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A Unified Statistical/Deterministic Deformable Model for LV Segmentation in Cardiac MRI

机译:心脏MRI左心室分割的统一统计/确定性可变形模型

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We propose a novel deformable model with statistical and deterministic components for LV segmentation in cardiac magnetic resonance (MR) cine images. The statistical deformable component learns a global reference model of the LV using Principal Component Analysis (PCA) while the deterministic deformable component consists of a finite-element deformable surface superimposed on the reference model. The statistical model accounts for most of the global variations in shape found in the training set while the deterministic skin accounts for the local deformations consistent with the detailed image features. Intensity gradient-based image forces are applied to the model to segment and reconstruct LV shape. We validate our model on the MICCAI Grand Challenge dataset using leave-one-out training. Comparing the automated segmentation to the manual segmentation yields a Mean Perpendicular Distance (MPD) of 3.65 mm and a Dice coefficient of 0.86.
机译:我们提出了一种具有统计和确定性成分的新型变形模型,用于心脏磁共振(MR)电影图像中的LV分割。统计可变形组件使用主成分分析(PCA)学习LV的全局参考模型,而确定性可变形组件由叠加在参考模型上的有限元可变形表面组成。统计模型考虑了训练集中发现的大多数全局形状变化,而确定性皮肤考虑了与详细图像特征一致的局部变形。基于强度梯度的图像力应用于模型以分割和重构LV形状。我们使用留一法训练在MICCAI大挑战数据集上验证了我们的模型。将自动分割与手动分割进行比较,得出的平均垂直距离(MPD)为3.65毫米,骰子系数为0.86。

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