Paper
3 May 2011 The use of least squares lattice algorithm in the parameterization and sorting of action potentials signals
José N. S. Sarinho Filho, Marcio Eisencraft, Ricardo Suyama, Erich T. Fonoff, Maria D. Miranda
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Abstract
The understanding of neuronal function under the action of a certain stimulus can be facilitated using techniques to distinguish the potential action from different neurons. Thus, from simultaneous recording of multiple neurons one can determine the firing patterns of each of them. Usually these techniques are implemented in three stages. From raw electrical potentials recorded using an intracranial electrode, spikes are detected, then parameterized and finally sorted, attributing every single spike observed to a particular neuron. Recently, it was proposed an on-line sorting method based on the noise level. Nevertheless, sorting is done directly based on the raw samples. In this paper we introduce an alternative way using the modified Least Squares algorithm based on the priori error with error feedback to parameterize the raw signals before classification. Preliminary simulations results show that using parameters provides performance near to results where the sorting is done directly based on the raw samples.
© (2011) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
José N. S. Sarinho Filho, Marcio Eisencraft, Ricardo Suyama, Erich T. Fonoff, and Maria D. Miranda "The use of least squares lattice algorithm in the parameterization and sorting of action potentials signals", Proc. SPIE 8068, Bioelectronics, Biomedical, and Bioinspired Systems V; and Nanotechnology V, 80680Q (3 May 2011); https://doi.org/10.1117/12.886950
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Cited by 1 scholarly publication.
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KEYWORDS
Neurons

Electrodes

Signal to noise ratio

Action potentials

Brain

Digital filtering

Linear filtering

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