Regions significant in GLM analysis included ACC, orbitofrontal and dorsolateral selleck chemicals llc prefrontal cortex, and expected subcortical regions (nucleus accumbens and putamen). Areas identified by MVPA included additional regions normally associated with primary motor and sensory functions, such as postcentral, lingual, pericalcarine, and cuneus regions, as well as areas implicated for visual and memory functions, such as fusiform, inferior temporal, and superior parietal areas. None of these regions even approached significance when tested with the GLM applied to overall BOLD activation. Some regions (e.g., rostral ACC and nucleus accumbens) showed
strong reward discriminability in MVPA and GLM, while others (supramarginal, precuneus, precentral gyrus, caudal ACC) showed marginal or insignificant modulation by GLM, but were among the ten best regions for MVPA (Table
1 and Table S1). Thus, MVPA should not be viewed as equivalent to simply lowering the threshold in a GLM analysis. An alternative way to quantify reward representation is via a “searchlight” procedure (Kriegeskorte et al., 2006). We examined patterns in the immediate neighborhood of individual voxels (a 27 voxel cube centered on that voxel) and tested the classifier’s ability to discriminate wins versus losses, using MVPA based on patterns within these local windows. For each searchlight, we assigned the classifier’s performance measure this website to the central voxel, and then tested each voxel against chance performance across subjects
(one-tailed, p < 0.001 for above-chance performance). For comparison, a GLM contrast of wins versus losses was determined at every brain voxel, which incorporates local information by averaging (smoothing) data from nearby voxels, and considers only estimated response magnitudes (two-tailed contrast between conditions, p < 0.001). Searchlight MVPA again revealed remarkably widespread reward signals—over 30% of all voxels within the brain mask showed a significant (p < 0.001) ability to decode reward in MVPA, whereas the GLM analysis resulted in significant effects in only 8% of voxels (uncorrected significance values shown in Figure 2B; GBA3 cluster-corrected results shown in Figure 3; cluster correction with k = 10 eliminated fewer than 1% of significant voxels for both MVPA and GLM analyses). Virtually every major cortical and subcortical division contained a significant cluster in one or both hemispheres (Figure 3A). This contrasted with the result from traditional whole-brain GLM analysis (Figure 2B and Figure S1), which was based on an HRF model and a smoothing kernel of 10 mm. Voxels detected by GLM analysis were limited largely to frontal and parietal regions. A 10 mm smoothing kernel was chosen to approximate the size of searchlights, and served as a conservative comparison for MVPA.