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首页> 外文期刊>Diabetes technology & therapeutics >A new index to optimally design and compare continuous glucose monitoring glucose prediction algorithms.
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A new index to optimally design and compare continuous glucose monitoring glucose prediction algorithms.

机译:一种优化设计和比较连续血糖监测血糖预测算法的新指标。

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BACKGROUND: Continuous glucose monitoring (CGM) data can be exploited to prevent hypo-/hyperglycemic events in real time by forecasting future glucose levels. In the last few years, several glucose prediction algorithms have been proposed, but how to compare them (e.g., methods based on polynomial rather than autoregressive time-series models) and even how to determine the optimal parameter set for a given method (e.g., prediction horizon and forgetting) are open problems. METHODS: A new index, J, is proposed to optimally design a prediction algorithm by taking into account two key components: the regularity of the predicted profile and the time gained thanks to prediction. Effectiveness of J is compared with previously proposed criteria such as the root mean square error (RMSE) and continuous glucose-error grid analysis (CG-EGA) on 20 Menarini (Florence, Italy) Glucoday(R) CGM data sets. RESULTS: For a given prediction algorithm, the new index J is able to suggest a more consistent and better parameter set (e.g., prediction horizon and forgetting factor of choice) than RMSE and CG-EGA. In addition, the minimization of J can reliably be used as a selection criterion in comparing different prediction methods. CONCLUSIONS: The new index can be used to compare different prediction strategies and to optimally design their parameters.
机译:背景:连续血糖监测(CGM)数据可用于通过预测未来的血糖水平来实时预防低血糖/高血糖事件。在最近几年中,已经提出了几种葡萄糖预测算法,但是如何比较它们(例如,基于多项式而不是自回归时间序列模型的方法),甚至如何确定给定方法的最佳参数集(例如,预测范围和遗忘)是未解决的问题。方法:通过考虑两个关键因素,提出了一种新的指标J来优化设计预测算法:预测轮廓的规律性和由于预测而获得的时间。在20个Menarini(意大利佛罗伦萨)Glucoday®CGM数据集上,将J的有效性与先前提出的标准进行了比较,例如均方根误差(RMSE)和连续葡萄糖误差网格分析(CG-EGA)。结果:对于给定的预测算法,新索引J能够提出比RMSE和CG-EGA更一致和更好的参数集(例如,预测范围和选择遗忘因子)。此外,在比较不同的预测方法时,可以将J的最小值可靠地用作选择标准。结论:新指标可用于比较不同的预测策略并优化设计其参数。

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