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Probabilistic Edge Map (PEM) for 3D Ultrasound Image Registration and Multi-atlas Left Ventricle Segmentation

机译:用于3D超声图像配准和多图谱左心室分割的概率边缘图(PEM)

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Automated left ventricle (LV) segmentation in 3D ultrasound (3D-US) remains a challenging research problem due to variable image quality and limited field-of-view. Modern segmentation approaches (shape, appearance and contour model based surface fitting) require an accurate initialization and good image boundary features to obtain reliable and consistent results. They are therefore not well suited for this problem. The proposed method overcomes those limitations with a novel and generic 3D-US image boundary representation technique: Probabilistic Edge Map (PEM). This new representation captures regularized and complete edge responses from standard 3D-US images. PEM is utilized in a multi-atlas LV segmentation framework to spatially align target and atlas images. Experiments on data from the MICCAI CETUS challenge show that the proposed approach is better suited for LV segmentation than the active contour, appearance and voxel classification approaches, achieving lower surface distance errors and better LV volume estimates.
机译:由于可变的图像质量和有限的视野,在3D超声(3D-US)中自动左心室(LV)分割仍然是一个具有挑战性的研究问题。现代的分割方法(基于形状,外观和轮廓模型的表面拟合)需要准确的初始化和良好的图像边界特征才能获得可靠且一致的结果。因此,它们不适用于此问题。提出的方法通过一种新颖且通用的3D-US图像边界表示技术:概率边缘图(PEM)克服了这些限制。这种新的表示方式可以从标准3D-US图像中捕获规则化和完整的边缘响应。 PEM在多图册LV分割框架中使用,以在空间上对齐目标和图册图像。对来自MICCAI CETUS挑战的数据进行的实验表明,与主动轮廓,外观和体素分类方法相比,所提出的方法更适合于LV分割,从而实现了更低的表面距离误差和更好的LV体积估计。

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