首页> 外文期刊>Journal of biomedical informatics. >Automatic signal extraction, prioritizing and filtering approaches in detecting post-marketing cardiovascular events associated with targeted cancer drugs from the FDA Adverse Event Reporting System (FAERS)
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Automatic signal extraction, prioritizing and filtering approaches in detecting post-marketing cardiovascular events associated with targeted cancer drugs from the FDA Adverse Event Reporting System (FAERS)

机译:从FDA不良事件报告系统(FAEERS)中检测与有针对性癌症药物相关的营销后心血管事件的自动信号提取,优先考虑和过滤方法

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Objective: Targeted drugs dramatically improve the treatment outcomes in cancer patients; however, these innovative drugs are often associated with unexpectedly high cardiovascular toxicity. Currently, cardiovascular safety represents both a challenging issue for drug developers, regulators, researchers, and clinicians and a concern for patients. While FDA drug labels have captured many of these events, spontaneous reporting systems are a main source for post-marketing drug safety surveillance in 'real-world' (outside of clinical trials) cancer patients. In this study, we present approaches to extracting, prioritizing, filtering, and confirming cardiovascular events associated with targeted cancer drugs from the FDA Adverse Event Reporting System (FAERS).Data and methods: The dataset includes records of 4,285,097 patients from FAERS. We first extracted drug-cardiovascular event (drug-CV) pairs from FAERS through named entity recognition and mapping processes. We then compared six ranking algorithms in prioritizing true positive signals among extracted pairs using known drug-CV pairs derived from FDA drug labels. We also developed three filtering algorithms to further improve precision. Finally, we manually validated extracted drug-CV pairs using 21 million published MEDLINE records.Results: We extracted a total of 11,173 drug-CV pairs from FAERS. We showed that ranking by frequency is significantly more effective than by the five standard signal detection methods (246% improvement in precision for top-ranked pairs). The filtering algorithm we developed further improved overall precision by 91.3%. By manual curation using literature evidence, we show that about 51.9% of the 617 drug-CV pairs that appeared in both FAERS and MEDLINE sentences are true positives. In addition, 80.6% of these positive pairs have not been captured by FDA drug labeling.Conclusions: The unique drug-CV association dataset that we created based on FAERS could facilitate our understanding and prediction of cardiotoxic events associated with targeted cancer drugs.
机译:目的:有针对性的药物显着改善癌症患者的治疗结果;然而,这些创新的药物通常与意外高的心血管毒性有关。目前,心血管安全代表了毒品开发商,监管机构,研究人员和临床医生的具有挑战性的问题,以及对患者的关注。虽然FDA药物标签捕获了许多这些事件,但自发报告系统是在“现实世界”(临床试验外)癌症患者的营销后药物安全监测的主要来源。在这项研究中,我们提取了与FDA不良事件报告系统(FAEERS).DATA和方法相关联,优先考虑,优先抑制,过滤和确认与靶癌药物相关的心血管事件的方法及方法:数据集包括来自FAES的4,285,097名患者的记录。我们首先通过命名实体识别和映射过程从派生中提取药物心血管事件(药物-CV)对。然后,我们将六种排名算法进行了六种排名算法,以使用来自FDA药物标签的已知药物-CV对在提取的对成对中进行真正的正信号。我们还开发了三种过滤算法,以进一步提高精度。最后,我们手动验证了使用2100万发布的Medline Records提取的药物-CV对。结果:我们从FAERS中提取了总共11,173个药物-CV对。我们表明,按频率排名比五个标准信号检测方法的频率明显更有效(倒排对成对的精度246%)。过滤算法我们开发了91.3%的总体精度。通过使用文献证据进行手动策择,我们显示,在派生和Medline句子中出现的617个药物-CV对中的约51.9%是真实的积极态度。此外,FDA药物标签尚未捕获80.6%.CDA药物标签尚未捕获。结论:我们基于FAERES创建的独特药物-CV关联数据集可以促进我们对与靶向癌症药物相关的心脏毒性事件的理解和预测。

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