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首页> 外文期刊>Pharmacoepidemiology and drug safety >Significance of data mining in routine signal detection: Analysis based on the safety signals identified by the FDA
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Significance of data mining in routine signal detection: Analysis based on the safety signals identified by the FDA

机译:例行信号检测中数据挖掘的意义:基于FDA识别的安全信号的分析

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摘要

Purpose Data mining has been introduced as one of the most useful methods for signal detection by spontaneous reports, but data mining is not always effective in detecting all safety issues. To investigate appropriate situations in which data mining is effective in routine signal detection activities, we analyzed the characteristics of signals that the US Food and Drug Administration (FDA) identified from the FDA Adverse Event Reporting System (FAERS). Methods Among the signals that the FDA identified from the FAERS between 2008 1Q and 2014 4Q, we selected 233 signals to evaluate in this study. We conducted a disproportionality analysis and classified these signals into two groups according to the presence or absence of statistical significance in the reporting odds ratio (ROR). Then, we compared the two groups based on the characteristics of the suspected drugs and adverse events (AEs). Results Safety signals were most frequently identified for new drugs that had been on the market for less than 5 years, but some signals were still identified for old drugs (= 20 years), and most of them were statistically significant. The proportion of the signals for "serious" events was significantly higher in the group of nonsignals by ROR (Fisher's exact test, P = 0.032). Conclusions Data mining was shown to be effective in the following situations: (1) early detection of safety issues for newly marketed drugs, (2) continuous monitoring of safety issues for old drugs, and (3) signal detection of nonserious AEs, to which little attention is usually given.
机译:目的数据挖掘已被引入作为通过自发报告的信号检测最有用的方法之一,但数据挖掘并不总是有效地检测所有安全问题。为了调查数据挖掘在常规信号检测活动中有效的适当情况下,我们分析了美国食品和药物管理局(FDA)从FDA不良事件报告系统(FAE)确定的信号的特征。方法在2008年1Q和2014年4Q之间的FAE员工中识别的FDA的信号中,我们选择了233个信号来评估本研究。我们进行了不成比例的分析,并根据报告赔率比(ROR)中的统计显着性的存在或缺乏分为两组。然后,我们基于疑似药物和不良事件(AES)的特征进行了两组。结果安全信号最常被确定为市场上的新药物少于5年,但仍仍然针对旧药物(& = 20年)鉴定出一些信号,并且大多数是统计学意义。 “严重”事件的信号的比例在ROR(Fisher确切的测试中,Nonsignals集团明显高于较高(Fisher的确切试验,P = 0.032)。结论数据挖掘显示在以下情况下有效:(1)早期检测新销售药物的安全问题,(2)持续监测旧药物的安全问题,以及(3)对非人射击的信号检测通常给出很少的关注。

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