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首页> 外文期刊>Journal of mechanics in medicine and biology >A NOVEL APPROACH TO DETECT EPILEPTIC SEIZURES USING A COMBINATION OF TUNABLE-Q WAVELET TRANSFORM AND FRACTAL DIMENSION
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A NOVEL APPROACH TO DETECT EPILEPTIC SEIZURES USING A COMBINATION OF TUNABLE-Q WAVELET TRANSFORM AND FRACTAL DIMENSION

机译:使用可调Q小波变换和分形尺寸的组合检测癫痫发作的新方法

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The detection and quantification of seizures can be achieved through the analysis of nonstationary electroencephalogram (EEG) signals. The detection of these intractable seizures involving human beings is a challenging and difficult task. The analysis of EEG through human inspection is prone to errors and may lead to false conclusions. The computer-aided systems have been developed to assist neurophysiologists in the identification of seizure activities accurately. We propose a new machine learning and signal processing-based automated system that can detect epileptic episodes accurately. The proposed algorithm employs a promising time-frequency tool called tunable-Q wavelet transform (TQWT) to decompose EEG signals into various sub-bands (SBs). The fractal dimensions (FDs) of the SBs have been used as the discriminating features. The TQWT has many attractive features, such as tunable oscillatory attribute and time-invariance property, which are favorable for the analysis of nonstationary and transient signals. Fractal dimension is a nonlinear chaotic trait that has been proven to be very useful in the analysis and classifications of nonstationary signals including EEG. First, we decompose EEG signals into the desired SBs. Then, we compute FD for each SB. These FDs of the SBs have been applied to the least-squares support vector machine (LS-SVM) classifier with radial basis function (RBF) kernel. We have used 10-fold cross-validation to ensure reliable performance and avoid the possible over-fitting of the model. In the proposed study, we investigate the following four popular classification tasks (CTs) related to different classes of EEG signals: (i) normal versus seizure (ii) seizure-free versus seizure (iii) nonseizure versus Seizure (iv) normal versus seizure-free. The proposed model surpassed existing models in the area under the receiver operating characteristics (ROC) curve, Matthew's correlation coefficient (MCC), average classification accuracy (ACA), and average classification sensitivity (ACS). The proposed system attained perfect 100% ACS for all CTs considered in this study. The method achieved the highest classification accuracy as well as the largest area under ROC curve (AUC) for all classes. The salient feature of our proposed model is that, though many models exist in the literature, which gave high ACA, however, their performance has not been evaluated using MCC and AUC along with ACA simultaneously. The evaluation of the performance in terms of only ACA which may be misleading. Hence, the performance of the proposed model has been assessed not only in terms of ACA but also in terms AUC and MCC. Moreover, the performance of the model has been found to be almost equivalent to a perfect model, and the performance of the proposed model surpasses the existing models for the CTs investigated by us. Therefore, the proposed model is expected to assist clinicians in analyzing seizures accurately in less time without any error.
机译:通过分析非间断的脑电图(EEG)信号,可以实现癫痫发作的检测和定量。涉及人类的这些顽固癫痫发作的检测是一个具有挑战性和艰巨的任务。通过人体检查对脑电图分析易于错误,可能导致错误的结论。已经开发了计算机辅助系统,以协助神经生理学家准确识别癫痫发作活动。我们提出了一种新的机器学习和基于信号的自动化系统,可以准确地检测癫痫发作。该算法采用了一个具有称剧-Q小波变换(TQWT)的有希望的时频工具,以将EEG信号分解为各种子带(SBS)。 SBS的分形尺寸(FDS)已被用作辨别特征。 TQWT具有许多有吸引力的功能,例如可调振荡属性和时间不变性属性,这有利于分析非间断和瞬态信号。分形尺寸是非线性混沌特征,已被证明在分析和分类中非常有用,包括脑电图。首先,我们将EEG信号分解为所需的SBS。然后,我们计算每个SB的FD。 SBS的这些FDS已经应用于具有径向基函数(RBF)内核的最小二乘支持向量机(LS-SVM)分类器。我们使用了10倍的交叉验证,以确保可靠的性能,避免模型的可能过度拟合。在拟议的研究中,我们调查了与不同类别的脑电图信号相关的以下四个流行的分类任务(CTS):(i)正常与癫痫发作(II)无癫痫发作(III)不一致与癫痫发作(IV)正常与癫痫发作-自由。所提出的模型在接收器操作特性(ROC)曲线下,Matthew的相关系数(MCC),平均分类精度(ACA)和平均分类灵敏度(ACS)的拟议模型超过了该区域的现有模型。拟议的系统达到了本研究中考虑的所有CTS的完善100%ACS。该方法实现了最高的分类准确性以及所有类的ROC Curve(AUC)下的最大区域。我们提出的模型的突出特征是,虽然文献中存在许多模型,但是,该模型提供了高度的ACA,但它们的性能尚未使用MCC和AUC同时使用ACA进行评估。在仅可能误导的ACA方面评估性能。因此,拟议的模型的性能不仅在ACA方面评估,而且还在AUC和MCC方面进行了评估。此外,已经发现模型的性能几乎相当于完美的模型,并且所提出的模型的性能超越了我们所研究的CTS的现有模型。因此,预计拟议的模型将帮助临床医生在较少的时间内准确分析癫痫发作,没有任何错误。

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