首页> 外文期刊>Journal of Neuroscience Methods >Time-frequency characterization of electrocorticographic recordings of epileptic patients using frequency-entropy similarity: a comparison to other bi-variate measures.
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Time-frequency characterization of electrocorticographic recordings of epileptic patients using frequency-entropy similarity: a comparison to other bi-variate measures.

机译:癫痫患者的脑电记录的时频特征使用频率熵相似性:与其他双变量测量的比较。

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Expert evaluation of electrocorticographic (ECoG) recordings forms the linchpin of seizure onset zone localization in the evaluation of epileptic patients for surgical resection. Numerous methods have been developed to analyze these complex recordings, including uni-variate (characterizing single channels), bi-variate (comparing channel pairs) and multivariate measures. Developing reliable algorithms may be helpful in clinical tasks such as localization of epileptogenic zones and seizure anticipation, as well as enabling better understanding of neuronal function and dynamics. Recently we have developed the frequency-entropy (F-E) similarity measure, and have tested its capability in mapping the epileptogenic zones. The F-E similarity measure compares time-frequency characterizations of two recordings. In this study, we examine the method's principles and utility and compare it to previously described bi-variate correspondence measures such as correlation, coherence, mean phase coherence and spectral comparison methods. Specially designed synthetic signals were used for illuminating theoretical differences between the measures. Intracranial recordings of four epileptic patients were then used for the measures' comparative analysis by creating a mean inter-electrode matrix for each of the correspondence measures and comparing the structure of these matrices during the inter-ictal and ictal periods. We found that the F-E similarity measure is able to discover spectral and temporal features in data which are hidden for the other measures and are important for foci localization.
机译:皮层脑电图(ECoG)记录的专家评估是癫痫发作手术切除评估中癫痫发作区定位的关键。已经开发出许多方法来分析这些复杂的记录,包括单变量(表征单个通道),双变量(比较通道对)和多变量测量。开发可靠的算法可能有助于临床任务,例如癫痫发生区的定位和癫痫发作的预期,以及使人们更好地了解神经元功能和动力学。最近,我们开发了频率熵(F-E)相似性度量,并测试了其绘制癫痫发生区的能力。 F-E相似性度量比较两个记录的时频特性。在这项研究中,我们检查了该方法的原理和实用性,并将其与先前描述的双变量对应度量(例如相关性,相干性,平均相位相干性和光谱比较方法)进行了比较。经过特殊设计的合成信号用于阐明这些措施之间的理论差异。然后,通过为每个对应措施创建一个平均电极间矩阵并在发作间隔和发作间隔期间比较这些矩阵的结构,将四名癫痫患者的颅内记录用于该措施的比较分析。我们发现,F-E相似性度量能够发现数据中的频谱和时间特征,这些特征对于其他度量是隐藏的,并且对于焦点定位很重要。

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