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Handling Big Data in Medical Imaging: Iterative Reconstruction with Large-Scale Automated Parallel Computation

机译:在医学成像中处理大数据:大规模自动并行计算的迭代重建

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摘要

The primary goal of this project is to implement the iterative statistical image reconstruction algorithm, in this case maximum likelihood expectation maximum (MLEM) used for dynamic cardiac single photon emission computed tomography, on Spark/GraphX. This involves porting the algorithm to run on large-scale parallel computing systems. Spark is an easy-to- program software platform that can handle large amounts of data in parallel. GraphX is a graph analytic system running on top of Spark to handle graph and sparse linear algebra operations in parallel. The main advantage of implementing MLEM algorithm in Spark/GraphX is that it allows users to parallelize such computation without any expertise in parallel computing or prior knowledge in computer science. In this paper we demonstrate a successful implementation of MLEM in Spark/GraphX and present the performance gains with the goal to eventually make it useable in clinical setting.
机译:该项目的主要目标是在Spark / GraphX上实现迭代统计图像重建算法,在这种情况下用于动态心脏单光子发射计算机断层扫描的最大似然期望最大值(MLEM)。这涉及移植算法以在大规模并行计算系统上运行。 Spark是易于编程的软件平台,可以并行处理大量数据。 GraphX是在Spark之上运行的图形分析系统,可并行处理图形和稀疏线性代数运算。在Spark / GraphX中实现MLEM算法的主要优势在于,它使用户可以并行化这种计算,而无需任何并行计算方面的专业知识或计算机科学的先验知识。在本文中,我们演示了MLEM在Spark / GraphX中的成功实现,并提出了性能上的提高,目的是最终使其在临床环境中可用。

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