Krishnaveni V, Jayaraman S, Anitha L, Ramadoss K
Department of Electronics & Communication Engineering, PSG College of Technology, Coimbatore-4, India.
J Neural Eng. 2006 Dec;3(4):338-46. doi: 10.1088/1741-2560/3/4/011. Epub 2006 Nov 23.
Electroencephalogram (EEG) gives researchers a non-invasive way to record cerebral activity. It is a valuable tool that helps clinicians to diagnose various neurological disorders and brain diseases. Blinking or moving the eyes produces large electrical potential around the eyes known as electrooculogram. It is a non-cortical activity which spreads across the scalp and contaminates the EEG recordings. These contaminating potentials are called ocular artifacts (OAs). Rejecting contaminated trials causes substantial data loss, and restricting eye movements/blinks limits the possible experimental designs and may affect the cognitive processes under investigation. In this paper, a nonlinear time-scale adaptive denoising system based on a wavelet shrinkage scheme has been used for removing OAs from EEG. The time-scale adaptive algorithm is based on Stein's unbiased risk estimate (SURE) and a soft-like thresholding function which searches for optimal thresholds using a gradient based adaptive algorithm is used. Denoising EEG with the proposed algorithm yields better results in terms of ocular artifact reduction and retention of background EEG activity compared to non-adaptive thresholding methods and the JADE algorithm.
脑电图(EEG)为研究人员提供了一种记录大脑活动的非侵入性方法。它是一种有价值的工具,可帮助临床医生诊断各种神经系统疾病和脑部疾病。眨眼或眼球运动会在眼睛周围产生较大的电势,称为眼电图。这是一种非皮质活动,会扩散到头皮并干扰脑电图记录。这些干扰电势被称为眼动伪迹(OAs)。剔除受污染的试验会导致大量数据丢失,而限制眼球运动/眨眼会限制可能的实验设计,并可能影响正在研究的认知过程。在本文中,一种基于小波收缩方案的非线性时间尺度自适应去噪系统已被用于从脑电图中去除眼动伪迹。该时间尺度自适应算法基于斯坦无偏风险估计(SURE)和一种类似软阈值的函数,该函数使用基于梯度的自适应算法搜索最优阈值。与非自适应阈值方法和JADE算法相比,用所提出的算法对脑电图进行去噪在减少眼动伪迹和保留背景脑电图活动方面产生了更好的结果。