Validation of an algorithm for identifying incident cancer cases based on long‐term illness and diagnosis related group program data from the French National Health Insurance Information System (SNDS)

Author:

Goulard Hélène1,Homère Julie1,Maurisset Sylvain23,Coureau Gaëlle234,Defossez Gautier45,d’Almeida Tania46,Lapôtre‐Ledoux Bénédicte47,Guizard Anne‐Valérie48,Bouvier Véronique49,Bara Simona410,Plouvier Sandrine411,Monnereau Alain34

Affiliation:

1. Santé publique France Saint Maurice France

2. Registre des cancers de Gironde Université de Bordeaux Bordeaux France

3. Epicene team University of Bordeaux, Inserm, Bordeaux Population Health Research Centre, Epicene Team, UMR 1219 Bordeaux France

4. Réseau français des registres des cancers Francim Toulouse France

5. Registre général des cancers de Poitou‐Charentes Pôle Biologie, Pharmacie et Santé Publique, CHU de Poitiers, Poitiers, France; Université de Poitiers, Poitiers, France; INSERM Centre d’Investigation Clinique CIC1402 Poitiers

6. Registre général des cancers de la Haute‐Vienne, CHU de Limoges ‐Inserm U1094, IRD U270 Univ. Limoges, CHU Limoges, EpiMaCT ‐ Epidémiologie des maladies chroniques en zone tropicale, Institut d’Epidémiologie et de Neurologie Tropicale, OmegaHealth Limoges France

7. Registre du cancer de la Somme, pôle PRIME, CHU Amiens‐Picardie France

8. Registre général du cancer du Calvados Caen France

9. Registre spécialisé du cancer digestif du Calvados Caen France

10. Registre des cancers de la Manche, Cherbourg‐en‐Cotentin France

11. Registre général des cancers de Lille et de sa région, GCS‐C2RC Alliance Cancer Lille France

Abstract

AbstractPurposeThree generic claims‐based algorithms based on the Illness Classification of Diseases (10th revision‐ ICD‐10) codes, French Long‐Term Illness (LTI) data, and the Diagnosis Related Group program (DRG) were developed to identify retirees with cancer using data from the French national health insurance information system (Système national des données de santé or SNDS) which covers the entire French population. The present study aimed to calculate the algorithms' performances and to describe false positives and negatives in detail.MethodsBetween 2011 and 2016, data from 7544 participants of the French retired self‐employed craftsperson cohort (ESPrI) were first matched to the SNDS data, and then toFrench population‐based cancer registries data, used as the gold standard. Performance indicators, such as sensitivity and positive predictive values, were estimated for the three algorithms in a subcohort of ESPrI.ResultsThe third algorithm, which combined the LTI and DRG program data, presented the best sensitivities (90.9%–100%) and positive predictive values (58.1%–95.2%) according to cancer sites. The majority of false positives were in fact nearby organ sites (e.g., stomach for esophagus) and carcinoma in situ. Most false negatives were probably due to under declaration of LTI.ConclusionValidated algorithms using data from the SNDS can be used for passive epidemiological follow‐up for some cancer sites in the ESPrI cohort.

Publisher

Wiley

Subject

Pharmacology (medical),Epidemiology

Reference31 articles.

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5. Identification des maladies neurodégénératives dans les bases de données médicoadministratives en France : revue systématique de la littérature

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