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仓鸮下丘中低频和高频范围内双耳时间差的分布

Distribution of interaural time difference in the barn owl's inferior colliculus in the low- and high-frequency ranges.

作者信息

Wagner Hermann, Asadollahi Ali, Bremen Peter, Endler Frank, Vonderschen Katrin, von Campenhausen Mark

机构信息

Institute for Biology II, Rheinisch-Westfälische Technische Hochschule Aachen, D-52074 Aachen, Germany.

出版信息

J Neurosci. 2007 Apr 11;27(15):4191-200. doi: 10.1523/JNEUROSCI.5250-06.2007.

Abstract

Interaural time differences are an important cue for azimuthal sound localization. It is still unclear whether the same neuronal mechanisms underlie the representation in the brain of interaural time difference in different vertebrates and whether these mechanisms are driven by common constraints, such as optimal coding. Current sound localization models may be discriminated by studying the spectral distribution of response peaks in tuning curves that measure the sensitivity to interaural time difference. The sound localization system of the barn owl has been studied intensively, but data that would allow discrimination between currently discussed models are missing from this animal. We have therefore obtained extracellular recordings from the time-sensitive subnuclei of the barn owl's inferior colliculus. Response peaks were broadly scattered over the physiological range of interaural time differences. A change in the representation of the interaural phase differences with frequency was not observed. In some neurons, response peaks fell outside the physiological range of interaural time differences. For a considerable number of neurons, the peak closest to zero interaural time difference was not the behaviorally relevant peak. The data are in best accordance with models suggesting that a place code underlies the representation of interaural time difference. The data from the high-frequency range, but not from the low-frequency range, are consistent with predictions of optimal coding. We speculate that the deviation of the representation of interaural time difference from optimal-coding models in the low-frequency range is attributable to the diminished importance of low frequencies for catching prey in this species.

摘要

双耳时间差是方位声音定位的重要线索。目前尚不清楚不同脊椎动物大脑中双耳时间差的表征是否基于相同的神经元机制,以及这些机制是否由诸如最优编码等共同约束驱动。通过研究测量对双耳时间差敏感度的调谐曲线中响应峰值的频谱分布,可以区分当前的声音定位模型。仓鸮的声音定位系统已得到深入研究,但该动物缺乏能够区分当前所讨论模型的数据。因此,我们从仓鸮下丘对时间敏感的亚核中获得了细胞外记录。响应峰值在双耳时间差的生理范围内广泛分布。未观察到双耳相位差的表征随频率的变化。在一些神经元中,响应峰值落在双耳时间差的生理范围之外。对于相当数量的神经元,最接近零双耳时间差的峰值并非行为相关峰值。这些数据与表明位置编码是双耳时间差表征基础的模型最为相符。高频范围而非低频范围的数据与最优编码的预测一致。我们推测,低频范围内双耳时间差的表征与最优编码模型的偏差可归因于低频对于该物种捕食的重要性降低。

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