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Toward Preparing a Knowledge Base to Explore Potential Drugs and Biomedical Entities Related to COVID-19: Automated Computational Approach

机译:准备知识库探索与Covid-19相关的潜在药物和生物医学实体:自动化计算方法

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Background Novel coronavirus disease 2019 (COVID-19) is taking a huge toll on public health. Along with the non-therapeutic preventive measurements, scientific efforts are currently focused, mainly, on the development of vaccines and pharmacological treatment with existing drugs. Summarizing evidences from scientific literatures on the discovery of treatment plan of COVID-19 under a platform would help the scientific community to explore the opportunities in a systematic fashion. Objective The aim of this study is to explore the potential drugs and biomedical entities related to coronavirus related diseases, including COVID-19, that are mentioned on scientific literature through an automated computational approach. Methods We mined the information from publicly available scientific literature and related public resources. Six topic-specific dictionaries, including human genes, human miRNAs, diseases, Protein Databank, drugs, and drug side effects, were integrated to mine all scientific evidence related to COVID-19. We employed an automated literature mining and labeling system through a novel approach to measure the effectiveness of drugs against diseases based on natural language processing, sentiment analysis, and deep learning. We also applied the concept of cosine similarity to confidently infer the associations between diseases and genes. Results Based on the literature mining, we identified 1805 diseases, 2454 drugs, 1910 genes that are related to coronavirus related diseases including COVID-19. Integrating the extracted information, we developed the first knowledgebase platform dedicated to COVID-19, which highlights potential list of drugs and related biomedical entities. For COVID-19, we highlighted multiple case studies on existing drugs along with a confidence score for their applicability in the treatment plan. Based on our computational method, we found Remdesivir, Statins, Dexamethasone, and Ivermectin could be considered as potential effective drugs to improve clinical status and lower mortality in patients hospitalized with COVID-19. We also found that Hydroxychloroquine could not be considered as an effective drug for COVID-19. The resulting knowledgebase is made available as an open source tool, named COVID-19Base. Conclusions Proper investigation of the mined biomedical entities along with the identified interactions among those would help the research community to discover possible ways for the therapeutic treatment of COVID-19.
机译:背景技术2019年新型冠状病毒疾病(Covid-19)对公共卫生进行了巨大的损失。随着非治疗性预防性测量,目前的科学努力主要是针对现有药物的疫苗和药理学治疗的焦点。在平台下,科学文献关于科学研究计划发现的证据将有助于科学界以系统时尚探索机遇。目的本研究的目的是探讨与冠状病毒相关疾病相关的潜在药物和生物医学实体,包括Covid-19,通过自动计算方法提到科学文献。方法从公开提供的科学文献和相关公共资源开采了信息。六个特定的专题词典,包括人类基因,人类miRNA,疾病,蛋白质数据库,药物和药物副作用,以挖掘与Covid-19相关的所有科学证据。我们采用自动化文献采矿和标签系统,通过一种基于自然语言处理,情感分析和深度学习来衡量毒品免受疾病的有效性。我们还应用了余弦相似性的概念,以自信地推断出疾病和基因之间的关联。结果基于文献采矿,我们确定了1805名疾病,2454种药物,1910个与冠状病毒相关疾病相关的基因,包括Covid-19。整合提取的信息,我们开发了专用于Covid-19的第一个知识库平台,突出了潜在的药物和相关生物医学实体列表。对于Covid-19,我们强调了对现有药物的多种案例研究以及在治疗计划中适用的信心得分。基于我们的计算方法,我们发现雷德米肽,他汀类药物,地塞米松,伊维菌素可被视为潜在的有效药物,以改善与Covid-19住院患者的临床状态和降低死亡率。我们还发现羟基氯喹不能被认为是Covid-19的有效药物。生成的知识库是可用作名为Covid-19Base的开源工具。结论对开采的生物医学实体的适当调查以及所确定的互动将有助于研究界探索Covid-19治疗治疗的可能方法。

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