Title :
Neural spike sorting under nearly 0-dB signal-to-noise ratio using nonlinear energy operator and artificial neural-network classifier
Author :
Kim, Kyung Hwan ; Kim, Sung June
Author_Institution :
Sch. of Electr. Eng., Seoul Nat. Univ., South Korea
Abstract :
Reports a result on neural spike sorting under conditions where the signal-to-noise ratio is very low. The use of nonlinear energy operator enables the detection of an action potential, even when the SNR is so poor that a typical amplitude thresholding method cannot be applied. The superior detection ability facilitates the collection of a training set under lower SNR than that of the methods which employ simple amplitude thresholding. Thus, the statistical characteristics of the input vectors can be better represented in the neural-network classifier The trained neural-network classifiers yield the correct classification ratio higher than 90% when the SNR is as low as 1.2 (0.8 dB) when applied to data obtained from extracellular recording from Aplysia abdominal ganglia using a semiconductor microelectrode array.
Keywords :
bioelectric potentials; biological techniques; cellular biophysics; neural nets; neurophysiology; signal classification; vectors; Aplysia abdominal ganglia; artificial neural-network classifier; biological research technique; correct classification ratio; extracellular recording; input vectors; nearly 0-dB signal-to-noise ratio; neural spike sorting; neuroscience method; nonlinear energy operator; semiconductor microelectrode array; simple amplitude thresholding; statistical characteristics; training set; 1f noise; Circuit noise; Electrodes; Extracellular; Neurons; Noise level; Semiconductor device noise; Signal to noise ratio; Sorting; Subspace constraints; Action Potentials; Animals; Aplysia; Nerve Net; Neural Conduction; Signal Processing, Computer-Assisted;
Journal_Title :
Biomedical Engineering, IEEE Transactions on