Deep learning-based spike sorting: a survey.

Luca M Meyer, Majid Zamani, János Rokai, Andreas Demosthenous
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Abstract

Objective.Deep learning is increasingly permeating neuroscience, leading to a rise in signal-processing applications for extracellular recordings. These signals capture the activity of small neuronal populations, necessitating 'spike sorting' to assign action potentials (spikes) to their underlying neurons. With the rise in publications delving into new methodologies and techniques for deep learning-based spike sorting, it is crucial to synthesise these findings critically. This survey provides an in-depth evaluation of the approaches, methodologies and outcomes presented in recent articles, shedding light on the current state-of-the-art.Approach.Twenty-four articles published until December 2023 on deep learning-based spike sorting have been examined. The proposed methods are divided into three sub-problems of spike sorting: spike detection, feature extraction and classification. Moreover, integrated systems, i.e. models that detect spikes and extract features or do classification within a single network, are included.Main results.Although most algorithms have been developed for single-channel recordings, models utilising multi-channel data have already shown promising results, with efficient hardware implementations running quantised models on application-specific integrated circuits and field programmable gate arrays. Convolutional neural networks have been used extensively for spike detection and classification as the data can be processed spatiotemporally while maintaining low-parameter models and increasing generalisation and efficiency. Autoencoders have been mainly utilised for dimensionality reduction, enabling subsequent clustering with standard methods. Also, integrated systems have shown great potential in solving the spike sorting problem from end to end.Significance.This survey explores recent articles on deep learning-based spike sorting and highlights the capabilities of deep neural networks in overcoming associated challenges, but also highlights potential biases of certain models. Serving as a resource for both newcomers and seasoned researchers in the field, this work provides insights into the latest advancements and may inspire future model development.

基于深度学习的尖峰排序:一项调查。
目的:深度学习正日益渗透到神经科学领域,导致细胞外记录信号处理应用的增加。这些信号捕获了小神经元群的活动,需要进行 "尖峰分类",以便将动作电位(尖峰)分配给其下层神经元。随着深入研究基于深度学习的尖峰排序新方法和新技术的论文不断增加,对这些研究成果进行批判性总结至关重要。本调查对近期文章中提出的方法、方法论和结果进行了深入评估,揭示了当前的先进水平。方法:研究了截至 2023 年 12 月发表的 24 篇关于基于深度学习的尖峰排序的文章。所提出的方法分为尖峰分类的三个子问题:尖峰检测、特征提取和分类。主要结果:虽然大多数算法都是针对单通道记录开发的,但利用多通道数据的模型已经显示出良好的效果,在 ASIC 和 FPGA 上运行量化模型的硬件实现效率很高。卷积神经网络已被广泛用于尖峰检测和分类,因为在保持低参数模型、提高泛化和效率的同时,还能对数据进行时空处理。自动编码器主要用于降低维度,以便随后使用标准方法进行聚类。此外,集成系统在从头到尾解决尖峰排序问题方面显示出巨大潜力。意义:本调查探讨了近期有关基于深度学习的尖峰排序的文章,强调了深度神经网络在克服相关挑战方面的能力,同时也强调了某些模型的潜在偏差。作为该领域新人和经验丰富的研究人员的资源,这项工作提供了对最新进展的见解,并可能激励未来的模型开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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