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Robust mixture modeling reveals category-free selectivity in reward region neuronal ensembles

机译:强大的混合建模揭示了奖励区域神经元集合中的免税选择性

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Classification of neurons into clusters based on their response properties is an important tool for gaining insight into neural computations. However, it remains unclear to what extent neurons fall naturally into discrete functional categories. We developed a Bayesian method that models the tuning properties of neural populations as a mixture of multiple types of task-relevant response patterns. We applied this method to data from several cortical and striatal regions in economic choice tasks. In all cases, neurons fell into only two clusters: one multipleselectivity cluster containing all cells driven by task variables of interest and another of no selectivity for those variables. The single cluster of task-sensitive cells argues against robust categorical tuning in these areas. The no-selectivity cluster was unanticipated and raises important questions about what distinguishes these neurons and what role they play. Moreover, the ability to formally identify these non-selective cells allows for more accurate measurement of ensemble effects by excluding or appropriately down-weighting them in analysis. Our findings provide a valuable tool for analysis of neural data, challenge simple categorization schemes previously proposed for these regions, and place useful constraints on neurocomputational models of economic choice and control.
机译:基于其响应特性的神经元分类为集群是一种重要的工具,可以获得洞察神经计算。然而,它仍然不清楚神经元自然地落入了离散功能类别的程度。我们开发了一种贝叶斯方法,模拟神经群的调整属性作为多种类型任务相关响应模式的混合。我们将这种方法应用于来自经济选择任务中的几个皮质和尖端地区的数据。在所有情况下,神经元只陷入了两个集群:一个多元化簇,包含由感兴趣的任务变量驱动的所有细胞,并且对于这些变量没有任何选择性。单个任务敏感单元集群体反对这些区域中的鲁棒分类调整。无选择性集群是意想不到的,并提出了关于区分这些神经元的重要问题以及它们的作用。此外,正式识别这些非选择性细胞的能力允许通过在分析中排除或适当地向后加权来更准确地测量集合效果。我们的调查结果提供了一种有价值的工具,用于分析神经数据,挑战以前为这些地区提出的简单分类方案,并在经济选择和控制的神经计算机模型中放置有用的限制。

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