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Automatic 3D Motion Estimation of Left Ventricle from C-arm Rotational Angiocardiography Using a Prior Motion Model and Learning Based Boundary Detector

机译:使用先验运动模型和基于学习的边界检测器,从C型臂旋转心动图自动估计左心室的3D运动

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Compared to pre-operative imaging modalities, it is more convenient to estimate the current cardiac physiological status from C-arm angiocardiography since C-arm is a widely used intra-operative imaging modality to guide many cardiac interventions. The 3D shape and motion of the left ventricle (LV) estimated from rotational angiocardiography provide important cardiac function measurements, e.g., ejection fraction and myocardium motion dyssynchrony. However, automatic estimation of the 3D LV motion is difficult since all anatomical structures overlap on the 2D X-ray projections and the nearby confounding strong image boundaries (e.g., pericardium) often cause ambiguities to LV endocardium boundary detection. In this paper, a new framework is proposed to overcome the aforementioned difficulties: (1) A new learning-based boundary detector is developed by training a boosting boundary classifier combined with the principal component analysis of a local image patch; (2) The prior LV motion model is learned from a set of dynamic cardiac computed tomography (CT) sequences to provide a good initial estimate of the 3D LV shape of different cardiac phases; (3) The 3D motion trajectory is learned for each mesh point; (4) All these components are integrated into a multi-surface graph optimization method to extract the globally coherent motion. The method is tested on seven patient scans, showing significant improvement on the ambiguous boundary cases with a detection accuracy of 2.87 ± 1.00 mm on LV endocardium boundary delineation in the 2D projections.
机译:与术前影像检查相比,由于C臂是广泛使用的术中影像检查方法来指导许多心脏干预,因此从C臂血管造影术估计当前的心脏生理状态更为方便。根据旋转心动图估计的左心室(LV)的3D形状和运动可提供重要的心脏功能测量,例如射血分数和心肌运动不同步。但是,由于所有解剖结构在2D X射线投影上重叠,并且附近混杂的强图像边界(例如,心包)通常会导致LV心内膜边界检测不明确,因此很难自动估计3D LV运动。本文提出了一个克服上述困难的新框架:(1)通过结合局部图像斑块的主成分分析训练Boosting边界分类器,开发了一种新的基于学习的边界检测器。 (2)从一组动态心脏计算机断层扫描(CT)序列中学习先前的LV运动模型,以提供对不同心脏相位的3D LV形状的良好初始估计; (3)为每个网格点学习3D运动轨迹; (4)将所有这些组件集成到多表面图优化方法中,以提取全局相干运动。该方法在七次患者扫描中进行了测试,显示了在模糊边界病例中的显着改进,在二维投影中,LV心内膜边界描绘的检测精度为2.87±1.00 mm。

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