首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention(MICCAI 2004) pt.1; 20040926-29; Saint-Malo(FR) >3D/4D Cardiac Segmentation Using Active Appearance Models, Non-rigid Registration, and the Insight Toolkit
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3D/4D Cardiac Segmentation Using Active Appearance Models, Non-rigid Registration, and the Insight Toolkit

机译:使用主动外观模型,非刚性配准和Insight工具包进行3D / 4D心脏分割

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摘要

We describe the design of a statistical atlas-based 3D/4D cardiac segmentation system using a combination of active appearance models (AAM) and statistical deformation models with the Insight Toolkit as an underlying implementation framework. Since the original AAM approach was developed for 2D applications and makes use of manually set landmarks its extension to higher dimensional data sets cannot be easily achieved. We therefore apply the idea of statistical deformation models to AAMs and use a deformable registration step for establishing point-to-point correspondences. An evaluation of the implemented system was performed by segmenting the left ventricle cavity, myocardium and right ventricle of ten cardiac MRI and ten CT datasets. The comparison of automatic and manual segmentations showed encouraging results with a mean segmentation error of 2.2+-1.1mm. We conclude that the combination of a non-rigid registration step with the statistical analysis concepts of the AAM is both feasible and useful and allows for its application to 3D and 4D data.
机译:我们将结合主动外观模型(AAM)和统计变形模型以及Insight Toolkit作为基础实现框架,描述基于统计图集的3D / 4D心脏分割系统的设计。由于原始的AAM方法是为2D应用程序开发的,并且利用了手动设置的界标,因此很难轻松地扩展到更高维度的数据集。因此,我们将统计变形模型的思想应用于AAM,并使用可变形配准步骤来建立点对点对应关系。通过对十个心脏MRI和十个CT数据集的左心室腔,心肌和右心室进行分割,对所实施的系统进行评估。自动和手动分割的比较显示出令人鼓舞的结果,平均分割误差为2.2 + -1.1mm。我们得出结论,将非刚性配准步骤与AAM的统计分析概念相结合既可行又有用,并允许将其应用于3D和4D数据。

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