The use of repeated blood pressure measures for cardiovascular risk prediction: a comparison of statistical models in the ARIC study
journal contribution
posted on 2018-04-27, 12:39 authored by Michael J. Sweeting, Jessica K. Barrett, Simon G. Thompson, Angela M. WoodMany prediction models have been developed for the risk assessment and the prevention of cardiovascular disease in primary care. Recent efforts have focused on improving the accuracy of these prediction models by adding novel biomarkers to a common set of baseline risk predictors. Few have considered incorporating repeated measures of the common risk predictors. Through application to the Atherosclerosis Risk in Communities study and simulations, we compare models that use simple summary measures of the repeat information on systolic blood pressure, such as (i) baseline only; (ii) last observation carried forward; and (iii) cumulative mean, against more complex methods that model the repeat information using (iv) ordinary regression calibration; (v) risk-set regression calibration; and (vi) joint longitudinal and survival models. In comparison with the baseline-only model, we observed modest improvements in discrimination and calibration using the cumulative mean of systolic blood pressure, but little further improvement from any of the complex methods. © 2016 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
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Citation
Statistics in Medicine, 2017, 36 (28), pp. 4514-4528Author affiliation
/Organisation/COLLEGE OF LIFE SCIENCES/School of Medicine/Department of Health SciencesVersion
- VoR (Version of Record)
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Statistics in MedicinePublisher
Wileyissn
0277-6715eissn
1097-0258Acceptance date
2016-09-18Copyright date
2016Available date
2018-04-27Publisher DOI
Publisher version
https://onlinelibrary.wiley.com/doi/abs/10.1002/sim.7144Language
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