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Selection of optimum frequency bands for detection of epileptiform patterns

机译:选择最佳频带以检测癫痫样模式

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摘要

The significant research effort in the domain of epilepsy has been directed toward the development of an automated seizure detection system. In their usage of the electrophysiological recordings, most of the proposals thus far have followed the conventional practise of employing all frequency bands following signal decomposition as input features for a classifier. Although seemingly powerful, this approach may prove counterproductive since some frequency bins may not carry relevant information about seizure episodes and may, instead, add noise to the classification process thus degrading performance. A key thesis of the work described here is that the selection of frequency subsets may enhance seizure classification rates. Additionally, the authors explore whether a conservative selection of frequency bins can reduce the amount of training data needed for achieving good classification performance. They have found compelling evidence that using spectral components with <25 Hz frequency in scalp electroencephalograms can yield state-of-the-art classification accuracy while reducing training data requirements to just a tenth of those employed by current approaches.
机译:在癫痫领域中的大量研究努力已经针对自动癫痫发作检测系统的开发。迄今为止,在使用它们的电生理记录时,大多数建议都遵循了将信号分解后的所有频带用作分类器输入特征的常规做法。尽管这种方法看似功能强大,但由于某些频率仓可能无法携带有关癫痫发作的相关信息,因此可能会适得其反,相反,可能会给分类过程增加噪音,从而降低性能。这里描述的工作的关键论点是,频率子集的选择可以提高癫痫发作的分类率。此外,作者还探索了保守选择频点是否可以减少实现良好分类性能所需的训练数据量。他们发现了令人信服的证据,即在头皮脑电图中使用频率低于25 Hz的频谱分量可以产生最新的分类准确性,同时将训练数据需求降低到目前方法的十分之一。

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