Towards an Obesity-Cancer Knowledge Base: Biomedical Entity Identification and Relation Detection.

Juan Antonio Lossio-Ventura, William Hogan, François Modave, Amanda Hicks, Josh Hanna, Yi Guo, Zhe He, Jiang Bian
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引用次数: 14

Abstract

Obesity is associated with increased risks of various types of cancer, as well as a wide range of other chronic diseases. On the other hand, access to health information activates patient participation, and improve their health outcomes. However, existing online information on obesity and its relationship to cancer is heterogeneous ranging from pre-clinical models and case studies to mere hypothesis-based scientific arguments. A formal knowledge representation (i.e., a semantic knowledge base) would help better organizing and delivering quality health information related to obesity and cancer that consumers need. Nevertheless, current ontologies describing obesity, cancer and related entities are not designed to guide automatic knowledge base construction from heterogeneous information sources. Thus, in this paper, we present methods for named-entity recognition (NER) to extract biomedical entities from scholarly articles and for detecting if two biomedical entities are related, with the long term goal of building a obesity-cancer knowledge base. We leverage both linguistic and statistical approaches in the NER task, which supersedes the state-of-the-art results. Further, based on statistical features extracted from the sentences, our method for relation detection obtains an accuracy of 99.3% and a f-measure of 0.993.

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迈向肥胖-癌症知识库:生物医学实体识别与关系检测。
肥胖与患各种癌症的风险增加以及其他多种慢性疾病有关。另一方面,获取健康信息可以激活患者的参与,并改善他们的健康结果。然而,现有的关于肥胖及其与癌症关系的在线信息是异构的,从临床前模型和案例研究到仅仅基于假设的科学论点。正式的知识表示(即语义知识库)将有助于更好地组织和提供消费者所需的与肥胖和癌症相关的高质量健康信息。然而,目前描述肥胖、癌症和相关实体的本体并不能指导从异构信息源自动构建知识库。因此,在本文中,我们提出了命名实体识别(NER)方法,从学术文章中提取生物医学实体,并检测两个生物医学实体是否相关,其长期目标是建立一个肥胖-癌症知识库。我们在NER任务中利用语言和统计方法,取代了最先进的结果。此外,基于从句子中提取的统计特征,我们的关系检测方法的准确率为99.3%,f-measure为0.993。
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