Derivation and assessment of risk prediction models using case-cohort data

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Abstract

Background: Case-cohort studies are increasingly used to quantify the association of novel factors with disease risk. Conventional measures of predictive ability need modification for this design. We show how Harrell's C-index, Royston's D, and the category-based and continuous versions of the net reclassification index (NRI) can be adapted. Methods. We simulated full cohort and case-cohort data, with sampling fractions ranging from 1% to 90%, using covariates from a cohort study of coronary heart disease, and two incidence rates. We then compared the accuracy and precision of the proposed risk prediction metrics. Results: The C-index and D must be weighted in order to obtain unbiased results. The NRI does not need modification, provided that the relevant non-subcohort cases are excluded from the calculation. The empirical standard errors across simulations were consistent with analytical standard errors for the C-index and D but not for the NRI. Good relative efficiency of the prediction metrics was observed in our examples, provided the sampling fraction was above 40% for the C-index, 60% for D, or 30% for the NRI. Stata code is made available. Conclusions: Case-cohort designs can be used to provide unbiased estimates of the C-index, D measure and NRI. © 2013 Sanderson et al.; licensee BioMed Central Ltd.

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Sanderson, J., Thompson, S. G., White, I. R., Aspelund, T., & Pennells, L. (2013). Derivation and assessment of risk prediction models using case-cohort data. BMC Medical Research Methodology, 13(1). https://doi.org/10.1186/1471-2288-13-113

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