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首页> 外文期刊>BMC Medical Informatics and Decision Making >Discovering context-specific relationships from biological literature by using multi-level context terms
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Discovering context-specific relationships from biological literature by using multi-level context terms

机译:通过使用多级上下文术语从生物学文献中发现上下文特定的关系

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BackgroundThe Swanson's ABC model is powerful to infer hidden relationships buried in biological literature. However, the model is inadequate to infer relations with context information. In addition, the model generates a very large amount of candidates from biological text, and it is a semi-automatic, labor-intensive technique requiring human expert's manual input. To tackle these problems, we incorporate context terms to infer relations between AB interactions and BC interactions.MethodsWe propose 3 steps to discover meaningful hidden relationships between drugs and diseases: 1) multi-level (gene, drug, disease, symptom) entity recognition, 2) interaction extraction (drug-gene, gene-disease) from literature, 3) context vector based similarity score calculation. Subsequently, we evaluate our hypothesis with the datasets of the "Alzheimer's disease" related 77,711 PubMed abstracts. As golden standards, PharmGKB and CTD databases are used. Evaluation is conducted in 2 ways: first, comparing precision of the proposed method and the previous method and second, analysing top 10 ranked results to examine whether highly ranked interactions are truly meaningful or not.ResultsThe results indicate that context-based relation inference achieved better precision than the previous ABC model approach. The literature analysis also shows that interactions inferred by the context-based approach are more meaningful than interactions by the previous ABC model.ConclusionsWe propose a novel interaction inference technique that incorporates context term vectors into the ABC model to discover meaningful hidden relationships. By utilizing multi-level context terms, our model shows better performance than the previous ABC model.
机译:背景斯旺森(Swanson)的ABC模型在推断生物文献中隐藏的隐藏关系方面功能强大。但是,该模型不足以推断与上下文信息的关系。此外,该模型从生物文本中生成了大量候选对象,并且是需要人工输入的半自动劳动密集型技术。为了解决这些问题,我们引入上下文术语来推断AB相互作用和BC相互作用之间的关系。方法我们提出了3个步骤来发现药物与疾病之间有意义的隐藏关系:1)多层次(基因,药物,疾病,症状)实体识别; 2)从文献中提取相互作用(药物-基因,基因-疾病),3)基于上下文向量的相似性得分计算。随后,我们使用与“阿尔茨海默氏病”相关的77,711个PubMed摘要的数据集评估了我们的假设。作为黄金标准,使用了PharmGKB和CTD数据库。评估有两种方式:首先,比较所提出的方法和先前方法的精度,其次,分析排名前10的结果,以检查高度排名的交互是否真正有意义。结果表明,基于上下文的关系推理取得了较好的结果精度高于以前的ABC模型方法。文献分析还表明,基于上下文的方法推断的交互比以前的ABC模型的交互更有意义。结论我们提出了一种新颖的交互推理技术,该方法将上下文项向量合并到ABC模型中以发现有意义的隐藏关系。通过使用多级上下文术语,我们的模型显示出比以前的ABC模型更好的性能。

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