Skip to main content
Top
Published in: BMC Medical Research Methodology 1/2020

Open Access 01-12-2020 | Stroke | Research article

The effects of different lookback periods on the sociodemographic structure of the study population and on the estimation of incidence rates: analyses with German claims data

Authors: Jelena Epping, Siegfried Geyer, Juliane Tetzlaff

Published in: BMC Medical Research Methodology | Issue 1/2020

Login to get access

Abstract

Background

Defining incident cases has always been a challenging issue for researchers working with routine data. Lookback periods should enable researchers to identify and exclude recurrent cases and increase the accuracy of the incidence estimation. There are different recommendations for lookback periods depending on a disease entity of up to 10 years. Well-known drawbacks of the application of lookback periods are shorter remaining observation period in the dataset or smaller number of cases. The problem of selectivity of the remaining population after introducing lookback periods has not been considered in the literature until now.

Methods

The analyses were performed with pseudonymized claims data of a German statutory health insurance fund with annual case numbers of about 2,1 million insured persons. Proportions of study population excluded due to the application of lookback periods are shown according to age, occupational qualification and income. Myocardial infarction and stroke were used to demonstrate changes in incidence rates after applying lookback periods of up to 5 years.

Results

Younger individuals show substantial dropouts after the application of lookback periods. Furthermore, there are selectivities regarding occupational qualification and income, which cannot be handled by age standardization. Due to selective dropouts of younger individuals, crude incidence rates of myocardial infarction and stroke increase after applying lookback periods. Depending on the income group, age-standardized incidence rates changed differentially, leading to a decrease and possible underestimation of the social gradient after applying lookback periods.

