Institute for Health Services Research and Health Economics, German Diabetes Center (DDZ), Leibniz Center for Diabetes Research at Heinrich-Heine University Düsseldorf, Düsseldorf, Germany.
German Center for Diabetes Research (DZD), Neuherberg, Germany.
Int J Epidemiol. 2020 Apr 1;49(2):629-637. doi: 10.1093/ije/dyz278.
Low response rates do not indicate poor representativeness of study populations if non-response occurs completely at random. A non-response analysis can help to investigate whether non-response is a potential source for bias within a study.
A cross-sectional survey among a random sample of a health insurance population with diabetes (n = 3642, 58.9% male, mean age 65.7 years), assessing depression in diabetes, was conducted in 2013 in Germany. Health insurance data were available for responders and non-responders to assess non-response bias. The response rate was 51.1%. Odds ratios (ORs) for responses to the survey were calculated using logistic regression taking into consideration the depression diagnosis as well as age, sex, antihyperglycaemic medication, medication utilization, hospital admission and other comorbidities (from health insurance data).
Responders and non-responders did not differ in the depression diagnosis [OR 0.99, confidence interval (CI) 0.82-1.2]. Regardless of age and sex, treatment with insulin only (OR 1.73, CI 1.36-2.21), treatment with oral antihyperglycaemic drugs (OAD) only (OR 1.77, CI 1.49-2.09), treatment with both insulin and OAD (OR 1.91, CI 1.51-2.43) and higher general medication utilization (1.29, 1.10-1.51) were associated with responding to the survey.
We found differences in age, sex, diabetes treatment and medication utilization between responders and non-responders, which might bias the results. However, responders and non-responders did not differ in their depression status, which is the focus of the DiaDec study. Our analysis may serve as an example for conducting non-response analyses using health insurance data.
如果无应答完全是随机发生的,那么低应答率并不表示研究人群代表性差。无应答分析有助于调查无应答是否是研究中产生偏倚的潜在来源。
2013 年,在德国针对糖尿病的一项健康保险人群的横断面调查中,对糖尿病患者的抑郁情况进行了随机抽样(n=3642,男性占 58.9%,平均年龄为 65.7 岁)。调查使用问卷调查的方式进行,调查结果与健康保险数据相结合,以评估无应答偏倚。应答率为 51.1%。使用 logistic 回归计算应答率的比值比(OR),同时考虑抑郁诊断以及年龄、性别、抗高血糖药物、药物使用、住院治疗和其他合并症(来自健康保险数据)。
应答者和非应答者在抑郁诊断方面没有差异(OR 0.99,95%置信区间(CI)0.82-1.2)。无论年龄和性别,仅使用胰岛素治疗(OR 1.73,95%CI 1.36-2.21)、仅使用口服抗高血糖药物(OAD)治疗(OR 1.77,95%CI 1.49-2.09)、同时使用胰岛素和 OAD 治疗(OR 1.91,95%CI 1.51-2.43)以及更高的一般药物使用(OR 1.29,95%CI 1.10-1.51)与应答调查有关。
我们发现应答者和非应答者在年龄、性别、糖尿病治疗和药物使用方面存在差异,这些差异可能会导致研究结果产生偏倚。然而,应答者和非应答者在抑郁状况方面没有差异,这是 DiaDec 研究的重点。我们的分析可以作为使用健康保险数据进行无应答分析的一个例子。