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首页> 外文期刊>Physics in medicine and biology. >Scatter correction of cone-beam CT using a deep residual convolution neural network (DRCNN)
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Scatter correction of cone-beam CT using a deep residual convolution neural network (DRCNN)

机译:锥形梁CT的散射校正使用深剩余卷积神经网络(DRCNN)

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摘要

Scatter correction is an essential technique to improve the image quality of cone-beam CT (CBCT). Although different scatter correction methods have been proposed in the literature, a standard solution is still being studied due to the limitations including accuracy, computation efficiency and generalization. In this paper, we propose a novel scatter correction scheme for CBCT using a deep residual convolution neural network (DRCNN) to overcome the limitations. The proposed method combines the deep convolution neural network (CNN) and the residual learning framework (RLF) to train the mapping function from the uncorrected image to the corrected image. Two residual network modules (RNMs) are built based on the RLF to improve the accuracy of the mapping function by strengthening the propagation of the gradient. The dropout operations are applied as the regularizer of the network to avoid the overfitting problem. The RMSE of the corrected images reconstructed using the DRCNN is reduced from over 200 HU to be about 20 HU. The structural similarity (SSIM) is slightly increased from 0.95 to 0.99, indicating that the proposed scheme maintains the anatomical structure. The proposed DRCNN has a higher accuracy of scatter correction than the networks without the RLF or the dropout operations. The proposed network is effective, efficient and robust as a solution to the CBCT scatter correction.
机译:散射校正是提高锥形光束CT(CBCT)的图像质量的基本技术。尽管在文献中提出了不同的散射校正方法,但由于包括精度,计算效率和泛化的限制,仍在研究标准解决方案。在本文中,我们向CBCT提出了一种使用深度残余卷积神经网络(DRCNN)来克服限制的新型散点校正方案。所提出的方法将深度卷积神经网络(CNN)和残差学习框架(RLF)组合将从未校正图像训练到校正图像的映射函数。基于RLF构建两个残余网络模块(RNMS),以通过强化梯度的传播来提高映射功能的精度。丢弃操作应用于网络的规范器,以避免过度拟合问题。使用DRCNN重建的校正图像的RMSE从200多个胡锦涛为大约20 HU减少。结构相似性(SSIM)略微增加0.95至0.99,表明所提出的方案保持解剖结构。所提出的DRCNN具有比没有RLF或辍学操作的网络的散射校正的更高准确性。所提出的网络是CBCT分散校正的解决方案的有效,高效且鲁棒。

著录项

  • 来源
    《Physics in medicine and biology. 》 |2019年第14期| 共15页
  • 作者单位

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Zhejiang Univ Sir Run Run Shaw Hosp Dept Radiol Sch Med Hangzhou 310016 Zhejiang Peoples R;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Zhejiang Univ Sir Run Run Shaw Hosp Dept Radiol Sch Med Hangzhou 310016 Zhejiang Peoples R;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

    Univ Calif Los Angeles Dept Radiat Oncol Los Angeles CA 90024 USA;

    Zhejiang Univ Sir Run Run Shaw Hosp Sch Med Inst Translat Med Hangzhou 310016 Zhejiang;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 R35;
  • 关键词

    cone-beam CT (CBCT); scatter correction; convolution neural network (CNN); residual learning framework (RLF);

    机译:锥梁CT(CBCT);散射校正;卷积神经网络(CNN);剩余学习框架(RLF);

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