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Semantic modeling for multi-level medical image semantics retrieval

机译:多层医学图像语义检索的语义建模

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In this study, a multi-level medical image semantic modeling approach based on fuzzy Bayesian networks is proposed. Its two forms are built. The one is a Bayesian network embedding Conditional Gaussian (CG) models, called BN-CG, and another is a Bayesian network embedding Gaussian mixture model (GMM), called BN-GMM. CG and GMM are employed to implement a fuzzy procedure to perform the soft quantification of the continuous visual feature of the medical images, which extract the middle level semantics of the pathological objects, using the probability as the confidence score. Finally, a Bayesian network is utilized to combine these middle level semantics to build a multi-level semantic model. BN-CG and BN-GMM model are tested at multiple levels of semantics by applying a small set of astrocytona MRI (Magnetic Resonance Imaging) image samples. The experiment results show that this approach is very effective to enable the auto-annotation and interpretation of astrocytona MRI images. These models outperform the Bayesian network-based crisp quantification model using k-nearest neighbor classifiers (K-NN). This study provides a novel way to assist radiologist to retrieve medical images.
机译:本文提出了一种基于模糊贝叶斯网络的多层次医学图像语义建模方法。它有两种形式。一个是嵌入有条件高斯(CG)模型的贝叶斯网络,称为BN-CG,另一个是嵌入有高斯混合模型(GMM)的贝叶斯网络,称为BN-GMM。 CG和GMM用于执行模糊过程以对医学图像的连续视觉特征执行软量化,并使用概率作为置信度得分提取病理对象的中层语义。最后,利用贝叶斯网络将这些中层语义组合起来,以建立一个多层语义模型。 BN-CG和BN-GMM模型通过应用少量的星形细胞增多MRI(磁共振成像)图像样本在多个语义级别上进行测试。实验结果表明,该方法对星状细胞核磁共振图像的自动注释和解释非常有效。这些模型优于使用k最近邻分类器(K-NN)的基于贝叶斯网络的清晰量化模型。这项研究提供了一种新颖的方法来协助放射科医生检索医学图像。

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