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首页> 外文期刊>Frontiers in Computational Neuroscience >Signal-independent timescale analysis (SITA) and its application for neural coding during reaching and walking
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Signal-independent timescale analysis (SITA) and its application for neural coding during reaching and walking

机译:与信号无关的时标分析(SITA)及其在步行和步行期间进行神经编码的应用

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摘要

What are the relevant timescales of neural encoding in the brain? This question is commonly investigated with respect to well-defined stimuli or actions. However, neurons often encode multiple signals, including hidden or internal, which are not experimentally controlled, and thus excluded from such analysis. Here we consider all rate modulations as the signal, and define the rate-modulations signal-to-noise ratio (RM-SNR) as the ratio between the variance of the rate and the variance of the neuronal noise. As the bin-width increases, RM-SNR increases while the update rate decreases. This tradeoff is captured by the ratio of RM-SNR to bin-width, and its variations with the bin-width reveal the timescales of neural activity. Theoretical analysis and simulations elucidate how the interactions between the recovery properties of the unit and the spectral content of the encoded signals shape this ratio and determine the timescales of neural coding. The resulting signal-independent timescale analysis (SITA) is applied to investigate timescales of neural activity recorded from the motor cortex of monkeys during: (i) reaching experiments with Brain-Machine Interface (BMI), and (ii) locomotion experiments at different speeds. Interestingly, the timescales during BMI experiments did not change significantly with the control mode or training. During locomotion, the analysis identified units whose timescale varied consistently with the experimentally controlled speed of walking, though the specific timescale reflected also the recovery properties of the unit. Thus, the proposed method, SITA, characterizes the timescales of neural encoding and how they are affected by the motor task, while accounting for all rate modulations.
机译:大脑中神经编码的相关时间尺度是多少?通常针对定义明确的刺激或动作来研究这个问题。但是,神经元通常会编码多种信号,包括隐藏信号或内部信号,这些信号无法通过实验控制,因此无法进行此类分析。在这里,我们将所有速率调制都视为信号,并将速率调制信噪比(RM-SNR)定义为速率方差与神经元噪声方差之间的比率。随着面元宽度的增加,RM-SNR会增加,而更新速率会降低。这种权衡是通过RM-SNR与面元宽度的比率来捕获的,并且它随面元宽度的变化揭示了神经活动的时间尺度。理论分析和仿真阐明了该单元的恢复特性与编码信号的频谱内容之间的相互作用如何形成该比率并确定神经编码的时间尺度。所得的信号独立时标分析(SITA)用于研究在以下期间从猴子运动皮层记录的神经活动的时标:(i)进行脑机接口(BMI)的实验,以及(ii)以不同速度进行的运动实验。有趣的是,BMI实验期间的时间尺度不会随控制模式或训练而显着变化。在运动过程中,分析确定了时间尺度与实验控制的步行速度一致的单元,尽管特定的时间尺度也反映了该单元的恢复特性。因此,在考虑所有速率调制的同时,所提出的方法SITA表征了神经编码的时间尺度以及它们如何受到运动任务的影响。

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