Trevor S Smith, Maryam Abolfath-Beygi, Terence D Sanger, Simon F Giszter
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引用次数: 0
摘要
在这里,我们测试了随机动态算子(SDO),将其作为描述相对于尖峰或刺激事件的生理信号动态的新框架。SDO 是对目前用于神经分析的现有尖峰触发平均(STA)或刺激触发平均技术的自然扩展。它扩展了经典的 STA,涵盖了 STA 可能失效的状态依赖性和概率性反应。在模拟数据中,SDO 方法在识别状态依赖关系方面比 STA 更灵敏、更具体。我们对脊髓中间神经元电生理记录、单个运动单元和脊髓蛙后肢主要肌肉的肌肉肌电图(EMG)总量之间的相互作用进行了 SDO 分析测试。在预测与尖峰事件相关的目标信号行为时,SDO 框架的表现优于或与经典的尖峰触发平均方法相当。SDO 分析允许捕捉、分析和直观解释更复杂的尖峰信号关系。SDO 方法可应用于目前采用尖峰触发平均方法的不同兴趣范围,甚至更广,从单个神经元到粗大运动行为。我们预计,这种方法将在描述动态信号行为和揭示随机信号相对于离散事件时间的状态依赖关系方面发挥广泛的作用。 意义声明 作者在此介绍了新工具,并演示了使用一种新的概率和状态依赖技术进行数据分析,这种技术是对经典尖峰触发平均法--随机动态算子--的扩展和延伸。随机动态算子方法可将应用扩展到经典尖峰触发平均法失效的领域,捕捉尖峰相关性的更多信息,并在根据尖峰事件生成信号振幅预测时与尖峰触发平均法相匹配或优于尖峰触发平均法。本文提供了用于利用和解释随机动态算子方法的数据和代码包工具包,以及模拟和生理数据分析示例。预计该方法和相关工具包将在目前使用尖峰触发平均法进行分析的研究领域及其他领域发挥广泛作用。
A Stochastic Dynamic Operator Framework That Improves the Precision of Analysis and Prediction Relative to the Classical Spike-Triggered Average Method, Extending the Toolkit.
Here we test the stochastic dynamic operator (SDO) as a new framework for describing physiological signal dynamics relative to spiking or stimulus events. The SDO is a natural extension of existing spike-triggered average (STA) or stimulus-triggered average techniques currently used in neural analysis. It extends the classic STA to cover state-dependent and probabilistic responses where STA may fail. In simulated data, SDO methods were more sensitive and specific than the STA for identifying state-dependent relationships. We have tested SDO analysis for interactions between electrophysiological recordings of spinal interneurons, single motor units, and aggregate muscle electromyograms (EMG) of major muscles in the spinal frog hindlimb. When predicting target signal behavior relative to spiking events, the SDO framework outperformed or matched classical spike-triggered averaging methods. SDO analysis permits more complicated spike-signal relationships to be captured, analyzed, and interpreted visually and intuitively. SDO methods can be applied at different scales of interest where spike-triggered averaging methods are currently employed, and beyond, from single neurons to gross motor behaviors. SDOs may be readily generated and analyzed using the provided SDO Analysis Toolkit We anticipate this method will be broadly useful for describing dynamical signal behavior and uncovering state-dependent relationships of stochastic signals relative to discrete event times.
期刊介绍:
An open-access journal from the Society for Neuroscience, eNeuro publishes high-quality, broad-based, peer-reviewed research focused solely on the field of neuroscience. eNeuro embodies an emerging scientific vision that offers a new experience for authors and readers, all in support of the Society’s mission to advance understanding of the brain and nervous system.