Lam Benny S C, Hu Yong, Lu William W, Luk Keith D K, Chang C Q, Qiu Wei, Chan Francis H Y
Department of Orthopaedics and Traumatology, The University of Hong Kong, Pokfulam, Hong Kong.
Med Eng Phys. 2005 Apr;27(3):257-66. doi: 10.1016/j.medengphy.2004.09.007.
Somatosensory evoked potential (SEP) testing has been widely applied to diagnosis of various neurological disorders. However, SEP recorded using surface electrodes is buried in noises, which makes the signal-to-noise ratio (SNR) very poor. Conventional averaging method usually requires up to thousands of raw SEP input trials to increase the SNR so that an identifiable waveform can be produced for latency and amplitude measurement. In this study, a multi-adaptive filtering (MAF) technique, emerging from the combination of well-developed adaptive noise canceller and adaptive signal enhancer, is introduced for fast and accurate surface SEP extraction. The MAF technique first processes the raw surface recorded SEP by the Canceller with a reference noise channel of background noise for adaptive subtraction before entering the Enhancer. The MAF was verified by filtering simulated SEP signals in which electroencephalography and Gaussian noise of different SNRs were added. It was found that the MAF could effectively suppress the noise and enhance the SEP components such that the SNR of the SEP is improved. Results showed that MAF with 50 input trials could provide similar performance in SEP detection to those extracted by the conventional averaging method with 1000 trials even at an SNR of -20 dB.
体感诱发电位(SEP)测试已广泛应用于各种神经系统疾病的诊断。然而,使用表面电极记录的SEP被噪声所掩盖,这使得信噪比(SNR)非常低。传统的平均方法通常需要多达数千次原始SEP输入试验来提高信噪比,以便能够产生可识别的波形用于潜伏期和波幅测量。在本研究中,引入了一种多自适应滤波(MAF)技术,该技术由成熟的自适应噪声消除器和自适应信号增强器组合而成,用于快速准确地提取表面SEP。MAF技术首先通过消除器对原始表面记录的SEP进行处理,利用背景噪声的参考噪声通道进行自适应减法,然后再进入增强器。通过对添加了不同信噪比的脑电图和高斯噪声的模拟SEP信号进行滤波,验证了MAF技术。结果发现,MAF能够有效抑制噪声并增强SEP成分,从而提高SEP的信噪比。结果表明,即使在信噪比为-20 dB时,50次输入试验的MAF在SEP检测中的性能与传统平均方法1000次试验提取的结果相似。