轻量级的基于语义的医学文档检索

Dhomas Hatta Fudholi, Lalu Mutawalli
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引用次数: 2

摘要

医疗信息对于医疗保健专业人员的诊断和临床决策过程是有价值的。此外,它还可以支持拥有卫生知识的社区支持健康生活。基于本体的信息检索支持这类信息的检索,并且具有更好的语义结果。在本文中,我们提出了一个轻量级的基于语义的印尼语医学文档检索框架。医学信息集中于诊断、病因、流行病学、临床表现和指南。该框架首先利用本体对查询进行标注,分析本体内的信息网络,提取查询的上下文。当查询属于疾病信息的一个上下文时,将生成修改后的搜索查询,并将其传递给现有的基于关键字的搜索结果。使用传染性热带病领域的案例研究对该框架进行了评估。评估结果表明,通过语义网络和增强过程,该框架能够很好地找到相关的医学文献,精度等于或大于0.9。
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A Lightweight Semantic-Based Medical Document Retrieval
Medical information is valuable for a health care professional to empower diagnosis and clinical decision process. In addition, it can also support communities with health knowledge to support healthy living. Ontology-based information retrieval supports the retrieval of such information with the semantically better result. In this paper, we propose a framework of lightweight semantic-based medical document retrieval in Bahasa Indonesia. The medical information is focused on diagnosis, etiology, epidemiology, clinical manifestation, and guidelines. The framework firstly annotates queries' by using the ontology, analyse the information networks within the ontology and extracts the context of the queries. When a query falls within one context of disease information, a modified search query will be then generated and passed to an existing keyword-based search result. The framework is evaluated using a case study in infectious tropical disease domain. The evaluation results show that the framework could perform well with precision equals or more than 0.9 to find the relevant medical document through the semantic networks and the enhancement process.
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