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A comparison between healthy and neurological disorders patients using nonlinear dynamic tools

机译:使用非线性动力工具对健康和神经系统疾病患者进行比较

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In this paper, we evaluate the differences between Healthy subjects (HS), Parkinson Disease (PDS) subjects, and Epileptic subjects (EBS - Epileptic subject between seizures and ES - epileptic subjects in seizure) by computing some linear, statistic and non-linear features, such as: correlation dimension, maximum Lyapunov exponent and Hurst coefficient. A comparison is made between PDS, EBS, ES and HS groups using non-linear parameters. The EEG data are wavelet multiresolution decomposed into subbands of interest (alpha 8-12 Hz, beta 13-30 Hz, delta 0-4 Hz, theta 4-8 Hz, gamma 30-60 Hz). We applied rescaled range method to estimate the Hurst coefficient of the decomposed signals, with different types of wavelet transforms. The results obtained using the maximum Lyapunov exponent do not highlight very well differences between the 4 groups analyzed (HS, PDS, EBS and ES) but using Hurst coefficient we can make a very good differentiation of EEG signals. The results show that the Hurst coefficient is significant different for delta and theta rhythms extracted from the EEG signal in case of the healthy subjects compared with PDS or EBS subjects. The Hurst coefficient for healthy subjects has a value higher than 0.5 and for PD subjects or epileptic subject between seizures has a value lower than 0.5. Hence, the non-linear parameters such as Hurst coefficient can help in EEG interpretation and in neurological disorders diagnosis.
机译:在本文中,我们通过计算一些线性,统计和非线性变量,评估了健康受试者(HS),帕金森病(PDS)和癫痫病受试者(癫痫发作和ES-癫痫病发作之间的癫痫病受试者)之间的差异。特征,例如:相关维数,最大Lyapunov指数和Hurst系数。使用非线性参数比较PDS,EBS,ES和HS组。 EEG数据是小波多分辨率的,分解为感兴趣的子带(α8-12 Hz,β13-30 Hz,δ0-4 Hz,θ4-8 Hz,γ30-60 Hz)。我们应用重标范围法来估计分解信号的Hurst系数,具有不同类型的小波变换。使用最大Lyapunov指数获得的结果并未突出显示所分析的4个组(HS,PDS,EBS和ES)之间的差异非常大,但是使用赫斯特系数,我们可以对脑电信号进行很好的区分。结果表明,与PDS或EBS受试者相比,健康受试者从EEG信号中提取的δ和θ节律的赫斯特系数显着不同。健康受试者的赫斯特系数值大于0.5,癫痫发作之间的PD受试者或癫痫病患者的Hurst系数值小于0.5。因此,非线性参数(例如赫斯特系数)可以帮助脑电图的解释和神经系统疾病的诊断。

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