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Multi-GPU Acceleration of Iterative X-ray CT Image Reconstruction

机译:迭代X射线CT图像重建的多GPU加速

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摘要

X-ray computed tomography is a widely used medical imaging modality for screening and diagnosing diseases and for image-guided radiation therapy treatment planning. Statistical iterative reconstruction (SIR) algorithms have the potential to significantly reduce image artifacts by minimizing a cost function that models the physics and statistics of the data acquisition process in X-ray CT. SIR algorithms have superior performance compared to traditional analytical reconstructions for a wide range of applications including nonstandard geometries arising from irregular sampling, limited angular range, missing data, and low-dose CT. The main hurdle for the widespread adoption of SIR algorithms in multislice X-ray CT reconstruction problems is their slow convergence rate and associated computational time.;We seek to design and develop fast parallel SIR algorithms for clinical X-ray CT scanners. Each of the following approaches is implemented on real clinical helical CT data acquired from a Siemens Sensation 16 scanner and compared to the straightforward implementation of the Alternating Minimization (AM) algorithm of O'Sullivan and Benac [1]. We parallelize the computationally expensive projection and backprojection operations by exploiting the massively parallel hardware architecture of 3 NVIDIA TITAN X Graphical Processing Unit (GPU) devices with CUDA programming tools and achieve an average speedup of 72X over a straightforward CPU implementation. We implement a multi-GPU based voxel-driven multislice analytical reconstruction algorithm called Feldkamp-Davis-Kress (FDK) [2] and achieve an average overall speedup of 1382X over the baseline CPU implementation by using 3 TITAN X GPUs. Moreover, we propose a novel adaptive surrogate-function based optimization scheme for the AM algorithm, resulting in more aggressive update steps in every iteration. On average, we double the convergence rate of our baseline AM algorithm and also improve image quality by using the adaptive surrogate function. We extend the multi-GPU and adaptive surrogate-function based acceleration techniques to dual-energy reconstruction problems as well. Furthermore, we design and develop a GPU-based deep Convolutional Neural Network (CNN) to denoise simulated low-dose X-ray CT images. Our experiments show significant improvements in the image quality with our proposed deep CNN-based algorithm against some widely used denoising techniques including Block Matching 3-D (BM3D) and Weighted Nuclear Norm Minimization (WNNM). Overall, we have developed novel fast, parallel, computationally efficient methods to perform multislice statistical reconstruction and image-based denoising on clinically-sized datasets.
机译:X射线计算机断层扫描是一种广泛使用的医学成像方法,用于筛查和诊断疾病以及图像指导的放射治疗治疗计划。统计迭代重建(SIR)算法具有通过最小化对X射线CT数据采集过程的物理和统计进行建模的代价函数来显着减少图像伪影的潜力。与传统的分析重建相比,SIR算法在广泛的应用中具有卓越的性能,包括因不规则采样,角度范围受限,数据丢失和低剂量CT引起的非标准几何形状。在多层X射线CT重建问题中广泛采用SIR算法的主要障碍是其收敛速度慢以及相关的计算时间。我们寻求设计和开发用于临床X射线CT扫描仪的快速并行SIR算法。以下每种方法均在从Siemens Sensation 16扫描仪获取的实际临床螺旋CT数据上实施,并与O'Sullivan和Benac [1]的交替最小化(AM)算法的直接实现进行了比较。我们通过利用CUDA编程工具利用3个NVIDIA TITAN X图形处理单元(GPU)设备的大规模并行硬件架构,并行化了计算量大的投影和反投影操作,并通过简单的CPU实现将平均速度提高了72倍。我们实现了一个基于多GPU的体素驱动的多层分析重建算法,称为Feldkamp-Davis-Kress(FDK)[2],并通过使用3个TITAN X GPU实现了比基线CPU实施高出平均1382X的平均速度。此外,我们为AM算法提出了一种新颖的基于自适应代理功能的优化方案,从而在每次迭代中都具有更积极的更新步骤。平均而言,我们使用基线替代算法的收敛速度提高了一倍,并通过使用自适应替代函数来提高图像质量。我们还将基于多GPU和自适应替代功能的加速技术扩展到了双能量重建问题。此外,我们设计和开发了基于GPU的深度卷积神经网络(CNN),以对模拟的低剂量X射线CT图像进行降噪。我们的实验表明,相对于包括块匹配3-D(BM3D)和加权核规范最小化(WNNM)在内的一些广泛使用的去噪技术,我们提出的基于深度CNN的算法在图像质量上有显着改善。总体而言,我们开发了新颖,快速,并行,计算效率高的方法,可对临床规模的数据集执行多层统计重建和基于图像的去噪。

著录项

  • 作者

    Mitra, Ayan.;

  • 作者单位

    Washington University in St. Louis.;

  • 授予单位 Washington University in St. Louis.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 185 p.
  • 总页数 185
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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