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Evaluation of Linked, Open Data Sources for Mining Adverse Drug Reaction Signals

机译:评估链接的开放数据源以挖掘药物不良反应信号

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Linked Data is an emerging paradigm of publishing data in the Internet, accompanied with semantic annotations in a machine understandable fashion. The Internet provides vast data, useful in identifying Public Health trends, e.g. concerning the use of drugs, or the spread of diseases. Current practice of exploiting such data includes their combination from different sources, in order to reinforce their exploitation potential, based on unstructured data management practices and the Linked Data paradigm. In this paper, we present the design, the challenges and an evaluation of a Linked Data model to be used in the context of a platform exploiting social media and bibliographic data sources (namely, Twitter and PubMed), focusing on the application of Adverse Drug Reaction (ADR) signal identification. More specifically, we present the challenges of exploiting Bio2RDF as a Linked Open Data source in this respect, focusing on collecting, updating and normalizing data with the ultimate goal of identifying ADR signals, and evaluate the presented model against three reference evaluation datasets.
机译:链接数据是一种在Internet上发布数据的新兴范例,它以机器可理解的方式伴随着语义注释。互联网提供了大量数据,可用于识别公共卫生趋势,例如关于毒品的使用或疾病的传播。基于非结构化数据管理实践和“链接数据”范例,当前利用此类数据的实践包括来自不同来源的组合,以增强其利用潜力。在本文中,我们将介绍在社交媒体和书目数据源(即Twitter和PubMed)开发平台中使用的链接数据模型的设计,面临的挑战和评估,重点是不良药物的应用反应(ADR)信号识别。更具体地说,在这方面,我们提出了将Bio2RDF用作链接开放数据源的挑战,重点是收集,更新和规范化数据,最终目的是识别ADR信号,并针对三个参考评估数据集评估提出的模型。

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