Task-related oxygenation and cerebral blood volume changes estimated from NIRS signals in motor and cognitive tasks

IR

Abstract

Although functional near-infrared spectroscopy (fNIRS) has an advantage of simultaneously measuring changes in oxy- and deoxy-hemoglobin concentrations (Δ[HbO] and Δ[HbR]), only few analysis approaches exploit this advantage. As an extension of our recently proposed method (task-related component analysis, TRCA), this study proposes a new analysis method that extracts task-related oxygenation and cerebral blood volume (CBV) changes. In the original formulation of TRCA, task-relatedness of a signal is defined as consistent appearance of a same waveform in every task block, thereby constructing task-related components by maximizing inter-block covariance. The new method proposes that, in addition to maximizing inter-block covariance, the covariance between task-related Δ[HbO] and Δ[HbR] is maximized (TRCA^+) or minimized (TRCA^-) so that oxygenation and CBV changes are maximally contrasted. The proposed method (collectively called TRCA^±) was formulated as a matrix eigenvalue problem, which can be solved efficiently with standard numerical methods, and was tested with a synthetic data generated by a balloon model, successfully recovering oxygenation and CBV components. fNIRS data from sensorimotor areas in a finger-tapping task and from prefrontal lobe in a working-memory (WM) task were then analyzed. For both tasks, the time courses and the spatial maps for oxygenation and CBV changes were found to differ consistently, providing certain constraints the parameters of balloon models. In summary. TRCA can estimate task-related oxygenation and CBV changes simultaneously, thereby extending the applicability of fNIRS.

identifier:https://dspace.jaist.ac.jp/dspace/handle/10119/12318

Journal

  • NeuroImage

    NeuroImage 94 107-119, 2014-03-15

    Elsevier

Details 詳細情報について

  • CRID
    1050001337538443392
  • NII Article ID
    120005526725
  • ISSN
    10538119
  • Web Site
    http://hdl.handle.net/10119/12318
  • Text Lang
    en
  • Article Type
    journal article
  • Data Source
    • IRDB
    • CiNii Articles

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