Szczegóły publikacji

Opis bibliograficzny

Efficient characterization of electrically evoked responses for neural interfaces / Nishal P. Shah, Sasidhar Madugula, Paweł HOTTOWY, Alexander Sher, Alan Litke, Liam Paninski, E. J. Chichilnisky // W: NeurIPS : 33rd conference on Neural Information Processing Systems : [Vancouver, Canada, December 08-14, 2019] / eds. H. Wallach, [et al.]. — [USA : Neural Information Processing Systems], [2019]. — (Advances in Neural Information Processing Systems ; ISSN 1049-5258 ; vol. 32). — S. 1–15. — Bibliogr. s. 9–11, Abstr.


Autorzy (7)

  • Shah Nishal P.
  • Madugula Sasidhar S.
  • AGHHottowy Paweł
  • Sher Alexander
  • Litke Alan
  • Paninski Liam
  • Chichilnisky E. J.

Dane bibliometryczne

ID BaDAP129512
Data dodania do BaDAP2020-09-14
Rok publikacji2019
Typ publikacjimateriały konferencyjne (aut.)
Otwarty dostęptak
KonferencjaConference on Neural Information Processing Systems
Czasopismo/seriaAdvances in Neural Information Processing Systems

Abstract

Future neural interfaces will read and write population neural activity with high spatial and temporal resolution, for diverse applications. For example, an artificial retina may restore vision to the blind by electrically stimulating retinal ganglion cells. Such devices must tune their function, based on stimulating and recording, to match the function of the circuit. However, existing methods for characterizing the neural interface scale poorly with the number of electrodes, limiting their practical applicability. This work tests the idea that using prior information from previous experiments and closed-loop measurements may greatly increase the efficiency of the neural interface. Large-scale, high-density electrical recording and stimulation in primate retina were used as a lab prototype for an artificial retina. Three key calibration steps were optimized: spike sorting in the presence of stimulation artifacts, response modeling, and adaptive stimulation. For spike sorting, exploiting the similarity of electrical artifact across electrodes and experiments substantially reduced the number of required measurements. For response modeling, a joint model that captures the inverse relationship between recorded spike amplitude and electrical stimulation threshold from previously recorded retinas resulted in greater consistency and efficiency. For adaptive stimulation, choosing which electrodes to stimulate based on probability estimates from previous measurements improved efficiency. Similar improvements resulted from using either non-adaptive stimulation with a joint model across cells, or adaptive stimulation with an independent model for each cell. Finally, image reconstruction revealed that these improvements may translate to improved performance of an artificial retina.

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