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An optimal decision population code that accounts for correlated variability unambiguously predicts a subject's choice

机译:考虑相关变异性的最优决策总体代码可以明确预测受试者的选择

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Decisions emerge from the concerted activity of neuronal populations distributed across brain circuits. However, the analytical tools best suited to decode decision signals from neuronal populations remain unknown. Here we show that knowledge of correlated variability between pairs of cortical neurons allows perfect decoding of decisions from population firing rates. We recorded pairs of neurons from secondary somatosensory (S2) and premotor (PM) cortices while monkeys reported the presence or absence of a tactile stimulus. We found that while populations of S2 and sensory-like PM neurons are only partially correlated with behavior, those PM neurons active during a delay period preceding the motor report predict unequivocally the animal's decision report. Thus, a population rate code that optimally reveals a subject's perceptual decisions can be implemented just by knowing the correlations of PM neurons representing decision variables.
机译:决策是由分布在大脑回路中的神经元群体的协调活动产生的。但是,最适合解码神经元群体的决策信号的分析工具仍然未知。在这里,我们表明,对成对的皮质神经元之间的相关变异性的了解可以完美地解码群体放电速率所做出的决策。我们记录了来自次级体感(S2)和运动前(PM)皮质的神经元对,而猴子报告了有无触觉刺激。我们发现,虽然S2和感觉类似的PM神经元的数量仅与行为有部分关联,但是在运动报告之前的延迟时间内活跃的那些PM神经元明确地预测了动物的决策报告。因此,仅通过知道代表决策变量的PM神经元的相关性,就可以实现最佳地揭示受试者的感知决策的人口比率代码。

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