Conclusions

Selectivity analyses regarding age and sociodemographic structure should be performed for the study population after applying lookback periods since the selectivity can affect the outcome especially in health care research. The selectivity effects might occur not only in claims data of one health insurance fund, but also in other longitudinal data with left- or right-censoring not covering the whole population. The effects may also apply to health care systems with a mix of public and private health insurance. A trade-off has to be considered between selectivity effects and eliminating recurrent events for more accuracy in the definition of incidence.
Literature
1.
go back to reference Rothman KJ, Greenland S, Lash TL. Modern epidemiology. 3rd ed. Philadelphia: Wolters Kluwer Health, Lippincott Williams & Wilkins; 2008. Rothman KJ, Greenland S, Lash TL. Modern epidemiology. 3rd ed. Philadelphia: Wolters Kluwer Health, Lippincott Williams & Wilkins; 2008.
2.
go back to reference Geyer S, Jaunzeme J. Möglichkeiten und Grenzen von Befragungsdaten und Daten gesetzlicher Krankenversicherungen [opportunities und limitations of survey data and claims data from statutory health insurances]. In: Swart E, Ihle P, Gothe H, Matusiewicz D, editors. Routinedaten im Gesundheitswesen [routine data in the health care system]. Bern: Huber Verlag; 2014. p. 223–33. Geyer S, Jaunzeme J. Möglichkeiten und Grenzen von Befragungsdaten und Daten gesetzlicher Krankenversicherungen [opportunities und limitations of survey data and claims data from statutory health insurances]. In: Swart E, Ihle P, Gothe H, Matusiewicz D, editors. Routinedaten im Gesundheitswesen [routine data in the health care system]. Bern: Huber Verlag; 2014. p. 223–33.
3.
go back to reference Tourangeau R, Rips LJ, Rasinski K. The psychology of survey response. Cambridge: Cambridge University Press; 2000.CrossRef Tourangeau R, Rips LJ, Rasinski K. The psychology of survey response. Cambridge: Cambridge University Press; 2000.CrossRef
4.
go back to reference Walker M, Whincup PH, Shaper G, Lennon LT, Thomson A. Validation of patient recall of doctor-diagnosed heart attack and stroke: a Postel questionnaire and record review comparison. Am J Epidemiol. 1998;148(4):355–61.CrossRef Walker M, Whincup PH, Shaper G, Lennon LT, Thomson A. Validation of patient recall of doctor-diagnosed heart attack and stroke: a Postel questionnaire and record review comparison. Am J Epidemiol. 1998;148(4):355–61.CrossRef
5.
go back to reference Rassen JA, Bartels DB, Schneeweiss S, Patrick AR, Murk W. Measuring prevalence and incidence of chronic conditions in claims and electronic health record databases. Clin Epidemiol. 2019;11:1–15.CrossRef Rassen JA, Bartels DB, Schneeweiss S, Patrick AR, Murk W. Measuring prevalence and incidence of chronic conditions in claims and electronic health record databases. Clin Epidemiol. 2019;11:1–15.CrossRef
6.
go back to reference Czwikla J, Jobski K, Schink T. The impact of the lookback period and definition of confirmatory events on the identification of incident cancer cases in administrative data. BMC Med Res Methodol. 2017;17(1):122.CrossRef Czwikla J, Jobski K, Schink T. The impact of the lookback period and definition of confirmatory events on the identification of incident cancer cases in administrative data. BMC Med Res Methodol. 2017;17(1):122.CrossRef
7.
go back to reference Roberts AW, Dusetzina SB, Farley JF. Revisiting the washout period in the incident user study design: why 6-12 months may not be sufficient. J Comparative Effectiveness Res. 2015;4(1):27–35.CrossRef Roberts AW, Dusetzina SB, Farley JF. Revisiting the washout period in the incident user study design: why 6-12 months may not be sufficient. J Comparative Effectiveness Res. 2015;4(1):27–35.CrossRef
8.
go back to reference Nedkoff L, Knuiman M, Hung J, Sanfilippo FM, Katzenellenbogen JM, Briffa TG. Concordance between administrative health data and medical records for diabetes status in coronary heart disease patients: a retrospective linked data study. BMC Med Res Methodol. 2013;13. https://doi.org/10.1186/1471-2288-13-121. Nedkoff L, Knuiman M, Hung J, Sanfilippo FM, Katzenellenbogen JM, Briffa TG. Concordance between administrative health data and medical records for diabetes status in coronary heart disease patients: a retrospective linked data study. BMC Med Res Methodol. 2013;13. https://​doi.​org/​10.​1186/​1471-2288-13-121.
9.
