DocumentCode :
47197
Title :
Synthetic Generation of Myocardial Blood–Oxygen-Level-Dependent MRI Time Series Via Structural Sparse Decomposition Modeling
Author :
Rusu, Calin ; Morisi, Rita ; Boschetto, D. ; Dharmakumar, Rohan ; Tsaftaris, Sotirios A.
Author_Institution :
IMT Inst. for Adv. Studies Lucca, Lucca, Italy
Volume :
33
Issue :
7
fYear :
2014
fDate :
Jul-14
Firstpage :
1422
Lastpage :
1433
Abstract :
This paper aims to identify approaches that generate appropriate synthetic data (computer generated) for cardiac phase-resolved blood-oxygen-level-dependent (CP-BOLD) MRI. CP-BOLD MRI is a new contrast agent- and stress-free approach for examining changes in myocardial oxygenation in response to coronary artery disease. However, since signal intensity changes are subtle, rapid visualization is not possible with the naked eye. Quantifying and visualizing the extent of disease relies on myocardial segmentation and registration to isolate the myocardium and establish temporal correspondences and ischemia detection algorithms to identify temporal differences in BOLD signal intensity patterns. If transmurality of the defect is of interest pixel-level analysis is necessary and thus a higher precision in registration is required. Such precision is currently not available affecting the design and performance of the ischemia detection algorithms. In this work, to enable algorithmic developments of ischemia detection irrespective to registration accuracy, we propose an approach that generates synthetic pixel-level myocardial time series. We do this by 1) modeling the temporal changes in BOLD signal intensity based on sparse multi-component dictionary learning, whereby segmentally derived myocardial time series are extracted from canine experimental data to learn the model; and 2) demonstrating the resemblance between real and synthetic time series for validation purposes. We envision that the proposed approach has the capacity to accelerate development of tools for ischemia detection while markedly reducing experimental costs so that cardiac BOLD MRI can be rapidly translated into the clinical arena for the noninvasive assessment of ischemic heart disease.
Keywords :
biochemistry; biomedical MRI; blood; blood vessels; cardiology; compressed sensing; data visualisation; dictionaries; diseases; feature extraction; image registration; image segmentation; learning (artificial intelligence); medical image processing; muscle; oxygen; physiological models; time series; BOLD signal intensity patterns; BOLD signal intensity temporal change modeling; CP-BOLD MRI; O2; canine experimental data; cardiac phase-resolved blood-oxygen-level-dependent MRI; clinical application; computer data generation; contrast agent-free approach; coronary artery disease; defect transmurality; disease extent quantification; disease extent visualization; experimental cost reduction; ischemia detection algorithm design; ischemia detection algorithm performance; ischemia detection algorithms; ischemia detection tool development; model learning; myocardial blood-oxygen-level-dependent MRI time series; myocardial oxygenation changes; myocardial registration; myocardial segmentation; myocardial time series extraction; noninvasive ischemic heart disease assessment; pixel-level analysis; rapid cardiac BOLD MRI translation; rapid visualization; registration accuracy; registration precision; signal intensity changes; sparse multicomponent dictionary learning; stress-free approach; structural sparse decomposition modeling; synthetic MRI time series generation; synthetic pixel-level myocardial time series generation; temporal difference identification; Computational modeling; Data models; Dictionaries; Image segmentation; Magnetic resonance imaging; Myocardium; Time series analysis; Blood–oxygen-level-dependent; heart; magnetic resonance imaging (MRI); shift-invariance; sparse decomposition; synthetic generators;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2014.2313000
Filename :
6777337
Link To Document :
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