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On the Possibility of Predicting Glycaemia ‘On the Fly’ with Constrained IoT Devices in Type 1 Diabetes Mellitus Patients

机译:使用受约束的物联网设备预测1型糖尿病患者随时随地血糖的可能性

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摘要

Type 1 Diabetes Mellitus (DM1) patients are used to checking their blood glucose levels several times per day through finger sticks and, by subjectively handling this information, to try to predict their future glycaemia in order to choose a proper strategy to keep their glucose levels under control, in terms of insulin dosages and other factors. However, recent Internet of Things (IoT) devices and novel biosensors have allowed the continuous collection of the value of the glucose level by means of Continuous Glucose Monitoring (CGM) so that, with the proper Machine Learning (ML) algorithms, glucose evolution can be modeled, thus permitting a forecast of this variable. On the other hand, glycaemia dynamics require that such a model be user-centric and should be recalculated continuously in order to reflect the exact status of the patient, i.e., an ‘on-the-fly’ approach. In order to avoid, for example, the risk of being disconnected from the Internet, it would be ideal if this task could be performed locally in constrained devices like smartphones, but this would only be feasible if the execution times were fast enough. Therefore, in order to analyze if such a possibility is viable or not, an extensive, passive, CGM study has been carried out with 25 DM1 patients in order to build a solid dataset. Then, some well-known univariate algorithms have been executed in a desktop computer (as a reference) and two constrained devices: a smartphone and a Raspberry Pi, taking into account only past glycaemia data to forecast glucose levels. The results indicate that it is possible to forecast, in a smartphone, a 15-min horizon with a Root Mean Squared Error (RMSE) of 11.65 mg/dL in just 16.15 s, employing a 10-min sampling of the past 6 h of data and the Random Forest algorithm. With the Raspberry Pi, the computational effort increases to 56.49 s assuming the previously mentioned parameters, but this can be improved to 34.89 s if Support Vector Machines are applied, achieving in this case an RMSE of 19.90 mg/dL. Thus, this paper concludes that local on-the-fly forecasting of glycaemia would be affordable with constrained devices.
机译:1型糖尿病(DM1)患者习惯于每天通过指棒多次检查其血糖水平,并通过主观地处理此信息来尝试预测其未来的血糖,从而选择合适的策略来保持血糖水平在胰岛素剂量和其他因素方面得到控制。但是,最近的物联网(IoT)设备和新型生物传感器已允许通过连续葡萄糖监测(CGM)连续收集葡萄糖水平的值,因此,通过适当的机器学习(ML)算法,葡萄糖的进化可以进行建模,从而可以对该变量进行预测。另一方面,血糖动力学要求这种模型必须以用户为中心,并且应该连续进行重新计算,以反映患者的确切状况,即“即时”方法。例如,为了避免与Internet断开连接的风险,如果可以在受约束的设备(例如智能手机)中本地执行此任务,则是理想的选择,但这只有在执行时间足够快的情况下才可行。因此,为了分析这种可能性是否可行,已对25名DM1患者进行了广泛,被动的CGM研究,以建立可靠的数据集。然后,已经在台式计算机(作为参考)和两个受约束的设备(智能手机和Raspberry Pi)中执行了一些众所周知的单变量算法,仅考虑了过去的血糖数据来预测葡萄糖水平。结果表明,使用智能手机过去6小时的10分钟采样,可以在智能手机中预测15分钟范围内的均方根误差(RMSE)为11.65 mg / dL。数据和随机森林算法。在使用Raspberry Pi的情况下,假定先前提到的参数,计算工作量将增加到56.49 s,但是如果使用支持向量机,则可以将其提高到34.89 s,在这种情况下,RMSE为19.90 mg / dL。因此,本文得出的结论是,使用受限设备可以对血糖进行局部实时预测。

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