go back to reference Worthington JM, Gattellari M, Goumas C, Bin J. Differentiating incident from recurrent stroke using administrative data: the impact of varying lengths of look-Back periods on the risk of misclassification. Neuroepidemiology. 2017;48(3–4):111–8.CrossRef Worthington JM, Gattellari M, Goumas C, Bin J. Differentiating incident from recurrent stroke using administrative data: the impact of varying lengths of look-Back periods on the risk of misclassification. Neuroepidemiology. 2017;48(3–4):111–8.CrossRef
10.
go back to reference Smolina K, Wright FL, Rayner M, Goldacre MJ. Long-term survival and recurrence after acute myocardial infarction in England, 2004 to 2010. Circulation-Cardiovasc Qual Outcomes. 2012;5(4):532–40.CrossRef Smolina K, Wright FL, Rayner M, Goldacre MJ. Long-term survival and recurrence after acute myocardial infarction in England, 2004 to 2010. Circulation-Cardiovasc Qual Outcomes. 2012;5(4):532–40.CrossRef
11.
go back to reference Osler M, Rostgaard K, IA Sørensen T, Madsen M. The effect of recurrent events on register-based estimates of level and trends in incidence of acute myocardial infarction. J Clin Epidemiol. 1999;52(7):595–600.CrossRef Osler M, Rostgaard K, IA Sørensen T, Madsen M. The effect of recurrent events on register-based estimates of level and trends in incidence of acute myocardial infarction. J Clin Epidemiol. 1999;52(7):595–600.CrossRef
12.
go back to reference Sulo G, Igland J, Vollset SE, Nygard O, Egeland GM, Ebbing M, et al. Effect of the Lookback Period's length used to identify incident acute myocardial infarction on the observed trends on incidence rates and survival cardiovascular disease in Norway project. Circulation-Cardiovasc Qual Outcomes. 2015;8(4):376–82.CrossRef Sulo G, Igland J, Vollset SE, Nygard O, Egeland GM, Ebbing M, et al. Effect of the Lookback Period's length used to identify incident acute myocardial infarction on the observed trends on incidence rates and survival cardiovascular disease in Norway project. Circulation-Cardiovasc Qual Outcomes. 2015;8(4):376–82.CrossRef
13.
go back to reference Hoffmann F, Icks A. Do persons that changed health insurance differ from those who did not? The case of diabetes. Exp Clin Endocrinol Diabetes. 2011;119(9):569–72.CrossRef Hoffmann F, Icks A. Do persons that changed health insurance differ from those who did not? The case of diabetes. Exp Clin Endocrinol Diabetes. 2011;119(9):569–72.CrossRef
14.
go back to reference Geyer S, Eberhard S, Schmidt BM, Epping J, Tetzlaff J. Morbidity compression in myocardial infarction 2006 to 2015 in terms of changing rates and age at occurrence. A longitudinal study using claims data from Germany. PLoS One. 2018;13(8):e0202631.CrossRef Geyer S, Eberhard S, Schmidt BM, Epping J, Tetzlaff J. Morbidity compression in myocardial infarction 2006 to 2015 in terms of changing rates and age at occurrence. A longitudinal study using claims data from Germany. PLoS One. 2018;13(8):e0202631.CrossRef
15.
go back to reference Bachus L, Eberhard S, Weißenborn K, Muschik D, Epping J, Geyer S. Morbiditätskompression bei Schlaganfall? Langzeitanalysen zur Veränderung des Auftretens von Schlaganfall [morbidity compression and stroke? Longitudinal analyses on changes in the incidence of stroke]. Das Gesundheitswesen. 2017. https://doi.org/10.1055/s-0043-109860. Bachus L, Eberhard S, Weißenborn K, Muschik D, Epping J, Geyer S. Morbiditätskompression bei Schlaganfall? Langzeitanalysen zur Veränderung des Auftretens von Schlaganfall [morbidity compression and stroke? Longitudinal analyses on changes in the incidence of stroke]. Das Gesundheitswesen. 2017. https://​doi.​org/​10.​1055/​s-0043-109860.
16.
go back to reference Geyer S, Tetzlaff J, Eberhard S, Sperlich S, Epping J. Health inequalities in terms of myocardial infarction and all-cause mortality: a study with German claims data covering 2006 to 2015. Int J Public Health. 2019;64(3):387–97.CrossRef Geyer S, Tetzlaff J, Eberhard S, Sperlich S, Epping J. Health inequalities in terms of myocardial infarction and all-cause mortality: a study with German claims data covering 2006 to 2015. Int J Public Health. 2019;64(3):387–97.CrossRef
17.
go back to reference Ferrario MM, Veronesi G, Kuulasmaa K, Bobak M, Chambless LE, Salomaa V, et al. Social inequalities in stroke mortality, incidence and case-fatality in Europe. Stroke. 2016;47(Suppl. 1). Meeting abstract 88. Ferrario MM, Veronesi G, Kuulasmaa K, Bobak M, Chambless LE, Salomaa V, et al. Social inequalities in stroke mortality, incidence and case-fatality in Europe. Stroke. 2016;47(Suppl. 1). Meeting abstract 88.
18.
