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首页> 外文期刊>Neural computing & applications >A new ASM framework for left ventricle segmentation exploring slice variability in cardiac MRI volumes
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A new ASM framework for left ventricle segmentation exploring slice variability in cardiac MRI volumes

机译:一种新的ASM框架,用于左心室分割探索心脏MRI卷中的切片变异性

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摘要

Three-dimensional active shape models use a set of annotated volumes to learn a shape model. Using unique landmarks to define the surface models in the training set, the shape model is able to learn the expected shape and variation modes of the segmentation. This information is then used during the segmentation process to impose shape constraints. A relevant problem in which these models are used is the segmentation of the left ventricle in 3D MRI volumes. In this problem, the annotations correspond to a set of contours that define the LV border at each volume slice. However, each volume has a different number of slices (thus, a different number of landmarks), which makes model learning difficult. Furthermore, motion artifacts and the large distance between slices make interpolation of voxel intensities a bad choice when applying the learned model to a test volume. These two problems raise the following questions: (1) how can we learn a shape model from volumes with a variable number of slices? and (2) how can we segment a test volume without interpolating voxel intensities between slices? This paper provides an answer to these questions by proposing a framework to deal with the variable number of slices in the training set and a resampling strategy for the test phase to segment the left ventricle in cardiac MRI volumes with any number of slices. The proposed method was evaluated on a public database with 660 volumes of both healthy and diseased patients, with promising results.
机译:三维主动形状模型使用一组注释卷来学习形状模型。使用独特的地标来定义训练集中的表面模型,形状模型能够学习分割的预期形状和变化模式。然后在分割过程中使用该信息以施加形状约束。使用这些模型的相关问题是3D MRI卷中左心室的分割。在该问题中,注释对应于一组轮廓,其定义每个卷切片处的LV边界。然而,每个卷具有不同数量的切片(因此,不同数量的地标),这使得模型学习困难。此外,在将学习模型应用于测试量时,运动伪影和切片之间的大距离使体素强度的插值成为错误的选择。这两个问题提出了以下问题:(1)我们如何从具有可变数量的切片中从卷中学到的形状模型? (2)我们如何在没有插入切片之间的体素强度的情况下进行测试量?本文通过提出一个框架来处理这些问题的答案来处理培训集中的变量数量的框架和测试阶段的重采样策略,以将心脏MRI卷中的左心室分段为任何数量的切片。该提出的方法是在具有660卷的公共数据库上评估具有有前途的结果的公共数据库。

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