Gardarsdottir Helga, Egberts Antoine C G, van Dijk Liset, Sturkenboom Miriam C J M, Heerdink Eibert R
Division of Pharmacoepidemiology and Pharmacotherapy, Utrecht Institute for Pharmaceutical Sciences, Faculty of Science, Utrecht University, Utrecht, The Netherlands.
Pharmacoepidemiol Drug Saf. 2009 Jan;18(1):7-15. doi: 10.1002/pds.1677.
Antidepressants are used for many indications besides depression. This makes investigating depression treatment outcomes in prescription databases problematic when the indication is unknown. The aim of our study is to develop an algorithm to identify antidepressant drug users from prescription data that suffer from depression.
Data for deriving the algorithm were obtained from the Second Dutch National Survey of General Practice, carried out in 2001 by The Netherlands Institute for Health Services Research (NIVEL), and for validation the Integrated Primary Care Information (IPCI) database was used. Both sets included adults receiving their first antidepressant drug in 2001 (n = 1855 and 3321, respectively). The outcome was a registered diagnosis of depression. Covariates investigated for developing the algorithm were patient and prescribing characteristics, and co-medication.
The predictive algorithm included age, SSRI prescribed on the index date, prescribed dose, general practitioner as prescriber and the number of antidepressant prescriptions prescribed plus medication for treating acid related disorders, laxatives, cardiac therapy or hypnotics/sedatives prescribed in the 6 months prior to index date. The probability that the algorithm correctly identified an antidepressant drug user as having a depression diagnosis was 79% with a sensitivity of 79.6% and a specificity of 66.9%.
In conclusion, we developed and validated an algorithm that can be used to compose cohorts of patients treated with antidepressants for depression from prescription databases.
抗抑郁药除用于治疗抑郁症外,还有许多其他适应症。这使得在处方数据库中研究抑郁症治疗结果时,如果适应症不明,就会出现问题。我们研究的目的是开发一种算法,从处方数据中识别出患有抑郁症的抗抑郁药使用者。
用于推导该算法的数据来自荷兰卫生服务研究机构(NIVEL)于2001年进行的第二次荷兰全国全科医学调查,验证时使用了综合初级保健信息(IPCI)数据库。两组数据均包括2001年首次服用抗抑郁药的成年人(分别为n = 1855和3321)。结果是登记的抑郁症诊断。为开发该算法而研究的协变量包括患者和处方特征以及联合用药情况。
预测算法包括年龄、索引日期开具的选择性5-羟色胺再摄取抑制剂(SSRI)、开具剂量、作为开处方者的全科医生以及抗抑郁药处方数量,加上索引日期前6个月内开具的用于治疗酸相关疾病、泻药、心脏治疗或催眠药/镇静剂的药物。该算法正确识别抗抑郁药使用者患有抑郁症诊断的概率为79%,敏感性为79.6%,特异性为66.9%。
总之,我们开发并验证了一种算法,可用于从处方数据库中组成接受抗抑郁药治疗抑郁症的患者队列。