Department of Computer Science, University of Tromsø - The Arctic University of Norway, Tromsø, Norway.
Department of Clinical Research, University Hospital of North Norway, Tromsø, Norway.
J Med Internet Res. 2020 Aug 12;22(8):e18911. doi: 10.2196/18911.
Type 1 diabetes is a chronic condition of blood glucose metabolic disorder caused by a lack of insulin secretion from pancreas cells. In people with type 1 diabetes, hyperglycemia often occurs upon infection incidences. Despite the fact that patients increasingly gather data about themselves, there are no solid findings that uncover the effect of infection incidences on key parameters of blood glucose dynamics to support the effort toward developing a digital infectious disease detection system.
The study aims to retrospectively analyze the effect of infection incidence and pinpoint optimal parameters that can effectively be used as input variables for developing an infection detection algorithm and to provide a general framework regarding how a digital infectious disease detection system can be designed and developed using self-recorded data from people with type 1 diabetes as a secondary source of information.
We retrospectively analyzed high precision self-recorded data of 10 patient-years captured within the longitudinal records of three people with type 1 diabetes. Obtaining such a rich and large data set from a large number of participants is extremely expensive and difficult to acquire, if not impossible. The data set incorporates blood glucose, insulin, carbohydrate, and self-reported events of infections. We investigated the temporal evolution and probability distribution of the key blood glucose parameters within a specified timeframe (weekly, daily, and hourly).
Our analysis demonstrated that upon infection incidence, there is a dramatic shift in the operating point of the individual blood glucose dynamics in all the timeframes (weekly, daily, and hourly), which clearly violates the usual norm of blood glucose dynamics. During regular or normal situations, higher insulin and reduced carbohydrate intake usually results in lower blood glucose levels. However, in all infection cases as opposed to the regular or normal days, blood glucose levels were elevated for a prolonged period despite higher insulin and reduced carbohydrates intake. For instance, compared with the preinfection and postinfection weeks, on average, blood glucose levels were elevated by 6.1% and 16%, insulin (bolus) was increased by 42% and 39.3%, and carbohydrate consumption was reduced by 19% and 28.1%, respectively.
We presented the effect of infection incidence on key parameters of blood glucose dynamics along with the necessary framework to exploit the information for realizing a digital infectious disease detection system. The results demonstrated that compared with regular or normal days, infection incidence substantially alters the norm of blood glucose dynamics, which are quite significant changes that could possibly be detected through personalized modeling, for example, prediction models and anomaly detection algorithms. Generally, we foresee that these findings can benefit the efforts toward building next generation digital infectious disease detection systems and provoke further thoughts in this challenging field.
1 型糖尿病是一种由胰腺细胞胰岛素分泌不足引起的慢性血糖代谢紊乱。在 1 型糖尿病患者中,感染事件常导致高血糖。尽管患者越来越多地收集有关自身的数据,但尚无确凿的研究结果表明感染事件对血糖动态的关键参数有影响,无法为开发数字传染病检测系统提供支持。
本研究旨在回顾性分析感染事件的影响,并确定可有效用作开发感染检测算法输入变量的最佳参数,并提供一个通用框架,说明如何使用 1 型糖尿病患者的自我记录数据作为辅助信息来设计和开发数字传染病检测系统。
我们回顾性分析了 3 名 1 型糖尿病患者的纵向记录中,为期 10 年的高精度自我记录数据。从大量参与者中获取这样一个丰富而庞大的数据集是非常昂贵和困难的,如果不是不可能的话。该数据集包含血糖、胰岛素、碳水化合物和自我报告的感染事件。我们研究了特定时间段(每周、每日和每小时)内关键血糖参数的时间演变和概率分布。
我们的分析表明,在感染发生时,所有时间范围内(每周、每日和每小时)个体血糖动态的运行点都会发生剧烈变化,这显然违反了通常的血糖动态规律。在正常或正常情况下,较高的胰岛素和减少的碳水化合物摄入通常会导致较低的血糖水平。然而,在所有感染病例中,与正常或正常天数相比,尽管胰岛素和碳水化合物摄入量增加,但血糖水平仍会升高较长时间。例如,与感染前和感染后周相比,平均而言,血糖水平升高了 6.1%和 16%,胰岛素(推注)分别增加了 42%和 39.3%,碳水化合物摄入量分别减少了 19%和 28.1%。
我们介绍了感染事件对血糖动态关键参数的影响,并提供了利用这些信息实现数字传染病检测系统的必要框架。结果表明,与正常或正常天数相比,感染事件大大改变了血糖动态的正常规律,这些变化非常显著,可能通过个性化建模(例如预测模型和异常检测算法)来检测。总体而言,我们预计这些发现将有助于构建下一代数字传染病检测系统的努力,并在这一具有挑战性的领域引发进一步的思考。