DocumentCode :
51911
Title :
Functional Brain Network Classification With Compact Representation of SICE Matrices
Author :
Jianjia Zhang ; Luping Zhou ; Lei Wang ; Wanqing Li
Author_Institution :
Sch. of Comput. Sci. & Software Eng., Univ. of Wollongong, Wollongong, NSW, Australia
Volume :
62
Issue :
6
fYear :
2015
fDate :
Jun-15
Firstpage :
1623
Lastpage :
1634
Abstract :
Recently, a sparse inverse covariance estimation (SICE) technique has been employed to model functional brain connectivity. The inverse covariance matrix (SICE matrix in short) estimated for each subject is used as a representation of brain connectivity to discriminate Alzheimers disease from normal controls. However, we observed that direct use of the SICE matrix does not necessarily give satisfying discrimination, due to its high dimensionality and the scarcity of training subjects. Looking into this problem, we argue that the intrinsic dimensionality of these SICE matrices shall be much lower, considering 1) an SICE matrix resides on a Riemannian manifold of symmetric positive definiteness matrices, and 2) human brains share common patterns of connectivity across subjects. Therefore, we propose to employ manifold-based similarity measures and kernel-based PCA to extract principal connectivity components as a compact representation of brain network. Moreover, to cater for the requirement of both discrimination and interpretation in neuroimage analysis, we develop a novel preimage estimation algorithm to make the obtained connectivity components anatomically interpretable. To verify the efficacy of our method and gain insights into SICE-based brain networks, we conduct extensive experimental study on synthetic data and real rs-fMRI data from the ADNI dataset. Our method outperforms the comparable methods and improves the classification accuracy significantly.
Keywords :
biomedical MRI; brain; diseases; image classification; image representation; medical image processing; neurophysiology; physiological models; principal component analysis; Alzheimers disease; Riemannian manifold; SICE matrix representation; functional brain connectivity model; functional brain network classification; functional brain network representation; inverse covariance matrix estimation; kernel-based PCA; neuroimage analysis; preimage estimation algorithm; principal connectivity component extraction; real rs-fMRI data; sparse inverse covariance estimation; Covariance matrices; Estimation; Kernel; Manifolds; Principal component analysis; Silicon; Symmetric matrices; Alzheimer’s disease classification; Alzheimer´s disease (AD) classification; Brain network; SPD kernel; brain network; kernel PCA; kernel principal component analysis (PCA); pre-image estimation; preimage estimation; rs-fMRI; symmetric positive definite (SPD) kernel;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2015.2399495
Filename :
7031385
Link To Document :
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