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An auditory brainstem response-based expert system for ADHD diagnosis using recurrence qualification analysis and wavelet support vector machine

机译:基于听觉脑干反应的ADHD诊断专家系统,基于递归资格分析和小波支持向量机

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Attention Deficit Hyperactivity Disorder (ADHD) is a common disorder in children. Due to lack of suitable biomarker or test, diagnosis of ADHD children is complicated and needs comprehensive evaluations. Evidences show that, ADHD children have deficit in their brainstem timing and cortex auditory processing. We assessed their auditory brainstem response to speech stimuli. Due to nonlinear and dynamic characteristics of biological signals they should be represented by features that are based on their nature. In this study wavelet coefficients and recurrence qualification analysis features were used to represent signals in a comprehensive way. In this article, we addressed the problem of discrimination of ADHD children from Normal. Wavelet Support Vector machine with Mexican hat and Morlet kernels were used in order to classifying these children. Our method demonstrated %98.57 classification accuracy.
机译:注意缺陷多动障碍(ADHD)是儿童的常见疾病。由于缺乏合适的生物标志物或测试,对多动症儿童的诊断非常复杂,需要进行综合评估。有证据表明,多动症儿童的脑干时间和皮层听觉处理能力不足。我们评估了他们的听觉脑干对语音刺激的反应。由于生物信号的非线性和动态特性,它们应该由基于其性质的特征来表示。在这项研究中,小波系数和递归资格分析特征被用来全面地表示信号。在本文中,我们解决了将多动症儿童与正常人区别对待的问题。使用具有墨西哥帽和Morlet核的小波支持向量机对这些孩子进行分类。我们的方法证明了%98.57的分类精度。

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