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Constructing Medical Image Domain Ontology with Anatomical Knowledge

机译:利用解剖学知识构建医学图像领域本体

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Extracting information from the medical imaging reports with domain ontology has attracted much attention in medical natural language processing field. Based on the unstructured characteristics of medical image report text, the existing image report domain ontology is constructed by ontology learning method, including ontology learning method based on language and ontology learning method based on machine learning. However, these existing methods ignore the anatomical knowledge embedded in medical imaging reports, which is very useful for extracting entity relationships from reports. In order to solve the above problems, this paper proposes a domain ontology construction method for medical image reporting based on anatomy knowledge, which combines the prior knowledge of pathology and anatomy to obtain the basic framework of the domain ontology as the knowledge driver. In particular, our proposed approach consists of two tasks. The first task is to convert each text report into a semantic tree through an anatomic knowledge based semantic subtree generation algorithm. Semantic subtree generation algorithm mainly consists of three parts: framework positioning, relation extraction and adding relation. Firstly, the text is located based on anatomical knowledge, and the relational extraction mainly adopts the method of dependency syntactic analysis to extract the three semantic relations contained in the text. Finally, add the relationship to the corresponding branch. The second task is to obtain the domain ontology by merging semantic subtree. This step is mainly to obtain the domain ontology by merging the nodes of the XML structure semantic tree. The experimental results show that this method can be used for relational extraction and domain ontology construction, laying a good foundation for the follow-up research.
机译:从医学成像报告中提取具有领域本体的信息已经引起了医学自然语言处理领域的广泛关注。基于医学图像报告文本的非结构化特征,通过本体学习方法构造现有图像报告域本体,包括基于语言的本体学习方法和基于机器学习的本体学习方法。但是,这些现有方法忽略了医学成像报告中嵌入的解剖学知识,这对于从报告中提取实体关系非常有用。为了解决上述问题,本文提出了一种基于解剖学知识的医学图像报告领域本体构造方法,该方法结合了病理学和解剖学方面的先验知识,获得了领域本体的基本框架作为知识驱动力。特别是,我们提出的方法包括两个任务。第一项任务是通过基于解剖知识的语义子树生成算法将每个文本报告转换为语义树。语义子树生成算法主要包括三个部分:框架定位,关系提取和添加关系。首先,基于解剖学知识对文本进行定位,关系提取主要采用依赖句法分析的方法来提取文本中包含的三个语义关系。最后,将关系添加到相应的分支。第二项任务是通过合并语义子树来获得领域本体。此步骤主要是通过合并XML结构语义树的节点来获得领域本体。实验结果表明,该方法可用于关系提取和领域本体的构建,为后续研究奠定了良好的基础。

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