SPAINCJul 23, 2025

HuiduRep: A Robust Self-Supervised Framework for Learning Neural Representations from Extracellular Recordings

arXiv:2507.17224v22 citationsh-index: 2Has Code
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This work addresses a critical bottleneck in neuroscience for decoding brain activity at single-neuron resolution, offering a robust and generalizable solution for spike sorting.

The paper tackles the problem of spike sorting in extracellular recordings under low SNR, electrode drift, and cross-session variability by proposing HuiduRep, a robust self-supervised framework that integrates contrastive learning with a denoising autoencoder; it significantly outperforms state-of-the-art tools like KiloSort4 and MountainSort5 on accuracy and precision across diverse datasets.

Extracellular recordings are transient voltage fluctuations in the vicinity of neurons, serving as a fundamental modality in neuroscience for decoding brain activity at single-neuron resolution. Spike sorting, the process of attributing each detected spike to its corresponding neuron, is a pivotal step in brain sensing pipelines. However, it remains challenging under low signal-to-noise ratio (SNR), electrode drift, and cross-session variability. In this paper, we propose HuiduRep, a robust self-supervised representation learning framework that extracts discriminative and generalizable features from extracellular recordings. By integrating contrastive learning with a denoising autoencoder, HuiduRep learns latent representations robust to noise and drift. With HuiduRep, we develop a spike sorting pipeline that clusters spike representations without ground truth labels. Experiments on hybrid and real-world datasets demonstrate that HuiduRep achieves strong robustness. Furthermore, the pipeline significantly outperforms state-of-the-art tools such as KiloSort4 and MountainSort5 on accuracy and precision on diverse datasets. These findings demonstrate the potential of self-supervised spike representation learning as a foundational tool for robust and generalizable processing of extracellular recordings. Code is available at: https://github.com/IgarashiAkatuki/HuiduRep

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