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基于 EEG 的阿尔茨海默病早期诊断的同步测量方法的比较研究。

A comparative study of synchrony measures for the early diagnosis of Alzheimer's disease based on EEG.

机构信息

Laboratory for Information and Decision Systems, Massachusetts Institute of Technology, Cambridge, MA, USA.

出版信息

Neuroimage. 2010 Jan 1;49(1):668-93. doi: 10.1016/j.neuroimage.2009.06.056. Epub 2009 Jun 30.

Abstract

It is well known that EEG signals of Alzheimer's disease (AD) patients are generally less synchronous than in age-matched control subjects. However, this effect is not always easily detectable. This is especially the case for patients in the pre-symptomatic phase, commonly referred to as mild cognitive impairment (MCI), during which neuronal degeneration is occurring prior to the clinical symptoms appearance. In this paper, various synchrony measures are studied in the context of AD diagnosis, including the correlation coefficient, mean-square and phase coherence, Granger causality, phase synchrony indices, information-theoretic divergence measures, state space based measures, and the recently proposed stochastic event synchrony measures. Experiments with EEG data show that many of those measures are strongly correlated (or anti-correlated) with the correlation coefficient, and hence, provide little complementary information about EEG synchrony. Measures that are only weakly correlated with the correlation coefficient include the phase synchrony indices, Granger causality measures, and stochastic event synchrony measures. In addition, those three families of synchrony measures are mutually uncorrelated, and therefore, they each seem to capture a specific kind of interdependence. For the data set at hand, only two synchrony measures are able to convincingly distinguish MCI patients from age-matched control patients, i.e., Granger causality (in particular, full-frequency directed transfer function) and stochastic event synchrony. Those two measures are used as features to distinguish MCI patients from age-matched control subjects, yielding a leave-one-out classification rate of 83%. The classification performance may be further improved by adding complementary features from EEG; this approach may eventually lead to a reliable EEG-based diagnostic tool for MCI and AD.

摘要

众所周知,阿尔茨海默病(AD)患者的脑电图(EEG)信号通常不如年龄匹配的对照组同步。然而,这种效应并不总是容易检测到。特别是在症状出现前的无症状阶段,即通常所说的轻度认知障碍(MCI)患者中,神经元退化发生在临床症状出现之前。在本文中,研究了各种同步度量在 AD 诊断中的应用,包括相关系数、均方和相位相干性、格兰杰因果关系、相位同步指数、信息论散度测度、基于状态空间的测度以及最近提出的随机事件同步测度。使用 EEG 数据的实验表明,其中许多度量与相关系数密切相关(或负相关),因此,它们提供的关于 EEG 同步的信息很少。与相关系数只有弱相关性的度量包括相位同步指数、格兰杰因果关系度量和随机事件同步度量。此外,这三组同步度量彼此不相关,因此,它们似乎都捕捉到了一种特定的相互依存关系。对于手头的数据,只有两种同步度量能够令人信服地区分 MCI 患者和年龄匹配的对照组患者,即格兰杰因果关系(特别是全频有向传递函数)和随机事件同步。这两种度量被用作区分 MCI 患者和年龄匹配的对照组患者的特征,产生了 83%的留一法分类率。通过添加 EEG 的补充特征,可以进一步提高分类性能;这种方法最终可能会导致一种可靠的基于 EEG 的 MCI 和 AD 诊断工具。

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