Development and validation of a spike detection and classification algorithm aimed at implementation on hardware devices

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Abstract

Neurons cultured in vitro on MicroElectrode Array (MEA) devices connect to each other, forming a network. To study electrophysiological activity and long term plasticity effects, long period recording and spike sorter methods are needed. Therefore, on-line and real time analysis, optimization of memory use and data transmission rate improvement become necessary. We developed an algorithm for amplitude-threshold spikes detection, whose performances were verified with (a) statistical analysis on both simulated and real signal and (b) Big O Notation. Moreover, we developed a PCA-hierarchical classifier, evaluated on simulated and real signal. Finally we proposed a spike detection hardware design on FPGA, whose feasibility was verified in terms of CLBs number, memory occupation and temporal requirements; once realized, it will be able to execute on-line detection and real time waveform analysis, reducing data storage problems. © 2010 E. Biffi et al.

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Biffi, E., Ghezzi, D., Pedrocchi, A., & Ferrigno, G. (2010). Development and validation of a spike detection and classification algorithm aimed at implementation on hardware devices. Computational Intelligence and Neuroscience, 2010. https://doi.org/10.1155/2010/659050

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