Division of Pharmacoepidemiology and Pharmacoeconomics, Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, Massachusetts, USA
Division of Pharmacoepidemiology and Pharmacoeconomics, Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, Massachusetts, USA.
BMJ Qual Saf. 2019 Oct;28(10):835-842. doi: 10.1136/bmjqs-2019-009367. Epub 2019 Jun 26.
Clinical guidelines recommend anticoagulation for patients with atrial fibrillation (AF) at high risk of stroke; however, studies report 40% of this population is not anticoagulated.
To evaluate a population health intervention to increase anticoagulation use in high-risk patients with AF.
We used machine learning algorithms to identify patients with AF from electronic health records at high risk of stroke (CHADS-VASc risk score ≥2), and no anticoagulant prescriptions within 12 months. A clinical pharmacist in the anticoagulation service reviewed charts for algorithm-identified patients to assess appropriateness of initiating an anticoagulant. The pharmacist then contacted primary care providers of potentially undertreated patients and offered assistance with anticoagulation management. We used a stepped-wedge design, evaluating the proportion of potentially undertreated patients with AF started on anticoagulant therapy within 28 days for clinics randomised to intervention versus usual care.
Of 1727 algorithm-identified high-risk patients with AF in clinics at the time of randomisation to intervention, 432 (25%) lacked evidence of anticoagulant prescriptions in the prior year. After pharmacist review, only 17% (75 of 432) of algorithm-identified patients were considered potentially undertreated at the time their clinic was randomised to intervention. Over a third (155 of 432) were excluded because they had a single prior AF episode (transient or provoked by serious illness); 36 (8%) had documented refusal of anticoagulation, the remainder had other reasons for exclusion. The intervention did not increase new anticoagulant prescriptions (intervention: 4.1% vs usual care: 4.0%, p=0.86).
Algorithms to identify underuse of anticoagulation among patients with AF in healthcare databases may not capture clinical subtleties or patient preferences and may overestimate the extent of undertreatment. Changing clinician behaviour remains challenging.
临床指南建议对有中风高风险的房颤(AF)患者进行抗凝治疗;然而,研究报告称,该人群中有 40%的患者未接受抗凝治疗。
评估一项人群健康干预措施,以增加有中风高风险的 AF 患者的抗凝治疗使用率。
我们使用机器学习算法从电子健康记录中识别出有中风高风险(CHADS-VASc 风险评分≥2)且在 12 个月内无抗凝处方的 AF 患者。抗凝服务的临床药师会查看算法识别出的患者的图表,以评估启动抗凝剂是否合适。然后,药师会联系潜在治疗不足的患者的初级保健提供者,并提供抗凝管理方面的帮助。我们使用了一个逐步楔形设计,评估随机分配到干预组与常规护理组的诊所中,在 28 天内开始接受抗凝治疗的潜在治疗不足的 AF 患者比例。
在随机分配到干预组时,诊所中 1727 名符合算法的高风险 AF 患者中,有 432 名(25%)在过去一年中没有抗凝处方的证据。经过药师审查,只有 17%(432 名患者中有 75 名)的患者在其诊所被随机分配到干预组时被认为可能治疗不足。超过三分之一(155 名/432 名)的患者被排除在外,因为他们只有一次先前的 AF 发作(短暂或由严重疾病引起);36 名(8%)患者记录有拒绝抗凝治疗,其余患者因其他原因被排除。该干预措施并未增加新的抗凝处方(干预组:4.1% vs 常规护理组:4.0%,p=0.86)。
在医疗保健数据库中识别 AF 患者抗凝治疗不足的算法可能无法捕捉到临床细微差别或患者偏好,并且可能高估了治疗不足的程度。改变临床医生的行为仍然具有挑战性。