Perrine Brusini, PhD
Affiliations: | University of Liverpool, LIVERPOOL, UK. |
Area:
Language AcquisitionWebsite:
https://www.liverpool.ac.uk/institute-of-life-and-human-sciences/staff/perrine-brusini/Google:
"Perrine Brusini"Mean distance: 17.02 (cluster 15) | S | N | B | C | P |
Parents
Sign in to add mentorGhislaine Dehaene-Lambertz | grad student | ||
Anne Christophe | grad student | 2008-2012 | CNRS, Ecole Normale Supérieure |
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Publications
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Choisdealbha ÁN, Attaheri A, Rocha S, et al. (2024) Cortical tracking of visual rhythmic speech by 5- and 8-month-old infants: Individual differences in phase angle relate to language outcomes up to 2 years. Developmental Science. e13502 |
Di Liberto GM, Attaheri A, Cantisani G, et al. (2023) Emergence of the cortical encoding of phonetic features in the first year of life. Nature Communications. 14: 7789 |
Ní Choisdealbha Á, Attaheri A, Rocha S, et al. (2023) Neural phase angle from two months when tracking speech and non-speech rhythm linked to language performance from 12 to 24 months. Brain and Language. 243: 105301 |
Attaheri A, Panayiotou D, Phillips A, et al. (2022) Cortical Tracking of Sung Speech in Adults vs Infants: A Developmental Analysis. Frontiers in Neuroscience. 16: 842447 |
Ní Choisdealbha Á, Attaheri A, Rocha S, et al. (2022) Neural detection of changes in amplitude rise time in infancy. Developmental Cognitive Neuroscience. 54: 101075 |
Attaheri A, Choisdealbha ÁN, Di Liberto GM, et al. (2021) Delta- and theta-band cortical tracking and phase-amplitude coupling to sung speech by infants. Neuroimage. 118698 |
Brusini P, Seminck O, Amsili P, et al. (2021) The Acquisition of Noun and Verb Categories by Bootstrapping From a Few Known Words: A Computational Model. Frontiers in Psychology. 12: 661479 |
Gibbon S, Attaheri A, Ní Choisdealbha Á, et al. (2021) Machine learning accurately classifies neural responses to rhythmic speech vs. non-speech from 8-week-old infant EEG. Brain and Language. 220: 104968 |
Vidal Y, Brusini P, Bonfieni M, et al. (2019) Neural signal to violations of abstract rules using speech-like stimuli. Eneuro |
Fló A, Brusini P, Macagno F, et al. (2019) Newborns are sensitive to multiple cues for word segmentation in continuous speech. Developmental Science. e12802 |