Centanni T M, Sloan A M, Reed A C, Engineer C T, Rennaker R L, Kilgard M P
University of Texas at Dallas, United States.
University of Texas at Dallas, United States.
Neuroscience. 2014 Jan 31;258:292-306. doi: 10.1016/j.neuroscience.2013.11.030. Epub 2013 Nov 26.
We have developed a classifier capable of locating and identifying speech sounds using activity from rat auditory cortex with an accuracy equivalent to behavioral performance and without the need to specify the onset time of the speech sounds. This classifier can identify speech sounds from a large speech set within 40 ms of stimulus presentation. To compare the temporal limits of the classifier to behavior, we developed a novel task that requires rats to identify individual consonant sounds from a stream of distracter consonants. The classifier successfully predicted the ability of rats to accurately identify speech sounds for syllable presentation rates up to 10 syllables per second (up to 17.9 ± 1.5 bits/s), which is comparable to human performance. Our results demonstrate that the spatiotemporal patterns generated in primary auditory cortex can be used to quickly and accurately identify consonant sounds from a continuous speech stream without prior knowledge of the stimulus onset times. Improved understanding of the neural mechanisms that support robust speech processing in difficult listening conditions could improve the identification and treatment of a variety of speech-processing disorders.
我们开发了一种分类器,它能够利用大鼠听觉皮层的活动来定位和识别语音,其准确率与行为表现相当,且无需指定语音的起始时间。该分类器能够在刺激呈现后的40毫秒内从大量语音集合中识别语音。为了将分类器的时间限制与行为进行比较,我们开发了一项新任务,要求大鼠从一连串干扰辅音中识别单个辅音。该分类器成功预测了大鼠在音节呈现速率高达每秒10个音节(高达17.9±1.5比特/秒)时准确识别语音的能力,这与人类表现相当。我们的结果表明,初级听觉皮层中产生的时空模式可用于在无需事先了解刺激起始时间的情况下,快速准确地从连续语音流中识别辅音。更好地理解在困难听力条件下支持稳健语音处理的神经机制,可能会改善对各种语音处理障碍的识别和治疗。