DocumentCode
2917292
Title
Learning-based hypothesis fusion for robust catheter tracking in 2D X-ray fluoroscopy
Author
Wu, Wen ; Chen, Terrence ; Barbu, Adrian ; Wang, Peng ; Strobel, Norbert ; Zhou, Shaohua Kevin ; Comaniciu, Dorin
Author_Institution
Image Analytics & Inf., Siemens Corp. Res., Princeton, NJ, USA
fYear
2011
fDate
20-25 June 2011
Firstpage
1097
Lastpage
1104
Abstract
Catheter tracking has become more and more important in recent interventional applications. It provides real time navigation for the physicians and can be used to control a motion compensated fluoro overlay reference image for other means of guidance, e.g. involving a 3D anatomical model. Tracking the coronary sinus (CS) catheter is effective to compensate respiratory and cardiac motion for 3D overlay navigation to assist positioning the ablation catheter in Atrial Fibrillation (Afib) treatments. During interventions, the CS catheter performs rapid motion and non-rigid deformation due to the beating heart and respiration. In this paper, we model the CS catheter as a set of electrodes. Novelly designed hypotheses generated by a number of learning-based detectors are fused. Robust hypothesis matching through a Bayesian framework is then used to select the best hypothesis for each frame. As a result, our tracking method achieves very high robustness against challenging scenarios such as low SNR, occlusion, foreshortening, non-rigid deformation, as well as the catheter moving in and out of ROI. Quantitative evaluation has been conducted on a database of 13221 frames from 1073 sequences. Our approach obtains 0.50mm median error and 0.76mm mean error. 97.8% of evaluated data have errors less than 2.00mm. The speed of our tracking algorithm reaches 5 frames-per-second on most data sets. Our approach is not limited to the catheters inside the CS but can be extended to track other types of catheters, such as ablation catheters or circumferential mapping catheters.
Keywords
belief networks; cardiology; catheters; diagnostic radiography; diseases; heuristic programming; image sequences; learning (artificial intelligence); medical image processing; motion compensation; patient treatment; tracking; 2D X-ray fluoroscopy; 3D anatomical model; 3D overlay navigation; Bayesian framework; ROI; SNR; ablation catheter positioning; atrial fibrillation treatment; cardiac motion compensation; catheter tracking; circumferential mapping catheter; coronary sinus catheter; foreshortening; hypothesis matching; learning-based detector; learning-based hypothesis fusion; motion compensated fluoro overlay reference image; nonrigid deformation; occlusion; quantitative evaluation; real time navigation; respiratory motion compensation; Approximation methods; Catheters; Detectors; Electrodes; Polynomials; Shape; Tracking;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2011 IEEE Conference on
Conference_Location
Providence, RI
ISSN
1063-6919
Print_ISBN
978-1-4577-0394-2
Type
conf
DOI
10.1109/CVPR.2011.5995553
Filename
5995553
Link To Document