利用分布式和网格计算实现实时图像引导神经外科

N. Chrisochoides, Andrey Fedorov, A. Kot, N. Archip, P. Black, O. Clatz, A. Golby, R. Kikinis, S. Warfield
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引用次数: 57

摘要

神经外科切除术是治疗脑肿瘤的一种治疗干预手段。利用磁共振成像(MRI)作为图像引导神经外科(igs)决策的辅助手段,可以提高切除的精度。图像配准根据术中组织变形调整术前数据。有些方法通过跟踪整个脑容量的图像地标来提高配准精度。高计算成本使得这些技术不适合临床应用。在本文中,我们提出了一种最先进的注册方法的并行实现,以及一些需要的增量改进。总的来说,我们将平均数据集注册的响应时间从大约一个小时(某些情况下超过一个小时)减少到不到7分钟,这在神经外科医生规定的时间限制内。在临床实践中,我们首次证明,在分布式计算的帮助下,基于体积跟踪的非刚性MRI配准可以在术中计算
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Real-Time Image Guided Neurosurgery Using Distributed and Grid Computing
Neurosurgical resection is a therapeutic intervention in the treatment of brain tumors. Precision of the resection can be improved by utilizing magnetic resonance imaging (MRI) as an aid in decision making during image guided neurosurgery (IGNS). Image registration adjusts pre-operative data according to intra-operative tissue deformation. Some of the approaches increase the registration accuracy by tracking image landmarks through the whole brain volume. High computational cost used to render these techniques inappropriate for clinical applications. In this paper we present a parallel implementation of a state of the art registration method, and a number of needed incremental improvements. Overall, we reduced the response time for registration of an average dataset from about an hour and for some cases more than an hour to less than seven minutes, which is within the time constraints imposed by neurosurgeons. For the first time in clinical practice we demonstrated, that with the help of distributed computing non-rigid MRI registration based on volume tracking can be computed intra-operatively
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