EEG based hearing threshold classification using fractal feature and neural network

M. Paulraj, S. Yaccob, A. Hamid, B. Adom, K. Subramaniam, C. Hema
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引用次数: 6

Abstract

In this paper, proposed a method to classify EEG time series signals recorded from left and right ears by presenting an acoustical stimulus in a time locked manner. Fractal dimensional features were extracted in order to measure the complexity of temporal dynamics and response onset of auditory evoked potentials of normal hearing and abnormal hearing persons. This study identified a significant potential difference between fractal dimensional values of the normal hearing and abnormal hearing person. The extracted fractal features were then associated to the hearing threshold perception and a neural network model for left and right ears were developed. The classification results in discriminating the left and right ear of normal and abnormal person was reported as 90% and 95% with specificity of 90%, sensitivity of 100%. Since the results were promising, it can be safely adopted in screening the hearing threshold level of a person in clinics.
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基于脑电的分形特征和神经网络的听阈分类
本文提出了一种以时间锁定方式对左右耳记录的EEG时间序列信号进行分类的方法。提取分形维特征,以衡量听力正常和听力异常者听觉诱发电位的时间动态和反应起始的复杂性。本研究发现听力正常者与听力异常者分形维数值存在显著的电位差异。将提取的分形特征与听觉阈值感知相关联,建立了左右耳神经网络模型。该方法对正常人和正常人的左耳和右耳的分类结果分别为90%和95%,特异性为90%,敏感性为100%。由于结果是有希望的,它可以安全地用于筛选一个人的听力阈值水平在诊所。
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