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Forecasting of Glucose Levels and Hypoglycemic Events: Head-to-Head Comparison of Linear and Nonlinear Data-Driven Algorithms Based on Continuous Glucose Monitoring Data Only

机译:葡萄糖水平和低血糖事件的预测:基于连续葡萄糖监测数据的线性和非线性数据驱动算法的头到头比较

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摘要

In type 1 diabetes management, the availability of algorithms capable of accurately forecasting future blood glucose (BG) concentrations and hypoglycemic episodes could enable proactive therapeutic actions, e.g., the consumption of carbohydrates to mitigate, or even avoid, an impending critical event. The only input of this kind of algorithm is often continuous glucose monitoring (CGM) sensor data, because other signals (such as injected insulin, ingested carbs, and physical activity) are frequently unavailable. Several predictive algorithms fed by CGM data only have been proposed in the literature, but they were assessed using datasets originated by different experimental protocols, making a comparison of their relative merits difficult. The aim of the present work was to perform a head-to-head comparison of thirty different linear and nonlinear predictive algorithms using the same dataset, given by 124 CGM traces collected over 10 days with the newest Dexcom G6 sensor available on the market and considering a 30-min prediction horizon. We considered the state-of-the art methods, investigating, in particular, linear black-box methods (autoregressive; autoregressive moving-average; and autoregressive integrated moving-average, ARIMA) and nonlinear machine-learning methods (support vector regression, SVR; regression random forest; feed-forward neural network, fNN; and long short-term memory neural network). For each method, the prediction accuracy and hypoglycemia detection capabilities were assessed using either population or individualized model parameters. As far as prediction accuracy is concerned, the results show that the best linear algorithm (individualized ARIMA) provides accuracy comparable to that of the best nonlinear algorithm (individualized fNN), with root mean square errors of 22.15 and 21.52 mg/dL, respectively. As far as hypoglycemia detection is concerned, the best linear algorithm (individualized ARIMA) provided precision = 64%, recall = 82%, and one false alarm/day, comparable to the best nonlinear technique (population SVR): precision = 63%, recall = 69%, and 0.5 false alarms/day. In general, the head-to-head comparison of the thirty algorithms fed by CGM data only made using a wide dataset shows that individualized linear models are more effective than population ones, while no significant advantages seem to emerge when employing nonlinear methodologies.
机译:在1型糖尿病管理中,能够准确地预测未来血糖(BG)浓度和低血糖发作的算法可以使得能够积极治疗动作,例如,碳水化合物的消耗减轻,甚至避免即将到来的批判性事件。这种算法的唯一输入通常是连续葡萄糖监测(CGM)传感器数据,因为其他信号(例如注射胰岛素,摄入碳水化合物和物理活动)经常不可用。仅在文献中提出了由CGM数据馈送的几种预测算法,但是使用源自不同实验方案的数据集进行评估,从而比较其相对优点的困难。本工作的目的是使用相同的数据集进行三十个不同的线性和非线性预测算法的头部比较,由124cgm迹线收集在超过10天内,并考虑到最新的Dexcom G6传感器。一个30分钟的预测地平线。我们考虑了最先进的方法,特别是线性黑盒方法(自归;自归移动平均;和自回归综合移动平均,Arima)和非线性机器学习方法(支持向量回归,SVR ;回归随机森林;前馈神经网络,FNN;和长期内记忆神经网络)。对于每种方法,使用群体或个性化模型参数评估预测准确性和低血糖检测能力。就预测准确性而言,结果表明,最佳的线性算法(个性化ARIMA)提供了与最佳非线性算法(个体化FNN)的准确率,分别具有22.15和21.52mg / dL的均方根误差。只要低血糖检测所涉及,最佳的线性算法(个体化ARIMA)提供了精度= 64%,召回= 82%,以及与最佳非线性技术(人口SVR)相当的一个误报/日,:精度= 63%,召回= 69%,和0.5误报/日。通常,仅使用宽数据集的CGM数据馈送的三十次算法的头部比较显示,个性化线性模型比群体更有效,而在采用非线性方法中没有显着的优势似乎出现。

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