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Decomposition of retinal ganglion cell electrical images for cell type and functional inference.

Publication ,  Journal Article
Wu, EG; Rudzite, AM; Bohlen, MO; Li, PH; Kling, A; Cooler, S; Rhoades, C; Brackbill, N; Gogliettino, AR; Shah, NP; Madugula, SS; Sher, A ...
Published in: bioRxiv
November 8, 2023

Identifying neuronal cell types and their biophysical properties based on their extracellular electrical features is a major challenge for experimental neuroscience and the development of high-resolution brain-machine interfaces. One example is identification of retinal ganglion cell (RGC) types and their visual response properties, which is fundamental for developing future electronic implants that can restore vision. The electrical image (EI) of a RGC, or the mean spatio-temporal voltage footprint of its recorded spikes on a high-density electrode array, contains substantial information about its anatomical, morphological, and functional properties. However, the analysis of these properties is complex because of the high-dimensional nature of the EI. We present a novel optimization-based algorithm to decompose electrical image into a low-dimensional, biophysically-based representation: the temporally-shifted superposition of three learned basis waveforms corresponding to spike waveforms produced in the somatic, dendritic and axonal cellular compartments. Large-scale multi-electrode recordings from the macaque retina were used to test the effectiveness of the decomposition. The decomposition accurately localized the somatic and dendritic compartments of the cell. The imputed dendritic fields of RGCs correctly predicted the location and shape of their visual receptive fields. The inferred waveform amplitudes and shapes accurately identified the four major primate RGC types (ON and OFF midget and parasol cells), a substantial advance. Together, these findings may contribute to more accurate inference of RGC types and their original light responses in the degenerated retina, with possible implications for other electrical imaging applications.

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Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

November 8, 2023

Location

United States
 

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Wu, E. G., Rudzite, A. M., Bohlen, M. O., Li, P. H., Kling, A., Cooler, S., … Chichilnisky, E. J. (2023). Decomposition of retinal ganglion cell electrical images for cell type and functional inference. BioRxiv. https://doi.org/10.1101/2023.11.06.565889
Wu, Eric G., Andra M. Rudzite, Martin O. Bohlen, Peter H. Li, Alexandra Kling, Sam Cooler, Colleen Rhoades, et al. “Decomposition of retinal ganglion cell electrical images for cell type and functional inference.BioRxiv, November 8, 2023. https://doi.org/10.1101/2023.11.06.565889.
Wu EG, Rudzite AM, Bohlen MO, Li PH, Kling A, Cooler S, et al. Decomposition of retinal ganglion cell electrical images for cell type and functional inference. bioRxiv. 2023 Nov 8;
Wu, Eric G., et al. “Decomposition of retinal ganglion cell electrical images for cell type and functional inference.BioRxiv, Nov. 2023. Pubmed, doi:10.1101/2023.11.06.565889.
Wu EG, Rudzite AM, Bohlen MO, Li PH, Kling A, Cooler S, Rhoades C, Brackbill N, Gogliettino AR, Shah NP, Madugula SS, Sher A, Litke AM, Field GD, Chichilnisky EJ. Decomposition of retinal ganglion cell electrical images for cell type and functional inference. bioRxiv. 2023 Nov 8;

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

November 8, 2023

Location

United States