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Neural population encoding and decoding of sound source location across sound level in the rabbit inferior colliculus

机译:兔下丘的声级对声源位置的神经种群编码和解码

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摘要

At lower levels of sensory processing, the representation of a stimulus feature in the response of a neural population can vary in complex ways across different stimulus intensities, potentially changing the amount of feature-relevant information in the response. How higher-level neural circuits could implement feature decoding computations that compensate for these intensity-dependent variations remains unclear. Here we focused on neurons in the inferior colliculus (IC) of unanesthetized rabbits, whose firing rates are sensitive to both the azimuthal position of a sound source and its sound level. We found that the azimuth tuning curves of an IC neuron at different sound levels tend to be linear transformations of each other. These transformations could either increase or decrease the mutual information between source azimuth and spike count with increasing level for individual neurons, yet population azimuthal information remained constant across the absolute sound levels tested (35, 50, and 65 dB SPL), as inferred from the performance of a maximum-likelihood neural population decoder. We harnessed evidence of level-dependent linear transformations to reduce the number of free parameters in the creation of an accurate cross-level population decoder of azimuth. Interestingly, this decoder predicts monotonic azimuth tuning curves, broadly sensitive to contralateral azimuths, in neurons at higher levels in the auditory pathway.
机译:在较低的感觉处理水平上,神经种群响应中刺激特征的表示可以在不同的刺激强度之间以复杂的方式变化,从而潜在地改变响应中与特征相关的信息量。尚不清楚更高级别的神经电路如何实现特征解码计算以补偿这些强度相关的变化。在这里,我们集中于未麻醉兔子的下丘(IC)中的神经元,其放电频率对声源的方位角位置和声级均敏感。我们发现,IC神经元在不同声级下的方位角调谐曲线趋向于彼此线性转换。这些转换可能会随着单个神经元水平的增加而增加或减少源方位角和尖峰计数之间的相互信息,但是根据所测得的绝对声级(35、50和65 dB SPL),总体方位角信息保持恒定。最大似然神经种群解码器的性能我们利用依赖于水平的线性变换的证据来减少创建精确的跨层总体方位角解码器时的自由参数数量。有趣的是,该解码器预测了在听觉路径中较高水平的神经元中对对侧方位角广泛敏感的单调方位角调谐曲线。

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