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使用卷积神经网络实现任意机器人C型臂轨道的快速CBCT重建。

Fast CBCT Reconstruction using Convolutional Neural Networks for Arbitrary Robotic C-arm Orbits.

作者信息

Russ Tom, Ma Yiqun Q, Golla Alena-Kathrin, Bauer Dominik F, Reynolds Tess, Tönnes Christian, Hatamikia Sepideh, Schad Lothar R, Zöllner Frank G, Gang Grace J, Wang Wenying, Stayman J Webster

机构信息

Mannheim Institute for Intelligent Systems in Medicine, Heidelberg University, Heidelberg, Germany.

Department of Biomedical Engineering, Johns-Hopkins University, Baltimore, USA.

出版信息

Proc SPIE Int Soc Opt Eng. 2022 Feb-Mar;12031. doi: 10.1117/12.2612935. Epub 2022 Apr 4.

Abstract

Cone-beam CT (CBCT) with non-circular acquisition orbits has the potential to improve image quality, increase the field-of view, and facilitate minimal interference within an interventional imaging setting. Because time is of the essence in interventional imaging scenarios, rapid reconstruction methods are advantageous. Model-Based Iterative Reconstruction (MBIR) techniques implicitly handle arbitrary geometries; however, the computational burden for these approaches is particularly high. The aim of this work is to extend a previously proposed framework for fast reconstruction of non-circular CBCT trajectories. The pipeline combines a deconvolution operation on the backprojected measurements using an approximate, shift-invariant system response prior to processing with a Convolutional Neural Network (CNN). We trained and evaluated the CNN for this approach using 1800 randomized arbitrary orbits. Noisy projection data were formed from 1000 procedurally generated tetrahedral phantoms as well as anthropomorphic data in the form of 800 CT and CBCT images from the Lung Image Database Consortium Image Collection (LIDC). Using this proposed reconstruction pipeline, computation time was reduced by 90% as compared to MBIR with only minor differences in performance. Quantitative comparisons of nRMSE, FSIM and SSIM are reported. Performance was consistent for projection data simulated with acquisition orbits the network has not previously been trained on. These results suggest the potential for fast processing of arbitrary CBCT trajectory data with reconstruction times that are clinically relevant and applicable - facilitating the application of non-circular orbits in CT image-guided interventions and intraoperative imaging.

摘要

具有非圆形采集轨道的锥束CT(CBCT)有潜力提高图像质量、扩大视野并在介入成像环境中减少干扰。由于在介入成像场景中时间至关重要,快速重建方法具有优势。基于模型的迭代重建(MBIR)技术可以隐式处理任意几何形状;然而,这些方法的计算负担特别高。这项工作的目的是扩展先前提出的用于快速重建非圆形CBCT轨迹的框架。该流程在使用卷积神经网络(CNN)处理之前,对反投影测量值进行去卷积操作,并使用近似的、平移不变的系统响应。我们使用1800个随机化的任意轨道对该方法的CNN进行了训练和评估。从1000个程序生成的四面体模型以及来自肺部图像数据库联盟图像集(LIDC)的800张CT和CBCT图像形式的人体数据中形成有噪声的投影数据。使用这个提出的重建流程,与MBIR相比,计算时间减少了90%,性能仅有微小差异。报告了nRMSE、FSIM和SSIM的定量比较。对于用网络之前未训练过的采集轨道模拟的投影数据,性能是一致的。这些结果表明,有可能快速处理任意CBCT轨迹数据,重建时间与临床相关且适用,这有助于在CT图像引导介入和术中成像中应用非圆形轨道。

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