Author
Listed:
- Masaru Obokata
- Kazuaki Negishi
- Yoshiaki Ohyama
- Haruka Okada
- Kunihiko Imai
- Masahiko Kurabayashi
Abstract
Background: Although many risk factors for Metabolic syndrome (MetS) have been reported, there is no clinical score that predicts its incidence. The purposes of this study were to create and validate a risk score for predicting both incidence and recovery from MetS in a large cohort. Methods: Subjects without MetS at enrollment (n = 13,634) were randomly divided into 2 groups and followed to record incidence of MetS. We also examined recovery from it in rest 2,743 individuals with prevalent MetS. Results: During median follow-up of 3.0 years, 878 subjects in the derivation and 757 in validation cohorts developed MetS. Multiple logistic regression analysis identified 12 independent variables from the derivation cohort and initial score for subsequent MetS was created, which showed good discrimination both in the derivation (c-statistics 0.82) and validation cohorts (0.83). The predictability of the initial score for recovery from MetS was tested in the 2,743 MetS population (906 subjects recovered from MetS), where nine variables (including age, sex, γ-glutamyl transpeptidase, uric acid and five MetS diagnostic criteria constituents.) remained significant. Then, the final score was created using the nine variables. This score significantly predicted both the recovery from MetS (c-statistics 0.70, p
Suggested Citation
Masaru Obokata & Kazuaki Negishi & Yoshiaki Ohyama & Haruka Okada & Kunihiko Imai & Masahiko Kurabayashi, 2015.
"A Risk Score with Additional Four Independent Factors to Predict the Incidence and Recovery from Metabolic Syndrome: Development and Validation in Large Japanese Cohorts,"
PLOS ONE, Public Library of Science, vol. 10(7), pages 1-15, July.
Handle:
RePEc:plo:pone00:0133884
DOI: 10.1371/journal.pone.0133884
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