使用DirecNet临床数据库测试短期血糖预测算法

P. Rudenko, E. L. Litinskaia, M. Denisov, K. V. Pozhar, N. Bazaev
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引用次数: 0

摘要

本研究的目的是测试短期血糖(BG)预测算法在自动胰岛素治疗设备中的适用性。测试使用DirecNet数据库进行。为了估计算法的稳定性,对患者数据进行了失真处理,并加入了噪声信号。噪声水平设置为10%,15%,20%和25%。本研究的科学新颖之处在于,从预测结果对BG测量误差值的敏感性、不同患者生理参数下BG值预测质量、算法预测结果的可重复性等几个方面对预测算法进行了测试。结果表明,平均预测误差分别为2.0%、3.0%、6.6%、7.4%和13.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing the Short-term Blood Glucose Prediction Algorithm Using DirecNet Clinical Database
The goal of this research was testing the short-term blood glucose (BG) prediction algorithm for its applicability in automated insulin-therapy device. The testing was performed using DirecNet database. The patient data was distorted for estimating algorithm stability by adding noise signal. Noise level was set to 10%, 15%, 20% and 25%. The scientific novelty of this research was that the prediction algorithm testing was performed in several aspects: prediction results sensitivity to BG measure error value, BG value prediction quality in case of different patients physiological parameters and algorithm prediction results reproducibility. The obtained results showed the average prediction error detected at levels 2.0%, 3.0%, 6.6%, 7.4% and 13.7% respectively.
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