基于混合贝叶斯网络的医学图像语义检索语义建模方法

Chunyi Lin, Junxun Yin, Xue Gao, Jian-Yu Chen, Pei Qin
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引用次数: 18

摘要

提出了一种将支持向量机(SVM)与混合贝叶斯网络(HBN)相结合的多层次语义建模方法。支持向量机将医学图像特征的连续变量离散化,将其分类为有限状态作为中间层语义。在此基础上,医学图像语义检索的语义模型可以进行多层次语义设计。为了验证该方法,建立了一个模型,从一小组星形细胞核磁共振成像(MRI)样本中实现内容级图像的自动注释。多层次标注是实现不同语义层次医学图像检索的一种很有前途的解决方案。实验结果表明,该方法可以有效地实现星形细胞核MRI扫描的多层次解释。它优于使用k近邻分类器(K-NN)的基于贝叶斯网络的模型。该研究提供了一种新的方法来弥合高级语义和低级图像特征之间的差距
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Semantic Modeling Approach for Medical Image Semantic Retrieval Using Hybrid Bayesian Networks
A multi-level semantic modeling method, which integrates support vector machines (SVM) into hybrid Bayesian networks (HBN), is proposed in this paper. SVM discretizes the continuous variables of medical image features by classifying them into finite states as middle-level semantics. Based on the HBN, the semantic model for medical image semantic retrieval can be designed at multi-level semantics. To validate the method, a model is built to achieve automatic image annotation at the content level from a small set of astrocytona MRI (magnetic resonance imaging) samples. Multi-level annotation is a promising solution to enable medical image retrieval at different semantic levels. Experiment results show that this approach is very effective to enable multi-level interpretation of astrocytona MRI scan. It outperforms the Bayesian network-based model using k-nearest neighbor classifiers (K-NN). This study provides a novel way to bridge the gap between the high-level semantics and the low-level image features
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