Title
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 (MSM) tool is a flexible, spherical registration approach that enables accurate registration of surfaces based on a variety of different features. Using MSM, we have previously shown that driving cross-subject surface alignment, using areal features, such as resting state-networks and myelin maps, improves group task fMRI statistics and map sharpness. However, the initial implementation of MSM's regularisation function did not penalize all forms of surface distortion evenly. In some cases, this allowed peak distortions to exceed neurobiologically plausible limits, unless regularisation strength was increased to a level which prevented the algorithm from fully maximizing surface alignment. Here we propose and implement a new regularisation penalty, derived from physically relevant equations of strain (deformation) energy, and demonstrate that its use leads to improved and more robust alignment of multimodal imaging data. In addition, since spherical warps incorporate projection distortions that are unavoidable when mapping from a convoluted cortical surface to the sphere, we also propose constraints that enforce smooth deformation of cortical anatomies. We test the impact of this approach for longitudinal modelling of cortical development for neonates (born between 31 and 43 weeks of post-menstrual age) and demonstrate that the proposed method increases the biological interpretability of the distortion fields and improves the statistical significance of population-based analysis relative to other spherical methods.
Year
DOI
Venue
2018
10.1016/j.neuroimage.2017.10.037
NeuroImage
Keywords
Field
DocType
Surface-based cortical registration,Longitudinal registration,Neonatal brain development,Discrete optimisation,Biomechanical priors
Population,Interpretability,Computer vision,Pattern recognition,Artificial intelligence,Deformation (mechanics),Bioinformatics,Statistical sensitivity,Smoothness,Distortion,Mathematics
Journal
Volume
ISSN
Citations 
167
1053-8119
23
PageRank 
References 
Authors
0.76
37
23
Name
Order
Citations
PageRank
Emma C. Robinson130619.25
Garcia Kara2230.76
Matthew F. Glasser3194970.22
Chen Zhengdao4383.67
Timothy S. Coalson565821.48
Antonios Makropoulos620311.11
Jelena Bozek7694.01
R Wright81187.56
Andreas Schuh9786.89
Matthew Webster1067219.97
Jana Hutter11725.99
Anthony N Price1225315.32
Lucilio Cordero-Grande1314016.15
Emer J. Hughes141216.85
Nora Tusor151174.77
Philip V. Bayly16241.80
David C. Van Essen17238198.61
Stephen M Smith189119670.46
Edwards A David19230.76
Jo Hajnal201796119.03
Mark Jenkinson211879143.90
Ben Glocker222157119.81
Daniel Rueckert239338637.58