Daiichi Sankyo, Inc. & Center for Real-World Effectiveness and Safety of Therapeutics (CREST), University of Pennsylvania, Perelman School of Medicine, Philadelphia, PA, 211 Mount Airy Rd, Basking Ridge, NJ, USA.
Institute of Pharmacovigilance, Hvezdova 2b, 14000, Prague, Czech Republic.
Pharmaceut Med. 2022 Oct;36(5):295-306. doi: 10.1007/s40290-022-00441-z. Epub 2022 Jul 29.
Artificial intelligence through machine learning uses algorithms and prior learnings to make predictions. Recently, there has been interest to include more artificial intelligence in pharmacovigilance of products already in the market and pharmaceuticals in development.
The aim of this study was to identify and describe the uses of artificial intelligence in pharmacovigilance through a systematic literature review.
Embase and MEDLINE database searches were conducted for articles published from January 1, 2015 to July 9, 2021 using search terms such as 'pharmacovigilance,' 'patient safety,' 'artificial intelligence,' and 'machine learning' in the title or abstract. Scientific articles that contained information on the use of artificial intelligence in all modalities of patient safety or pharmacovigilance were reviewed and synthesized using a pre-specified data extraction template. Articles with incomplete information and letters to editor, notes, and commentaries were excluded.
Sixty-six articles were identified for evaluation. Most relevant articles on artificial intelligence focused on machine learning, and it was used in patient safety in the identification of adverse drug events (ADEs) and adverse drug reactions (ADRs) (57.6%), processing safety reports (21.2%), extraction of drug-drug interactions (7.6%), identification of populations at high risk for drug toxicity or guidance for personalized care (7.6%), prediction of side effects (3.0%), simulation of clinical trials (1.5%), and integration of prediction uncertainties into diagnostic classifiers to increase patient safety (1.5%). Artificial intelligence has been used to identify safety signals through automated processes and training with machine learning models; however, the findings may not be generalizable given that there were different types of data included in each source.
Artificial intelligence allows for the processing and analysis of large amounts of data and can be applied to various disease states. The automation and machine learning models can optimize pharmacovigilance processes and provide a more efficient way to analyze information relevant to safety, although more research is needed to identify if this optimization has an impact on the quality of safety analyses. It is expected that its use will increase in the near future, particularly with its role in the prediction of side effects and ADRs.
人工智能通过机器学习使用算法和先验知识进行预测。最近,人们对在市场上已有的产品和正在开发的药品的药物警戒中纳入更多人工智能产生了兴趣。
本研究旨在通过系统文献回顾,确定并描述人工智能在药物警戒中的应用。
使用标题或摘要中的“药物警戒”“患者安全”“人工智能”和“机器学习”等搜索词,对 2015 年 1 月 1 日至 2021 年 7 月 9 日发表的文章进行 Embase 和 MEDLINE 数据库检索。综述并综合了使用人工智能在所有患者安全或药物警戒模式下的信息的科学文章,并使用预先指定的数据提取模板。排除了信息不完整的文章以及信件、注释和评论。
确定了 66 篇文章进行评估。与人工智能相关的最主要文章集中在机器学习上,它在识别药物不良事件(ADE)和药物不良反应(ADR)(57.6%)、处理安全报告(21.2%)、提取药物相互作用(7.6%)、识别药物毒性高风险人群或指导个性化护理(7.6%)、预测副作用(3.0%)、模拟临床试验(1.5%)以及将预测不确定性纳入诊断分类器以提高患者安全性(1.5%)方面得到了应用。人工智能已被用于通过自动化流程和使用机器学习模型进行培训来识别安全信号;然而,由于每个来源中包含不同类型的数据,因此结果可能不具有普遍性。
人工智能允许对大量数据进行处理和分析,并且可以应用于各种疾病状态。自动化和机器学习模型可以优化药物警戒流程,并提供更有效的方法来分析与安全性相关的信息,尽管需要进一步研究以确定这种优化是否对安全性分析的质量产生影响。预计在不久的将来,它的使用将会增加,特别是在预测副作用和 ADR 方面。