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利用电子健康记录评估并考量无应答偏倚:对使用慢性阿片类药物治疗患者的一项调查

Electronic Health Records to Evaluate and Account for Non-response Bias: A Survey of Patients Using Chronic Opioid Therapy.

作者信息

Shortreed Susan M, Von Korff Michael, Thielke Stephen, LeResche Linda, Saunders Kathleen, Rosenberg Dori, Turner Judith A

机构信息

Group Health Research Institute, Seattle, WA, USA., Department of Biostatistics, University of Washington, Seattle, WA, USA.

Group Health Research Institute, Seattle, WA, USA.

出版信息

Obs Stud. 2016;2:24-38. Epub 2016 Feb 1.

Abstract

BACKGROUND

In observational studies concerning drug use and misuse, persons misusing drugs may be less likely to respond to surveys. However, little is known about differences in drug use and drug misuse risk factors between survey respondents and nonrespondents.

METHODS

Using electronic health record (EHR) data, we compared respondents and non-respondents in a telephone survey of middle-aged and older chronic opioid therapy patients to assess predictors of interview nonresponse. We compared general patient characteristics, specific opioid misuse risk factors, and patterns of opioid use associated with increased risk of opioid misuse. Inverse probability weights were calculated to account for nonresponse bias by EHR-measured covariates. EHR-measured covariate distributions for the full sample (nonrespondents and respondents), the unweighted respondent sample, and the inverse probability weighted respondent sample are reported. We present weighted and unweighted prevalence of self-reported opioid misuse risk factors.

RESULTS

Among 2489 potentially eligible patients, 1477 (59.3%) completed interviews. Response rates differed with age (45-54 years, 51.8%; 55-64 years, 58.7%; 65-74 years, 67.9%; and 75 years or older, 59.9%). Tobacco users had lower response rates than did nonusers (53.5% versus 60.9%). Charlson comorbidity score was also related to response rates. Individuals with a Charlson score of 2 had the highest response rate at 65.6%; response rates were lower amoung patients with the lowest (the patients with the fewest health conditions had response rates of 56.7-60.0%) and the highest Charlson scores (patients with the most health conditions had response rates of 52.2-56.0%). These bivariate relationships persisted in adjusted multivariable logistic regression models predicting survey response. Response rates of persons with and without specific opioid misuse risk factors were similar (e.g., 58.7% for persons with substance abuse diagnoses, 59.4% for those without). Opioid use patterns associated with opioid misuse did not predict response rates (e.g., 60.6% versus 59.2% for those receiving versus not receiving opioids from 3 or more physicians outside their primary care clinic). Very few patient characteristics predicted non-response; thus, inverse probability weights accounting for nonresponse had little impact on the distributions of EHR-measured covariates or self-reported measures related to opioid use and misuse.

CONCLUSIONS

Response rates differed by characteristics that predict nonresponse in general health surveys (age, tobacco use), but did not appear to differ by specific patient or drug use risk factors for prescription opioid misuse among middle- and older-aged chronic opioid therapy patients. When observational studies are conducted in health plan populations, electronic health records may be used to evaluate nonresponse bias and to adjust for variables predicting interview nonresponse, complementing other research uses of EHR data in observational studies.

摘要

背景

在有关药物使用和滥用的观察性研究中,滥用药物的人可能不太愿意回应调查。然而,对于调查受访者和未受访者之间药物使用及药物滥用风险因素的差异,我们知之甚少。

方法

利用电子健康记录(EHR)数据,我们在一项针对中老年慢性阿片类药物治疗患者的电话调查中,比较了受访者和未受访者,以评估访谈无应答的预测因素。我们比较了一般患者特征、特定阿片类药物滥用风险因素以及与阿片类药物滥用风险增加相关的阿片类药物使用模式。计算逆概率权重以校正由EHR测量的协变量引起的无应答偏倚。报告了全样本(未受访者和受访者)、未加权受访者样本以及逆概率加权受访者样本的EHR测量协变量分布。我们给出了自我报告的阿片类药物滥用风险因素的加权和未加权患病率。

结果

在2489名潜在符合条件的患者中,1477名(59.3%)完成了访谈。应答率因年龄而异(45 - 54岁,51.8%;55 - 64岁,58.7%;65 - 74岁,67.9%;75岁及以上,59.9%)。吸烟者的应答率低于非吸烟者(53.5%对60.9%)。查尔森合并症评分也与应答率有关。查尔森评分为2的个体应答率最高,为65.6%;健康状况最少的患者应答率为56.7 - 60.0%,健康状况最多的患者应答率为52.2 - 56.0%,这两组患者的应答率较低。这些双变量关系在预测调查应答的调整多变量逻辑回归模型中仍然存在。有无特定阿片类药物滥用风险因素的人的应答率相似(例如,有药物滥用诊断的人为58.7%,无药物滥用诊断的人为59.4%)。与阿片类药物滥用相关的阿片类药物使用模式并未预测应答率(例如,从其初级保健诊所之外的3名或更多医生处接受阿片类药物者的应答率为60.6%,未接受者为59.2%)。很少有患者特征能够预测无应答情况;因此,校正无应答的逆概率权重对EHR测量的协变量分布或与阿片类药物使用和滥用相关的自我报告测量几乎没有影响。

结论

应答率因一般健康调查中预测无应答的特征(年龄、吸烟情况)而异,但在中老年慢性阿片类药物治疗患者中,特定患者或药物使用风险因素(处方阿片类药物滥用)似乎并未导致应答率存在差异。当在健康计划人群中进行观察性研究时,电子健康记录可用于评估无应答偏倚,并对预测访谈无应答的变量进行校正,这是对EHR数据在观察性研究中的其他研究用途的补充。

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