Zhu Ai -Ling, Li Jian, Leong Tze -Yun
School of Computing, National University of Singapore, 117543.
AMIA Annu Symp Proc. 2003;2003:758-62.
Combinations of Medical Subject Headings (MeSH) and Subheadings in MEDLINE citations may be used to infer relationships among medical concepts. To facilitate clinical decision model construction, we propose an approach to automatically extract semantic relations among medical terms from MEDLINE citations. We use the Apriori association rule mining algorithm to generate the co-occurrences of medical concepts, which are then filtered through a set of predefined semantic templates to instantiate useful relations. From such semantic relations, decision elements and possible relationships among them may be derived for clinical decision model construction. To evaluate the proposed method, we have conducted a case study in colorectal cancer management; preliminary results have shown that useful causal relations and decision alternatives can be extracted.
医学主题词表(MeSH)与医学文献数据库(MEDLINE)引用文献中的副标题相结合,可用于推断医学概念之间的关系。为便于构建临床决策模型,我们提出一种从MEDLINE引用文献中自动提取医学术语语义关系的方法。我们使用Apriori关联规则挖掘算法生成医学概念的共现情况,然后通过一组预定义的语义模板进行筛选,以实例化有用的关系。从这些语义关系中,可以导出决策元素及其之间可能的关系,用于构建临床决策模型。为评估所提出的方法,我们在结直肠癌管理方面进行了案例研究;初步结果表明,可以提取有用的因果关系和决策选项。