Department of Music, Art, and Culture Studies, University of Jyväskylä, Jyväskylä, PL 35(M), FI-40014, Finland.
Center for Music in the Brain (MIB), Department of Clinical Medicine, Aarhus University, Aarhus, DK-8000, Denmark.
Sci Rep. 2018 Jan 15;8(1):708. doi: 10.1038/s41598-018-19177-5.
Pattern recognition on neural activations from naturalistic music listening has been successful at predicting neural responses of listeners from musical features, and vice versa. Inter-subject differences in the decoding accuracies have arisen partly from musical training that has widely recognized structural and functional effects on the brain. We propose and evaluate a decoding approach aimed at predicting the musicianship class of an individual listener from dynamic neural processing of musical features. Whole brain functional magnetic resonance imaging (fMRI) data was acquired from musicians and nonmusicians during listening of three musical pieces from different genres. Six musical features, representing low-level (timbre) and high-level (rhythm and tonality) aspects of music perception, were computed from the acoustic signals, and classification into musicians and nonmusicians was performed on the musical feature and parcellated fMRI time series. Cross-validated classification accuracy reached 77% with nine regions, comprising frontal and temporal cortical regions, caudate nucleus, and cingulate gyrus. The processing of high-level musical features at right superior temporal gyrus was most influenced by listeners' musical training. The study demonstrates the feasibility to decode musicianship from how individual brains listen to music, attaining accuracy comparable to current results from automated clinical diagnosis of neurological and psychological disorders.
基于自然聆听音乐时的神经活动模式识别,可以成功地根据音乐特征预测聆听者的神经反应,反之亦然。解码准确率的个体间差异部分源于音乐训练,音乐训练对大脑具有广泛的结构和功能影响。我们提出并评估了一种解码方法,旨在从音乐特征的动态神经处理中预测个体听众的音乐才能类别。在聆听三种不同类型的音乐作品时,我们从音乐家和非音乐家那里获取了全脑功能磁共振成像(fMRI)数据。从声信号中计算出了 6 个音乐特征,代表音乐感知的低层次(音色)和高层次(节奏和调性)方面,并在音乐特征和分割的 fMRI 时序列上对音乐家和非音乐家进行分类。使用 9 个区域(包括额皮质和颞皮质区域、尾状核和扣带回)进行交叉验证的分类准确率达到了 77%。右颞上叶高级音乐特征的处理受听众音乐训练的影响最大。该研究证明了从个体大脑如何聆听音乐解码音乐才能的可行性,达到了与当前自动诊断神经和心理障碍的临床诊断结果相当的准确性。