Advancing Spike Sorting Through Gradient‐Based Preprocessing and Nonlinear Reduction With Agglomerative Clustering

ABSTRACT Background Spike sorting is the process of separating electrical events produced by individual neurons in the nervous system, known as “spikes.” Accurate spike sorting is vital because it significantly impacts the reliability of all future analyses. Although several semi‐automated and fully...

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Bibliographic Details
Main Authors: Mohammad Amin Lotfi, Fatemeh Zareayan Jahromy, Mohammad Reza Daliri
Format: Article
Language:English
Published: Wiley 2025-07-01
Series:Brain and Behavior
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Online Access:https://doi.org/10.1002/brb3.70650
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Summary:ABSTRACT Background Spike sorting is the process of separating electrical events produced by individual neurons in the nervous system, known as “spikes.” Accurate spike sorting is vital because it significantly impacts the reliability of all future analyses. Although several semi‐automated and fully automated spike‐sorting algorithms have been developed, their classification accuracy often proves insufficient. This has led researchers to resort to manual sorting, despite its time‐consuming and labor‐intensive nature. In certain conditions and for specific neuron populations, manual sorting can also be inefficient due to the presence of visually indistinguishable similarities between spikes. This underscores the necessity for the development of fully automated spike‐sorting methods capable of achieving high accuracy. Method Unsupervised mathematical methods in spike sorting possess an advantage over supervised machine learning and deep learning models as they require no training and involve lower computational costs. The spike‐sorting methodology comprises two key steps: data preprocessing and spike classification. In this proposed method, a mathematical technique for data preprocessing is introduced, and nonlinear transformations are incorporated to optimally extract features from spike waveforms. The objective is to extract highly informative features that effectively separate clusters by harnessing advanced transforms, specifically uniform manifold approximation and projection (UMAP) and spectral embedding. The feature extraction process is centered around capturing inherent variations in spike waveforms, assuming that strong signal correlations enable the extraction of optimal features. Finally, a density‐based clustering algorithm is employed for spike sorting. Results On Dataset1, GSA‐Spike and GUA‐Spike attained 100% accuracy for non‐overlapping spikes and 99.47% (GSA‐Spike) and 99.21% (GUA‐Spike) accuracy for overlapping spikes on the same dataset. In the challenging portion of the dataset, our models demonstrated a 12% improvement in accuracy. Furthermore, in the synthetic data, the efficacy of our proposed models was evident in both unit detection and spike clustering. Conclusion The findings of our research demonstrate unparalleled accuracy, surpassing the performance of other state‐of‐the‐art methods.
ISSN:2162-3279