Technological Institute of Informatics (ITI), Universitat Politècnica de València, Campus Alcoi (EPSA-UPV) Plaza Ferrándiz y Carbonell, 2, Alcoi, 03801, Spain.
Statistics Department at Universitat Politècnica de València, Campus Alcoi Plaza Ferrándiz y Carbonell, 2, Alcoi, 03801, Spain.
Comput Methods Programs Biomed. 2018 Oct;165:197-204. doi: 10.1016/j.cmpb.2018.08.018. Epub 2018 Sep 1.
The adoption in clinical practice of electronic portable blood or interstitial glucose monitors has enabled the collection, storage, and sharing of massive amounts of glucose level readings. This availability of data opened the door to the application of a multitude of mathematical methods to extract clinical information not discernible with conventional visual inspection. The objective of this study is to assess the capability of Permutation Entropy (PE) to find differences between glucose records of healthy and potentially diabetic subjects.
PE is a mathematical method based on the relative frequency analysis of ordinal patterns in time series that has gained a lot of attention in the last years due to its simplicity, robustness, and performance. We study in this paper the applicability of this method to glucose records of subjects at risk of diabetes in order to assess the predictability value of this metric in this context.
PE, along with some of its derivatives, was able to find significant differences between diabetic and non-diabetic patients from records acquired up to 3 years before the diagnosis. The quantitative results for PE were 3.5878 ± 0.3916 for the nondiabetic class, and 3.1564 ± 0.4166 for the diabetic class. With a classification accuracy higher than 70%, and by means of a Cox regression model, PE demonstrated that it is a very promising candidate as a risk stratification tool for continuous glucose monitoring.
PE can be considered as a prospective tool for the early diagnosis of the glucoregulatory system.
电子便携式血液或间质葡萄糖监测仪在临床实践中的应用,使得大量血糖读数得以采集、存储和共享。这些数据的可用性为应用大量数学方法提取常规视觉检查无法识别的临床信息提供了可能。本研究旨在评估排列熵(PE)在发现健康和潜在糖尿病患者的血糖记录差异方面的能力。
PE 是一种基于时间序列中有序模式相对频率分析的数学方法,由于其简单性、鲁棒性和性能,近年来受到了广泛关注。我们在本文中研究了该方法在糖尿病风险患者的血糖记录中的适用性,以评估该指标在这种情况下的预测价值。
PE 及其一些衍生方法能够从诊断前长达 3 年的记录中发现糖尿病患者和非糖尿病患者之间的显著差异。PE 的定量结果为非糖尿病组 3.5878±0.3916,糖尿病组 3.1564±0.4166。通过 Cox 回归模型,PE 的分类准确率高于 70%,表明其作为连续血糖监测的风险分层工具具有很大的应用潜力。
PE 可以被认为是早期诊断糖调节系统的有前途的工具。