From Syllables to Words: EEG Evidence of Different Age Trajectories in Speech Tracking and Statistical Learning in Infants at High and Low Likelihood for Autism

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This longitudinal study used 83 high-density EEG recordings from 44 infants aged 2.5–22.6 months with high and low likelihood for autism, measuring neural mechanisms of speech tracking at syllable and word frequencies during exposure to a multi-speaker stream and assessing word recognition at around 20 months. High-likelihood infants showed reduced neural tracking of syllables, which correlated with later verbal outcomes, while statistical learning was not impaired; additionally, they had reduced novelty orientation during the word recognition test, reflected in a reduced late ERP. Low-likelihood infants showed temporary disruption of word segmentation around 12 months due to multi-talker variability, whereas this disruption was not seen in the high-likelihood group, potentially indicating decreased sensitivity to human voices in that group. The paper relates to endometriosis/adenomyosis only indirectly as a neuroscience study and does not explicitly discuss endometriosis or adenomyosis.

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Abstract Delayed onset of canonical babbling and first words is often reported in infants later diagnosed with autism spectrum disorder (ASD). Identifying the neural mechanisms underlying language acquisition in ASD is therefore critical to inform early diagnosis, prognosis, and intervention strategies. In this study, we investigated two speech processing mechanisms previously identified as atypical in children and adults with ASD: the neural ability to track syllables; and statistical learning (SL), the capacity to detect speech regularities beneath surface variability. We recorded 83 longitudinal high-density EEGs from 44 infants (2.5–22.6 months) at high (HL) and low (LL) likelihood for ASD and assessed their verbal outcomes at 20 months. Neural entrainment was measured at syllable and word frequencies during exposure to a multi-speaker stream of concatenated tri-syllabic words, followed by a word recognition test using ERP recording. Our findings revealed reduced tracking abilities at the syllabic level in HL infants, a measure that correlated with verbal outcomes. While HL infants did not exhibit deficits in SL itself, they displayed reduced novelty orientation during the word recognition test, indicated by a reduced late ERP. By contrast, multi-talker variability temporarily disrupted word segmentation around 12 months in LL infants, but not in HL infants, potentially reflecting decreased sensitivity to human voices in the HL group. These results emphasize the importance of longitudinal protocols employing online, implicit measures to track the hierarchical stages of speech processing in both HL and LL infants. Competing Interest Statement The authors have declared no competing interest.

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europepmc
last seen: 2026-05-20T01:45:00.602351+00:00
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License: CC-BY-4.0