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首页> 外文期刊>Medical Physics >Real-time scatter estimation for medical CT using the deep scatter estimation: Method and robustness analysis with respect to different anatomies, dose levels, tube voltages, and data truncation
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Real-time scatter estimation for medical CT using the deep scatter estimation: Method and robustness analysis with respect to different anatomies, dose levels, tube voltages, and data truncation

机译:使用深散射估计的医疗CT的实时散射估计:方法和鲁棒性关于不同解剖,剂量水平,管电压和数据截断的方法和鲁棒性分析

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摘要

Purpose X-ray scattering leads to CT images with a reduced contrast, inaccurate CT values as well as streak and cupping artifacts. Therefore, scatter correction is crucial to maintain the diagnostic value of CT and CBCT examinations. However, existing approaches are not able to combine both high accuracy and high computational performance. Therefore, we propose the deep scatter estimation (DSE): a deep convolutional neural network to derive highly accurate scatter estimates in real time. Methods Gold standard scatter estimation approaches rely on dedicated Monte Carlo (MC) photon transport codes. However, being computationally expensive, MC methods cannot be used routinely. To enable real-time scatter correction with similar accuracy, DSE uses a deep convolutional neural network that is trained to predict MC scatter estimates based on the acquired projection data. Here, the potential of DSE is demonstrated using simulations of CBCT head, thorax, and abdomen scans as well as measurements at an experimental table-top CBCT. Two conventional computationally efficient scatter estimation approaches were implemented as reference: a kernel-based scatter estimation (KSE) and the hybrid scatter estimation (HSE). Results The simulation study demonstrates that DSE generalizes well to varying tube voltages, varying noise levels as well as varying anatomical regions as long as they are appropriately represented within the training data. In any case the deviation of the scatter estimates from the ground truth MC scatter distribution is less than 1.8% while it is between 6.2% and 293.3% for HSE and between 11.2% and 20.5% for KSE. To evaluate the performance for real data, measurements of an anthropomorphic head phantom were performed. Errors were quantified by a comparison to a slit scan reconstruction. Here, the deviation is 278 HU (no correction), 123 HU (KSE), 65 HU (HSE), and 6 HU (DSE), respectively. Conclusions The DSE clearly outperforms conventional scatter estimation approaches in terms of accuracy. DSE is nearly as accurate as Monte Carlo simulations but is superior in terms of speed (approximate to 10 ms/projection) by orders of magnitude.
机译:目的X射线散射导致CT图像具有减小的对比度,不准确的CT值以及条纹和拔罐伪影。因此,散射校正至关重要,以维持CT和CBCT检查的诊断价值。然而,现有方法无法结合高精度和高计算性能。因此,我们提出了深度散射估计(DSE):一个深度卷积神经网络,实时推导高精度的散射估计。方法依赖于专用蒙特卡罗(MC)光子传输码的金标准散点估计方法。但是,计算昂贵,MC方法不能常规使用。为了使具有类似的准确度的实时散射校正,DSE使用深度卷积神经网络,该神经网络受过训练,以基于所获取的投影数据来预测MC散射估计。这里,使用CBCT头部,胸部和腹部扫描的模拟来证明DSE的潜力以及在实验台-POP CBCT处的测量。实现了两个传统的计算有效的散射估计方法作为参考:基于内核的散射估计(KSE)和混合散射估计(HSE)。结果仿真研究表明,DSE概括到不同的管电压,不同的噪声水平以及变化的解剖区域,只要它们在训练数据中适当地表示。在任何情况下,散射估计来自地面真相MC散射分布的偏差小于1.8%,而HSE为6.2%和293.3%,KSE为11.2%和20.5%。为了评估实际数据的性能,进行拟人术头阵体的测量。通过与狭缝扫描重建的比较来量化错误。在这里,偏差分别为278U(无校正),123u(kse),65 hu(hse)和6 hu(dse)。结论DSE在准确性方面明显优于传统的散点估计方法。 DSE几乎与蒙特卡罗模拟一样准确,但在速度(近似到10毫秒/投影)的级别逐渐上升。

著录项

  • 来源
    《Medical Physics》 |2019年第1期|共12页
  • 作者单位

    German Canc Res Ctr Neuenheimer Feld 280 D-69120 Heidelberg Germany;

    German Canc Res Ctr Neuenheimer Feld 280 D-69120 Heidelberg Germany;

    German Canc Res Ctr Neuenheimer Feld 280 D-69120 Heidelberg Germany;

    German Canc Res Ctr Neuenheimer Feld 280 D-69120 Heidelberg Germany;

    German Canc Res Ctr Neuenheimer Feld 280 D-69120 Heidelberg Germany;

    German Canc Res Ctr Neuenheimer Feld 280 D-69120 Heidelberg Germany;

    German Canc Res Ctr Neuenheimer Feld 280 D-69120 Heidelberg Germany;

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

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