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Towards Large-scale Twitter Mining for Drug-related Adverse Events

机译:对于大规模推特挖掘药物相关的不良事件

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摘要

Drug-related adverse events pose substantial risks to patients who consume post-market or Drug-related adverse events pose substantial risks to patients who consume post-market or investigational drugs. Early detection of adverse events benefits not only the drug regulators, but also the manufacturers for pharmacovigilance. Existing methods rely on patients’ “spontaneous” self-reports that attest problems. The increasing popularity of social media platforms like the Twitter presents us a new information source for finding potential adverse events. Given the high frequency of user updates, mining Twitter messages can lead us to real-time pharmacovigilance. In this paper, we describe an approach to find drug users and potential adverse events by analyzing the content of twitter messages utilizing Natural Language Processing (NLP) and to build Support Vector Machine (SVM) classifiers. Due to the size nature of the dataset (i.e., 2 billion Tweets), the experiments were conducted on a High Performance Computing (HPC) platform using MapReduce, which exhibits the trend of big data analytics. The results suggest that daily-life social networking data could help early detection of important patient safety issues.
机译:与药物相关的不良事件对食用上市后或药物的患者构成重大风险。与药物相关的不良事件对食用上市后或研究性药物的患者构成重大风险。早期发现不良事件不仅有利于药物监管者,而且也有利于药物警戒的制造商。现有方法依靠患者的“自发”自我报告来证明问题。像Twitter这样的社交媒体平台越来越受欢迎,这为我们提供了寻找潜在不良事件的新信息来源。鉴于用户更新的频率很高,挖掘Twitter消息可以引导我们进行实时药物警戒。在本文中,我们描述了一种通过使用自然语言处理(NLP)分析Twitter消息的内容并建立支持向量机(SVM)分类器来查找毒品使用者和潜在不良事件的方法。由于数据集的大小性质(即20亿条推文),使用MapReduce在高性能计算(HPC)平台上进行了实验,展现了大数据分析的趋势。结果表明,日常生活社交网络数据可以帮助及早发现重要的患者安全问题。

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