2018
DOI: 10.1016/j.neuroimage.2017.10.037
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Multimodal surface matching with higher-order smoothness constraints

Abstract: In brain imaging, accurate alignment of cortical surfaces is fundamental to the statistical sensitivity and spatial localisation of group studies, and cortical surface-based alignment has generally been accepted to be superior to volume-based approaches at aligning cortical areas. However, human subjects have considerable variation in cortical folding, and in the location of functional areas relative to these folds. This makes alignment of cortical areas a challenging problem. The Multimodal Surface Matching (… Show more

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Cited by 246 publications
(235 citation statements)
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References 76 publications
(146 reference statements)
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“…Preprocessed images were nonlinearly registered to MNI152 space and cortical surfaces were extracted using FreeSurfer 5.3.0-HCP [110][111][112], with minor modifications to incorporate both T1w and T2w [18]. Cortical surfaces in individual participants were aligned using MSMAll [113,114] to the hemisphere-matched conte69 template [115]. T1w images were divided by aligned T2w images to produce a single volumetric T1w/T2w image per subject (Glasser and Van Essen, 2011).…”
Section: Mri Data Acquisition and Preprocessingmentioning
confidence: 99%
“…Preprocessed images were nonlinearly registered to MNI152 space and cortical surfaces were extracted using FreeSurfer 5.3.0-HCP [110][111][112], with minor modifications to incorporate both T1w and T2w [18]. Cortical surfaces in individual participants were aligned using MSMAll [113,114] to the hemisphere-matched conte69 template [115]. T1w images were divided by aligned T2w images to produce a single volumetric T1w/T2w image per subject (Glasser and Van Essen, 2011).…”
Section: Mri Data Acquisition and Preprocessingmentioning
confidence: 99%
“…BOLD timeseries were corrected for gradient nonlinearity, head motion, bias field and scanner drifts, then subjected to ICA-FIX for removal of additional noise 98 . The rs-fMRI data were transformed to native space and timeseries were sampled at each vertex of the MSMAll registered midthickness cortical surface 99,100 .…”
Section: B) Data Preprocessingmentioning
confidence: 99%
“…The HCP minimal processing pipeline was used Smith et al, 2013). Briefly, this included projection to the surface space, 2 mm FWHM smoothing, ICA+FIX denoising with minimal high-pass filtering, and surface registration using MSMall (Jenkinson et al, 2002(Jenkinson et al, , 2012Fischl, 2012;Robinson et al, 2014Robinson et al, , 2018Griffanti et al, 2014;Salimi-Khorshidi et al, 2014). To define our ROIs, we used a newly-developed multimodal parcellation (MMP) (Glasser et al, 2016a).…”
Section: First-level Processingmentioning
confidence: 99%