Publication Details

AFRICAN RESEARCH NEXUS

SHINING A SPOTLIGHT ON AFRICAN RESEARCH

medicine

Algorithms based on medico-administrative data in the field of endocrine, nutritional and metabolic diseases, especially diabetes; [Algorithmes basés sur les données médico-administratives dans le champ des maladies endocriniennes, nutritionnelles et métaboliques, et en particulier du diabète]

Revue d'Epidemiologie et de Sante Publique, Volume 65, Year 2017

Background Medico-administrative databases represent a very interesting source of information in the field of endocrine, nutritional and metabolic diseases. The objective of this article is to describe the early works of the Redsiam working group in this field. Methods Algorithms developed in France in the field of diabetes, the treatment of dyslipidemia, precocious puberty, and bariatric surgery based on the National Inter-schema Information System on Health Insurance (SNIIRAM) data were identified and described. Results Three algorithms for identifying people with diabetes are available in France. These algorithms are based either on full insurance coverage for diabetes or on claims of diabetes treatments, or on the combination of these two methods associated with hospitalizations related to diabetes. Each of these algorithms has a different purpose, and the choice should depend on the goal of the study. Algorithms for identifying people treated for dyslipidemia or precocious puberty or who underwent bariatric surgery are also available. Conclusion Early work from the Redsiam working group in the field of endocrine, nutritional and metabolic diseases produced an inventory of existing algorithms in France, linked with their goals, together with a presentation of their limitations and advantages, providing useful information for the scientific community. This work will continue with discussions about algorithms on the incidence of diabetes in children, thyroidectomy for thyroid nodules, hypothyroidism, hypoparathyroidism, and amyloidosis. © 2017 Elsevier Masson SAS
Statistics
Citations: 15
Authors: 2
Affiliations: 3
Research Areas
Health System And Policy
Maternal And Child Health
Noncommunicable Diseases
Study Design
Cohort Study