Gaspar Frederic, Lutters Monika, Beeler Patrick Emanuel, Lang Pierre Olivier, Burnand Bernard, Rinaldi Fabio, Lovis Christian, Csajka Chantal, Le Pogam Marie-Annick
Center for Research and Innovation in Clinical Pharmaceutical Sciences, Lausanne University Hospital and University of Lausanne, Lausanne, Switzerland.
School of Pharmaceutical Sciences, University of Geneva, Geneva, Switzerland.
JMIR Res Protoc. 2022 Nov 15;11(11):e40456. doi: 10.2196/40456.
One-third of older inpatients experience adverse drug events (ADEs), which increase their mortality, morbidity, and health care use and costs. In particular, antithrombotic drugs are among the most at-risk medications for this population. Reporting systems have been implemented at the national, regional, and provider levels to monitor ADEs and design prevention strategies. Owing to their well-known limitations, automated detection technologies based on electronic medical records (EMRs) are being developed to routinely detect or predict ADEs.
This study aims to develop and validate an automated detection tool for monitoring antithrombotic-related ADEs using EMRs from 4 large Swiss hospitals. We aim to assess cumulative incidences of hemorrhages and thromboses in older inpatients associated with the prescription of antithrombotic drugs, identify triggering factors, and propose improvements for clinical practice.
This project is a multicenter, cross-sectional study based on 2015 to 2016 EMR data from 4 large hospitals in Switzerland: Lausanne, Geneva, and Zürich university hospitals, and Baden Cantonal Hospital. We have included inpatients aged ≥65 years who stayed at 1 of the 4 hospitals during 2015 or 2016, received at least one antithrombotic drug during their stay, and signed or were not opposed to a general consent for participation in research. First, clinical experts selected a list of relevant antithrombotic drugs along with their side effects, risks, and confounding factors. Second, administrative, clinical, prescription, and laboratory data available in the form of free text and structured data were extracted from study participants' EMRs. Third, several automated rule-based and machine learning-based algorithms are being developed, allowing for the identification of hemorrhage and thromboembolic events and their triggering factors from the extracted information. Finally, we plan to validate the developed detection tools (one per ADE type) through manual medical record review. Performance metrics for assessing internal validity will comprise the area under the receiver operating characteristic curve, F-score, sensitivity, specificity, and positive and negative predictive values.
After accounting for the inclusion and exclusion criteria, we will include 34,522 residents aged ≥65 years. The data will be analyzed in 2022, and the research project will run until the end of 2022 to mid-2023.
This project will allow for the introduction of measures to improve safety in prescribing antithrombotic drugs, which today remain among the drugs most involved in ADEs. The findings will be implemented in clinical practice using indicators of adverse events for risk management and training for health care professionals; the tools and methodologies developed will be disseminated for new research in this field. The increased performance of natural language processing as an important complement to structured data will bring existing tools to another level of efficiency in the detection of ADEs. Currently, such systems are unavailable in Switzerland.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): DERR1-10.2196/40456.
三分之一的老年住院患者会发生药物不良事件(ADEs),这增加了他们的死亡率、发病率、医疗保健使用和成本。特别是,抗血栓药物是该人群中风险最高的药物之一。国家、地区和医疗机构层面已实施报告系统,以监测药物不良事件并制定预防策略。由于其众所周知的局限性,基于电子病历(EMR)的自动检测技术正在被开发,以常规检测或预测药物不良事件。
本研究旨在开发并验证一种自动检测工具,用于使用来自瑞士4家大型医院的电子病历监测抗血栓相关药物不良事件。我们旨在评估与抗血栓药物处方相关的老年住院患者出血和血栓形成的累积发生率,识别触发因素,并为临床实践提出改进建议。
本项目是一项多中心横断面研究,基于瑞士4家大型医院2015年至2016年的电子病历数据:洛桑、日内瓦和苏黎世大学医院以及巴登州立医院。我们纳入了年龄≥65岁的住院患者,他们在2015年或2016年期间入住4家医院中的1家,住院期间至少接受过一种抗血栓药物治疗,并且签署了或不反对参与研究的一般同意书。首先,临床专家选择了一份相关抗血栓药物清单及其副作用、风险和混杂因素。其次,从研究参与者的电子病历中提取以自由文本和结构化数据形式提供的行政、临床、处方和实验室数据。第三,正在开发几种基于自动规则和机器学习的算法,以便从提取的信息中识别出血和血栓栓塞事件及其触发因素。最后,我们计划通过人工病历审查来验证开发的检测工具(每种药物不良事件类型一个)。评估内部有效性的性能指标将包括受试者操作特征曲线下面积、F分数、敏感性、特异性以及阳性和阴性预测值。
在考虑纳入和排除标准后,我们将纳入34522名年龄≥65岁的居民。数据将于2022年进行分析,研究项目将持续到2022年底至2023年年中。
该项目将有助于引入措施,以提高抗血栓药物处方的安全性,目前抗血栓药物仍是涉及药物不良事件最多的药物之一。研究结果将通过不良事件指标用于风险管理和医护人员培训,从而在临床实践中得以应用;所开发的工具和方法将被推广用于该领域的新研究。自然语言处理作为结构化数据的重要补充,其性能的提升将使现有工具在检测药物不良事件方面达到更高的效率水平。目前,瑞士尚无此类系统。
国际注册报告识别码(IRRID):DERR1-10.2196/40456