"nBackground: Studying the behavior of a society of neurons, extracting the communication mechanisms of brain with other tissues, finding treatment for some nervous system diseases and designing neuroprosthetic devices, require an algorithm to sort neuralspikes automatically. However, sorting neural spikes is a challenging task because of the low signal to noise ratio (SNR) of the spikes. The main purpose of this study was to design an automatic algorithm for classifying neuronal spikes that are emitted from a specific region of the nervous system."n "nMethods: The spike sorting process usually consists of three stages: detection, feature extraction and sorting. We initially used signal statistics to detect neural spikes. The...
Artificial neural network (ANN) models are able to predict future events based on current data. The ...
Simultaneous recordings of multiple neuron activities with multi-channel extracellular electrodes ar...
Abstract — Spike sorting is often required for analyzing neu-ral recordings to isolate the activity ...
Identification of neural spike activities has been a challenging task for a researcher which is a pr...
Extracellular microelectrodes frequently record neural activity from multiple sources in the vicinit...
Extracellular microelectrodes frequently record neural activity from multiple sources in the vicinit...
Objective. Spike sorting is a set of techniques used to analyze extracellular neural recordings, att...
AbstractTo study the electrophysiological properties of neuronal networks, in vitro studies based on...
Understanding neural functions requires knowledge from analysing electrophysiological data. The proc...
Spike sorting is a class of techniques used in the analysis of electrophysiological data. Studying t...
Neurons communicate through electrophysiological signals, which may be recorded using electrodes ins...
Spike sorting is a crucial step to extract information from extracellular recordings. With new recor...
BACKGROUND: Understanding how neurons contribute to perception, motor functions and cognition req...
We present neural spike sorting when the signal-to-noise ratio (SNR) is close to 0 dB. The use of no...
Despite many neuroscientific breakthroughs, it remains largely unknown how brain activity supports c...
Artificial neural network (ANN) models are able to predict future events based on current data. The ...
Simultaneous recordings of multiple neuron activities with multi-channel extracellular electrodes ar...
Abstract — Spike sorting is often required for analyzing neu-ral recordings to isolate the activity ...
Identification of neural spike activities has been a challenging task for a researcher which is a pr...
Extracellular microelectrodes frequently record neural activity from multiple sources in the vicinit...
Extracellular microelectrodes frequently record neural activity from multiple sources in the vicinit...
Objective. Spike sorting is a set of techniques used to analyze extracellular neural recordings, att...
AbstractTo study the electrophysiological properties of neuronal networks, in vitro studies based on...
Understanding neural functions requires knowledge from analysing electrophysiological data. The proc...
Spike sorting is a class of techniques used in the analysis of electrophysiological data. Studying t...
Neurons communicate through electrophysiological signals, which may be recorded using electrodes ins...
Spike sorting is a crucial step to extract information from extracellular recordings. With new recor...
BACKGROUND: Understanding how neurons contribute to perception, motor functions and cognition req...
We present neural spike sorting when the signal-to-noise ratio (SNR) is close to 0 dB. The use of no...
Despite many neuroscientific breakthroughs, it remains largely unknown how brain activity supports c...
Artificial neural network (ANN) models are able to predict future events based on current data. The ...
Simultaneous recordings of multiple neuron activities with multi-channel extracellular electrodes ar...
Abstract — Spike sorting is often required for analyzing neu-ral recordings to isolate the activity ...