go back to reference AOK_Niedersachsen. Geschäftsbericht 2017 [annual report 2017]. Hannover: AOK Niedersachsen; 2017. AOK_Niedersachsen. Geschäftsbericht 2017 [annual report 2017]. Hannover: AOK Niedersachsen; 2017.
19.
go back to reference Statistisches_Bundesamt. Sozialleistungen; Angaben zur Krankenversicherung (Ergebnisse des Mikrozensus) [welfare spendings; data on health insurance (results from the microcensus)]. Statistisches_Bundesamt. Wiesbaden: Statistisches_Bundesamt [Federal Statistical Office]; 2016. p. 140. Statistisches_Bundesamt. Sozialleistungen; Angaben zur Krankenversicherung (Ergebnisse des Mikrozensus) [welfare spendings; data on health insurance (results from the microcensus)]. Statistisches_Bundesamt. Wiesbaden: Statistisches_Bundesamt [Federal Statistical Office]; 2016. p. 140.
20.
go back to reference Jaunzeme J, Eberhard S, Geyer S. Wie “repräsentativ” Sind GKV-Daten? Demografische und soziale Unterschiede und Ähnlichkeiten zwischen einer GKV-Versichertenpopulation, der Bevölkerung Niedersachsens sowie der Bundesrepublik am Beispiel der AOK Niedersachsen [how "representative" are data from statutory health insurances? Demographic and social differences and similarities between a statutory health insurance population, the population of Lower Saxony and the Federal Republic of Germany at the example of the AOK Niedersachsen]. Bundesgesundheitsblatt. 2013;56:447–54.CrossRef Jaunzeme J, Eberhard S, Geyer S. Wie “repräsentativ” Sind GKV-Daten? Demografische und soziale Unterschiede und Ähnlichkeiten zwischen einer GKV-Versichertenpopulation, der Bevölkerung Niedersachsens sowie der Bundesrepublik am Beispiel der AOK Niedersachsen [how "representative" are data from statutory health insurances? Demographic and social differences and similarities between a statutory health insurance population, the population of Lower Saxony and the Federal Republic of Germany at the example of the AOK Niedersachsen]. Bundesgesundheitsblatt. 2013;56:447–54.CrossRef
21.
go back to reference Deutsches_Institut_für_Medizinische_Dokumentation_und_Information_(DIMDI). Internationale statistische Klassifikation der Krankheiten und verwandter Gesundheitsprobleme, 10. Revision – German modification [international classification of Diseasess and related health problems. 10th revision, German modification]. Köln: DIMDI; 2018. Deutsches_Institut_für_Medizinische_Dokumentation_und_Information_(DIMDI). Internationale statistische Klassifikation der Krankheiten und verwandter Gesundheitsprobleme, 10. Revision – German modification [international classification of Diseasess and related health problems. 10th revision, German modification]. Köln: DIMDI; 2018.
23.
go back to reference SGB V - Sozialgesetzbuch (SGB) Fünftes Buch (V) - Gesetzliche Krankenversicherung (Artikel 1 des Gesetzes vom 20. Dezember 1988, BGBl. I S. 2477, 2482), das zuletzt durch Artikel 12 des Gesetzes vom 9. August 2019 (BGBl. I S. 1202) geändert worden ist [Code of Social Law V - Statutory Health Insurance; last amendment on the 9th of August 2019]. SGB V - Sozialgesetzbuch (SGB) Fünftes Buch (V) - Gesetzliche Krankenversicherung (Artikel 1 des Gesetzes vom 20. Dezember 1988, BGBl. I S. 2477, 2482), das zuletzt durch Artikel 12 des Gesetzes vom 9. August 2019 (BGBl. I S. 1202) geändert worden ist [Code of Social Law V - Statutory Health Insurance; last amendment on the 9th of August 2019].
25.
go back to reference Drösler S, Garbe E, Hasford J, Schubert I, Ulrich V, van de Ven W, et al. Gutachten zu den regionalen Verteilungswirkungen des morbiditätsorientierten Risikostrukturausgleichs [Experts' report on the regional distributional effects of the morbidity oriented risk adjustment scheme]. Bonn: Wissenschaftlicher Beirat zur Weiterentwicklung des Risikostrukturausgleichs beim Bundesversicherungsamt; 2018. Drösler S, Garbe E, Hasford J, Schubert I, Ulrich V, van de Ven W, et al. Gutachten zu den regionalen Verteilungswirkungen des morbiditätsorientierten Risikostrukturausgleichs [Experts' report on the regional distributional effects of the morbidity oriented risk adjustment scheme]. Bonn: Wissenschaftlicher Beirat zur Weiterentwicklung des Risikostrukturausgleichs beim Bundesversicherungsamt; 2018.
26.
