合成数据驱动的重叠神经尖峰排序:从重叠尖峰中分解隐藏尖峰。

IF 3.3 3区 医学 Q2 NEUROSCIENCES
Min-Ki Kim, Sung-Phil Kim, Jeong-Woo Sohn
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引用次数: 0

摘要

通过感知电极尖端周围的神经元活动,从细胞外记录中提取尖峰,对揭示神经编码的复杂性及其在不同神经科学学科中的意义至关重要。然而,重叠尖峰的存在,源于神经元同时放电或在短延迟内放电,被忽视了,因为由于缺乏基本事实而难以识别单个神经元。在这项研究中,我们提出了一种方法来识别重叠的尖峰在细胞外记录和恢复隐藏的尖峰分解它们。我们通过一系列步骤,包括判别子空间学习和隔离森林算法,对尖峰波形模板进行初步估计。通过利用这些估计的模板,我们生成合成尖峰,并使用它们的特征组件训练分类器,从观察到的尖峰数据中识别重叠的尖峰。然后利用粒子群优化算法将识别出的重叠尖峰分解为单个隐藏尖峰。使用我们生成的模拟数据集对所提出的方法进行测试的结果表明,在重叠尖峰分类器中使用合成尖峰可以准确地识别出检测到的尖峰之间的重叠尖峰(最高F1分数为0.88)。此外,该方法可以通过分解重叠的峰值并将其重新分配到不同的簇中来推断隐藏峰值之间的同步。这项研究通过准确识别重叠的尖峰来推进尖峰分类,为神经活动分析提供更精确的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic data-driven overlapped neural spikes sorting: decomposing hidden spikes from overlapping spikes.

Sorting spikes from extracellular recordings, obtained by sensing neuronal activity around an electrode tip, is essential for unravelling the complexities of neural coding and its implications across diverse neuroscientific disciplines. However, the presence of overlapping spikes, originating from neurons firing simultaneously or within a short delay, has been overlooked because of the difficulty in identifying individual neurons due to the lack of ground truth. In this study, we propose a method to identify overlapping spikes in extracellular recordings and to recover hidden spikes by decomposing them. We initially estimate spike waveform templates through a series of steps, including discriminative subspace learning and the isolation forest algorithm. By leveraging these estimated templates, we generate synthetic spikes and train a classifier using their feature components to identify overlapping spikes from observed spike data. The identified overlapping spikes are then decomposed into individual hidden spikes using a particle swarm optimization. Results from the testing of the proposed approach, using the simulation dataset we generated, demonstrated that employing synthetic spikes in the overlapping spike classifier accurately identifies overlapping spikes among the detected ones (the maximum F1 score of 0.88). Additionally, the approach can infer the synchronization between hidden spikes by decomposing the overlapped spikes and reallocating them into distinct clusters. This study advances spike sorting by accurately identifying overlapping spikes, providing a more precise tool for neural activity analysis.

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来源期刊
Molecular Brain
Molecular Brain NEUROSCIENCES-
CiteScore
7.30
自引率
0.00%
发文量
97
审稿时长
>12 weeks
期刊介绍: Molecular Brain is an open access, peer-reviewed journal that considers manuscripts on all aspects of studies on the nervous system at the molecular, cellular, and systems level providing a forum for scientists to communicate their findings. Molecular brain research is a rapidly expanding research field in which integrative approaches at the genetic, molecular, cellular and synaptic levels yield key information about the physiological and pathological brain. These studies involve the use of a wide range of modern techniques in molecular biology, genomics, proteomics, imaging and electrophysiology.
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