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Medical image segmentation on GPUs - A comprehensive review

机译:GPU上的医学图像分割-全面回顾

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Segmentation of anatomical structures, from modalities like computed tomography (CT), magnetic resonance imaging (MRI) and ultrasound, is a key enabling technology for medical applications such as diagnostics, planning and guidance. More efficient implementations are necessary, as most segmentation methods are computationally expensive, and the amount of medical imaging data is growing. The increased programmability of graphic processing units (GPUs) in recent years have enabled their use in several areas. GPUs can solve large data parallel problems at a higher speed than the traditional CPU, while being more affordable and energy efficient than distributed systems. Furthermore, using a GPU enables concurrent visualization and interactive segmentation, where the user can help the algorithm to achieve a satisfactory result. This review investigates the use of GPUs to accelerate medical image segmentation methods. A set of criteria for efficient use of GPUs are defined and each segmentation method is rated accordingly. In addition, references to relevant GPU implementations and insight into GPU optimization are provided and discussed. The review concludes that most segmentation methods may benefit from CPU processing due to the methods' data parallel structure and high thread count. However, factors such as synchronization, branch divergence and memory usage can limit the speedup. (C) 2014 The Authors. Published by Elsevier B.V.
机译:从诸如计算机断层扫描(CT),磁共振成像(MRI)和超声之类的方式对解剖结构进行分割,是用于医疗应用(例如诊断,计划和指导)的一项关键技术。由于大多数分割方法在计算上都非常昂贵,并且医学成像数据的数量正在增长,因此必须有更有效的实现。近年来,图形处理单元(GPU)的可编程性增强,使其可以在多个领域中使用。 GPU可以以比传统CPU更高的速度解决大型数据并行问题,同时比分布式系统更经济实惠。此外,使用GPU可以同时进行可视化和交互式分段,用户可以在其中帮助算法实现令人满意的结果。这篇评论调查了GPU的使用,以加速医学图像分割方法。定义了一组有效使用GPU的标准,并相应地评估了每种分割方法。此外,还提供并讨论了有关GPU实现的参考以及对​​GPU优化的见解。审查得出的结论是,由于分段方法的数据并行结构和高线程数,大多数分段方法可能会受益于CPU处理。但是,诸如同步,分支分歧和内存使用之类的因素可能会限制速度。 (C)2014作者。由Elsevier B.V.发布

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