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Spatio-temporal conditional inference and hypothesis tests for neuralensemble spiking precision

机译:神经的时空条件推断和假设检验合奏精度

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摘要

The collective dynamics of neural ensembles create complex spike patterns with many spatial and temporal scales. Understanding the statistical structure of these patterns can help resolve fundamental questions about neural computation and neural dynamics. Spatio-temporal conditional inference (STCI) is introduced here as a semiparametric statistical framework for investigating the nature of precise spiking patterns from collections of neurons that is robust to arbitrarily complex and nonstationary coarse spiking dynamics. The main idea is to focus statistical modeling and inference, not on the full distribution of the data, but rather on families of conditional distributions of precise spiking given different types of coarse spiking. The framework is then used to develop families of hypothesis tests for probing the spatio-temporal precision of spiking patterns. Relationships among different conditional distributions are used to improve multiple hypothesis testing adjustments and to design novel Monte Carlo spike resampling algorithms. Of special note are algorithms that can locally jitter spike times while still preserving the instantaneous peri-stimulus time histogram (PSTH) or the instantaneous total spike count from a group of recorded neurons. The framework can also be used to test whetherfirst-order maximum entropy models with possibly random and time-varyingparameters can account for observed patterns of spiking. STCI provides adetailed example of the generic principle of conditional inference, which may beapplicable in other areas of neurostatistical analysis.
机译:神经集合体的集体动力学产生具有许多时空尺度的复杂尖峰模式。了解这些模式的统计结构可以帮助解决有关神经计算和神经动力学的基本问题。时空条件推断(STCI)在这里作为半参数统计框架引入,用于研究神经元集合中精确的峰值模式的性质,该模式对于任意复杂和非平稳的粗峰值动态具有鲁棒性。主要思想是将统计建模和推理重点放在数据的完整分布上,而不是在给定不同类型的粗尖峰的情况下,精确尖峰的条件分布族。然后,该框架用于开发假设检验族,以探究尖峰模式的时空精度。使用不同条件分布之间的关系来改善多个假设检验的调整,并设计新颖的蒙特卡洛尖峰重采样算法。特别值得注意的是,算法可以局部抖动峰值时间,同时仍保留一组记录的神经元的瞬时刺激周围时间直方图(PSTH)或瞬时总峰值计数。该框架还可用于测试是否可能具有随机和时变的一阶最大熵模型参数可以说明观察到的尖峰模式。 STCI提供了条件推断的一般原理的详细示例,可能是适用于神经统计分析的其他领域。

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