异构医学图像配准加速平台的研究

W. Plishker, O. Dandekar, S. Bhattacharyya, R. Shekhar
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引用次数: 9

摘要

在过去的十年中,提高医学图像配准的性能和准确性一直是医学成像创新的动力。准确的图像配准增强了对患者的诊断,解释了结构形态随时间的变化,甚至结合了来自不同模式的图像。医学图像配准研究的最终目标是创建一个鲁棒的,实时的,弹性的配准解决方案,可用于多种模式。对于这样一个计算密集和多方面的问题,研究人员已经在不同层次上利用并行性来提高该应用程序的性能,但是还没有一个足够快和有效的解决方案来获得广泛的临床应用。为了实现实时弹性注册,实现必须同时利用应用程序中的多种并行性,通过针对异构平台,其计算组件(例如多处理器,图形处理器,现场可编程门阵列)匹配这些类型的并行性。我们的初步实验表明,与高性能单处理器系统相比,8节点异构集群可以实现100倍以上的加速。通过创建一个基于现代硬件的平台,我们相信为图像配准定制的异构计算平台可以提供强大的、可扩展的、低成本的亚分钟医学图像配准功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Heterogeneous Medical Image Registration Acceleration Platform
For the past decade, improving the performance and accuracy of medical image registration has been a driving force of innovation in medical imaging. Accurate image registration enhances diagnoses of patients, accounts for changes in morphology of structures over time, and even combines images from different modalities. The ultimate goal of medical image registration research is to create a robust, real time, elastic registration solution that may be used on many modalities. With such a computationally intensive and multifaceted problem, researchers have exploited parallelism at different levels to improve the performance of this application, but there has yet to be a solution fast enough and effective enough to gain widespread clinical use. To achieve real time elastic registration, an implementation must simultaneously exploit multiple types of parallelism in the application by targeting a heterogeneous platform whose computational components (e.g. multiprocessors, graphics processors, field programmable gate arrays) match these types of parallelism. Our initial experiments indicate that an 8 node heterogeneous cluster can realize over 100times speedup compared to a high performance uniprocessor system. By creating a platform based on modern hardware, we believe that a heterogeneous compute platform customized for image registration can provide robust, scalable, cost effective sub-minute medical image registration capabilities.
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