Auditory evoked potential based detection of hearing loss: A prototype system

M. Paulraj, K. Subramaniam, S. Yaccob, A. H. Adom, C. Hema
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引用次数: 4

Abstract

Hearing loss has been the most prevalent sensory disability throughout the world. Over 275 million people around the world are affected by various hearing related problems. A conventional hearing screening test's applicability is limited as it requires a feedback response from the subject under test. To overcome such problems, the primary focus of this study is to develop an intelligent hearing ability level assessment system using auditory evoked potential signals (AEP). AEP signal is an electrical potential signal elicited from the brain while an auditory stimulus is presented in a time-locked manner. The AEP responses of normal hearing and abnormal hearing subjects were administered to fixed acoustic stimulus intensity in order to detect the hearing threshold level. The detrended fluctuation analysis (DFA) has been used to estimate the fractal values of the normal and abnormal hearing subjects. The extracted fractal features were then associated to hearing threshold level of the subjects. Feed-forward and feedback neural networks are employed to distinguish normal and abnormal hearing subjects. The classification performance of the proposed intelligent hearing ability level assessment system is in the range of 85-90%. This study indicates that mean fractal values of the abnormal hearing subjects are relatively higher while compared with the mean fractal values of the normal hearing subjects.
基于听觉诱发电位的听力损失检测:一个原型系统
听力损失一直是世界上最普遍的感觉障碍。全世界有超过2.75亿人受到各种听力相关问题的影响。传统的听力筛查测试的适用性是有限的,因为它需要测试对象的反馈反应。为了克服这些问题,本研究的主要重点是开发一种基于听觉诱发电位信号(AEP)的智能听力能力水平评估系统。AEP信号是当听觉刺激以一种时间锁定的方式呈现时,从大脑中引出的电位信号。在固定的声刺激强度下,对听力正常和听力异常受试者的AEP反应进行检测,以检测听力阈值水平。采用去趋势波动分析(DFA)对听力正常和异常受试者的分形值进行了估计。然后将提取的分形特征与受试者的听力阈值水平相关联。采用前馈和反馈神经网络来区分听力正常和异常受试者。所提出的智能听力水平评估系统的分类性能在85-90%之间。本研究表明,听力异常受试者的平均分形值相对于听力正常受试者的平均分形值较高。
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