Brain Informatics (Jul 2017)

Optimized statistical parametric mapping procedure for NIRS data contaminated by motion artifacts

  • Satoshi Suzuki

DOI
https://doi.org/10.1007/s40708-017-0070-x
Journal volume & issue
Vol. 4, no. 3
pp. 171 – 182

Abstract

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Abstract This study investigated the spatial distribution of brain activity on body schema (BS) modification induced by natural body motion using two versions of a hand-tracing task. In Task 1, participants traced Japanese Hiragana characters using the right forefinger, requiring no BS expansion. In Task 2, participants performed the tracing task with a long stick, requiring BS expansion. Spatial distribution was analyzed using general linear model (GLM)-based statistical parametric mapping of near-infrared spectroscopy data contaminated with motion artifacts caused by the hand-tracing task. Three methods were utilized in series to counter the artifacts, and optimal conditions and modifications were investigated: a model-free method (Step 1), a convolution matrix method (Step 2), and a boxcar-function-based Gaussian convolution method (Step 3). The results revealed four methodological findings: (1) Deoxyhemoglobin was suitable for the GLM because both Akaike information criterion and the variance against the averaged hemodynamic response function were smaller than for other signals, (2) a high-pass filter with a cutoff frequency of .014 Hz was effective, (3) the hemodynamic response function computed from a Gaussian kernel function and its first- and second-derivative terms should be included in the GLM model, and (4) correction of non-autocorrelation and use of effective degrees of freedom were critical. Investigating z-maps computed according to these guidelines revealed that contiguous areas of BA7–BA40–BA21 in the right hemisphere became significantly activated ( $$t(15); p<.001$$ t ( 15 ) ; p < . 001 , $$p<.01$$ p < . 01 , and $$p<.001$$ p < . 001 , respectively) during BS modification while performing the hand-tracing task.

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