基于领域知识的异构数据集间有意义相关性提取

Jiayi Feng, Runtong Zhang, Donghua Chen, Wei Zhang
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引用次数: 0

摘要

仅建立在预定义的医学知识库上的问答系统(QAS)在为专家用户提供适当的答案以做出医疗和保健决策方面遇到困难。本研究提出了一种综合的方法,利用领域知识的语义分析提取异构数据集之间有意义的相关性,从而为医疗QAS (MQAS)中的决策支持(ATDS)提供灵活的答案。首先,从医疗信息系统异构数据集的潜在价值进行了检查,以建立ATDS。其次,提出了一种从问题中提取术语关系网络的算法。然后,提出了一种利用领域知识将数据集集成到MQAS中的关联构建方法。最后,提出了一种基于问题和数据集构建ATDS的新算法。实验结果表明,利用外部医学领域知识分析数据集之间的相关性优于现有的仅涉及数据集的算法。
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Extracting Meaningful Correlations among Heterogeneous Datasets for Medical Question Answering with Domain Knowledge
A question answering system (QAS) merely built on a predefined medical knowledge base experiences difficulties in providing suitable answers for expert users to make medical and healthcare decisions. This study proposes a comprehensive method of extracting meaningful correlations among heterogeneous datasets using a semantic analysis with domain knowledge and accordingly provide flexible answers to decision support (ATDS) in a medical QAS (MQAS). First, the potential value of the heterogeneous datasets from medical information systems is examined for building ATDS. Second, an extraction algorithm for constructing a term relational network from the questions is proposed. Then, a correlation construction method for integrating the datasets into the MQAS using domain knowledge is proposed. Finally, a novel algorithm for constructing ATDS on the basis of questions and datasets is established. Experimental results indicate that utilizing external medical domain knowledge in analyzing correlations among the datasets outperforms existing algorithms that only involved with the datasets.
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