Fast Temporal Decoding from Large-Scale Neural Recordings in Monkey Visual Cortex

Abstract

With new developments in electrode and nanoscale technology, a large-scale multi-electrode cortical neural prosthesis with thousands of stimulation and recording electrodes is becoming viable. Such a system will be useful as both a neuroscience tool and a neuroprosthesis. In the context of a visual neuroprosthesis, a rudimentary form of vision can be presented to the visually impaired by stimulating the electrodes to induce phosphene patterns. Additional feedback in a closed-loop system can be provided by rapid decoding of recorded responses from relevant brain areas. This work looks at temporal decoding results from a dataset of 1024 electrode recordings collected from the V1 and V4 areas of a primate performing a visual discrimination task. By applying deep learning models, the peak decoding accuracy from the V1 data can be obtained by a moving time window of 150 ms across the 800 ms phase of stimulus presentation. The peak accuracy from the V4 data is achieved at a larger latency and by using a larger moving time window of 300 ms. Decoding using a running window of 30 ms on the V1 data showed only a 4\% drop in peak accuracy. We also determined the robustness of the decoder to electrode failure by choosing a subset of important electrodes using a previously reported algorithm for scaling the importance of inputs to a network. Results show that the accuracy of 91.1\% from a network trained on the selected subset of 256 electrodes is close to the accuracy of 91.7\% from using all 1024 electrodes.

Cite

Text

Hadorn et al. "Fast Temporal Decoding from Large-Scale Neural Recordings in Monkey Visual Cortex." NeurIPS 2022 Workshops: SVRHM, 2022.

Markdown

[Hadorn et al. "Fast Temporal Decoding from Large-Scale Neural Recordings in Monkey Visual Cortex." NeurIPS 2022 Workshops: SVRHM, 2022.](https://mlanthology.org/neuripsw/2022/hadorn2022neuripsw-fast/)

BibTeX

@inproceedings{hadorn2022neuripsw-fast,
  title     = {{Fast Temporal Decoding from Large-Scale Neural Recordings in Monkey Visual Cortex}},
  author    = {Hadorn, Jerome and Wang, Zuowen and Rueckauer, Bodo and Chen, Xing and Roelfsema, Pieter R. and Liu, Shih-Chii},
  booktitle = {NeurIPS 2022 Workshops: SVRHM},
  year      = {2022},
  url       = {https://mlanthology.org/neuripsw/2022/hadorn2022neuripsw-fast/}
}