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Using the GRID to improve the computation speed of electrical impedance tomography (EIT) reconstruction algorithms

机译:使用GRID来提高电阻抗层析成像(EIT)重建算法的计算速度

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摘要

In our group at University College London, we have been developing electrical impedance tomography (EIT) of brain function. We have attempted to improve image quality by the use of realistic anatomical meshes and, more recently, non-linear reconstruction methods. Reconstruction with linear methods, with pre-processing, may take up to a few minutes per image for even detailed meshes. However, iterative non-linear reconstruction methods require much more computational resources, and reconstruction with detailed meshes was taking far too long for clinical use. We present a solution to this timing bottleneck, using the resources of the GRID, the development of coordinated computing resources over the internet that are not subject to centralized control using standard, open, general-purpose protocols and are transparent to the user. Optimization was performed by splitting reconstruction of image series into individual jobs of one image each; no parallelization was attempted. Using the GRID middleware 'Condor' and a cluster of 920 nodes, reconstruction of EIT images of the human head with a non-linear algorithm was speeded up by 25-40 times compared to serial processing of each image. This distributed method is of direct practical value in applications such as EIT of epileptic seizures where hundreds of images are collected over the few minutes of a seizure and will be of value to clinical data collection with similar requirements. In the future, the same resources could be employed for the more ambitious task of parallelized code.
机译:在伦敦大学学院的小组中,我们一直在开发脑功能的电阻抗断层扫描(EIT)。我们已经尝试通过使用实际的解剖网格以及最近的非线性重建方法来提高图像质量。使用线性方法进行重构和预处理,即使是详细的网格,每个图像最多可能需要花费几分钟。但是,迭代非线性重建方法需要更多的计算资源,并且使用详细的网格进行重建对于临床使用而言花费的时间太长。我们使用GRID的资源,通过Internet开发协调的计算资源,从而解决此时序瓶颈问题,这些资源无需使用标准,开放,通用协议进行集中控制,并且对用户透明。通过将图像序列的重建分解为一张图像的各个作业来进行优化。没有尝试并行化。与每个图像的串行处理相比,使用GRID中间件“ Condor”和920个节点的群集,使用非线性算法重建人头EIT图像的速度提高了25-40倍。这种分布式方法在癫痫发作的EIT等应用中具有直接的实用价值,在癫痫发作的几分钟内收集了数百张图像,对于具有类似要求的临床数据收集将具有重要的价值。将来,相同的资源可用于并行代码的宏伟任务。

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