Identifying musical pieces from fMRI data using encoding and decoding models

被引:0
|
作者
Sebastian Hoefle
Annerose Engel
Rodrigo Basilio
Vinoo Alluri
Petri Toiviainen
Maurício Cagy
Jorge Moll
机构
[1] D’Or Institute for Research and Education (IDOR),Cognitive and Behavioral Neuroscience Unit and Neuroinformatics Workgroup
[2] COPPE,Biomedical Engineering Program
[3] Federal University of Rio de Janeiro,Day Clinic for Cognitive Neurology
[4] University Hospital Leipzig,Finnish Centre for Interdisciplinary Music Research, Department of Music, Art and Culture Studies
[5] Max Planck Institute for Human Cognitive and Brain Sciences,undefined
[6] University of Jyväskylä,undefined
[7] International Institute of Information Technology,undefined
[8] Gachibowli,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Encoding models can reveal and decode neural representations in the visual and semantic domains. However, a thorough understanding of how distributed information in auditory cortices and temporal evolution of music contribute to model performance is still lacking in the musical domain. We measured fMRI responses during naturalistic music listening and constructed a two-stage approach that first mapped musical features in auditory cortices and then decoded novel musical pieces. We then probed the influence of stimuli duration (number of time points) and spatial extent (number of voxels) on decoding accuracy. Our approach revealed a linear increase in accuracy with duration and a point of optimal model performance for the spatial extent. We further showed that Shannon entropy is a driving factor, boosting accuracy up to 95% for music with highest information content. These findings provide key insights for future decoding and reconstruction algorithms and open new venues for possible clinical applications.
引用
收藏
相关论文
共 50 条
  • [31] Multiclass fMRI data decoding and visualization using supervised self-organizing maps
    Hausfeld, Lars
    Valente, Giancarlo
    Formisano, Elia
    NEUROIMAGE, 2014, 96 : 54 - 66
  • [32] Clustering of FMRI data for activation detection using HDR models
    Rao, AA
    Talavage, TM
    PROCEEDINGS OF THE 26TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY, VOLS 1-7, 2004, 26 : 1876 - 1879
  • [33] Identifying Migraine: Building Classifiers Using Resting-State fMRI Data
    Chong, Catherine
    Gaw, Nathan
    Fu, YinLin
    Li, Jing
    Wu, Teresa
    Schwedt, Todd
    NEUROLOGY, 2016, 86
  • [34] Identifying Activation Centers with Spatial Cox Point Processes Using fMRI Data
    Ray, Meredith
    Kang, Jian
    Zhang, Hongmei
    IEEE-ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS, 2016, 13 (06) : 1130 - 1141
  • [35] Attend and Decode: 4D fMRI Task State Decoding Using Attention Models
    Nguyen, Sam
    Ng, Brenda
    Kaplan, Alan D.
    Ray, Priyadip
    MACHINE LEARNING FOR HEALTH, VOL 136, 2020, 136 : 267 - 279
  • [36] Ranking brain areas encoding the perceived level of pain from fMRI data
    Favilla, Stefania
    Huber, Alexa
    Pagnoni, Giuseppe
    Lui, Fausta
    Facchin, Patrizia
    Cocchi, Marina
    Baraldi, Patrizia
    Porro, Carlo Adolfo
    NEUROIMAGE, 2014, 90 : 153 - 162
  • [37] Accurately decoding visual information from fMRI data obtained in a realistic virtual environment
    Floren, Andrew
    Naylor, Bruce
    Miikkulainen, Risto
    Ress, David
    FRONTIERS IN HUMAN NEUROSCIENCE, 2015, 9
  • [38] Decoding Brain States From fMRI Signals by Using Unsupervised Domain Adaptation
    Gao, Yufei
    Zhang, Yameng
    Cao, Zhiyuan
    Guo, Xiaojuan
    Zhang, Jiacai
    IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2020, 24 (06) : 1677 - 1685
  • [39] Decoding gene network models and rates from smFISH data
    Moyer, Camille
    Kilic, Zeliha
    Shepherd, Douglas P.
    Presse, Steve
    BIOPHYSICAL JOURNAL, 2022, 121 (03) : 446A - 446A
  • [40] A decoupled bit shifting technique using data encoding/decoding for DRAM redundancy repair
    Choi, Kyu Hyun
    Jun, JaeYung
    Kim, Hokwon
    Kim, Seon Wook
    Han, Youngsun
    IEICE ELECTRONICS EXPRESS, 2017, 14 (13):