Multivariate Image Analysis of Magnetic Resonance Images with the Direct Exponential Curve Resolution Algorithm (DECRA): Part 2: Application to Human Brain Images |
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Authors: | B. Antalek J.P. Hornak W. Windig |
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Affiliation: | aImaging Research and Advanced Development, Eastman Kodak Company, Rochester, New York, 14650-2132;bCenter for Imaging Science and Department of Chemistry, Rochester Institute of Technology, Rochester, New York, 14623-5604, f1 |
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Abstract: | Owing to the heterogeneity of living tissues, it is challenging to quantify tissue properties using magnetic resonance imaging. Within a single voxel, contributions to the signal may result from several types of1H nuclei with varied chemical (e.g., −CH2−, −OH) and physical environments (e.g., tissue density, compartmentalization). Therefore, mixtures of1H environments are prevalent. Furthermore, each unique type of1H environment may possess a unique and characteristic spin–lattice relaxation time (T1) and spin–spin relaxation time (T2). A method for resolving these unique exponentials is introduced in a separate paper (Part 1. Algorithm and Model System) and uses the direct exponential curve resolution algorithm (DECRA). We present results from an analysis of images of the human head comprising brain tissues. |
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Keywords: | spin relaxation rates magnetic resonance imaging MRI multispectral tissue classification image segmentation |
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