4.7 Article

Predictive Neural Computations Support Spoken Word Recognition: Evidence from MEG and Competitor Priming

期刊

JOURNAL OF NEUROSCIENCE
卷 41, 期 32, 页码 6919-6932

出版社

SOC NEUROSCIENCE
DOI: 10.1523/JNEUROSCI.1685-20.2021

关键词

MEG; perception; prediction; priming; speech; STG

资金

  1. UK Medical Research Council [SUAG/044, SUAG/046 G101400]
  2. China Scholarship Council

向作者/读者索取更多资源

This study tested two Bayesian mechanisms of spoken word recognition using MEG data from male and female listeners, and manipulated the prior probability of specific words using competitor priming. The results showed delayed recognition of target words following presentation of neighboring prime words, supporting the role of neural computations of prediction error in spoken word recognition.
Human listeners achieve quick and effortless speech comprehension through computations of conditional probability using Bayes rule. However, the neural implementation of Bayesian perceptual inference remains unclear. Competitive-selection accounts (e.g., TRACE) propose that word recognition is achieved through direct inhibitory connections between units representing candidate words that share segments (e.g., hygiene and hijack share /haid3/). Manipulations that increase lexical uncertainty should increase neural responses associated with word recognition when words cannot be uniquely identified. In contrast, predictive-selection accounts (e.g., Predictive-Coding) propose that spoken word recognition involves comparing heard and predicted speech sounds and using prediction error to update lexical representations. Increased lexical uncertainty in words, such as hygiene and hijack, will increase prediction error and hence neural activity only at later time points when different segments are predicted. We collected MEG data from male and female listeners to test these two Bayesian mechanisms and used a competitor priming manipulation to change the prior probability of specific words. Lexical decision responses showed delayed recognition of target words (hygiene) following presentation of a neighboring prime word (hijack) several minutes earlier. However, this effect was not observed with pseudoword primes (higent) or targets (hijure). Crucially, MEG responses in the STG showed greater neural responses for word-primed words after the point at which they were uniquely identified (after /haid3/ in hygiene) but not before while similar changes were again absent for pseudowords. These findings are consistent with accounts of spoken word recognition in which neural computations of prediction error play a central role.

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