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Representation Learning of Drug and Disease Terms for Drug Repositioning

机译:药物和疾病术语的表征学习,用于药物重新定位

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Drug repositioning (DR) refers to identification of novel indications for the approved drugs. The requirement of huge investment of time as well as money and risk of failure in clinical trials have led to surge in interest in drug repositioning. DR exploits two major aspects associated with drugs and diseases: existence of similarity among drugs and among diseases due to their shared involved genes or pathways or common biological effects. Existing methods of identifying drug-disease association majorly rely on the information available in the structured databases only. On the other hand, abundant information available in form of free texts in biomedical research articles are not being fully exploited. Word-embedding or obtaining vector representation of words from a large corpora of free texts using neural network methods have been shown to give significant performance for several natural language processing tasks. In this work we propose a novel way of representation learning to obtain features of drugs and diseases by combining complementary information available in unstructured texts and structured datasets. Next we use matrix completion approach on these feature vectors to learn projection matrix between drug and disease vector spaces. The proposed method has shown competitive performance with state-of-the-art methods. Further, the case studies on Alzheimer's and Hypertension diseases have shown that the predicted associations are matching with the existing knowledge.
机译:药物重新定位(DR)是指对已批准药物的新适应症进行鉴定。在临床试验中需要大量时间,金钱和失败风险,这导致对药物重新定位的兴趣激增。 DR利用了与毒品和疾病相关的两个主要方面:由于它们共享的相关基因或途径或共同的生物学效应,毒品之间和疾病之间存在相似性。识别药物-疾病关联的现有方法主要依赖于结构化数据库中可用的信息。另一方面,生物医学研究文章中以自由文本形式提供的大量信息尚未得到充分利用。使用神经网络方法嵌入单词或从大量的自由文本中获取单词的矢量表示已显示出对几种自然语言处理任务的显着性能。在这项工作中,我们提出了一种新颖的表示学习方法,通过结合非结构化文本和结构化数据集中可用的补充信息来获得药物和疾病的特征。接下来,我们对这些特征向量使用矩阵完成方法,以了解药物和疾病向量空间之间的投影矩阵。所提出的方法已显示出与最先进的方法竞争的性能。此外,关于阿尔茨海默氏病和高血压疾病的案例研究表明,预测的关联与现有知识相匹配。

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