...
首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Restoration of Full Data from Sparse Data in Low-Dose Chest Digital Tomosynthesis Using Deep Convolutional Neural Networks
【24h】

Restoration of Full Data from Sparse Data in Low-Dose Chest Digital Tomosynthesis Using Deep Convolutional Neural Networks

机译:使用深卷积神经网络从低剂量胸部数字灌木合成中的稀疏数据恢复完整数据

获取原文
获取原文并翻译 | 示例
           

摘要

Chest digital tomosynthesis (CDT) provides more limited image information required for diagnosis when compared to computed tomography. Moreover, the radiation dose received by patients is higher in CDT than in chest radiography. Thus, CDT has not been actively used in clinical practice. To increase the usefulness of CDT, the radiation dose should reduce to the level used in chest radiography. Given the trade-off between image quality and radiation dose in medical imaging, a strategy to generating high-quality images from limited data is need. We investigated a novel approach for acquiring low-dose CDT images based on learning-based algorithms, such as deep convolutional neural networks. We used both simulation and experimental imaging data and focused on restoring reconstructed images from sparse to full sampling data. We developed a deep learning model based on end-to-end image translation using U-net. We used 11 and 81 CDT reconstructed input and output images, respectively, to develop the model. To measure the radiation dose of the proposed method, we investigated effective doses using Monte Carlo simulations. The proposed deep learning model effectively restored images with degraded quality due to lack of sampling data. Quantitative evaluation using structure similarity index measure (SSIM) confirmed that SSIM was increased by approximately 20% when using the proposed method. The effective dose required when using sparse sampling data was approximately 0.11mSv, similar to that used in chest radiography (0.1mSv) based on a report by the Radiation Society of North America. We investigated a new approach for reconstructing tomosynthesis images using sparse projection data. The model-based iterative reconstruction method has previously been used for conventional sparse sampling reconstruction. However, model-based computing requires high computational power, which limits fast three-dimensional image reconstruction and thus clinical applicability. We expect that the proposed learning-based reconstruction strategy will generate images with excellent quality quickly and thus have the potential for clinical use.
机译:与计算的层析造影相比,胸部数字Tomosynthesis(CDT)提供了更多有限的图像信息。此外,患者接收的辐射剂量在CDT中高于胸部射线照相。因此,CDT尚未在临床实践中积极使用。为了增加CDT的有用性,辐射剂量应减少胸部射线照相中使用的水平。鉴于医学成像中的图像质量和辐射剂量之间的折衷,需要从有限的数据产生高质量图像的策略。我们研究了一种基于基于学习的算法获取低剂量CDT图像的新方法,例如深卷积神经网络。我们使用模拟和实验成像数据,并专注于从稀疏到完全采样数据的恢复重建图像。我们使用U-Net的基于端到端图像转换进行了深入学习模型。我们使用11和81 CDT重建输入和输出图像,开发模型。为了测量所提出的方法的辐射剂量,我们使用蒙特卡罗模拟研究了有效剂量。所提出的深度学习模型有效地恢复了由于缺乏采样数据而具有降级质量的图像。使用结构相似性指数测量(SSIM)的定量评估证实,使用所提出的方法时,SSIM增加了大约20%。使用稀疏采样数据时所需的有效剂量约为0.11msV,类似于胸部射线照相(0.1msv)的胸部射线照相(0.1msv),基于北美辐射学会的报告。我们调查了一种使用稀疏投影数据重建Tomosynest图像的新方法。基于模型的迭代重建方法先前已被用于传统的稀疏抽样重建。然而,基于模型的计算需要高计算能力,这限制了快速的三维图像重建,因此限制了临床适用性。我们预计建议的基于学习的重建策略将产生良好质量的图像,因此具有临床使用的可能性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号