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Co-training and ensemble based duplicate detection in adverse drug event reporting systems

机译:药品不良事件报告系统中基于共同训练和整体的重复检测

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Nowadays, many countries have established spontaneous reporting systems (SRSs) to facilitate postmarketing surveillance of listed drugs and collect enough data for detecting unknown adverse drug reactions. Due to data in SRSs coming from different sources of reporters, there heralds the problem of duplicate reporting; even a small amount of duplicate records would bias the detection results. Although lots of works have been conducted on duplicate record detection, very few of them have been devoted to dataset about adverse drug reactions, and none of them have considered the existence of follow-up reports. In this study, we investigated the problem of identifying duplicate ADR reports in SRSs with the presence of follow-ups. We proposed an ensemble and co-training based detection method that is capable of detecting for a given report not only its duplicates but also its initial or earlier linkage cases.
机译:如今,许多国家已经建立了自发的报告系统(SRS),以促进对上市药物的邮政局监测,并收集足够的数据来检测未知的不良药物反应。由于来自记者的不同来源的SRS中的数据,有预示着重复报告的问题;即使是少量重复记录也会偏向检测结果。虽然已经进行了重复的记录检测进行了许多作品,但很少有人已经致力于关于不良药物反应的数据集,并且他们都没有考虑存在后续报告。在这项研究中,我们调查了在SRS中识别重复的ADR报告的问题,存在随访。我们提出了一种基于共同培训的基于共同训练的检测方法,其能够检测给定的报告,而不仅仅是其重复的报告,还可以检测其初始或早期的连杆情况。

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