Children's Hospital Informatics Program, Children's Hospital Boston, Boston, Massachusetts 02115, USA.
J Am Med Inform Assoc. 2012 Jul-Aug;19(4):649-54. doi: 10.1136/amiajnl-2011-000416. Epub 2011 Nov 19.
We sought to measure population-level adherence to antihyperlipidemics, antihypertensives, and oral hypoglycemics, and to develop a model for early identification of subjects at high risk of long-term poor adherence.
Prescription-filling data for 2 million subjects derived from a payor's insurance claims were used to evaluate adherence to three chronic drugs over 1 year. We relied on patterns of prescription fills, including the length of gaps in medication possession, to measure adherence among subjects and to build models for predicting poor long-term adherence.
All prescription fills for a specific drug were sequenced chronologically into drug eras. 61.3% to 66.5% of the prescription patterns contained medication gaps >30 days during the first year of drug use. These interrupted drug eras include long-term discontinuations, where the subject never again filled a prescription for any drug in that category in the dataset, which represent 23.7% to 29.1% of all drug eras. Among the prescription-filling patterns without large medication gaps, 0.8% to 1.3% exhibited long-term poor adherence. Our models identified these subjects as early as 60 days after the first prescription fill, with an area under the curve (AUC) of 0.81. Model performance improved as the predictions were made at later time-points, with AUC values increasing to 0.93 at the 120-day time-point.
Dispensed medication histories (widely available in real time) are useful for alerting providers about poorly adherent patients and those who will be non-adherent several months later. Efforts to use these data in point of care and decision support facilitating patient are warranted.
我们旨在衡量人群对降脂药、降压药和口服降糖药的依从性,并开发一种模型,以便早期识别长期依从性差的高风险患者。
使用来自支付方保险索赔的 200 万患者的处方填写数据,评估患者在一年内对三种慢性药物的依从性。我们依赖于处方填写模式,包括药物持有时间的长短,来衡量患者的依从性,并建立预测长期依从性差的模型。
特定药物的所有处方都按照时间顺序排列成药物时期。在药物使用的第一年,61.3%至 66.5%的处方模式中存在>30 天的药物中断。这些中断的药物时期包括长期停药,即患者在数据集内再也没有再次开该类别的任何药物处方,占所有药物时期的 23.7%至 29.1%。在没有大的药物中断的处方填写模式中,0.8%至 1.3%表现出长期依从性差。我们的模型早在首次处方后 60 天就识别出这些患者,曲线下面积(AUC)为 0.81。随着预测时间的推移,模型性能得到改善,120 天时 AUC 值增加到 0.93。
配药用药史(实时广泛可用)可用于提醒医务人员注意依从性差的患者和几个月后将不依从的患者。值得努力在护理点和决策支持中使用这些数据,以促进患者的治疗。