Ozdamar Ozcan, Bohórquez Jorge
Department of Biomedical Engineering, College of Engineering, University of Miami, Coral Gables, Florida 33124, USA.
J Acoust Soc Am. 2006 Jan;119(1):429-38. doi: 10.1121/1.2133682.
In this study, a frequency domain formulation of continuous loop averaging deconvolution (CLAD) of overlapping evoked potentials is developed and applied for the extraction of transient responses from recordings obtained at high stimulation rates. This formulation allows for a faster execution of CLAD by using fast Fourier transform algorithms. The frequency characteristics of the deconvolution filter depends exclusively on the stimulus sequence and determines whether the noncoherent noise is amplified or attenuated in different frequencies. A formula for calculating the signal-to-noise ratio (SNR) achieved by the deconvolution process is developed. The newly developed theory and the methodology is applied to the extraction of the auditory brainstem and middle latency responses using various sequences. The effects of the sequence used and the number of sweeps averaged in ongoing acquisition on SNR are examined by using single sweep recordings. The results verify the deconvolution theory and the methodology and show its limitations. Depending on the frequency characteristics of the sequence, the deconvolution process can amplify or attenuate the EEG noise. Proper selection of the stimulus sequence can increase the SNR enhancement obtained with conventional averaging.
在本研究中,我们开发了一种用于重叠诱发电位的连续循环平均去卷积(CLAD)的频域公式,并将其应用于从高刺激率下获得的记录中提取瞬态响应。该公式通过使用快速傅里叶变换算法实现了CLAD的更快执行。去卷积滤波器的频率特性仅取决于刺激序列,并决定了非相干噪声在不同频率下是被放大还是衰减。我们推导了一个用于计算去卷积过程所实现的信噪比(SNR)的公式。新开发的理论和方法被应用于使用各种序列提取听觉脑干和中潜伏期响应。通过单扫记录研究了所用序列和正在进行的采集中平均的扫数对SNR的影响。结果验证了去卷积理论和方法,并显示了其局限性。根据序列的频率特性,去卷积过程可以放大或衰减脑电图噪声。正确选择刺激序列可以提高传统平均法所获得的SNR增强效果。