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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Benchmarking Machine Learning Algorithms on Blood Glucose Prediction for Type I Diabetes in Comparison With Classical Time-Series Models
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Benchmarking Machine Learning Algorithms on Blood Glucose Prediction for Type I Diabetes in Comparison With Classical Time-Series Models

机译:与古典时间序列模型相比,基准机学习算法I型糖尿病型糖尿病型

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italic>Objective: This paper aims to compare the performance of several commonly known machine-learning (ML) models versus a classic Autoregression with Exogenous inputs (ARX) model in the prediction of blood glucose (BG) levels using time-series data of patients with Type 1 diabetes (T1D). Methods: The ML algorithms include ML-based regression models and deep learning models such as a vanilla Long-Short-Term-Memory (LSTM) Network and a Temporal Convolution Network (TCN). Evaluations have been conducted with respect to different input features, regression model orders, as well as using the recursive method or direct method for multi-step prediction of BG levels. Prediction performance metrics include the average Root Mean Square Error (RMSE), temporal gain (TG) for early prediction, and the normalized energy of the second-order differences (ESOD) of the predicted time series to reflect risk of false alerts on hypo/hyper glycemia events. Results: The ARX model achieved the lowest average RMSE for both recursive and direct methods, the second highest average TG under the direct method, but with a higher average normalized ESOD than some other models. Conclusion: There was no significant advantage observed from the ML models compared to the classic ARX model in predicting BG levels for T1D, except that TCNs performance was more robust with respect to BG trajectories with spurious oscillations, for which ARX tended to over-predict peak BG values and under-predict valley BG values. Significance: Insight learned from this study could help researchers and clinical practitioners to select appropriate models for BG prediction.
机译:斜体>目的:本文旨在使用患者时间序列数据预测血糖(BG)水平在预测血糖(BG)水平中的几种常见的机器学习(ML)模型对血糖(BG)水平的经典自我评级的性能用1型糖尿病(T1D)。方法:M1算法包括基于ML的回归模型和深度学习模型,如香草长期记忆(LSTM)网络和时间卷积网络(TCN)。已经对不同输入特征,回归模型订单进行了评估,以及使用递归方法或用于BG水平的多步预测的直接方法。预测性能度量包括用于早期预测的平均均方根误差(RMSE),时间增益(TG),以及预测时间序列的二阶差异(eSOD)的归一化能量,以反映Shopo /的虚假警报的风险HyperCemia事件。结果:ARX模型实现了递归和直接方法的最低平均RMSE,在直接方法下的第二个最高平均TG,但具有比其他一些型号更高的平均归一化读数。结论:与ML模型相比,与经典ARX模型相比,在预测T1D的BG水平方面没有显着的优势,除了TCNS性能对具有杂散振荡的BG轨迹更加强大,其中ARX倾向于过度预测峰值BG值和预测谷BG值。意义:从本研究中学到的洞察力可以帮助研究人员和临床从业人员为BG预测选择适当的模型。

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