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Technical Note: Design and implementation of a high-throughput pipeline for reconstruction and quantitative analysis of CT image data

机译:技术说明:用于重建和定量分析CT图像数据的高吞吐量管道的设计与实现

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Purpose With recent substantial improvements in modern computing, interest in quantitative imaging with CT has seen a dramatic increase. As a result, the need to both create and analyze large, high-quality datasets of clinical studies has increased as well. At present, no efficient, widely available method exists to accomplish this. The purpose of this technical note is to describe an open-source high-throughput computational pipeline framework for the reconstruction and analysis of diagnostic CT imaging data to conduct large-scale quantitative imaging studies and to accelerate and improve quantitative imaging research. Methods The pipeline consists of two, primary "blocks": reconstruction and analysis. Reconstruction is carried out via a graphics processing unit (GPU) queuing framework developed specifically for the pipeline that allows a dataset to be reconstructed using a variety of different parameter configurations such as slice thickness, reconstruction kernel, and simulated acquisition dose. The analysis portion then automatically analyzes the output of the reconstruction using "modules" that can be combined in various ways to conduct different experiments. Acceleration of analysis is achieved using cluster processing. Efficiency and performance of the pipeline are demonstrated using an example 142 subject lung screening cohort reconstructed 36 different ways and analyzed using quantitative emphysema scoring techniques. Results The pipeline reconstructed and analyzed the 5112 reconstructed datasets in approximately 10 days, a roughly 72x speedup over previous efforts using the scanner for reconstructions. Tightly coupled pipeline quality assurance software ensured proper performance of analysis modules with regard to segmentation and emphysema scoring. Conclusions The pipeline greatly reduced the time from experiment conception to quantitative results. The modular design of the pipeline allows the high-throughput framework to be utilized for other future experiments into different quantitative imaging techniques. Future applications of the pipeline being explored are robustness testing of quantitative imaging metrics, data generation for deep learning, and use as a test platform for image-processing techniques to improve clinical quantitative imaging.
机译:目的是,近期现代计算的大量改进,对CT的定量成像的兴趣已经看出了显着的增加。结果,需要创造和分析临床研究的大,高质量数据集的需求增加。目前,没有有效的广泛可用的方法来实现这一目标。本技术说明的目的是描述一个开源高吞吐量计算流水线框架,用于重建和分析诊断CT成像数据,以进行大规模的定量成像研究,并加速和改善定量成像研究。方法管道由两个,主要的“块”组成:重建和分析。通过专门为管道开发的图形处理单元(GPU)排队框架进行重建,该框架允许使用各种不同的参数配置(例如切片厚度,重建内核和模拟采集剂量)来重建数据集。然后,分析部分使用可以以各种方式组合的“模块”自动分析重建的输出来进行不同的实验。使用集群处理实现分析的加速度。使用示例142受试者肺筛选队列进行了对管道的效率和性能进行了证明了36种不同的方式并使用定量肺气肿评分技术进行分析。结果流水线在大约10天内重建并分析了5112重建数据集,在使用扫描仪进行重建之前,大约72倍的加速。紧密耦合的管道质量保证软件确保了分析模块的适当性能,关于分割和肺气肿评分。结论管道大大减少了从实验构想到定量结果的时间。管道的模块化设计允许高吞吐量框架用于其他未来的实验中的不同定量成像技术。探索管道的未来应用是对定量成像度量,深度学习数据生成的鲁棒性测试,以及用作图像处理技术的测试平台,以改善临床定量成像。

著录项

  • 来源
    《Medical Physics 》 |2019年第5期| 共13页
  • 作者单位

    Univ Calif Los Angeles David Geffen Sch Med Dept Radiol Sci Los Angeles CA 90024 USA;

    Univ Calif Los Angeles Phys &

    Biol Med Grad Program David Geffen Sch Med Los Angeles CA 90024;

    Univ Calif Los Angeles Phys &

    Biol Med Grad Program David Geffen Sch Med Los Angeles CA 90024;

    Univ Calif Los Angeles David Geffen Sch Med Dept Radiol Sci Los Angeles CA 90024 USA;

    Univ Calif Los Angeles David Geffen Sch Med Dept Radiol Sci Los Angeles CA 90024 USA;

    Univ Calif Los Angeles David Geffen Sch Med Dept Radiol Sci Los Angeles CA 90024 USA;

    Univ Calif Los Angeles David Geffen Sch Med Dept Radiol Sci Los Angeles CA 90024 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 基础医学 ;
  • 关键词

    CT; GPU; high-throughput; imaging; pipeline; reconstruction;

    机译:CT;GPU;高吞吐量;成像;管道;重建;

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