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Learning Sparse Kernels from 3D Surfaces for Heart Wall Motion Abnormality Detection

机译:从3D表面学习稀疏内核,用于心脏运动异常检测

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Coronary heart disease (CHD) is a global epidemic that is the leading cause of death worldwide. CHD can be detected by measuring and scoring the regional and global motion of the left ventricle (LV) of the heart. This project describes a novel automatic technique which can detect the regional wall motion abnormalities of the LV from echocardiograms. Given a sequence of endocardial contours extracted from LV ultrasound images, the sequence of contours moving through time can be interpreted as a three-dimensional (3D) surface. From the 3D surfaces, we compute several geometry-based features (shape-index values, curvedness, surface normals, etc.) to obtain histograms-based similarity functions that are optimally combined using a mathematical programming approach to learn a kernel function designed to classify normal vs. abnormal heart wall motion. In contrast with other state-of-the-art methods, our formulation also generates sparse kernels. Kernel sparsity is directly related to the computational cost of the kernel evaluation, which is an important factor when designing classifiers that are part of a real-time system. Experimental results on a set of echocardiograms collected in routine clinical practice at one hospital demonstrate the potential of the proposed approach.
机译:冠心病(CHD)是全球性疫情,是全世界死亡的主要原因。 CHD可以通过测量和评分心脏左心室(LV)的区域和全球运动来检测。该项目描述了一种新型的自动技术,可以检测超声心动图的区域壁运动异常。给定从LV超声图像中提取的内压轮廓序列,移动通过时间的轮廓序列可以被解释为三维(3D)表面。从3D曲面,我们计算几何基于几何的特征(形状索引值,曲线,表面法线等),以获得最佳地组合的基于直方图的相似性功能,这些功能使用数学编程方法来学习设计用于分类的内核功能正常的心脏壁运动。与其他最先进的方法相比,我们的配方也产生了稀疏的内核。内核稀疏性与内核评估的计算成本直接相关,这是设计作为实时系统一部分的分类器的重要因素。在一家医院常规临床实践中收集的一组超声心动图的实验结果表明了所提出的方法的潜力。

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