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Proportional hazards tests and diagnostics based on weighted residuals

Patricia M. GrambschDivision of Biostatistics, School of Public Health, University of MinnesotaMinneapolis, Minnesota 55455, U.S.ATerry M. TherneauDepartment of Health Science ResearchMayo Clinic, Rochester, Minnesota 55905, U.S.A
1994en
ABI

Abstract

SUMMARY Nonproportional hazards can often be expressed by extending the Cox model to include time varying coefficients; e.g., for a single covariate, the hazard function for subject i is modelled as exp { fl(t)Zi(t)}. A common example is a treatment effect that decreases with time. We show that the function /3(t) can be directly visualized by smoothing an appropriate residual plot. Also, many tests of proportional hazards, including those of Cox (1972), Gill & Schumacher (1987), Harrell (1986), Lin (1991), Moreau, O'Quigley & Mesbah (1985), Nagelkerke, Oosting & Hart (1984), O'Quigley & Pessione (1989), Schoenfeld (1980) and Wei (1984) are related to time-weighted score tests of the proportional hazards hypothesis, and can be visualized as a weighted least-squares line fitted to the residual plot.

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