The University of Texas at Dallas, School of Behavioral Brain Sciences, 800 West Campbell Road, GR41 Richardson, TX 75080-3021, USA.
Eur J Neurosci. 2011 Dec;34(11):1823-38. doi: 10.1111/j.1460-9568.2011.07887.x. Epub 2011 Nov 18.
The neural mechanisms that support speech discrimination in noisy conditions are poorly understood. In quiet conditions, spike timing information appears to be used in the discrimination of speech sounds. In this study, we evaluated the hypothesis that spike timing is also used to distinguish between speech sounds in noisy conditions that significantly degrade neural responses to speech sounds. We tested speech sound discrimination in rats and recorded primary auditory cortex (A1) responses to speech sounds in background noise of different intensities and spectral compositions. Our behavioral results indicate that rats, like humans, are able to accurately discriminate consonant sounds even in the presence of background noise that is as loud as the speech signal. Our neural recordings confirm that speech sounds evoke degraded but detectable responses in noise. Finally, we developed a novel neural classifier that mimics behavioral discrimination. The classifier discriminates between speech sounds by comparing the A1 spatiotemporal activity patterns evoked on single trials with the average spatiotemporal patterns evoked by known sounds. Unlike classifiers in most previous studies, this classifier is not provided with the stimulus onset time. Neural activity analyzed with the use of relative spike timing was well correlated with behavioral speech discrimination in quiet and in noise. Spike timing information integrated over longer intervals was required to accurately predict rat behavioral speech discrimination in noisy conditions. The similarity of neural and behavioral discrimination of speech in noise suggests that humans and rats may employ similar brain mechanisms to solve this problem.
在嘈杂环境下支持语音辨别功能的神经机制尚未被充分理解。在安静环境下,尖峰时间信息似乎被用于语音的辨别。在本研究中,我们评估了这样一个假说,即在语音信号对神经反应产生严重干扰的嘈杂环境下,尖峰时间也被用于区分语音。我们在大鼠中测试了语音辨别能力,并在不同强度和频谱组成的背景噪声中记录了初级听觉皮层(A1)对语音的反应。我们的行为学结果表明,大鼠和人类一样,即使在与语音信号一样响亮的背景噪声中,也能够准确地辨别辅音。我们的神经记录证实,语音在噪声中会引起退化但可检测的反应。最后,我们开发了一种新的神经分类器,该分类器模仿行为辨别。该分类器通过将单个试验中 A1 的时空活动模式与已知声音引起的平均时空模式进行比较,来区分语音。与大多数先前研究中的分类器不同,该分类器没有提供刺激起始时间。使用相对尖峰时间进行分析的神经活动与安静和嘈杂环境下的行为语音辨别高度相关。在嘈杂环境下,为了准确预测大鼠的行为语音辨别,需要整合更长时间间隔的尖峰时间信息。神经和行为在噪声中辨别语音的相似性表明,人类和大鼠可能采用类似的大脑机制来解决这个问题。