首页> 外文会议>Physiology, Function, and Structure from Medical Images pt.1; Progress in Biomedical Optics and Imaging; vol.7,no.29 >Analysis of four-dimensional cardiac ventricular magnetic resonance images using statistical models of ventricular shape and cardiac motion
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Analysis of four-dimensional cardiac ventricular magnetic resonance images using statistical models of ventricular shape and cardiac motion

机译:使用心室形状和心脏运动的统计模型分析二维心室磁共振图像

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Conventional analysis of cardiac ventricular magnetic resonance images is performed using short axis images and does not guarantee completeness and consistency of the ventricle coverage. In this paper, a four-dimensional (4D, 3D+time) left and right ventricle statistical shape model was generated from the combination of the long axis and short axis images. Iterative mutual intensity registration and interpolation were used to merge the long axis and short axis images into isotropic 4D images and simultaneously correct existing breathing artifact. Distance-based shape interpolation and approximation were used to generate complete ventricle shapes from the long axis and short axis manual segmentations. Landmarks were automatically generated and propagated to 4D data samples using rigid alignment, distance-based merging, and B-spline transform. Principal component analysis (PCA) was used in model creation and analysis. The two strongest modes of the shape model captured the most important shape feature of Tetralogy of Fallot (TOF) patients, right ventricle enlargement. Classification of cardiac images into classes of normal and TOF subjects performed on 3D and 4D models showed 100% classification correctness rates for both normal and TOF subjects using k-Nearest Neighbor (k=1 or 3) classifier and the two strongest shape modes.
机译:常规的心室磁共振图像分析是使用短轴图像进行的,不能保证心室覆盖范围的完整性和一致性。本文通过长轴和短轴图像的组合生成了一个二维(4D,3D +时间)左右心室统计形状模型。迭代的相互强度配准和插值用于将长轴和短轴图像合并为各向同性的4D图像,并同时校正现有的呼吸伪影。基于距离的形状插值和逼近用于根据长轴和短轴手动分割生成完整的心室形状。使用刚性对齐,基于距离的合并和B样条变换自动生成地标并将其传播到4D数据样本。主成分分析(PCA)用于模型创建和分析。形状模型的两个最强模式捕获了法洛四联症(TOF)患者最重要的形状特征,即右心室扩大。在3D和4D模型上对正常和TOF受试者进行的心脏图像分类显示,使用k最近邻(k = 1或3)分类器和两个最强形状模式对正常和TOF受试者的分类正确率均为100%。

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