Abstract
APUeo:pPleleoafsaelcl oangfeirsmdtihsaptlaalylhtehaedainbgillietyvetolsadreetreecptraensednlteeadcrnorfrroecmtlyp:atterns in seemingly randomstimuli. Referred to as statistical learning (SL), this process is particularly critical when learning a spoken language, helping in the identification of discrete words within a spoken phrase. Here, by considering individual differences in speech auditory-motor synchronization, we demonstrate that recruitment of a specific neural network supports behavioral differences in SL from speech. While independent component analysis (ICA) of fMRI data revealed that a network of auditory and superior pre/motor regions is universally activated in the process of learning, a frontoparietal network is additionally and selectively engaged by only some individuals (high auditory-motor synchronizers). Importantly, activation of this frontoparietal network is related to a boost in learning performance, and interference with this network via articulatory suppression (AS; i.e., producing irrelevant speech during learning) normalizes performance across the entire sample. Our work provides novel insights on SL from speech and reconciles previous contrasting findings. These findings also highlight a more general need to factor in fundamental individual differences for a precise characterization of cognitive phenomena.
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CITATION STYLE
Orpella, J., Assaneo, M. F., Ripollés, P., Noejovich, L., López-Barroso, D., de Diego-Balaguer, R., & Poeppel, D. (2022). Differential activation of a frontoparietal network explains population-level differences in statistical learning from speech. PLoS Biology, 20(7). https://doi.org/10.1371/journal.pbio.3001712
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