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The impact of electrode reduction in the diagnosis of dyslexia

机译:电极减少对综合征诊断的影响

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Dyslexia is a learning disorder and involves disability in reading. It is a deficit with a brain origin despite the presence of good intelligence. Dyslexic patients may have lower rates of learning compared to healthy individuals of the same age. This is a critical problem in the learning process at school years, which makes it important to determine the origin of dyslexia in the brain for treatment. There are different methods to investigate how the brain works. One of these methods is to record brain signals (Electroencephalography (EEG)). Dyslexic children have shown some anxiety and restlessness due to inability to perform tasks properly. Thus, their additional movements may cause an error in the signal recording. Reducing the number of connections decreases the possibility of measurement errors in EEG recording. We determined the optimal group of electrodes for Identification Dyslexic Patients in this research. The reduction in the number of electrodes makes the test easier and more practical. Classification accuracy can also improve with the removal of irrelevant channels. Bhagavatula (2009) and Modrzejewski (1993) increased the accuracy of the classification by removing inefficient electrodes. For this purpose, we extracted the best features including RSP features, mean, standard deviation, skewness and kurtosis, hjorth and AR parameters. Then, both SVM and Bayes classifiers were used to separate two classes. We used Mutual Information (MI) to electrode reduction. The aim of the proposed method is to apply reduced electrodes on dyslexic children and reach acceptable results for diagnosis. Finally, we succeeded to reduce the number of electrode channels from 19 to 2-6 and attain a classification accuracy of 70%.
机译:阅读障碍是一种学习障碍,涉及阅读的残疾。尽管存在良好的智力,但它是大脑来源的赤字。与同一年龄的健康个体相比,缺点患者可能具有较低的学习率。这是学年学习过程中的一个关键问题,这使得确定大脑中患有综合症的起源的重要性。有不同的方法来调查大脑如何运作。这些方法之一是记录脑信号(脑电图(EEG))。由于无法正常执行任务,缺点儿童表现出一些焦虑和烦躁不安。因此,它们的附加运动可能导致信号记录中的错误。减少连接次数会降低EEG录制中测量误差的可能性。我们确定了本研究中鉴定缺陷患者的最佳电极组。电极数量的减少使得测试更容易和更实用。分类精度也可以通过清除无关渠道来改善。 Bhagavatula(2009)和ModrzeJewski(1993)通过去除低效电极来提高分类的准确性。为此目的,我们提取了最佳功能,包括RSP特征,平均值,标准偏差,偏光和峰值,Hjorth和Ar参数。然后,SVM和Bayes分类器都用于分离两类。我们将互信息(MI)用来电极减少。所提出的方法的目的是在缺陷儿童上施加减少电极,并达到可接受的诊断结果。最后,我们成功地将电极通道的数量从19到2-6减少,并达到70%的分类精度。

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