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3-D active appearance models: segmentation of cardiac MR and ultrasound images

机译:3-D主动出现模型:心脏MR和超声图像的分割

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摘要

A model-based method for three-dimensional image segmentation was developed and its performance assessed in segmentation of volumetric cardiac magnetic resonance (MR) images and echocardiographic temporal image sequences. Comprehensive design of a three-dimensional (3-D) active appearance model (AAM) is reported for the first time as an involved extension of the AAM framework introduced by Cootes et al. The model's behavior is learned from manually traced segmentation examples during an automated training stage. Information about shape and image appearance of the cardiac structures is contained in a single model. This ensures a spatially and/or temporally consistent segmentation of three-dimensional cardiac images. The clinical potential of the 3-D AAM is demonstrated in short-axis cardiac MR images and four-chamber echocardiographic sequences. The method's performance was assessed by comparison with manually identified independent standards in 56 clinical MR and 64 clinical echo image sequences. The AAM method showed good agreement with the independent standard using quantitative indexes of border positioning errors, endo- and epicardial volumes, and left ventricular mass. In MR, the endocardial volumes, epicardial volumes, and left ventricular wall mass correlation coefficients between manual and AAM were R/sup 2/=0.94,0.97,0.82, respectively. For echocardiographic analysis, the area correlation was R/sup 2/=0.79. The AAM method shows high promise for successful application to MR and echocardiographic image analysis in a clinical setting.
机译:开发了一种基于模型的三维图像分割方法,并在分割体积心脏磁共振(MR)图像和超声心动图时间图像序列中评估了其性能。首次报道了三维(3-D)活动外观模型(AAM)的综合设计,这是Cootes等人引入的AAM框架的扩展。该模型的行为是在自动训练阶段从手动跟踪的细分示例中获悉的。有关心脏结构的形状和图像外观的信息包含在单个模型中。这确保了三维心脏图像的空间和/或时间上一致的分割。 3-D AAM的临床潜力在短轴心脏MR图像和四腔超声心动图序列中得到了证明。通过与56个临床MR和64个临床回声图像序列中的人工确定的独立标准进行比较,评估了该方法的性能。 AAM方法使用边界定位误差,心内膜和心外膜体积以及左心室质量的定量指标与独立标准显示出良好的一致性。在MR中,手动和AAM之间的心内膜体积,心外膜体积和左心室壁质量相关系数分别为R / sup 2 / = 0.94、0.97、0.82。对于超声心动图分析,面积相关性为R / sup 2 / = 0.79。 AAM方法在临床上成功应用于MR和超声心动图图像分析显示出很高的希望。

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