利用脑电图和小波分析识别ADHD认知模式障碍

R. Gabriel, M. Spindola, A. Mesquita, Angelo Zerbetto Neto
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引用次数: 4

摘要

通过使用无创脑电图仪器(EEG),对脑电信号证明的人类认知模式进行了反复调查。在此背景下,本研究提出了一种方法,其特点是使用脑电图技术来研究注意力缺陷多动障碍(ADHD)学习者的大脑信号模式,这些信号是在一个被称为“古怪范式”的典型活动过程中引起的。因此,采用的方法包括选择一组先前诊断为ADHD的儿童和对照组。在工作过程中,还介绍了脑电信号的采集、预处理和可视化环境,以及奇球范式的视觉刺激环境。在软件支持下,利用小波变换的数学建模对脑电信号进行分解。应用数据分类方法,利用支持向量机(SVM)技术,基于Morlet小波变换对脑电记录提取的能量和功率信息,建立ADHD和正态性的指示模式。应用该方法,构建了一个能够对ADHD个体和对照组进行分类的模型,准确率为94.74%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of ADHD Cognitive Pattern Disturbances Using EEG and Wavelets Analysis
Recurrent investigations about human cognitive patterns evidenced by electrical brain signals have been performed with the use of non-invasive electroencephalographic instrumentation (EEG). In this context, this work proposes a methodology which is characterized by using EEG technique in the investigation of brain signal patterns in learners with Attention Deficit Hiperactivity Disorder - ADHD, evoked during the course of a typical activity called "Oddball Paradigm". Therefore, was applied the methodology that consisted in the selection of a group of children previously diagnosed with ADHD and a control group. During the work environments are also presented that have been implemented for the acquisition, preprocessing and visualization of brain electrical biossignals as well as environments for visual stimulation of Oddball Paradigm. With software support it was made using of mathematical modeling of Wavelet Transform to the decomposition of EEG signals. It was also applied the data classification method, using the Support Vector Machine (SVM) technique to establish patterns indicative of ADHD and normality based on the energy and power information extracted from the application of Morlet Wavelet Transform to the EEG records. It was obtained as a result of the applied methodology, the construction a model capable of classifying ADHD individuals and control group with 94.74% of accuracy.
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