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利用复杂度-熵平面从短段血流动力学信号中检测帕金森病。

Using complexity-entropy planes to detect Parkinson's disease from short segments of haemodynamic signals.

机构信息

Departamento de Ingeniería Informática, Universidad de Santiago de Chile, Usach, Santiago, Chile.

Department of Cardiovascular Sciences, University of Leicester, Leicester, United Kingdom.

出版信息

Physiol Meas. 2021 Aug 27;42(8). doi: 10.1088/1361-6579/ac13ce.

Abstract

. There is emerging evidence that analysing the entropy and complexity of biomedical signals can detect underlying changes in physiology which may be reflective of disease pathology. This approach can be used even when only short recordings of biomedical signals are available. This study aimed to determine whether entropy and complexity measures can detect differences between subjects with Parkinsons disease and healthy controls (HCs).. A method based on a diagram of entropy versus complexity, named complexity-entropy plane, was used to re-analyse a dataset of cerebral haemodynamic signals from subjects with Parkinsons disease and HCs obtained under poikilocapnic conditions. A probability distribution for a set of ordinal patterns, designed to capture regularities in a time series, was computed from each signal under analysis. Four types of entropy and ten types of complexity measures were estimated from these distributions. Mean values of entropy and complexity were compared and their classification power was assessed by evaluating the best linear separator on the corresponding complexity-entropy planes.. Few linear separators obtained significantly better classification, evaluated as the area under the receiver operating characteristic curve, than signal mean values. However, significant differences in both entropy and complexity were detected between the groups of participants.. Measures of entropy and complexity were able to detect differences between healthy volunteers and subjects with Parkinson's disease, in poikilocapnic conditions, even though only short recordings were available for analysis. Further work is needed to refine this promising approach, and to help understand the findings in the context of specific pathophysiological changes.

摘要

. 有新的证据表明,分析生物医学信号的熵和复杂性可以检测到生理变化,这些变化可能反映了疾病的病理。即使只有生物医学信号的短记录可用,这种方法也可以使用。本研究旨在确定熵和复杂性度量是否可以检测帕金森病患者与健康对照组(HCs)之间的差异。。. 使用基于熵与复杂性图的方法,名为复杂性-熵平面,重新分析了一组在低碳酸血症条件下获得的帕金森病患者和 HCs 的脑血流动力学信号数据集。从每个分析信号中计算了一组有序模式的概率分布,旨在捕获时间序列中的规律性。从这些分布中估计了四种熵和十种复杂性度量。比较了熵和复杂性的平均值,并通过评估对应复杂性-熵平面上的最佳线性分离器来评估其分类能力。。. 几个线性分离器获得了显著更好的分类,作为接收者操作特征曲线下的面积进行评估,优于信号平均值。然而,在参与者组之间检测到熵和复杂性都存在显著差异。。. 在低碳酸血症条件下,即使只有短时间的记录可供分析,熵和复杂性的测量也能够检测到健康志愿者和帕金森病患者之间的差异。需要进一步的工作来改进这一有前途的方法,并帮助理解特定病理生理变化背景下的发现。

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