首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >A joint shape evolution approach to medical image segmentation using expectation-maximization algorithm
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A joint shape evolution approach to medical image segmentation using expectation-maximization algorithm

机译:基于期望最大化算法的医学图像分割联合形状演化方法

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摘要

This study proposes an expectation-maximization (EM)-based curve evolution algorithm for segmentation of magnetic resonance brain images. In the proposed algorithm, the evolution curve is constrained not only by a shape-based statistical model but also by a hidden variable model from image observation. The hidden variable model herein is defined by the local voxel labeling, which is unknown and estimated by the expected likelihood function derived from the image data and prior anatomical knowledge. In the M-step, the shapes of the structures are estimated jointly by encoding the hidden variable model and the statistical prior model obtained from the training stage. In the E-step, the expected observation likelihood and the prior distribution of the hidden variables are estimated. In experiments, the proposed automatic segmentation algorithm is applied to multiple gray nuclei structures such as caudate, putamens and thalamus of three-dimensional magnetic resonance imaging in volunteers and patients. As for the robustness and accuracy of the segmentation algorithm, the results of the proposed EM-joint shape-based algorithm outperformed those obtained using the statistical shape model-based techniques in the same framework and a current state-of-the-art region competition level set method.
机译:这项研究提出了一种基于期望最大化(EM)的曲线演化算法,用于磁共振脑图像的分割。在所提出的算法中,进化曲线不仅受基于形状的统计模型约束,而且受图像观察中的隐藏变量模型约束。这里的隐藏变量模型是由局部体素标记定义的,该局部体素标记是未知的,并由从图像数据和先前的解剖学知识得出的预期似然函数来估计。在M步中,通过对隐藏变量模型和从训练阶段获得的统计先验模型进行编码,共同估计结构的形状。在E步中,估计预期的观察可能性和隐藏变量的先验分布。在实验中,将提出的自动分割算法应用于志愿者和患者的三维磁共振成像的多个灰核结构,如尾状,壳状和丘脑。关于分割算法的鲁棒性和准确性,在相同的框架和当前最先进的区域竞争中,所提出的基于EM联合形状的算法的结果优于使用基于统计形状模型的技术获得的结果。水平设置方法。

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