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首页> 外文期刊>Journal of neural engineering >SpikeDeeptector: a deep-learning based method for detection of neural spiking activity
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SpikeDeeptector: a deep-learning based method for detection of neural spiking activity

机译:SpikeDeeptector:一种基于深度学习的神经尖峰活动检测方法

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摘要

Objective. In electrophysiology, microelectrodes are the primary source for recording neural data (single unit activity). These microelectrodes can be implanted individually or in the form of arrays containing dozens to hundreds of channels. Recordings of some channels contain neural activity, which are often contaminated with noise. Another fraction of channels does not record any neural data, but only noise. By noise, we mean physiological activities unrelated to spiking, including technical artifacts and neural activities of neurons that are too far away from the electrode to be usefully processed. For further analysis, an automatic identification and continuous tracking of channels containing neural data is of great significance for many applications, e.g. automated selection of neural channels during online and offline spike sorting. Automated spike detection and sorting is also critical for online decoding in brain-computer interface (BCI) applications, in which only simple threshold crossing events are often considered for feature extraction. To our knowledge, there is no method that can universally and automatically identify channels containing neural data. In this study, we aim to identify and track channels containing neural data from implanted electrodes, automatically and more importantly universally. By universally, we mean across different recording technologies, different subjects and different brain areas. Approach. We propose a novel algorithm based on a new way of feature vector extraction and a deep learning method, which we call SpikeDeeptector. SpikeDeeptector considers a batch of waveforms to construct a single feature vector and enables contextual learning. The feature vectors are then fed to a deep learning method, which learns contextualized, temporal and spatial patterns, and classifies them as channels containing neural spike data or only noise. Main results. We trained the model of SpikeDeeptector on data recorded from a single tetraplegic patient with two Utah arrays implanted in different areas of the brain. The trained model was then evaluated on data collected from six epileptic patients implanted with depth electrodes, unseen data from the tetraplegic patient and data from another tetraplegic patient implanted with two Utah arrays. The cumulative evaluation accuracy was 97.20% on 1.56 million hand labeled test inputs. Significance. The results demonstrate that SpikeDeeptector generalizes not only to the new data, but also to different brain areas, subjects, and electrode types not used for training.
机译:目的。在电生理学中,微电极是记录神经数据(单个单位活动)的主要来源。这些微电极可以单独植入,也可以以包含数十到数百个通道的阵列形式植入。一些通道的记录包含神经活动,通常被噪音污染。另一部分通道不记录任何神经数据,而仅记录噪声。噪声是指与尖峰无关的生理活动,包括技术伪像和神经元的神经活动,这些活动离电极太远,无法进行有效处理。为了进一步分析,包含神经数据的通道的自动识别和连续跟踪对于许多应用具有重要意义。在线和离线加标过程中自动选择神经通道。自动化尖峰检测和排序对于在脑机接口(BCI)应用程序中进行在线解码也很关键,在该应用程序中,通常仅考虑简单的阈值穿越事件进行特征提取。据我们所知,没有一种方法能够普遍,自动地识别包含神经数据的通道。在这项研究中,我们的目标是自动,更重要的是识别并跟踪包含来自植入电极的神经数据的通道。一般而言,我们是指跨不同的录音技术,不同的主题和不同的大脑区域。方法。我们提出了一种基于特征向量提取和深度学习方法的新算法,我们称之为SpikeDeeptector。 SpikeDeeptector考虑使用一批波形来构造单个特征向量,并启用上下文学习。然后将特征向量提供给深度学习方法,该方法学习上下文化的时间和空间模式,并将其分类为包含神经峰值数据或仅包含噪声的通道。主要结果。我们从单个四肢瘫痪患者记录的数据中训练了SpikeDeeptector模型,该患者在大脑的不同区域植入了两个犹他州阵列。然后,根据从六名植入深度电极的癫痫患者中收集的数据,来自四肢瘫痪患者的看不见的数据以及另一名植入了两个犹他州阵列的四肢瘫痪患者的数据对训练后的模型进行评估。在156万个手动标记的测试输入上的累计评估准确性为97.20%。意义。结果表明,SpikeDeeptector不仅将其推广到新数据,而且还将其推广到不用于训练的不同大脑区域,受试者和电极类型。

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