Task relevant autoencoding enhances machine learning for human neuroscience.

Journal: Scientific reports
PMID:

Abstract

In human neuroscience, machine learning can help reveal lower-dimensional neural representations relevant to subjects' behavior. However, state-of-the-art models typically require large datasets to train, and so are prone to overfitting on human neuroimaging data that often possess few samples but many input dimensions. Here, we capitalized on the fact that the features we seek in human neuroscience are precisely those relevant to subjects' behavior rather than noise or other irrelevant factors. We thus developed a Task-Relevant Autoencoder via Classifier Enhancement (TRACE) designed to identify behaviorally-relevant target neural patterns. We benchmarked TRACE against a standard autoencoder and other models for two severely truncated machine learning datasets (to match the data typically available in functional magnetic resonance imaging [fMRI] data for an individual subject), then evaluated all models on fMRI data from 59 subjects who observed animals and objects. TRACE outperformed alternative models nearly unilaterally, showing up to 12% increased classification accuracy and up to 56% improvement in discovering "cleaner", task-relevant representations. These results showcase TRACE's potential for a wide variety of data related to human behavior.

Authors

  • Seyedmehdi Orouji
    Department of Cognitive Sciences, University of California Irvine, Irvine, CA, USA.
  • Vincent Taschereau-Dumouchel
    Department of Decoded Neurofeedback, ATR Computational Neuroscience Laboratories, Kyoto, 619-0288, Japan. vincenttd@ucla.edu.
  • Aurelio Cortese
    Computational Neuroscience Labs, ATR Institute International, 619-0288, Kyoto, Japan. cortese.aurelio@gmail.com.
  • Brian Odegaard
    Department of Psychology, University of Florida, Gainesville, Florida, United States of America.
  • Cody Cushing
    Department of Psychology, University of California Los Angeles, Los Angeles, 90095, USA.
  • Mouslim Cherkaoui
    Department of Psychology, University of California Los Angeles, Los Angeles, 90095, USA.
  • Mitsuo Kawato
    ATR Brain Information Communication Research Laboratory Group, Advanced Telecommunications Research Institute International, Hikaridai, Kyoto, Japan. Electronic address: kawato@atr.jp.
  • Hakwan Lau
    Department of Psychology and Brain Research Institute, University of California, Los Angeles, Los Angeles, CA, USA.
  • Megan A K Peters
    Department of Cognitive Sciences, University of California Irvine, Irvine, California, United States of America.