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Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany

BACKGROUND: 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. METHODS: A cross-sectional survey among a rando...

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Autores principales: Linnenkamp, Ute, Gontscharuk, Veronika, Brüne, Manuela, Chernyak, Nadezda, Kvitkina, Tatjana, Arend, Werner, Fiege, Annett, Schmitz-Losem, Imke, Kruse, Johannes, Evers, Silvia M A A, Hiligsmann, Mickaël, Hoffmann, Barbara, Andrich, Silke, Icks, Andrea
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7266537/
https://www.ncbi.nlm.nih.gov/pubmed/31990354
http://dx.doi.org/10.1093/ije/dyz278
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author Linnenkamp, Ute
Gontscharuk, Veronika
Brüne, Manuela
Chernyak, Nadezda
Kvitkina, Tatjana
Arend, Werner
Fiege, Annett
Schmitz-Losem, Imke
Kruse, Johannes
Evers, Silvia M A A
Hiligsmann, Mickaël
Hoffmann, Barbara
Andrich, Silke
Icks, Andrea
author_facet Linnenkamp, Ute
Gontscharuk, Veronika
Brüne, Manuela
Chernyak, Nadezda
Kvitkina, Tatjana
Arend, Werner
Fiege, Annett
Schmitz-Losem, Imke
Kruse, Johannes
Evers, Silvia M A A
Hiligsmann, Mickaël
Hoffmann, Barbara
Andrich, Silke
Icks, Andrea
author_sort Linnenkamp, Ute
collection PubMed
description BACKGROUND: 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. METHODS: 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). RESULTS: 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. CONCLUSION: 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.
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spelling pubmed-72665372020-06-09 Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany Linnenkamp, Ute Gontscharuk, Veronika Brüne, Manuela Chernyak, Nadezda Kvitkina, Tatjana Arend, Werner Fiege, Annett Schmitz-Losem, Imke Kruse, Johannes Evers, Silvia M A A Hiligsmann, Mickaël Hoffmann, Barbara Andrich, Silke Icks, Andrea Int J Epidemiol Methods BACKGROUND: 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. METHODS: 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). RESULTS: 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. CONCLUSION: 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. Oxford University Press 2020-04 2020-01-28 /pmc/articles/PMC7266537/ /pubmed/31990354 http://dx.doi.org/10.1093/ije/dyz278 Text en © The Author(s) 2020. Published by Oxford University Press on behalf of the International Epidemiological Association. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Methods
Linnenkamp, Ute
Gontscharuk, Veronika
Brüne, Manuela
Chernyak, Nadezda
Kvitkina, Tatjana
Arend, Werner
Fiege, Annett
Schmitz-Losem, Imke
Kruse, Johannes
Evers, Silvia M A A
Hiligsmann, Mickaël
Hoffmann, Barbara
Andrich, Silke
Icks, Andrea
Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany
title Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany
title_full Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany
title_fullStr Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany
title_full_unstemmed Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany
title_short Using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in Germany
title_sort using statutory health insurance data to evaluate non-response in a cross-sectional study on depression among patients with diabetes in germany
topic Methods
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7266537/
https://www.ncbi.nlm.nih.gov/pubmed/31990354
http://dx.doi.org/10.1093/ije/dyz278
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