DocumentCode :
1444044
Title :
Perception-Based Visualization of Manifold-Valued Medical Images Using Distance-Preserving Dimensionality Reduction
Author :
Hamarneh, Ghassan ; McIntosh, Chris ; Drew, Mark S.
Author_Institution :
Med. Image Anal. Lab., Simon Fraser Univ., Burnaby, BC, Canada
Volume :
30
Issue :
7
fYear :
2011
fDate :
7/1/2011 12:00:00 AM
Firstpage :
1314
Lastpage :
1327
Abstract :
A method for visualizing manifold-valued medical image data is proposed. The method operates on images in which each pixel is assumed to be sampled from an underlying manifold. For example, each pixel may contain a high dimensional vector, such as the time activity curve (TAC) in a dynamic positron emission tomography (dPET) or a dynamic single photon emission computed tomography (dSPECT) image, or the positive semi-definite tensor in a diffusion tensor magnetic resonance image (DTMRI). A nonlinear mapping reduces the dimensionality of the pixel data to achieve two goals: distance preservation and embedding into a perceptual color space. We use multidimensional scaling distance-preserving mapping to render similar pixels (e.g., DT or TAC pixels) with perceptually similar colors. The 3D CIELAB perceptual color space is adopted as the range of the distance preserving mapping, with a final similarity transform mapping colors to a maximum gamut size. Similarity between pixels is either determined analytically as geodesics on the manifold of pixels or is approximated using manifold learning techniques. In particular, dissimilarity between DTMRI pixels is evaluated via a Log-Euclidean Riemannian metric respecting the manifold of the rank 3, second-order positive semi-definite DTs, whereas the dissimilarity between TACs is approximated via ISOMAP. We demonstrate our approach via artificial high-dimensional, manifold-valued data, as well as case studies of normal and pathological clinical brain and heart DTMRI, dPET, and dSPECT images. Our results demonstrate the effectiveness of our approach in capturing, in a perceptually meaningful way, important features in the data.
Keywords :
biomedical MRI; data visualisation; medical image processing; positron emission tomography; single photon emission computed tomography; 3D CIELAB perceptual color space; ISOMAP; Log-Euclidean Riemannian metric; dPET image; dSPECTimage; diffusion tensor magnetic resonance image; distance-preserving dimensionality reduction; dynamic positron emission tomography; dynamic single photon emission computed tomography; manifold-valued medical images; multidimensional scaling distance-preserving mapping; nonlinear mapping; perception-based visualization; time activity curve; Biomedical imaging; Data visualization; Image color analysis; Manifolds; Measurement; Pixel; Three dimensional displays; Color; diffusion tensor magnetic resonance imaging (DTMRI); distance-preserving mapping; dynamic positron emission tomography (dPET); dynamic single photon emission computed tomography (dSPECT); high dimensional data; manifold-valued data; multidimensional scaling; nonlinear dimensionality reduction; visualization; Algorithms; Brain Neoplasms; Color; Corpus Callosum; Diagnostic Imaging; Diffusion Tensor Imaging; Glioblastoma; Heart; Humans; Image Processing, Computer-Assisted; Kidney Diseases; Models, Biological; Multiple Sclerosis; Nonlinear Dynamics; Positron-Emission Tomography; Putamen; Regression Analysis; Tomography, Emission-Computed, Single-Photon;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2011.2111422
Filename :
5709986
Link To Document :
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