基于数据挖掘的脑电瞬态事件检测与分类方法

T. Exarchos, A. Tzallas, D. Fotiadis, S. Konitsiotis, S. Giannopoulos
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引用次数: 14

摘要

提出了一种自动检测脑电图记录中的瞬态事件并将其分类为癫痫尖峰、肌肉活动、眨眼活动和尖锐α活动的方法。它以数据挖掘算法为基础,包括四个阶段:(1)脑电预处理和瞬态事件检测,(2)瞬态事件聚类和特征提取,(3)特征离散化,(4)关联规则挖掘和分类。使用25个EEG记录数据集对该方法进行了评估,获得的总体准确率为84.35%。我们的方法的主要优点是,它能够为所做的决策提供解释,因为它是基于一组关联规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A data mining based approach for the EEG transient event detection and classification
An automated methodology which detects transient events in EEG recordings and classifies those as epileptic spikes, muscle activity, eye blinking activity and sharp alpha activity is presented. It is based on data mining algorithms and includes four stages: (I) EEG preprocessing and transient events detection, (II) clustering of transient events and feature extraction, (III) feature discretization and (IV) association rule mining and classification. The methodology is evaluated using a dataset of 25 EEG recordings and the obtained overall accuracy is 84.35%. The major advantage of our approach is that it is able to provide interpretation for the decisions made since it is based on a set of association rules.
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