Kim Kyung Hwan, Kim Sung June
Functional Magnetic Resonance Imaging (fMRI) Laboratory, Brain Science Research Center, KAIST, Daejeon 305-701, Korea.
IEEE Trans Biomed Eng. 2003 Aug;50(8):999-1011. doi: 10.1109/TBME.2003.814523.
We present a method for the detection of action potentials, an essential first step in the analysis of extracellular neural signals. The low signal-to-noise ratio (SNR) and similarity of spectral characteristic between the target signal and background noise are obstacles to solving this problem and, thus, in previous studies on experimental neurophysiology, only action potentials with sufficiently large amplitude have been detected and analyzed. In order to lower the level of SNR required for successful detection, we propose an action potential detector based on a prudent combination of wavelet coefficients of multiple scales and demonstrate its performance for neural signal recording with varying degrees of similarity between signal and noise. The experimental data include recordings from the rat somatosensory cortex, the giant medial nerve of crayfish, and the cutaneous nerve of bullfrog. The proposed method was tested for various SNR values and degrees of spectral similarity. The method was superior to the Teager energy operator and even comparable to or better than the optimal linear detector. A detection ratio higher than 80% at a false alarm ratio lower than 10% was achieved, under an SNR of 2.35 for the rat cortex data where the spectral similarity was very high.
我们提出了一种检测动作电位的方法,这是分析细胞外神经信号的关键第一步。目标信号与背景噪声之间的低信噪比(SNR)以及光谱特征的相似性是解决此问题的障碍,因此,在先前的实验神经生理学研究中,仅检测和分析了具有足够大振幅的动作电位。为了降低成功检测所需的SNR水平,我们提出了一种基于多尺度小波系数审慎组合的动作电位检测器,并展示了其在信号与噪声之间具有不同程度相似性的神经信号记录中的性能。实验数据包括来自大鼠体感皮层、小龙虾的巨大内侧神经和牛蛙的皮神经的记录。针对各种SNR值和光谱相似程度对所提出的方法进行了测试。该方法优于Teager能量算子,甚至与最佳线性检测器相当或更好。在大鼠皮层数据的SNR为2.35且光谱相似性非常高的情况下,实现了在误报率低于10%时检测率高于80%。