Use of machine learning techniques in the development and refinement of a predictive model for early diagnosis of ankylosing spondylitis.
Ankylosing spondylitis
Machine learning
Mathematical model
Spondyloarthritis
Journal
Clinical rheumatology
ISSN: 1434-9949
Titre abrégé: Clin Rheumatol
Pays: Germany
ID NLM: 8211469
Informations de publication
Date de publication:
Apr 2020
Apr 2020
Historique:
received:
09
10
2018
accepted:
08
04
2019
revised:
28
01
2019
pubmed:
3
5
2019
medline:
23
1
2021
entrez:
3
5
2019
Statut:
ppublish
Résumé
To develop a predictive mathematical model for the early identification of ankylosing spondylitis (AS) based on the medical and pharmacy claims history of patients with and without AS. This retrospective study used claims data from Truven databases from January 2006 to September 2015 (Segment 1) and October 2015 to February 2018 (Segment 2). Machine learning identified features differentiating patients with AS from matched controls; selected features were used as inputs in developing Model A/B to identify patients likely to have AS. Model A/B was trained and developed in Segment 1, and patients predicted to have AS in Segment 1 were followed up in Segment 2 to evaluate the predictive capability of Model A/B. Of 228,471 patients in Segment 1 without any history of AS, Model A/B predicted 1923 patients to have AS. Ultimately, 1242 patients received an AS diagnosis in Segment 2; 120 of these were correctly predicted by Model A/B, yielding a positive predictive value (PPV) of 6.24%. The diagnostic accuracy of Model A/B compared favorably with that of a clinical model (PPV, 1.29%) that predicted AS based on spondyloarthritis features described in the Assessment of SpondyloArthritis international Society classification criteria. A simplified linear regression model created to test the operability of Model A/B yielded a lower PPV (2.55%). Model A/B performed better than a clinically based model in predicting a diagnosis of AS among patients in a large claims database; its use may contribute to early recognition of AS and a timely diagnosis.
Identifiants
pubmed: 31044386
doi: 10.1007/s10067-019-04553-x
pii: 10.1007/s10067-019-04553-x
doi:
Types de publication
Journal Article
Langues
eng
Sous-ensembles de citation
IM
Pagination
975-982Subventions
Organisme : Novartis Pharmaceuticals Corporation
ID : N/A
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