Gergi Mansour, Wilkinson Katherine, Plante Timothy B, Zakai Neil A
Department of Medicine, Larner College of Medicine, University of Vermont, Burlington, Vermont, USA.
Department of Medicine, University of Vermont Medical Center, Burlington, Vermont, USA.
Res Pract Thromb Haemost. 2024 Jul 14;8(5):102513. doi: 10.1016/j.rpth.2024.102513. eCollection 2024 Jul.
Ascertaining accurately the exposure to antithrombotic medications for both research and quality initiatives has been challenging due to a multitude of reasons: aspirin, the most commonly used antithrombotic, is available over the counter in the United States. Additionally, antithrombotic medications are frequently interrupted for bleeding and procedures.
We aimed to develop and validate an algorithm to capture accurately the longitudinal exposure to antithrombotic medications including aspirin using the electronic health record.
We used the Medical Inpatient Thrombosis and Hemostasis cohort, which consists of primary care patients at a university medical center followed for a median of 6.2 years. Exposure to antithrombotic medications was captured using the medication reconciliation data linked to each ambulatory encounter. We developed an algorithm that used the taking "yes" or "no" tab as well as start and stop dates to define the duration of exposure for each medication. Eighty charts were reviewed and compared with results of the algorithm for validation. We estimated the sensitivity, specificity, and positive and negative predictive values.
The algorithm was 97% (95% CI, 94%-100%) sensitive and 95% (95% CI, 90%-100%) specific in identifying exposure to any antithrombotic medication. This translated to a 93% (95% CI, 85%-100%) positive predictive value and 98% (95% CI, 96%-100%) negative predictive value. When looking at aspirin alone, the sensitivity and the positive predictive value were 95% (95% CI, 88%-100%) and 87% (95% CI, 71%-100%).
This current algorithm provides a new and easily adaptable strategy to capture accurately exposure to aspirin and other antithrombotic medications.
由于多种原因,准确确定抗血栓药物的暴露情况对于研究和质量改进举措而言一直具有挑战性:阿司匹林是最常用的抗血栓药物,在美国可在柜台购买。此外,抗血栓药物常因出血和手术而中断使用。
我们旨在开发并验证一种算法,以利用电子健康记录准确捕捉包括阿司匹林在内的抗血栓药物的纵向暴露情况。
我们使用了医疗住院患者血栓形成与止血队列,该队列由一所大学医学中心的初级保健患者组成,随访时间中位数为6.2年。通过与每次门诊就诊相关联的用药核对数据来捕捉抗血栓药物的暴露情况。我们开发了一种算法,该算法使用“是”或“否”选项卡以及开始和停止日期来定义每种药物的暴露持续时间。审查了80份病历,并将其与算法结果进行比较以进行验证。我们估计了敏感性、特异性以及阳性和阴性预测值。
该算法在识别任何抗血栓药物暴露方面的敏感性为97%(95%CI,94%-100%),特异性为95%(95%CI,90%-100%)。这转化为阳性预测值为93%(95%CI,85%-100%),阴性预测值为98%(95%CI,9声%-100%)。单独查看阿司匹林时,敏感性和阳性预测值分别为95%(95%CI,88%-100%)和87%(95%CI,71%-100%)。
当前的这种算法提供了一种新的且易于应用的策略,可准确捕捉阿司匹林和其他抗血栓药物的暴露情况。