Joshua J Strohl, Joseph T Gallagher, Pedro N Gómez, Joshua M Glynn, Patricio T Huerta
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As neuroscientists add multiple electrodes to their probes, the high-density devices can record hundreds to thousands of neurons simultaneously, making the manual spike sorting process increasingly difficult. The advent of automated spike sorting software has offered a compelling solution to this issue and, in this study, we present a simple-to-execute framework for running an automated spike sorter.</p><p><strong>Methods: </strong>Tetrode recordings of freely-moving mice are obtained from the CA1 region of the hippocampus as they navigate a linear track. Tetrode recordings are also acquired from the prelimbic cortex, a region of the medial prefrontal cortex, while the mice are tested in a T maze. All animals are implanted with custom-designed, 3D-printed microdrives that carry 16 electrodes, which are bundled in a 4-tetrode geometry.</p><p><strong>Results: </strong>We provide an overview of a framework for analyzing single-unit data in which we have concatenated the acquisition system (Cheetah, Neuralynx) with analytical software (MATLAB) and an automated spike sorting pipeline (MountainSort). We give precise instructions on how to implement the different steps of the framework, as well as explanations of our design logic. We validate this framework by comparing manually-sorted spikes against automatically-sorted spikes, using neural recordings of the hippocampus and prelimbic cortex in freely-moving mice.</p><p><strong>Conclusions: </strong>We have efficiently integrated the MountainSort spike sorter with Neuralynx-acquired neural recordings. Our framework is easy to implement and provides a high-throughput solution. We predict that within the broad field of bioelectronic medicine, those teams that incorporate high-density neural recording devices to their armamentarium might find our framework quite valuable as they expand their analytical footprint.</p>","PeriodicalId":72363,"journal":{"name":"Bioelectronic medicine","volume":" ","pages":"17"},"PeriodicalIF":0.0000,"publicationDate":"2021-11-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8609830/pdf/","citationCount":"0","resultStr":"{\"title\":\"Framework for automated sorting of neural spikes from Neuralynx-acquired tetrode recordings in freely-moving mice.\",\"authors\":\"Joshua J Strohl, Joseph T Gallagher, Pedro N Gómez, Joshua M Glynn, Patricio T Huerta\",\"doi\":\"10.1186/s42234-021-00079-3\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Extracellular recording represents a crucial electrophysiological technique in neuroscience for studying the activity of single neurons and neuronal populations. The electrodes capture voltage traces that, with the help of analytical tools, reveal action potentials ('spikes') as well as local field potentials. The process of spike sorting is used for the extraction of action potentials generated by individual neurons. Until recently, spike sorting was performed with manual techniques, which are laborious and unreliable due to inherent operator bias. As neuroscientists add multiple electrodes to their probes, the high-density devices can record hundreds to thousands of neurons simultaneously, making the manual spike sorting process increasingly difficult. The advent of automated spike sorting software has offered a compelling solution to this issue and, in this study, we present a simple-to-execute framework for running an automated spike sorter.</p><p><strong>Methods: </strong>Tetrode recordings of freely-moving mice are obtained from the CA1 region of the hippocampus as they navigate a linear track. 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We validate this framework by comparing manually-sorted spikes against automatically-sorted spikes, using neural recordings of the hippocampus and prelimbic cortex in freely-moving mice.</p><p><strong>Conclusions: </strong>We have efficiently integrated the MountainSort spike sorter with Neuralynx-acquired neural recordings. Our framework is easy to implement and provides a high-throughput solution. 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引用次数: 0
摘要
背景:细胞外记录是神经科学中研究单个神经元和神经元群活动的重要电生理技术。电极捕捉电压轨迹,借助分析工具揭示动作电位("尖峰")和局部场电位。尖峰分类过程用于提取单个神经元产生的动作电位。直到最近,尖峰分类都是通过人工技术进行的,由于操作者固有的偏差,这种技术既费力又不可靠。随着神经科学家在探针上添加多个电极,高密度设备可同时记录数百到数千个神经元,这使得人工尖峰分类过程变得越来越困难。自动尖峰分类软件的出现为这一问题提供了令人信服的解决方案,在本研究中,我们介绍了一种运行自动尖峰分类器的简单易执行框架:方法:当小鼠在线性轨道上导航时,从海马 CA1 区获取自由移动小鼠的四极管记录。在小鼠接受 T 型迷宫测试时,还从内侧前额叶皮层的前边缘皮层获取四极管记录。所有动物都植入了定制设计的 3D 打印微型驱动器,该驱动器可携带 16 个电极,这些电极以 4 四电极的几何形状捆绑在一起:我们概述了分析单单位数据的框架,其中我们将采集系统(Cheetah,Neuralynx)与分析软件(MATLAB)和自动尖峰排序管道(MountainSort)结合在一起。我们对如何实施该框架的不同步骤给出了精确的说明,并解释了我们的设计逻辑。我们利用自由移动小鼠海马和前边缘皮层的神经记录,比较了手动排序的尖峰和自动排序的尖峰,从而验证了这一框架:我们将 MountainSort 尖峰分类器与 Neuralynx 获取的神经记录进行了有效整合。我们的框架易于实施,并能提供高通量的解决方案。我们预测,在生物电子医学的广阔领域中,那些将高密度神经记录设备纳入其武器库的团队可能会发现我们的框架非常有价值,因为他们扩大了自己的分析范围。
Framework for automated sorting of neural spikes from Neuralynx-acquired tetrode recordings in freely-moving mice.
Background: Extracellular recording represents a crucial electrophysiological technique in neuroscience for studying the activity of single neurons and neuronal populations. The electrodes capture voltage traces that, with the help of analytical tools, reveal action potentials ('spikes') as well as local field potentials. The process of spike sorting is used for the extraction of action potentials generated by individual neurons. Until recently, spike sorting was performed with manual techniques, which are laborious and unreliable due to inherent operator bias. As neuroscientists add multiple electrodes to their probes, the high-density devices can record hundreds to thousands of neurons simultaneously, making the manual spike sorting process increasingly difficult. The advent of automated spike sorting software has offered a compelling solution to this issue and, in this study, we present a simple-to-execute framework for running an automated spike sorter.
Methods: Tetrode recordings of freely-moving mice are obtained from the CA1 region of the hippocampus as they navigate a linear track. Tetrode recordings are also acquired from the prelimbic cortex, a region of the medial prefrontal cortex, while the mice are tested in a T maze. All animals are implanted with custom-designed, 3D-printed microdrives that carry 16 electrodes, which are bundled in a 4-tetrode geometry.
Results: We provide an overview of a framework for analyzing single-unit data in which we have concatenated the acquisition system (Cheetah, Neuralynx) with analytical software (MATLAB) and an automated spike sorting pipeline (MountainSort). We give precise instructions on how to implement the different steps of the framework, as well as explanations of our design logic. We validate this framework by comparing manually-sorted spikes against automatically-sorted spikes, using neural recordings of the hippocampus and prelimbic cortex in freely-moving mice.
Conclusions: We have efficiently integrated the MountainSort spike sorter with Neuralynx-acquired neural recordings. Our framework is easy to implement and provides a high-throughput solution. We predict that within the broad field of bioelectronic medicine, those teams that incorporate high-density neural recording devices to their armamentarium might find our framework quite valuable as they expand their analytical footprint.