Denoising of Electroretinogram signals using empirical mode decomposition

F. Latifoğlu, Ayşegül Güven, Uğur Durmuş, A. Öner
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引用次数: 4

Abstract

Clinical Electrophysiologic tests derived from human eyes are the tests that use to review whole visual pathways and they are important for ophthalmology and neuro ophthalmology. Electroretinographies is one of the electrophysiological tests often used to investigate the electrical response of the retinal layers from retinal pigment epithelium up to the occipital cortex. ERG signals have two important amplitudes that are used to diagnose diseases by doctors. These are negative a wave and positive b wave. Implicit times of the a and b waves are also meaningful to diagnose. ERG signals have small amplitudes (about μV). Because of this reason it is significant to separate the signal from the noise and interference that occurs as a result of movement. In this study, we propose using a new technique, called the empirical mode decomposition to denoised ERG responses. The Empirical Mode Decomposition is a signal processing method for analyzing nonlinear and nonstationary signals. ERG signals which are nonstationary signals are decomposed into a series of Intrinsic Mode Functions and then noise and interference are eliminated. Finally ERG signals which have signal to noise ratio less or equal than 10 dB are reconstructed. As a result we successfully obtained denoised ERG signals.
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基于经验模态分解的视网膜电图信号去噪
来源于人眼的临床电生理测试是用来检查整个视觉通路的测试,在眼科学和神经眼科学中具有重要意义。视网膜电图是一种常用于研究视网膜色素上皮至枕皮质层电反应的电生理测试方法。ERG信号有两个重要的振幅,医生用它们来诊断疾病。这是负a波和正b波。a波和b波的隐式时间对诊断也有意义。ERG信号振幅较小(约μV)。由于这个原因,将信号与由于运动而产生的噪声和干扰分开是很重要的。在这项研究中,我们提出使用一种称为经验模式分解的新技术来去噪ERG响应。经验模态分解是一种分析非线性和非平稳信号的信号处理方法。ERG信号是一种非平稳信号,它被分解成一系列的固有模态函数,然后去除噪声和干扰。最后对信噪比小于或等于10 dB的ERG信号进行重构。结果,我们成功地获得了去噪的ERG信号。
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