A Method to Determine the Optimal Intensity of Oral Anticoagulant Therapy

医学 强度(物理) 入射(几何) 协变量 临床试验 抗凝剂 线性回归 口服抗凝剂 置信区间 统计 外科 内科学 华法林 数学 心房颤动 量子力学 物理 几何学
作者
F.R. Rosendaal,Suzanne C. Cannegieter,F.J.M. van der Meer,Jan P. Vandenbroucke
出处
期刊:Thrombosis and Haemostasis [Georg Thieme Verlag KG]
卷期号:69 (03): 236-239 被引量:1934
标识
DOI:10.1055/s-0038-1651587
摘要

Oral anticoagulant therapy has been shown to be effective for several indications. The optimal intensity of anticoagulation for each indication, however, is largely unknown. To determine this optimal intensity, randomised clinical trials are conducted in which two target levels of anticoagulation are compared. This approach is inefficient, since the choice of the target levels will be arbitrary. Moreover, the achieved intensity is not taken into account. We propose a method to determine the optimal achieved intensity of anticoagulation. This method can be applied within a clinical trial as an "efficacy-analysis", but also on data gathered in day-to-day patient care. In this method, INR-specific incidence rates of events, either thromboembolic or hemorrhagic, are calculated. The numerator of the incidence rate is based on data on the INR at the time of the event. The denominator consists of the person-time at each INR value, summed over all patients, and is calculated from all INR measurements of all patients during the follow-up interval. This INR-specific person-time is calculated with the assumption of a linear increase or decrease between two consecutive INR determinations. Since the incidence rates may be substratified on covariates, efficient assessment of the effects of other factors (e.g. age, sex, comedication) by multivariate regression analysis becomes possible. This method allows the determination of the optimal pharmacological effects of anticoagulation, which can form a rational starting point for choosing the target levels in subsequent clinical trials.
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