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High-Performance Signal Detection for Adverse Drug Events using MapReduce Paradigm

机译:使用MapReduce范例对药物不良事件进行高性能信号检测

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摘要

Post-marketing pharmacovigilance is important for public health, as many Adverse Drug Events (ADEs) are unknown when those drugs were approved for marketing. However, due to the large number of reported drugs and drug combinations, detecting ADE signals by mining these reports is becoming a challenging task in terms of computational complexity. Recently, a parallel programming model, MapReduce has been introduced by Google to support large-scale data intensive applications. In this study, we proposed a MapReduce-based algorithm, for common ADE detection approach, Proportional Reporting Ratio (PRR), and tested it in mining spontaneous ADE reports from FDA. The purpose is to investigate the possibility of using MapReduce principle to speed up biomedical data mining tasks using this pharmacovigilance case as one specific example. The results demonstrated that MapReduce programming model could improve the performance of common signal detection algorithm for pharmacovigilance in a distributed computation environment at approximately liner speedup rates.
机译:上市后的药物警戒对于公共卫生非常重要,因为许多不良药品事件(ADE)获批上市后才为人所知。但是,由于已报告的药物和药物组合数量众多,因此,通过挖掘这些报告来检测ADE信号在计算复杂性方面已成为一项具有挑战性的任务。最近,Google引入了并行编程模型MapReduce以支持大规模数据密集型应用程序。在这项研究中,我们提出了一种基于MapReduce的算法,用于常见的ADE检测方法,即比例报告比率(PRR),并在从FDA提取自发ADE报告中对其进行了测试。目的是研究使用MapReduce原理以该药物警戒案例为例来加快生物医学数据挖掘任务的可能性。结果表明,MapReduce编程模型可以在大约线性加速的情况下提高分布式计算环境中药物警戒性的通用信号检测算法的性能。

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