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Detecting Potential Serious Adverse Drug Reactions Using Sequential Pattern Mining Method

机译:使用顺序模式挖掘方法检测潜在的严重不良药物反应

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Adverse drug reactions (ADRs), defined as noxious and unintended responses to drugs at normal doses, cause hospitalization and death all around the world, and cost billions of dollars every year. Different techniques have been explored to discover potential ADRs using materials from various sources, such as spontaneous reporting systems, electronic medical records and clinical related social media data. In this paper, we proposed a framework that combines sequential data mining method Prefix-Span and classic disproportionality based method Proportional Report Ratio (PRR) to detect potential serious ADRs, taking temporal information among clinical events into consideration. And Naranjo algorithm, a questionnaire designed to determine the likelihood of causal relationships between drugs and reactions, is introduced to verify the validity of the results we obtain. In the end, we got 127 pair-wise frequent patterns of drugs and reactions, and 52% of the drugs overlap with that of the Naranjo algorithm. And the comparison of those two approaches shows that detecting potential ADRs based on disease category may increase the accuracy and creditability of the results.
机译:药物不良反应(ADR)被定义为对正常剂量药物的有害和意外反应,在全世界引起住院和死亡,每年花费数十亿美元。已经探索了各种技术来使用来自各种来源的材料来发现潜在的ADR,例如自发报告系统,电子病历和临床相关的社交媒体数据。在本文中,我们提出了一个框架,该框架结合了顺序数据挖掘方法Prefix-Span和基于经典不成比例的方法Proportional Report Ratio(PRR)来检测潜在的严重ADR,同时考虑了临床事件之间的时间信息。引入Naranjo算法(旨在确定药物与反应之间因果关系的可能性的问卷)以验证我们获得的结果的有效性。最终,我们获得了127种成对的药物和反应频繁模式,其中52%的药物与Naranjo算法重叠。两种方法的比较表明,根据疾病类别检测潜在的ADR可以提高结果的准确性和可信度。

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