...
首页> 外文期刊>Journal of Neuroscience Methods >SigMate: A Matlab-based automated tool for extracellular neuronal signal processing and analysis
【24h】

SigMate: A Matlab-based automated tool for extracellular neuronal signal processing and analysis

机译:SigMate:基于Matlab的用于细胞外神经元信号处理和分析的自动化工具

获取原文
获取原文并翻译 | 示例
           

摘要

Rapid advances in neuronal probe technology for multisite recording of brain activity have posed a significant challenge to neuroscientists for processing and analyzing the recorded signals. To be able to infer meaningful conclusions quickly and accurately from large datasets, automated and sophisticated signal processing and analysis tools are required. This paper presents a Matlab-based novel tool, " SigMate" , incorporating standard methods to analyze spikes and EEG signals, and in-house solutions for local field potentials (LFPs) analysis. Available modules at present are - 1. In-house developed algorithms for: data display (2D and 3D), file operations (file splitting, file concatenation, and file column rearranging), baseline correction, slow stimulus artifact removal, noise characterization and signal quality assessment, current source density (CSD) analysis, latency estimation from LFPs and CSDs, determination of cortical layer activation order using LFPs and CSDs, and single LFP clustering; 2. Existing modules: spike detection, sorting and spike train analysis, and EEG signal analysis. SigMate has the flexibility of analyzing multichannel signals as well as signals from multiple recording sources. The in- house developed tools for LFP analysis have been extensively tested with signals recorded using standard extracellular recording electrode, and planar and implantable multi transistor array (MTA) based neural probes. SigMate will be disseminated shortly to the neuroscience community under the open-source GNU-General Public License.
机译:用于大脑活动多部位记录的神经元探针技术的飞速发展,对神经科学家处理和分析记录的信号提出了重大挑战。为了能够从大型数据集中快速,准确地推断出有意义的结论,需要自动化和复杂的信号处理和分析工具。本文介绍了一个基于Matlab的新颖工具“ SigMate”,它结合了用于分析尖峰和EEG信号的标准方法,以及用于局部场电势(LFP)分析的内部解决方案。当前可用的模块有:1.内部开发的算法,用于:数据显示(2D和3D),文件操作(文件拆分,文件串联和文件列重新排列),基线校正,缓慢刺激伪影去除,噪声表征和信号质量评估,电流源密度(CSD)分析,来自LFP和CSD的等待时间估计,使用LFP和CSD确定皮层激活顺序以及单个LFP聚类; 2.现有模块:峰值检测,排序和峰值序列分析以及EEG信号分析。 SigMate具有分析多通道信号以及来自多个记录源的信号的灵活性。内部开发的用于LFP分析的工具已通过使用标准细胞外记录电极以及基于平面和可植入多晶体管阵列(MTA)的神经探针记录的信号进行了广泛测试。 SigMate将在开源GNU-General Public License下不久向神经科学界分发。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号