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A Likelihood Method for Computing Selection Times in Spiking and Local Field Potential Activity

机译:计算加标和局部场势活动中选择时间的一种可能性方法

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摘要

The timing of neural responses to ongoing behavior is an important measure of the underlying neural processes. Neural processes are distributed across many different brain regions and measures of the timing of neural responses are routinely used to test relationships between different brain regions. Testing detailed models of functional neural circuitry underlying behavior depends on extracting information from single trials. Despite their importance, existing methods for analyzing the timing of information in neural signals on single trials remain limited in their scope and application. We develop a novel method for estimating the timing of information in neural activity that we use to measure selection times, when an observer can reliably use observations of neural activity to select between two descriptions of the activity. The method is designed to satisfy three criteria: selection times should be computed from single trials, they should be computed from both spiking and local field potential (LFP) activity, and they should allow us to make comparisons between different recordings. Our approach characterizes the timing of information in terms of an accumulated log-likelihood ratio (AccLLR), which distinguishes between two alternative hypotheses and uses the AccLLR to estimate the selection time. We develop the AccLLR procedure for binary discrimination using example recordings of spiking and LFP activity in the posterior parietal cortex of a monkey performing a memory-guided saccade task. We propose that the AccLLR method is a general and practical framework for the analysis of signal timing in the nervous system.
机译:对持续行为的神经反应的时机是潜在神经过程的重要指标。神经过程分布在许多不同的大脑区域,神经反应时间的度量通常用于测试不同大脑区域之间的关系。测试功能性神经回路潜在行为的详细模型取决于从单个试验中提取信息。尽管它们很重要,但是在单次试验中用于分析神经信号中信息定时的现有方法在其范围和应用方面仍然受到限制。当观察者可以可靠地使用神经活动的观察结果在活动的两个描述之间进行选择时,我们开发了一种新的方法来估计用于测量选择时间的神经活动信息的时间安排。该方法旨在满足三个条件:选择时间应从单次试验中计算出来,它们应从加标和局部场势(LFP)活动中计算出,并且它们应该允许我们在不同记录之间进行比较。我们的方法通过累积对数似然比(AccLLR)来表征信息的时间,该对数似然比可以区分两个备选假设,并使用AccLLR估计选择时间。我们开发了使用二进制记录的示例性加标的AccLLR程序,该示例使用了执行记忆引导扫视任务的猴子的顶叶后皮质的加标和LFP活动的示例记录。我们建议,AccLLR方法是分析神经系统中信号时序的通用且实用的框架。

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