DocumentCode :
1894
Title :
Probabilistic Sparse Matching for Robust 3D/3D Fusion in Minimally Invasive Surgery
Author :
Neumann, Dominik ; Grbic, Sasa ; John, Michael ; Navab, Nassir ; Hornegger, Joachim ; Ionasec, Razvan
Author_Institution :
Imaging & Comput. Vision, Siemens Corp. Technol., Princeton, NJ, USA
Volume :
34
Issue :
1
fYear :
2015
fDate :
Jan. 2015
Firstpage :
49
Lastpage :
60
Abstract :
Classical surgery is being overtaken by minimally invasive and transcatheter procedures. As there is no direct view or access to the affected anatomy, advanced imaging techniques such as 3D C-arm computed tomography (CT) and C-arm fluoroscopy are routinely used in clinical practice for intraoperative guidance. However, due to constraints regarding acquisition time and device configuration, intraoperative modalities have limited soft tissue image quality and reliable assessment of the cardiac anatomy typically requires contrast agent, which is harmful to the patient and requires complex acquisition protocols. We propose a probabilistic sparse matching approach to fuse high-quality preoperative CT images and nongated, noncontrast intraoperative C-arm CT images by utilizing robust machine learning and numerical optimization techniques. Thus, high-quality patient-specific models can be extracted from the preoperative CT and mapped to the intraoperative imaging environment to guide minimally invasive procedures. Extensive quantitative experiments on 95 clinical datasets demonstrate that our model-based fusion approach has an average execution time of 1.56 s, while the accuracy of 5.48 mm between the anchor anatomy in both images lies within expert user confidence intervals. In direct comparison with image-to-image registration based on an open-source state-of-the-art medical imaging library and a recently proposed quasi-global, knowledge-driven multi-modal fusion approach for thoracic-abdominal images, our model-based method exhibits superior performance in terms of registration accuracy and robustness with respect to both target anatomy and anchor anatomy alignment errors.
Keywords :
biological organs; biological tissues; cardiology; catheters; computerised tomography; diagnostic radiography; feature extraction; image fusion; image matching; image registration; learning (artificial intelligence); medical image processing; optimisation; probability; surgery; 3D C-arm computed tomography; C-arm fluoroscopy; acquisition time; advanced imaging techniques; anchor anatomy; anchor anatomy alignment errors; average execution time; cardiac anatomy; classical surgery; clinical datasets; clinical practice; complex acquisition protocols; contrast agent; device configuration; expert user confidence intervals; extensive quantitative experiments; feature extraction; high-quality patient-specific models; high-quality preoperative CT image fusion; image-to-image registration; intraoperative guidance; intraoperative imaging environment; intraoperative modalities; limited soft tissue image quality; minimally invasive procedures; minimally invasive surgery; model-based fusion approach; noncontrast intraoperative C-arm CT images; numerical optimization techniques; open-source state-of-the-art medical imaging library; probabilistic sparse matching approach; quasi-global knowledge-driven multimodal fusion approach; reliable assessment; robust 3D-3D fusion; robust machine learning; target anatomy; thoracic-abdominal images; transcatheter procedures; Computed tomography; Optimization; Probabilistic logic; Robustness; Three-dimensional displays; Training; Anatomical overlay; computed tomography (CT); model-based cardiac image registration; procedure guidance;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2014.2343936
Filename :
6867344
Link To Document :
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