SpikeSift: a computationally efficient and drift-resilient spike sorting algorithm.

IF 3.8
V Georgiadis, P C Petrantonakis
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Abstract

Objective.Spike sorting is a fundamental step in analysing extracellular recordings, enabling the isolation of single-neuron activity. However, it remains a challenging problem because extracellular traces mix overlapping spikes from neighbouring cells and are marred by recording instabilities such as electrode drift. Numerous algorithms have been proposed, yet many struggle to balance accuracy and computational efficiency, limiting their practicality for today's large-scale datasets.Approach.In response, we introduce SpikeSift, a spike-sorting algorithm expressly designed to mitigate drift while running on standard CPUs. SpikeSift (i) partitions long recordings into shorter, relatively stationary segments, (ii) carries out spike detection and clustering simultaneously through an iterative detect-and-subtract scheme within each segment, and (iii) preserves neuronal identity across segments via a fast template-alignment stage that dispenses with continuous trajectory estimation.Main results.Extensive validation on paired intracellularly validated datasets and on biophysically realistic MEArec simulations-covering elevated noise, diverse drift profiles, ultra-short recordings and bursting activity-demonstrates that SpikeSift matches or exceeds the accuracy of state-of-the-art methods while completing sorting an order of magnitude faster on a single desktop core.Significance.The combination of high fidelity, drift resilience, and modest computational demand renders SpikeSift broadly accessible while preserving data quality for downstream neurophysiological analysis.

SpikeSift:一种计算效率高且具有漂移弹性的尖峰排序算法。
目的:脉冲分选是分析细胞外记录的基本步骤,使单个神经元活动的隔离成为可能。然而,这仍然是一个具有挑战性的问题,因为细胞外的痕迹混合了来自邻近细胞的重叠尖峰,并被记录不稳定性(如电极漂移)所破坏。已经提出了许多算法,但许多算法难以平衡准确性和计算效率,限制了它们在当今大规模数据集中的实用性。方法:作为回应,我们引入了SpikeSift,这是一种专门设计用于在标准cpu上运行时减轻漂移的峰值排序算法。SpikeSift (i)将长记录划分为较短的、相对平稳的段,(ii)通过每个段内的迭代检测和减去方案进行峰值检测和聚类同时进行。(iii) ;通过快速的模板对齐阶段,省去了连续的 ;轨迹估计,保留了各段之间的神经元身份。主要结果:在配对的细胞内验证数据集和生物物理逼真的MEArec模拟上进行了广泛的验证,包括升高的噪声、不同的漂移剖面、超短记录和爆发活动,表明SpikeSift匹配或超过了最先进方法的精度,同时在单个桌面核心上完成排序的速度更快。意义:高保真度、漂移弹性和适度计算需求的结合使SpikeSift广泛可用,同时为下游神经生理分析保留数据质量。
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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