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Published in: BMC Health Services Research 1/2006

Open Access 01-12-2006 | Correspondence

Identifying priorities in methodological research using ICD-9-CM and ICD-10 administrative data: report from an international consortium

Authors: Carolyn De Coster, Hude Quan, Alan Finlayson, Min Gao, Patricia Halfon, Karin H Humphries, Helen Johansen, Lisa M Lix, Jean-Christophe Luthi, Jin Ma, Patrick S Romano, Leslie Roos, Vijaya Sundararajan, Jack V Tu, Greg Webster, William A Ghali

Published in: BMC Health Services Research | Issue 1/2006

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Abstract

Background

Health administrative data are frequently used for health services and population health research. Comparative research using these data has been facilitated by the use of a standard system for coding diagnoses, the International Classification of Diseases (ICD). Research using the data must deal with data quality and validity limitations which arise because the data are not created for research purposes. This paper presents a list of high-priority methodological areas for researchers using health administrative data.

Methods

A group of researchers and users of health administrative data from Canada, the United States, Switzerland, Australia, China and the United Kingdom came together in June 2005 in Banff, Canada to discuss and identify high-priority methodological research areas. The generation of ideas for research focussed not only on matters relating to the use of administrative data in health services and population health research, but also on the challenges created in transitioning from ICD-9 to ICD-10. After the brain-storming session, voting took place to rank-order the suggested projects. Participants were asked to rate the importance of each project from 1 (low priority) to 10 (high priority). Average ranks were computed to prioritise the projects.

Results

Thirteen potential areas of research were identified, some of which represented preparatory work rather than research per se. The three most highly ranked priorities were the documentation of data fields in each country's hospital administrative data (average score 8.4), the translation of patient safety indicators from ICD-9 to ICD-10 (average score 8.0), and the development and validation of algorithms to verify the logic and internal consistency of coding in hospital abstract data (average score 7.0).

Conclusion

The group discussions resulted in a list of expert views on critical international priorities for future methodological research relating to health administrative data. The consortium's members welcome contacts from investigators involved in research using health administrative data, especially in cross-jurisdictional collaborative studies or in studies that illustrate the application of ICD-10.
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Metadata
Title
Identifying priorities in methodological research using ICD-9-CM and ICD-10 administrative data: report from an international consortium
Authors
Carolyn De Coster
Hude Quan
Alan Finlayson
Min Gao
Patricia Halfon
Karin H Humphries
Helen Johansen
Lisa M Lix
Jean-Christophe Luthi
Jin Ma
Patrick S Romano
Leslie Roos
Vijaya Sundararajan
Jack V Tu
Greg Webster
William A Ghali
Publication date
01-12-2006
Publisher
BioMed Central
Published in
BMC Health Services Research / Issue 1/2006
Electronic ISSN: 1472-6963
DOI
https://doi.org/10.1186/1472-6963-6-77

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