An ITK Implementation of a Physics-based Non-rigid Registration Method for Brain Deformation in Image-guided Neurosurgery

Yixun eLiu, Yixun eLiu, Andriy eKot,Fotis eDrakopoulos, Chengjun eYao, Andrey eFedorov, Andrey eFedorov,Andinet eEnquobahrie,Olivier eClatz,Nikos P Chrisochoides

Frontiers in Neuroinformatics(2014)

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摘要
As part of the ITK v4 project efforts, we have developed ITK filters for physics-based non-rigid registration (PBNRR), which satisfies the following requirements: account for tissue properties in the registration, improve accuracy compared to rigid registration, and reduce execution time using GPU and multi-core accelerators. The implementation has three main components: (1) Feature Point Selection, (2) Block Matching (mapped to both multi-core and GPU processors), and (3) a Robust Finite Element Solver. The use of multi-core and GPU accelerators in ITK v4 provides substantial performance improvements. For example, for the non-rigid registration of brain MRIs, the performance of the block matching filter on average is about 10 times faster when 12 hyperthreaded multi-cores are used and about 83 times faster when the NVIDIA Tesla GPU is used in Dell Workstation.
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关键词
gpu,biomechanical model,ITK,non-rigid registration,tumor resection,image-guided neurosurgery
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