| Keyword search (4,163 papers available) | ![]() |
"Zatorre RJ" Authored Publications:
| Title | Authors | PubMed ID | |
|---|---|---|---|
| 1 | Auditory working memory mechanisms mediating the relationship between musicianship and auditory stream segregation | Liu M; Arseneau-Bruneau I; Farrés Franch M; Latorre ME; Samuels J; Issa E; Payumo A; Rahman N; Loureiro N; Leung TCM; Nave KM; von Handorf KM; Hoddinott JD; Coffey EBJ; Grahn J; Zatorre RJ; | 40226491 PSYCHOLOGY |
| 2 | Human Auditory-Motor Networks Show Frequency-Specific Phase-Based Coupling in Resting-State MEG | Bedford O; Noly-Gandon A; Ara A; Wiesman AI; Albouy P; Baillet S; Penhune V; Zatorre RJ; | 39757971 PSYCHOLOGY |
| 3 | Cortical-subcortical interactions underlie processing of auditory predictions measured with 7T fMRI | Ara A; Provias V; Sitek K; Coffey EBJ; Zatorre RJ; | 39087881 PSYCHOLOGY |
| 4 | Using cortico-cerebellar structural patterns to classify early- and late-trained musicians | Shenker JJ; Steele CJ; Zatorre RJ; Penhune VB; | 37326147 PSYCHOLOGY |
| 5 | Early musical training shapes cortico-cerebellar structural covariation | Shenker JJ; Steele CJ; Chakravarty MM; Zatorre RJ; Penhune VB; | 34657166 PSYCHOLOGY |
| 6 | Effector-independent brain network for auditory-motor integration: fMRI evidence from singing and cello playing | Segado M; Zatorre RJ; Penhune VB; | 33989814 PSYCHOLOGY |
| 7 | Evolving perspectives on the sources of the frequency-following response. | Coffey EBJ, Nicol T, White-Schwoch T, Chandrasekaran B, Krizman J, Skoe E, Zatorre RJ, Kraus N | 31695046 PSYCHOLOGY |
| 8 | Partially Overlapping Brain Networks for Singing and Cello Playing. | Segado M, Hollinger A, Thibodeau J, Penhune V, Zatorre RJ | 29892211 PSYCHOLOGY |
| 9 | Neural network retuning and neural predictors of learning success associated with cello training | Wollman I; Penhune V; Segado M; Carpentier T; Zatorre RJ; | 29891670 PSYCHOLOGY |
| 10 | Rhythm and time in the premotor cortex. | Penhune VB, Zatorre RJ | 31158227 PSYCHOLOGY |
| 11 | Practice makes plasticity. | Steele CJ, Zatorre RJ | 30482944 PSYCHOLOGY |
| 12 | The Music-In-Noise Task (MINT): A Tool for Dissecting Complex Auditory Perception. | Coffey EBJ, Arseneau-Bruneau I, Zhang X, Zatorre RJ | 30930734 PSYCHOLOGY |
| Title: | Using cortico-cerebellar structural patterns to classify early- and late-trained musicians | ||||
| Authors: | Shenker JJ, Steele CJ, Zatorre RJ, Penhune VB | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/37326147/ | ||||
| DOI: | 10.1002/hbm.26395 | ||||
| Publication: | Human brain mapping | ||||
| Keywords: | experience; music; plasticity; sensitive period; support vector machine; | ||||
| PMID: | 37326147 | Category: | Date Added: | 2023-06-16 | |
| Dept Affiliation: | PSYCHOLOGY | ||||
Description: |
A body of current evidence suggests that there is a sensitive period for musical training: people who begin training before the age of seven show better performance on tests of musical skill, and also show differences in brain structure-especially in motor cortical and cerebellar regions-compared with those who start later. We used support vector machine models-a subtype of supervised machine learning-to investigate distributed patterns of structural differences between early-trained (ET) and late-trained (LT) musicians and to better understand the age boundaries of the sensitive period for early musicianship. After selecting regions of interest from the cerebellum and cortical sensorimotor regions, we applied recursive feature elimination with cross-validation to produce a model which optimally and accurately classified ET and LT musicians. This model identified a combination of 17 regions, including 9 cerebellar and 8 sensorimotor regions, and maintained a high accuracy and sensitivity (true positives, i.e., ET musicians) without sacrificing specificity (true negatives, i.e., LT musicians). Critically, this model-which defined ET musicians as those who began their training before the age of 7-outperformed all other models in which age of start was earlier or later (between ages 5-10). Our model's ability to accurately classify ET and LT musicians provides additional evidence that musical training before age 7 affects cortico-cerebellar structure in adulthood, and is consistent with the hypothesis that connected brain regions interact during development to reciprocally influence brain and behavioral maturation. |



