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The effects are investigated of misspecifying a proportional-hazards regression model on the associated partial-likelihood score test for comparing two randomized treatments in the presence of covariates. The asymptotic efficiency of the proportional-hazards score test, relative to the optimal partial-likelihood test, declines slowly as the hazard functions for the two treatments deviate from proportionality; the efficiency can be very low when the hazard functions cross or differ only at large survival times. Misspecification of the functional form of the regression portion of a proportional-hazards model introduces a quantitative treatment-covariate interaction. In the situations that we examine, based on a binary covariate, this misspecification usually results in only a minor drop in efficiency. The omission of a covariate that is balanced across treatments has a negligible effect on the size of the score test, but can substantially reduce power when the covariate effect is strong. The loss of power from mismodeling a balanced covariate is usually small.
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Stephen W. Lagakos
David Schoenfeld
Biometrics
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Lagakos et al. (Sat,) studied this question.
www.synapsesocial.com/papers/6a08848d7de338f10b10bf9a — DOI: https://doi.org/10.2307/2531154