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A data-reduction process for long-term EEGs. Feature extraction through digital processing in a multiresolution framework

机译:长期脑电图的数据缩减过程。通过多分辨率框架中的数字处理进行特征提取

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Describes a contribution to a data-reduction process to be used with long-term EEGs. Since typical long-term EECs recorded from depth electrodes are extended over several days, while epilepsy may be characterized by occasional transients, data reduction is an important consideration for the electroencephalographer. The electroencephalographer detects epileptic activity by visual inspection of the EEG, which is a time-consuming procedure for records that are days long. The result obtained with the authors' proposed algorithm is the selection of segments of EEG where a transient is detected; then these segments are reviewed by an expert. The authors' primary objective is to minimize the visual inspection process, presenting to the clinician only selected segments of the EEG. Throughout this article, no distinction is made among the wide variety of epileptiform transients. The only objective of the algorithm is to separate background activity from epileptiform activity.
机译:描述了对与长期脑电图一起使用的数据缩减过程的贡献。由于从深度电极记录的典型长期EEC会持续数天,而癫痫病可能会偶尔出现短暂性发作,因此数据减少是脑电图师的重要考虑因素。脑电图师通过目视检查脑电图来检测癫痫活动,这对于长达数天的记录而言是一项耗时的过程。作者提出的算法获得的结果是选择了检测到瞬变的脑电图片段;然后由专家审核这些细分。作者的主要目的是最大程度地减少视觉检查过程,仅向临床医生展示脑电图的选定部分。在整个本文中,在各种癫痫样瞬变之间没有区别。该算法的唯一目的是将背景活动与癫痫样活动分开。

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