12 PM. The research shows the potential of IoT ecosystem in support for medically related studies.
翻译:血液甘蔗含量监测非常重要,特别是对于患有1型糖尿病的患者而言。对血液甘蔗含量的准确监测可以防止这些患者可能经历的危险和危及生命的情况。此外,对长期血液甘蔗含量的精确监测有助于了解日常膳食常规知识,帮助医务人员监测患者,并对低血糖或高血糖等危险病例进行适当干预。在设计适当的治疗干预计划时,建立这种知识将发挥潜在作用。在这项研究中,我们提出了一个完整的IOT框架,从硬件采购系统开始,到数据分析方法,在长期血液甘蔗含量监测对患者至关重要的情况下,为医务人员提供帮助。此外,这一框架的验证是连续10天从7个对象实时数据收集,时间分辨率为5分钟,可以进行近实时监测和分析。我们的结果显示7个对象中4个对象的每日膳食常规准确估计,抛弃了3个对象,主要因为数据损失巨大。 4个对象的每日膳食常规水平在5天左右的早餐中被发现匹配,与8天的血糖研究有关,最后在12天左右的早餐期间显示与7天的血糖研究。</s>