NCAIApr 16, 2024

Information encoding and decoding in in-vitro neural networks on micro electrode arrays through stimulation timing

arXiv:2404.10946v13 citationsh-index: 24
Originality Incremental advance
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This addresses the problem of improving computational interfaces for in-vitro biological neural networks, representing an incremental advance in optimizing encoding and decoding schemes.

The study tackled the challenge of encoding and decoding data in in-vitro neural networks by exploring stimulation timing as an encoding method, finding that timings between 36 and 436ms are optimal and that different readout parameters work best at various parts of the spike response.

A primary challenge in utilizing in-vitro biological neural networks for computations is finding good encoding and decoding schemes for inputting and decoding data to and from the networks. Furthermore, identifying the optimal parameter settings for a given combination of encoding and decoding schemes adds additional complexity to this challenge. In this study we explore stimulation timing as an encoding method, i.e. we encode information as the delay between stimulation pulses and identify the bounds and acuity of stimulation timings which produce linearly separable spike responses. We also examine the optimal readout parameters for a linear decoder in the form of epoch length, time bin size and epoch offset. Our results suggest that stimulation timings between 36 and 436ms may be optimal for encoding and that different combinations of readout parameters may be optimal at different parts of the evoked spike response.

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