Chief Medical Office and Patient Safety, Global Drug Development, Novartis Pharma AG, Basel, Switzerland.
Enterprise Risk Management, Research and Development, ERC, Novartis Pharma AG, Basel, Switzerland.
Pharmacoepidemiol Drug Saf. 2022 Nov;31(11):1131-1139. doi: 10.1002/pds.5532. Epub 2022 Sep 9.
Exponential growth of health-related data collected by digital tools is a reality within pharmaceutical and medical device research and development. Data generated through digital tools may be categorized as relevant to efficacy and/or safety. The enormity of these data requires the adoption of new approaches for processing and evaluation. Recognition of patterns within the safety data is vital for sponsors seeking regulatory approval for their new products. Nontraditional data sources may contain relevant safety information; early evaluation of these data will help to determine the product safety profile. Advanced technologies have allowed the development of digital tools to screen these data, which in some situations are classified as software as a medical devices and subject to clinical evaluation and post-marketing surveillance. Artificial intelligence may help to reduce or even eliminate noise from within these data, allowing safety experts to focus on the most pertinent evidence. We propose a data typology and provide considerations on how to define adverse events within different types of data, even where no human reporter exists. Proposals are made for the automation of screening processes. We consider validation aspects to support solutions that are proven to produce reliable results, and to deliver trusted outputs to stakeholders.
数字工具收集的与健康相关的数据呈指数级增长,这是制药和医疗器械研发的现实。数字工具生成的数据可能与疗效和/或安全性相关。这些数据的庞大数量要求采用新的方法进行处理和评估。识别安全性数据中的模式对于寻求新产品监管批准的赞助商至关重要。非传统数据源可能包含相关的安全性信息;早期评估这些数据将有助于确定产品的安全性概况。先进的技术已经允许开发数字工具来筛选这些数据,在某些情况下,这些数据被归类为软件即医疗器械,并需要进行临床评估和上市后监测。人工智能可以帮助减少甚至消除这些数据中的噪声,使安全专家能够专注于最相关的证据。我们提出了一种数据分类法,并就如何在不同类型的数据中定义不良事件提供了考虑因素,即使在没有人工报告者的情况下也是如此。还提出了用于筛选过程自动化的建议。我们考虑了验证方面的问题,以支持经过验证可产生可靠结果并向利益相关者提供可靠输出的解决方案。