An Adaptive Contrastive Learning Model for Spike Sorting
- URL: http://arxiv.org/abs/2205.11914v1
- Date: Tue, 24 May 2022 09:18:46 GMT
- Title: An Adaptive Contrastive Learning Model for Spike Sorting
- Authors: Lang Qian, Shengjie Zheng, Chunshan Deng, Cheng Yang, Xiaojian Li
- Abstract summary: In neuroscience research, it is important to separate out the activity of individual neurons.
With the development of large-scale silicon technology, artificially interpreting and labeling spikes is becoming increasingly impractical.
We propose a novel modeling framework that learns representations from spikes through contrastive learning.
- Score: 12.043679000694258
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Brain-computer interfaces (BCIs), is ways for electronic devices to
communicate directly with the brain. For most medical-type brain-computer
interface tasks, the activity of multiple units of neurons or local field
potentials is sufficient for decoding. But for BCIs used in neuroscience
research, it is important to separate out the activity of individual neurons.
With the development of large-scale silicon technology and the increasing
number of probe channels, artificially interpreting and labeling spikes is
becoming increasingly impractical. In this paper, we propose a novel modeling
framework: Adaptive Contrastive Learning Model that learns representations from
spikes through contrastive learning based on the maximizing mutual information
loss function as a theoretical basis. Based on the fact that data with similar
features share the same labels whether they are multi-classified or
binary-classified. With this theoretical support, we simplify the
multi-classification problem into multiple binary-classification, improving
both the accuracy and the runtime efficiency. Moreover, we also introduce a
series of enhancements for the spikes, while solving the problem that the
classification effect is affected because of the overlapping spikes.
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