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首页> 外文期刊>Drug safety: An international journal of medical toxicology and drug experience >An Automated System Combining Safety Signal Detection and Prioritization from Healthcare Databases: A Pilot Study
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An Automated System Combining Safety Signal Detection and Prioritization from Healthcare Databases: A Pilot Study

机译:一种自动化系统,将安全信号检测和医疗保健数据库的优先级相结合:试验研究

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Abstract Introduction Signal detection from healthcare databases is possible, but is not yet used for routine surveillance of drug safety. One challenge is to develop methods for selecting signals that should be assessed with priority. Aim The aim of this study was to develop an automated system combining safety signal detection and prioritization from healthcare databases and applicable to drugs used in chronic diseases. Methods Patients present in the French EGB healthcare database for at least 1?year between 2005 and 2015 were considered. Noninsulin glucose-lowering drugs (NIGLDs) were selected as a case study, and hospitalization data were used to select important medical events (IME). Signal detection was performed quarterly from 2008 to 2015 using sequence symmetry analysis. NIGLD/IME associations were screened if one or more exposed case was identified in the quarter, and three or more exposed cases were identified in the population at the date of screening. Detected signals were prioritized using the Longitudinal-SNIP (L-SNIP) algorithm based on strength (S), novelty (N), and potential impact of signal (I), and pattern of drug use (P). Signals scored in the top 10% were identified as of high priority. A reference set was built based on NIGLD summaries of product characteristics (SPCs) to compute the performance of the developed system. Results A total of 815 associations were screened and 241 (29.6%) were detected as signals; among these, 58 (24.1%) were prioritized. The performance for signal detection was sensitivity?=?47%; specificity?=?80%; positive predictive value (PPV) 33%; negative predictive value?=?82%. The use of the L-SNIP algorithm increased the early identification of positive controls, restricted to those mentioned in the SPCs after 2008: PPV?=?100% versus PPV?=?14% with its non-use. The system revealed a strong new signal with dipeptidylpeptidase-4 inhibitors and venous thromboembolism. Conclusion The developed system seems promising for the routine use of healthcare data for safety surveillance of drugs used in chronic diseases.
机译:摘要介绍医疗保健数据库的信号检测是可能的,但尚未用于常规监控药物安全。一个挑战是开发用于选择应优先考虑的信号的方法。目的本研究的目的是开发一种自动化系统,将安全信号检测和优先化从医疗保健数据库组合起来,适用于慢性疾病中使用的药物。方法患者在法国EGB医疗数据库中患者至少为1年,2005年至2015年期间的一年。非胰岛素葡萄糖降低药物(NIGLD)被选中作为案例研究,使用住院数据选择重要的医疗事件(IME)。使用序列对称分析从2008到2015季度每季度执行信号检测。如果在本季度确定了一个或多个暴露的案件,则筛选了NIGLD / IME关联,并且在筛选之日内在人口中鉴定了三种或更多种暴露病例。使用基于强度的纵向剪页(L-SNIP)算法,新奇(N)和信号(I)的潜在影响,以及药物使用模式(P)的潜在影响,优先考虑检测到的信号。在前10%中得分的信号被确定为高优先级。基于产品特性(SPC)的NIGLD摘要构建了一个参考集,以计算开发系统的性能。结果总共筛选了815个关联,并检测到241(29.6%)作为信号;其中,58(24.1%)优先考虑。信号检测的性能是灵敏度?=?47%;特异性?= 80%;阳性预测值(PPV)33%;负预测值?=?82%。使用L-Snip算法的使用增加了阳性对照的早期鉴定,限于2008年后SPC中提到的那些:PPV?=?100%与PPV相比?= 14%,其不使用。该系统揭示了具有二肽基肽酶-4抑制剂和静脉血栓栓塞的强大新信号。结论发达的系统似乎有望用于常规使用医疗保健数据,以便在慢性病中使用的药物安全监测。

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    University of Bordeaux Inserm Bordeaux Population Health Research Center Pharmacoepidemiology;

    University of Bordeaux Inserm Bordeaux Population Health Research Center Pharmacoepidemiology;

    University of Bordeaux Inserm Bordeaux Population Health Research Center ERIAS Team UMR 1219;

    University of Bordeaux Inserm Bordeaux Population Health Research Center Pharmacoepidemiology;

    University of Bordeaux Inserm Bordeaux Population Health Research Center Pharmacoepidemiology;

    University of Bordeaux Inserm Bordeaux Population Health Research Center Pharmacoepidemiology;

    University of Bordeaux Inserm Bordeaux Population Health Research Center Pharmacoepidemiology;

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  • 正文语种 eng
  • 中图分类 药品;
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