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Segmentation of 3D RF Echo car diography Using a Multiframe Spatio-temporal Predictor

机译:使用多帧时空预测器对3D RF回声汽车地形图进行分割

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摘要

We present an approach for segmenting left ventricular endo-cardial boundaries from RF ultrasound. Segmentation is achieved jointly using an independent identically distributed (i.i.d.) spatial model for RF intensity and a multiframe conditional model. The conditional model relates neighboring frames in the image sequence by means of a computationally efficient linear predictor that exploits spatio-temporal coherence in the data. Segmentation using the RF data overcomes problems due to image inhomogeneities often amplified in B-mode segmentation and provides geometric constraints for RF phase-based speckle tracking. The incorporation of multiple frames in the conditional model significantly increases the robustness and accuracy of the algorithm. Results are generated using between 2 and 5 frames of RF data for each segmentation and are validated by comparison with manual tracings and automated B-mode boundary detection using standard (Chan and Vese-based) level sets on echocardiographic images from 27 3D sequences acquired from 6 canine studies.
机译:我们提出了一种从RF超声分割左心室内膜边界的方法。使用用于RF强度的独立的均匀分布(i.d.d)空间模型和多帧条件模型共同实现分段。条件模型借助于计算有效的线性预测器来关联图像序列中的相邻帧,该线性预测器利用了数据中的时空相干性。使用RF数据进行的分割克服了由于图像不均匀而经常在B模式分割中放大的问题,并为基于RF相位的斑点跟踪提供了几何约束。条件模型中多个帧的合并大大提高了算法的鲁棒性和准确性。每次分割均使用2到5帧RF数据生成结果,并通过与手动描迹和使用标准(基于Chan和Vese的)水平集对来自27个3D序列的超声心动图图像进行自动B模式边界检测进行比较来验证结果6个犬类研究。

著录项

  • 来源
  • 会议地点 Kloster Irsee(DE);Kloster Irsee(DE)
  • 作者单位

    Departments of Electrical Engineering Yale University, New Haven, CT, USA;

    Departments of Electrical Engineering Yale University, New Haven, CT, USA,Departments of Biornedical Engineering,Yale University, New Haven, CT, USA,Departments of Diagnostic Radiology Yale University, New Haven, CT, USA;

    Departments of Internal Medicine Yale University, New Haven, CT, USA;

    Departments of Diagnostic Radiology Yale University, New Haven, CT, USA,Departments of Internal Medicine Yale University, New Haven, CT, USA;

    Departments of Electrical Engineering Yale University, New Haven, CT, USA,Departments of Biornedical Engineering,Yale University, New Haven, CT, USA,Departments of Diagnostic Radiology Yale University, New Haven, CT, USA;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物信息、生物控制;
  • 关键词

  • 入库时间 2022-08-26 14:00:43

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