go back to reference Verordnung über die Erfassung und Übermittlung von Daten für die Träger der Sozialversicherung (Datenerfassungs- und -übermittlungsverordnung - in der Fassung der Bekanntmachung vom 23. Januar 2006 (BGBl. I S. 152), die zuletzt durch Artikel 27 des Gesetzes vom 4. August 2019 (BGBl. I S. 1147) geändert worden ist) [Decree about collection and transmission of data for the provider of social security in Germany; last amendment on 4th of August 2019], (2019). Verordnung über die Erfassung und Übermittlung von Daten für die Träger der Sozialversicherung (Datenerfassungs- und -übermittlungsverordnung - in der Fassung der Bekanntmachung vom 23. Januar 2006 (BGBl. I S. 152), die zuletzt durch Artikel 27 des Gesetzes vom 4. August 2019 (BGBl. I S. 1147) geändert worden ist) [Decree about collection and transmission of data for the provider of social security in Germany; last amendment on 4th of August 2019], (2019).
28.
go back to reference Verordnung über maßgebende Rechengrößen der Sozialversicherung für 2019 (Sozialversicherungs-Rechengrößenverordnung 2019 vom 27. November 2018 (BGBl. I S. 2024)) [Decree about standard operands in the social security system of Germany 2019; last amendment on 27th of November 2018], (2019). Verordnung über maßgebende Rechengrößen der Sozialversicherung für 2019 (Sozialversicherungs-Rechengrößenverordnung 2019 vom 27. November 2018 (BGBl. I S. 2024)) [Decree about standard operands in the social security system of Germany 2019; last amendment on 27th of November 2018], (2019).
29.
go back to reference Muschik D, Jaunzeme J, Geyer S. Are spouses´ socio-economic classifications interchangeable? Examining the consequences of a commonly used practice in studies on social inequalities in health. Int J Public Health. 2015;60:953–60.CrossRef Muschik D, Jaunzeme J, Geyer S. Are spouses´ socio-economic classifications interchangeable? Examining the consequences of a commonly used practice in studies on social inequalities in health. Int J Public Health. 2015;60:953–60.CrossRef
30.
go back to reference Geyer S, Peter R. Hospital admissions after transition into unemployment. Soz Praventivmed. 2003;48:106–15. Geyer S, Peter R. Hospital admissions after transition into unemployment. Soz Praventivmed. 2003;48:106–15.
31.
go back to reference Jödicke AM, Burden AM, Zellweger U, Tomka IT, Neuer T, Roos M, et al. Medication as a risk factor for hospitalization due to heart failure and shock: a series of case-crossover studies in Swiss claims data. Eur J Clin Pharmacol. 2020;76:979–89. Jödicke AM, Burden AM, Zellweger U, Tomka IT, Neuer T, Roos M, et al. Medication as a risk factor for hospitalization due to heart failure and shock: a series of case-crossover studies in Swiss claims data. Eur J Clin Pharmacol. 2020;76:979–89.
32.
go back to reference Virnig BA, Mc Bean M. Administrative data for public health surveillance and planning. Annu Rev Public Health. 2001;22:213–30.CrossRef Virnig BA, Mc Bean M. Administrative data for public health surveillance and planning. Annu Rev Public Health. 2001;22:213–30.CrossRef
33.
go back to reference Bell CF, Priest J, Stott-Miller M, Kan H, Amelio J, Song X, et al. Real-world treatment patterns, healthcare resource utilisation and costs in patients with systemic lupus erythematosus treated with belimumab: a retrospective analysis of claims data in the USA. Lupus Sci Med. 2020;7(1):e000357.CrossRef Bell CF, Priest J, Stott-Miller M, Kan H, Amelio J, Song X, et al. Real-world treatment patterns, healthcare resource utilisation and costs in patients with systemic lupus erythematosus treated with belimumab: a retrospective analysis of claims data in the USA. Lupus Sci Med. 2020;7(1):e000357.CrossRef
34.
go back to reference Glickmann L, Hubbard M, Liveright T, Valciukas A. Fall-off in reporting life events: effects of life change, desirability, and anticipation. Behav Med. 1990;16:31–7.CrossRef Glickmann L, Hubbard M, Liveright T, Valciukas A. Fall-off in reporting life events: effects of life change, desirability, and anticipation. Behav Med. 1990;16:31–7.CrossRef
35.
go back to reference Cohen G, Duffy JC. Are nonrespondents to health surveys less healthy than respondents? J Off Stat. 2002;18(1):13–24. Cohen G, Duffy JC. Are nonrespondents to health surveys less healthy than respondents? J Off Stat. 2002;18(1):13–24.
Metadata
Title
The effects of different lookback periods on the sociodemographic structure of the study population and on the estimation of incidence rates: analyses with German claims data
Authors
Jelena Epping
Siegfried Geyer
Juliane Tetzlaff
Publication date
01-12-2020
Publisher
BioMed Central
Published in
BMC Medical Research Methodology / Issue 1/2020
Electronic ISSN: 1471-2288
DOI
https://doi.org/10.1186/s12874-020-01108-6

Other articles of this Issue 1/2020

BMC Medical Research Methodology 1/2020 Go to the issue