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Attention-aware fully convolutional neural network with convolutional long short-term memory network for ultrasound-based motion tracking

机译:注意基于超声的运动跟踪的卷积长短短期内存网络的完全卷积神经网络

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Purpose One of the promising options for motion management in radiation therapy (RT) is the use of LINAC-compatible robotic-arm-mounted ultrasound imaging system due to its high soft tissue contrast, real-time capability, absence of ionizing radiation, and low cost. The purpose of this work is to develop a novel deep learning-based real-time motion tracking strategy for ultrasound image-guided RT. Methods The proposed tracker combined the attention-aware fully convolutional neural network (FCNN) and the convolutional long short-term memory network (CLSTM) that is end-to-end trainable. The glimpse sensor module was built inside the attention-aware FCNN to discard majority of background by focusing on a region containing the object of interest. FCNN extracted discriminating spatial features of glimpse to facilitate temporal modeling for CLSTM. The saliency mask computed from CLSTM refined the features particular to the tracked landmarks. Moreover, the multitask loss strategy including bounding box loss, localization loss, saliency loss, and adaptive loss weighting term was utilized to facilitate training convergence and avoid over/underfitting. The tracker was tested on the databases provided by MICCAI 2015 challenges, and the ground truth data were obtained with the help of brute force-based template matching technology. Results The mean tracking error of 0.97 +/- 0.52 mm and maximum tracking error of 1.94 mm were observed for 85 point landmarks across 39 ultrasound cases compared to the ground truth annotations. The tracking speed per frame per landmark with the GPU implementation ranged from 66 and 101 frames per second, which largely exceeded the ultrasound imaging rate. Conclusion The results demonstrated the robustness and accuracy of the proposed deep learning-based motion estimation, despite the existence of some known shortcomings of ultrasound imaging such as speckle noise. The tracking speed of the system was found to be remarkable, sufficiently fast for real-time applications in RT environment. The approach provides a valuable tool to guide RT treatment with beam gating or multileaf collimator (MLC) tracking in real time.
机译:目的,放射治疗中运动管理的有希望的选择之一(RT)是由于其高软组织对比,实时能力,缺乏电离辐射而使用LINAC兼容的机器人安装的超声成像系统。成本。这项工作的目的是开发一种新的基于深度学习的实时运动跟踪策略,用于超声图像引导RT。方法提出的跟踪器组合注意力感知完全卷积神经网络(FCNN)和最终培训的卷积长短短期内存网络(CLSTM)。通过专注于包含感兴趣对象的区域,构建了瞥见传感器模块,以丢弃大部分背景。 FCNN提取识别闪烁的空间特征,以促进CLSTM的时间建模。从CLSTM计算的显着掩码将特定特征精确到跟踪的地标。此外,利用包括边界箱损失,定位损耗,显着性损失和自适应损耗权重期间的多任务损耗策略,以促进训练收敛并避免过度/底下。在Miccai 2015挑战提供的数据库上测试了跟踪器,并且在基于蛮力的模板匹配技术的帮助下获得了地面真理数据。结果在39个超声壳体上观察到0.97 +/- 0.52mm和1.94mm的最大跟踪误差为1.94 mm的最大跟踪误差与地面真相注释相比,在39个超声壳体上观察到85点地标。每个地标的跟踪速度与GPU实现的每个地标从66和101帧的每秒范围内,这在很大程度上超过了超声成像速率。结论结果表明,尽管存在超声成像的一些已知的缺点,如散斑噪声,所以拟议的基于深度学习的运动估计的鲁棒性和准确性。发现系统的跟踪速度是显着的,对于RT环境中的实时应用充分快速。该方法提供了一种有价值的工具,用于将RT处理用梁门控或多叶电压器(MLC)实时跟踪。

著录项

  • 来源
    《Medical Physics》 |2019年第5期|共11页
  • 作者单位

    Shandong Normal Univ Sch Phys &

    Elect Shandong Prov Key Lab Med Phys &

    Image Proc Techn Jinan;

    Shandong Normal Univ Sch Phys &

    Elect Shandong Prov Key Lab Med Phys &

    Image Proc Techn Jinan;

    Shandong Normal Univ Sch Phys &

    Elect Shandong Prov Key Lab Med Phys &

    Image Proc Techn Jinan;

    Shandong Normal Univ Sch Phys &

    Elect Shandong Prov Key Lab Med Phys &

    Image Proc Techn Jinan;

    Shandong Canc Hosp Dept Radiat Oncol Jinan 250117 Shandong Peoples R China;

    Shandong Canc Hosp Dept Radiat Oncol Jinan 250117 Shandong Peoples R China;

    Stanford Univ Dept Radiat Oncol Sch Med Stanford CA 94304 USA;

    Stanford Univ Dept Radiat Oncol Sch Med Stanford CA 94304 USA;

    Shandong Normal Univ Sch Phys &

    Elect Shandong Prov Key Lab Med Phys &

    Image Proc Techn Jinan;

  • 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

    convolution neural network; deep learning; motion management; recurrent neural network; ultrasound tracking;

    机译:卷积神经网络;深度学习;运动管理;经常性神经网络;超声跟踪;

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