首页> 外文会议>2016 International Conference for Students on Applied Engineering >Refined composite multivariate multiscale entropy based on variance for analysis of resting-state magnetoencephalograms in Alzheimer's disease
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Refined composite multivariate multiscale entropy based on variance for analysis of resting-state magnetoencephalograms in Alzheimer's disease

机译:基于方差的精细复合多元尺度熵用于阿尔茨海默氏病静息态脑电图分析

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Alzheimer's disease (AD) is one of the fastest growing neurological diseases. Multiscale entropy with coarse-graining based on mean (MSEμ) has been widely used to characterize AD. Alternatively, multiscale entropy based on variance (MSEσ2) has been recently proposed to quantify the dynamics of volatility (variance) of univariate signals. Here, we extend the MSEσ2 to multivariate signals to take into account both the time and spatial domains for discrimination of resting-state magnetoencephalogram (MEG) recordings of 36 AD patients from those of 26 normal controls. We also consider the usefulness of the refined composite mvMSEσ2 (RCmvMSEσ2) to understand if the RCmvMSEσ2 can better discriminate AD group from control subjects in comparison with mvMSEσ2. The results show mvMSEσ2 and RCmvMSEσ2, unlike exiting multiscale-based methods, lead to significant differences between control and AD patients at all scale factors. The results obtained by the mvMSEσ2 and RCmvMSEσ2 are similar. Thus, refined composite technique might not enhance the detection of different pathological states, especially when signals are not too noisy and short. Finally, our findings show that the mvMSEσ2 and RCmvMSEσ2 can be useful tools for the analysis of real signals to characterize different kinds of dynamics.
机译:阿尔茨海默氏病(AD)是发展最快的神经系统疾病之一。基于均值(MSEμ)的具有粗粒度的多尺度熵已被广泛用于表征AD。可替代地,最近已经提出了基于方差(MSEσ2)的多尺度熵来量化单变量信号的波动性(方差)的动态。在这里,我们将MSEσ2扩展为多元信号,以同时考虑时域和空间域,以区分36位AD患者与26位正常对照的静息状态脑电图(MEG)记录。我们还考虑了改进的复合mvMSEσ2(RCmvMSEσ2)的有用性,以了解RCmvMSEσ2与mvMSEσ2相比是否可以更好地区分AD组与对照组。结果表明,与现有的基于多尺度的方法不同,mvMSEσ2和RCmvMSEσ2导致对照和AD患者在所有尺度因子上均存在显着差异。 mvMSEσ2和RCmvMSEσ2获得的结果相似。因此,改进的复合技术可能无法增强对不同病理状态的检测,尤其是在信号不太嘈杂且较短时。最后,我们的发现表明,mvMSEσ2和RCmvMSEσ2可以用作分析真实信号以表征不同种类动力学的有用工具。

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