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听觉皮层中超声发声的编码。

Encoding of ultrasonic vocalizations in the auditory cortex.

机构信息

Dept. of Otorhinolaryngology and Head and Neck Surgery, Univ. of Pennsylvania Perelman School of Medicine, Philadelphia, PA 19104, USA.

出版信息

J Neurophysiol. 2013 Apr;109(7):1912-27. doi: 10.1152/jn.00483.2012. Epub 2013 Jan 16.

Abstract

One of the central tasks of the mammalian auditory system is to represent information about acoustic communicative signals, such as vocalizations. However, the neuronal computations underlying vocalization encoding in the central auditory system are poorly understood. To learn how the rat auditory cortex encodes information about conspecific vocalizations, we presented a library of natural and temporally transformed ultrasonic vocalizations (USVs) to awake rats while recording neural activity in the primary auditory cortex (A1) with chronically implanted multielectrode probes. Many neurons reliably and selectively responded to USVs. The response strength to USVs correlated strongly with the response strength to frequency-modulated (FM) sweeps and the FM rate tuning index, suggesting that related mechanisms generate responses to USVs as to FM sweeps. The response strength further correlated with the neuron's best frequency, with the strongest responses produced by neurons whose best frequency was in the ultrasonic frequency range. For responses of each neuron to each stimulus group, we fitted a novel predictive model: a reduced generalized linear-nonlinear model (GLNM) that takes the frequency modulation and single-tone amplitude as the only two input parameters. The GLNM accurately predicted neuronal responses to previously unheard USVs, and its prediction accuracy was higher than that of an analogous spectrogram-based linear-nonlinear model. The response strength of neurons and the model prediction accuracy were higher for original, rather than temporally transformed, vocalizations. These results indicate that A1 processes original USVs differentially than transformed USVs, indicating preference for temporal statistics of the original vocalizations.

摘要

哺乳动物听觉系统的核心任务之一是对声通讯信号(如叫声)进行信息编码。然而,中枢听觉系统中对叫声编码的神经元计算过程仍不清楚。为了了解大鼠听觉皮层如何对同物种叫声的信息进行编码,我们在清醒大鼠身上展示了一系列自然和时间变换的超声波叫声(USV),同时使用慢性植入的多电极探针记录初级听觉皮层(A1)的神经活动。许多神经元对 USV 有可靠的选择性反应。USV 的反应强度与调频(FM)扫频和 FM 率调谐指数的反应强度密切相关,这表明相关机制产生了对 USV 和 FM 扫频的反应。反应强度还与神经元的最佳频率相关,最强的反应来自其最佳频率处于超声波频率范围内的神经元。对于每个神经元对每个刺激组的反应,我们拟合了一个新的预测模型:一个简化的广义线性非线性模型(GLNM),它仅将频率调制和单音幅度作为两个输入参数。GLNM 可以准确预测神经元对以前未听过的 USV 的反应,其预测精度高于类似的基于声谱图的线性非线性模型。原始而非时间变换的叫声的神经元反应强度和模型预测精度更高。这些结果表明,A1 对原始 USV 的处理与时间变换的 USV 不同,表明其对原始叫声的时间统计信息有偏好。

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