| Literature DB >> 28160691 |
Matineh Shaker1, Deniz Erdogmus2, Jennifer Dy3, Sylvain Bouix4.
Abstract
We present a method to estimate a multivariate Gaussian distribution of diffusion tensor features in a set of brain regions based on a small sample of healthy individuals, and use this distribution to identify imaging abnormalities in subjects with mild traumatic brain injury. The multivariate model receives apriori knowledge in the form of a neighborhood graph imposed on the precision matrix, which models brain region interactions, and an additional L1 sparsity constraint. The model is then estimated using the graphical LASSO algorithm and the Mahalanobis distance of healthy and TBI subjects to the distribution mean is used to evaluate the discriminatory power of the model. Our experiments show that the addition of the apriori neighborhood graph results in significant improvements in classification performance compared to a model which does not take into account the brain region interactions or one which uses a fully connected prior graph. In addition, we describe a method, using our model, to detect the regions that contribute the most to the overall abnormality of the DTI profile of a subject's brain.Entities:
Keywords: DTI; Graphical lasso; Sparse learning; TBI
Mesh:
Year: 2017 PMID: 28160691 PMCID: PMC5347260 DOI: 10.1016/j.media.2017.01.005
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545