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Characterization of Artifact Influence on the Classification of Glucose Time Series Using Sample Entropy Statistics

机译:使用样本熵统计表征伪影对葡萄糖时间序列分类的影响

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摘要

This paper analyses the performance of SampEn and one of its derivatives, Fuzzy Entropy (FuzzyEn), in the context of artifacted blood glucose time series classification. This is a difficult and practically unexplored framework, where the availability of more sensitive and reliable measures could be of great clinical impact. Although the advent of new blood glucose monitoring technologies may reduce the incidence of the problems stated above, incorrect device or sensor manipulation, patient adherence, sensor detachment, time constraints, adoption barriers or affordability can still result in relatively short and artifacted records, as the ones analyzed in this paper or in other similar works. This study is aimed at characterizing the changes induced by such artifacts, enabling the arrangement of countermeasures in advance when possible. Despite the presence of these disturbances, results demonstrate that SampEn and FuzzyEn are sufficiently robust to achieve a significant classification performance, using records obtained from patients with duodenal-jejunal exclusion. The classification results, in terms of area under the ROC of up to 0.9, with several tests yielding AUC values also greater than 0.8, and in terms of a leave-one-out average classification accuracy of 80%, confirm the potential of these measures in this context despite the presence of artifacts, with SampEn having slightly better performance than FuzzyEn.
机译:本文在人为化的血糖时间序列分类的背景下,分析了SampEn及其衍生物之一模糊熵(FuzzyEn)的性能。这是一个困难且几乎未开发的框架,在该框架中提供更敏感和可靠的措施可能会对临床产生重大影响。尽管新的血糖监测技术的出现可能会降低上述问题的发生率,但由于设备或传感器的不正确操作,患者依从性,传感器分离,时间限制,采用障碍或负担能力仍然会导致记录相对较短和虚假,因为本文或其他类似作品中分析的那些。这项研究旨在表征由这些伪影引起的变化,并在可能的情况下预先安排对策。尽管存在这些干扰,但使用从十二指肠-空肠排斥患者获得的记录,结果表明SampEn和FuzzyEn具有足够的鲁棒性以实现显着的分类性能。根据ROC下的面积最大为0.9的分类结果,多次测试得出的AUC值也都大于0.8,并且一劳永逸的平均分类准确度为80%,证实了这些措施的潜力在这种情况下,尽管存在伪像,但SampEn的性能比FuzzyEn略好。

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