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Random Walks with GMM Statistical Inference Algorithm for Segmentation of Ground Glass Opacity Pulmonary Nodules

机译:基于GMM统计推断算法的随机游动分割毛玻璃不透明肺结节。

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Segmentation of Ground Glass Opacity (GGO) nodules is still an emerging and challenging research problem due to inhomogeneous interiors, blurred boundaries, and irregular shapes across different patients. In order to segment GGO pulmonary nodules, a novel random walk with Gaussian Mixture Model statistical inference (known as RW_GMM) algorithm is proposed in this paper. During the graph construction step, intensity, texture and spatial distance features are incorporated to calculate a new affinity matrix. The spatial distance between neighboring nodes as a weight is introduced to penalty the inconsistency of features. Spatial statistical information is encoded by building GMM models of foreground and background and the fuzzy membership value is calculated as a weight to penalize the inconsistence between the predefined probabilities and the calculated probabilities. The experimental results on the LIDC dataset show the superior performance of the proposed algorithm.
机译:由于内部不均匀,边界模糊以及不同患者的形状不规则,因此,毛玻璃结节(GGO)结节的分割仍是一个新兴且具有挑战性的研究问题。为了分割GGO肺结节,本文提出了一种基于高斯混合模型统计推断的新型随机游走算法(称为RW_GMM)。在图形构建步骤中,强度,纹理和空间距离特征将被合并以计算新的亲和力矩阵。引入相邻节点之间的空间距离作为权重,以惩罚特征的不一致。通过建立前景和背景的GMM模型对空间统计信息进行编码,并计算模糊隶属度值作为权重,以惩罚预定义概率与计算出的概率之间的不一致。 LIDC数据集上的实验结果表明了该算法的优越性能。

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