Department of Biomedical Informatics, Harvard Medical School, Boston MA, USA.
Center for Systems Biology; Center for Assessment Technology &Continuous Health (CATCH), Massachusetts General Hospital, Boston MA, USA.
Sci Rep. 2017 Feb 9;7:42282. doi: 10.1038/srep42282.
Insomnia remains under-diagnosed and poorly treated despite its high economic and social costs. Though previous work has examined how patient characteristics affect sleep medication prescriptions, the role of physician characteristics that influence this clinical decision remains unclear. We sought to understand patient and physician factors that influence sleep medication prescribing patterns by analyzing Electronic Medical Records (EMRs) including the narrative clinical notes as well as codified data. Zolpidem and trazodone were the most widely prescribed initial sleep medication in a cohort of 1,105 patients. Some providers showed a historical preference for one medication, which was highly predictive of their future prescribing behavior. Using a predictive model (AUC = 0.77), physician preference largely determined which medication a patient received (OR = 3.13; p = 3 × 10). In addition to the dominant effect of empirically determined physician preference, discussion of depression in a patient's note was found to have a statistically significant association with receiving a prescription for trazodone (OR = 1.38, p = 0.04). EMR data can yield insights into physician prescribing behavior based on real-world physician-patient interactions.
尽管失眠症的经济和社会成本很高,但它仍未得到充分诊断和治疗。尽管之前的研究已经探讨了患者特征如何影响睡眠药物处方,但影响这一临床决策的医生特征的作用仍不清楚。我们通过分析电子病历(EMR),包括叙述性临床记录和编码数据,旨在了解影响睡眠药物处方模式的患者和医生因素。唑吡坦和曲唑酮是 1105 名患者队列中最广泛开的初始睡眠药物。一些医生表现出对一种药物的历史偏好,这对他们未来的处方行为有很高的预测性。使用预测模型(AUC=0.77),医生的偏好在很大程度上决定了患者会接受哪种药物(OR=3.13;p=3×10)。除了经验确定的医生偏好的主导作用外,还发现患者记录中对抑郁症的讨论与接受曲唑酮处方有统计学显著关联(OR=1.38,p=0.04)。EMR 数据可以根据实际的医患互动,深入了解医生的处方行为。