Difference between revisions of "Projects:SegmentationEndocardialWall"

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== Future Work ==
 
== Future Work ==
  
The two teams from Georgia Tech and University of Utah held a teleconference on November 10, 2010. The Georgia Tech team requested 3-month pre-ablation, immediately after ablation, and 3-month post-ablation DE-MRI, their corresponding hand segmentation as well as the outcome of the ablation procedure for the DE-MRI's provided. The specific information of interest with regards to the procedure outcome involve recurrence of the atrial fibrillation, the time of recurrence after the procedure, and  any other relevant clinical data which its prediction could assist the physician before the ablation procedure. The Utah team agreed to provide the data in a week. The two teams agreed to exchange their latest works/publications regarding the atrial fibrillation project.
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The two teams from Georgia Tech and University of Utah held a teleconference on November 10, 2010. The Georgia Tech team requested 3-month pre-ablation, immediately after ablation, and 3-month post-ablation DE-MRI, their corresponding hand segmentation of the left atrial wall as well as the outcome of the ablation procedure for the DE-MRI's provided. The specific information of interest with regards to the procedure outcome involve recurrence of the atrial fibrillation, the time of recurrence after the procedure, and  any other relevant clinical data which its prediction could assist the physician before the ablation procedure. The Utah team agreed to provide the data in a week. The two teams agreed to exchange their latest works/publications regarding the atrial fibrillation project.
  
 
The Georgia Tech team proposed using ideas in machine learning to predict the success of the ablation procedure (among other information of interest for the physician) based on pre-ablation MRI. The Utah team has already published results indicating the significance of pre-ablation DE-MRI in the outcome of the ablation therapy.
 
The Georgia Tech team proposed using ideas in machine learning to predict the success of the ablation procedure (among other information of interest for the physician) based on pre-ablation MRI. The Utah team has already published results indicating the significance of pre-ablation DE-MRI in the outcome of the ablation therapy.

Revision as of 17:47, 12 November 2010

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Description

Atrial fibrillation, a cardiac arrhythmia characterized by unsynchronized electrical activity in the atrial chambers of the heart, is a rapidly growing problem in modern societies. Electrical cardioversion and antiarrhythmic drugs are used to manage this condition, but suffer from low success rates and involve major side effects. In an alternative treatment, known as catheter ablation, specific parts of the left atrium are targeted for radio frequency ablation using an intracardiac catheter. Application of radio frequency energy to the cardiac tissue causes thermal injury (lesions), which in turn results into scar tissue. Successful ablation can eliminate, or isolate, the problematic sources of electrical activity and effectively cure atrial fibrillation.

Magnetic resonance imaging (MRI) has been used for both pre- and and post-ablation assessment of the atrial wall. MRI can aid in selecting the right candidate for the ablation procedure and assessing post-ablation scar formations. Image processing techniques can be used for automatic segmentation of the atrial wall, which facilitates an accurate statistical assessment of the region. As a first step towards the general solution to the computer-assisted segmentation of the left atrial wall, in this research we propose a shape-based image segmentation framework to segment the endocardial wall of the left atrium.

Our Approach

A powerful approach in medical image segmentation is active contour modeling wherein the boundaries of an object of interest are captured by minimizing an energy functional. The segmentation of the endocardial wall of the left atrium in delayed-enhancement magnetic resonance images (DE-MRI) using active contours is a challenging problem mainly due to the absence of clear boundaries. This usually leads either to contour leaks, where the contour expands beyond the desired boundary, or partial segmentation, where the contour only captures the desired area partially. A shape-based segmentation approach can overcome this problem by using prior shape knowledge in the segmentation process. In this research, we use shape learning and shape-based image segmentation to identify the endocardial wall of the left atrium in the delayed-enhancement magnetic resonance images.

Future Work

The two teams from Georgia Tech and University of Utah held a teleconference on November 10, 2010. The Georgia Tech team requested 3-month pre-ablation, immediately after ablation, and 3-month post-ablation DE-MRI, their corresponding hand segmentation of the left atrial wall as well as the outcome of the ablation procedure for the DE-MRI's provided. The specific information of interest with regards to the procedure outcome involve recurrence of the atrial fibrillation, the time of recurrence after the procedure, and any other relevant clinical data which its prediction could assist the physician before the ablation procedure. The Utah team agreed to provide the data in a week. The two teams agreed to exchange their latest works/publications regarding the atrial fibrillation project.

The Georgia Tech team proposed using ideas in machine learning to predict the success of the ablation procedure (among other information of interest for the physician) based on pre-ablation MRI. The Utah team has already published results indicating the significance of pre-ablation DE-MRI in the outcome of the ablation therapy.

Publications

Key Investigators

Georgia Tech: Behnood Gholami, Yi Gao, Wassim Haddad, and Allen Tannenbaum

University of Utah: Rob MacLeod, Josh Blauer, and Josh Cates