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Nonrigid motion compensation of free breathing acquired myocardial perfusion data. In: Handels, (2011)

by G Wollny, P Kellman, A Santos, M J Ledesma
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Automatic motion compensation of free breathing acquired myocardial perfusion data by using independent component analysis

by Gert Wollny , Peter Kellman , Andrés Santos , María J Ledesma-Carbayo
"... a b s t r a c t Images acquired during free breathing using first-pass gadolinium-enhanced myocardial perfusion magnetic resonance imaging (MRI) exhibit a quasiperiodic motion pattern that needs to be compensated for if a further automatic analysis of the perfusion is to be executed. In this work, ..."
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a b s t r a c t Images acquired during free breathing using first-pass gadolinium-enhanced myocardial perfusion magnetic resonance imaging (MRI) exhibit a quasiperiodic motion pattern that needs to be compensated for if a further automatic analysis of the perfusion is to be executed. In this work, we present a method to compensate this movement by combining independent component analysis (ICA) and image registration: First, we use ICA and a time-frequency analysis to identify the motion and separate it from the intensity change induced by the contrast agent. Then, synthetic reference images are created by recombining all the independent components but the one related to the motion. Therefore, the resulting image series does not exhibit motion and its images have intensities similar to those of their original counterparts. Motion compensation is then achieved by using a multi-pass image registration procedure. We tested our method on 39 image series acquired from 13 patients, covering the basal, mid and apical areas of the left heart ventricle and consisting of 58 perfusion images each. We validated our method by comparing manually tracked intensity profiles of the myocardial sections to automatically generated ones before and after registration of 13 patient data sets (39 distinct slices). We compared linear, non-linear, and combined ICA based registration approaches and previously published motion compensation schemes. Considering run-time and accuracy, a two-step ICA based motion compensation scheme that first optimizes a translation and then for non-linear transformation performed best and achieves registration of the whole series in 32 ± 12 s on a recent workstation. The proposed scheme improves the Pearsons correlation coefficient between manually and automatically obtained time-intensity curves from .84 ± .19 before registration to .96 ± .06 after registration.
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...employing ICA to identify three feature images (baseline, peak RV enhancement, peak LV enhancement) and combine these to create synthetic references. Then linear registration was used to compensate for breathing motion, hence the extraction of a ROI around the heart was required and done based on the identified RV and LV enhancement peaks. However, Gupta et al. (2010) reported that the method failed to properly identify the feature images if large movement was present. Also, in Wollny et al. (2010a) it was reported that this approach failed for perfusion series acquired free breathing, and in Wollny et al. (2011) an extension to the method was given to enable its application to free breathing acquired data. Since the approach we present in this article builds on the idea of using ICA to create reference images, we will discuss the method in Section 2 in more detail. Finally, learning based methods can be used for motion compensation, e.g. Stegmann et al. (2005). However, these methods usually need large training sets to generate the model that is later used for registration. 1.2. Our contribution First, we will give a detailed review of the ICA based analysis and motion compensation method presented b...

RESEARCH Open Access

by unknown authors
"... Free breathing myocardial perfusion data sets for performance analysis of motion compensation algorithms Gert Wollny1,2 * and Peter Kellman3 Background: Perfusion quantification by using first-pass gadolinium-enhanced myocardial perfusion magnetic resonance imaging (MRI) has proved to be a reliable ..."
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Free breathing myocardial perfusion data sets for performance analysis of motion compensation algorithms Gert Wollny1,2 * and Peter Kellman3 Background: Perfusion quantification by using first-pass gadolinium-enhanced myocardial perfusion magnetic resonance imaging (MRI) has proved to be a reliable tool for the diagnosis of coronary artery disease that leads to reduced blood flow to the myocardium. The image series resulting from such acquisition usually exhibits a breathing motion that needs to be compensated for if a further automatic analysis of the perfusion is to be executed. Various algorithms have been presented to facilitate such a motion compensation, but the lack of publicly available data sets hinders a proper, reproducible comparison of these algorithms. Material: Free breathing perfusion MRI series of ten patients considered clinically to have a stress perfusion defect were acquired; for each patient a rest and a stress study was executed. Manual segmentations of the left ventricle myocardium and the right-left ventricle insertion point are provided for all images in order to make a unified validation of the motion compensation algorithms and the perfusion analysis possible. In addition, all the scripts and the software required to run the experiments are provided alongside the data, and to enable interested parties to directly run the experiments themselves, the test bed is also provided as a virtual hard disk. Findings: To illustrate the utility of the data set two motion compensation algorithms with publicly available implementations were applied to the data and earlier reported results about the performance of these algorithms could be confirmed. Conclusion: The data repository alongside the evaluation test bed provides the option to reliably compare motion compensation algorithms for myocardial perfusion MRI. In addition, we encourage that researchers add their own annotations to the data set, either to provide inter-observer comparisons of segmentations, or to make other applications possible, for example, the validation of segmentation algorithms.

ANALYSIS OF CONTRAST-ENHANCED MEDICAL IMAGES By

by Fahmi Abdallah, Fahmi Mohammed Khalifa, Fahmi Abdallah, Fahmi Mohammed Khalifa, Fahmi Abdallah, Fahmi Mohammed Khalifa, Karla Conn Welch, Ph. D , 2014
"... This Dissertation is brought to you for free and open access by ThinkIR: The University of Louisville's Institutional Repository. It has been accepted for inclusion in Electronic Theses and Dissertations by an authorized administrator of ThinkIR: The University of Louisville's Institutiona ..."
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This Dissertation is brought to you for free and open access by ThinkIR: The University of Louisville's Institutional Repository. It has been accepted for inclusion in Electronic Theses and Dissertations by an authorized administrator of ThinkIR: The University of Louisville's Institutional Repository. This title appears here courtesy of the author, who has retained all other copyrights. For more information, please contact rihowa01@louisville.edu.
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...ation is achieved based on minimizing the sum of squared differences. However, only translationalmotion was corrected. A similar ICA-based nonrigid registration approach was proposed by Wollny et al. =-=[411]-=- using an improved independent component labeling approach that is based on time-frequency analysis of the perfusion images. Wollny et al. [412] proposed a multiresolution nonrigid registration approa...

dynamic

by Sajan Goud Lingala, Student Member, Edward Dibella, Mathews Jacob, Senior Member
"... 1Deformation corrected compressed sensing ..."
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1Deformation corrected compressed sensing
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