首页> 外文会议>IEEE International Ultrasonics Symposium >Deep learning implementation of super-resolution ultrasound imaging for tissue decluttering and contrast agent localization
【24h】

Deep learning implementation of super-resolution ultrasound imaging for tissue decluttering and contrast agent localization

机译:用于组织混乱和造影剂定位的超分辨率超声成像的深度学习实现

获取原文

摘要

Super-resolution ultrasound (SR-US) imaging improves ultrasound (US) resolution by up to ten-fold. However, translation to the clinical setting has been hindered by long computation times. Conventional algorithms used to detect and localize a microbubble (MB) contrast agent during SR-US image construction suffer from high complexity and computational intensity. Deep learning methods have been used to help implement solutions to these two key SR-US image processing steps. Such developments allow frame processing on the time scale of milliseconds. The goal of this study was to combine a single deep network to both detect and localize MBs for use during SR-US imaging. We propose SRUSnet, which is a fully convolutional network architecture based on MobileNetV3 with enhancements for 2 + 1D input data, fast convergence time, and support for high-resolution data output. The architecture features both a classification and a regression head to provide a flexible level of increased resolution for the output SR-US image. Training was performed with synthetic in silico data computed as a sequence of images with MBs flowing at different rates against a background of tissue. In vitro imaging of a flow phantom perfused with MBs was performed using a programmable US scanner (Vantage 256, Verasonics Inc.) equipped with an L11-4v linear array transducer. The network operating on in silico data exceeded 99% detection accuracy and averaged less than the resolution of a pixel in localization accuracy (i.e. λ/8). The processing time for a 128 × 128-pixel image averaged 25.9 ms on a Nvidia GeForce 2080Ti GPU. Overall, these preliminary results are a promising advance in moving towards a real-time implementation of SR-US imaging.
机译:超分辨率超声(SR-US)成像可将超声(US)分辨率提高多达十倍。但是,由于计算时间长,阻碍了向临床环境的转换。用于在SR-US图像构建过程中检测和定位微气泡(MB)造影剂的常规算法存在很高的复杂性和计算强度。深度学习方法已用于帮助实现这两个关键SR-US图像处理步骤的解决方案。这样的发展允许在毫秒的时间尺度上进行帧处理。这项研究的目的是结合一个单一的深层网络来检测和定位用于SR-US成像的MB。我们提出SRUSnet,这是一个基于MobileNetV3的全卷积网络体系结构,具有2 + 1D输入数据增强,快速收敛时间以及对高分辨率数据输出的支持。该架构同时具有分类和回归头功能,可为输出的SR-US图像提供灵活的高分辨率级别。使用合成的计算机模拟数据进行训练,该计算机模拟数据被计算为图像序列,MB在组织背景下以不同的速率流动。使用配备有L11-4v线性阵列换能器的可编程US扫描仪(Vantage 256,Verasonics Inc.)对灌注有MB的体模进行体外成像。在计算机数据上运行的网络的检测精度超过了99%,平均定位精度低于像素分辨率(即λ/ 8)。在Nvidia GeForce 2080Ti GPU上,处理128×128像素图像的平均时间为25.9 ms。总体而言,这些初步结果是朝着SR-US成像的实时实施迈进的有希望的进步。

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