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Deciphering phonemes from syllables in blood oxygenation level-dependent signals in human superior temporal gyrus

机译:从人类上颞回的血液中氧合水平依赖性信号中的音节解密音素

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摘要

Linguistic units such as phonemes and syllables are important for speech perception. How the brain encodes these units is not well understood. Many neuroimaging studies have found distinct representations of consonant-vowel syllables that shared one phoneme and differed in the other phoneme (e.g. /ba/ and /da/), but it is unclear whether this discrimination ability is due to the neural coding of phonemes or syllables. We combined functional magnetic resonance imaging with multivariate pattern analysis to explore this question. Subjects listened to nine Mandarin syllables in a consonant-vowel form. We successfully decoded phonemes from the syllables based on the blood oxygenation level-dependent signals in the superior temporal gyrus (STG). Specifically, a classifier trained on the cortical patterns elicited by a set of syllables, which contained two phonemes, could distinguish the cortical patterns elicited by other syllables that contained the two phonemes. The results indicated that phonemes have unique representations in the STG. In addition, there was a categorical effect, i.e. the cortical patterns of consonants were similar, and so were the cortical patterns of vowels. Further analysis showed that phonemes exhibited stronger encoding specificity in the mid-STG than in the anterior STG.
机译:音素和音节等语言单元对于语音感知很重要。大脑如何编码这些单位还没有被很好地理解。许多神经影像学研究发现共有一个音素而另一个音素不同的辅音元音节的不同表示形式(例如/ ba /和/ da /),但是尚不清楚这种区分能力是否是由于音素的神经编码或音节。我们将功能磁共振成像与多元模式分析相结合,以探讨这一问题。受试者以辅音元音形式聆听9个普通话音节。我们基于上颞回(STG)中与血液氧合水平相关的信号,成功地从音节中解码出音素。具体来说,对一组包含两个音素的音节所引发的皮质模式进行训练的分类器,可以区分包含两个音素的其他音节所引发的皮质模式。结果表明,音素在STG中具有唯一的表示形式。另外,还有一种分类效应,即辅音的皮质模式相似,元音的皮质模式也相似。进一步的分析表明,音素在STG中部比在前STG中表现出更强的编码特异性。

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