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A novel variational method for liver segmentation based on statistical shape model prior and enforced local statistical feature

机译:基于统计形状模型的肝脏分割的一种新型变分方法,并强制局部统计特征

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Medical image segmentation plays an important role in digital medical research, therapy planning, and computer aided diagnosis. However, the existence of noise and low contrast make automatic liver segmentation remains an open challenge. In this work we focus on a novel variational semi-automatic liver segmentation method. First, we used the signed distance functions (SDF) representing pattern shapes to build statistical shape model. Then global Gaussian fitting energy and enforced local feature fitting energy were established to guide the PCA-based topological transformation. We used the unconstrained shape coefficients and geometric transformation parameters to make the proposed method robust in a wide variety of pathological cases. Experiments on two public available datasets demonstrated that the proposed liver segmentation method achieves competitive results to that of the state-of-the-art.
机译:医学图像分割在数字医学研究,治疗计划和计算机辅助诊断中起着重要作用。然而,噪声和低对比度的存在使自动肝脏分割仍然是开放的挑战。在这项工作中,我们专注于一种新型变分半自动肝脏分段方法。首先,我们使用了表示模式形状的符号距离函数(SDF)来构建统计形状模型。然后建立了全球高斯拟合能源和强制局部特征拟合能量,以引导基于PCA的拓扑转化。我们使用了不受约束的形状系数和几何变换参数,使提出的方法在各种病理情况下稳健。两种公共可用数据集的实验表明,所提出的肝脏分割方法对最先进的肝脏分割方法实现了竞争力。

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