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A Novel Model-Based 3D ${+}$Time Left Ventricular Segmentation Technique

机译:一种基于模型的新型3D $ {+} $ Time左心室分割技术

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摘要

A common approach to model-based segmentation is to assume a top-down modelling strategy. However, this is not feasible for complex 3D ${+}$time structures, such as the cardiac left ventricle, due to increased training requirements, aligning difficulties and local minima in resulting models. As our main contribution, we present an alternate bottom-up modelling approach. By combining the variation captured in multiple dimensionally-targeted models at segmentation-time we create a scalable segmentation framework that does not suffer from the “curse of dimensionality.” Our second contribution involves a flexible contour coupling technique that allows our segmentation method to adapt to unseen contour configurations outside the training set. This is used to identify the endo- and epicardium contours of the left ventricle by coupling them at segmentation-time, instead of at model-time. We apply our approach to 33 3D${+}$time cardiac MRI datasets and perform comprehensive evaluation against several state-of-the-art works. Quantitative evaluation illustrates that our method requires significantly less training than state-of-the-art model-based methods, while maintaining or improving segmentation accuracy.
机译:基于模型的细分的常用方法是采用自顶向下的建模策略。但是,由于训练需求增加,对齐困难和结果模型中的局部最小值,这对于复杂的3D $ {+} $时间结构(如心脏左心室)是不可行的。作为我们的主要贡献,我们提出了另一种自下而上的建模方法。通过组合在分割时在多个面向维度的模型中捕获的变化,我们创建了一个不受“维度诅咒”影响的可扩展细分框架。我们的第二个贡献涉及灵活的轮廓耦合技术,该技术使我们的分割方法能够适应训练集之外看不见的轮廓配置。通过在分割时(而不是在建模时)将其耦合来识别左心室的内膜和心外膜轮廓。我们将我们的方法应用于33个3D $ {+} $时间心脏MRI数据集,并针对几种最新的研究成果进行了综合评估。定量评估表明,与现有的基于模型的方法相比,我们的方法所需的培训要少得多,同时还能保持或提高细分的准确性。

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