| Literature DB >> 28756548 |
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 ([Formula: see text], [Formula: see text], and [Formula: see text], respectively) during BS modification while performing the hand-tracing task.Entities:
Keywords: Body schema; General linear model; Hand-tracing task; Motion artifacts; Near-infrared spectroscopy; Statistical parametric mapping
Year: 2017 PMID: 28756548 PMCID: PMC5563303 DOI: 10.1007/s40708-017-0070-x
Source DB: PubMed Journal: Brain Inform ISSN: 2198-4026
Fig. 1a Experimental time sequence, b design matrix for the GLM: b shows the elements in the design matrix in black () and white () in the gray image. Refer to Sect. 3.2 for details of the design matrix
Fig. 2a Locations of probes, b channel layout
Results of statistical tests using a model-free method in Step 1: z-values obtained using a paired t test,
Blue cells show , and red cells show . (Color table online)
Fig. 3Averaged waveform of hemodynamic responses at channels showing significant differences in Task 1 (left graphs) and Task 2 (right graphs). Error bars in each graph indicate of the measured waveforms every 10 s
Results of statistical test using a convolution matrix method in Step 2: mean values of AIC (at a first-level analysis) and z-values (at a second-level analysis, df = 15)
Blue cells show and red cells show . (Color table online)
Durbin–Watson ratios and AICs when a boxcar-function-based Gaussian convolution method was applied at Step 3. (Color table online)
Results of statistical test using a boxcar-function-based Gaussian convolution method in Step 3: z-values in a second-level analysis for three kinds of design matrices,
Blue cells show , and red cells show . (Color table online)
Fig. 4Statistical parametric maps (z-map images, ): a model-free method (Step 1); b convolution matrix method (Step 2); c a boxcar-function-based Gaussian convolution method (Step 3). (Color figure online)