2018
DOI: 10.1007/s10985-018-9428-5
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Improved precision in the analysis of randomized trials with survival outcomes, without assuming proportional hazards

Abstract: We present a new estimator of the restricted mean survival time in randomized trials where there is right censoring that may depend on treatment and baseline variables. The proposed estimator leverages prognostic baseline variables to obtain equal or better asymptotic precision compared to traditional estimators. Under regularity conditions and random censoring within strata of treatment and baseline variables, the proposed estimator has the following features: (i) it is interpretable under violations of the p… Show more

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Cited by 39 publications
(58 citation statements)
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“…The estimator trueP˜ is constructed by tilting an initial estimate trueP^ toward a solution of the relevant estimating equation, by means of an empirical risk minimizer in a parametric submodel. The interested reader is referred to the works of Díaz et al and Moore and van der Laan for more details on the construction of a TMLE for survival analysis. The preliminary estimator trueP^, or the component trueη^ necessary to evaluate θfalse(trueP^false), may be obtained based on data‐adaptive regression methods.…”
Section: Doubly Robust Consistency Vs Doubly Robust Inferencementioning
confidence: 99%
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“…The estimator trueP˜ is constructed by tilting an initial estimate trueP^ toward a solution of the relevant estimating equation, by means of an empirical risk minimizer in a parametric submodel. The interested reader is referred to the works of Díaz et al and Moore and van der Laan for more details on the construction of a TMLE for survival analysis. The preliminary estimator trueP^, or the component trueη^ necessary to evaluate θfalse(trueP^false), may be obtained based on data‐adaptive regression methods.…”
Section: Doubly Robust Consistency Vs Doubly Robust Inferencementioning
confidence: 99%
“…, we refer to n 1/4 -rate convergence as the property that n 1∕4 ||̂− 0 || = o P (1). For a collection of functions ( f 1 , … , f k ), the notation ||( f 1 , … , f k )|| is used to denote the vector of element-wise norms.…”
Section: Assumption A2 (Treatment Assignment Randomization)mentioning
confidence: 99%
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“…The subscript c denotes a causal parameter, that is, a parameter of the distribution of the potential outcomes T 1 and T 0 . It can be shown (see Díaz et al, 2015) that…”
Section: Potential Outcomes and Causal Parametermentioning
confidence: 99%
“…Our ensembles are linear combinations of estimators in a user-supplied library, where the coefficients in the linear combination are chosen to minimize the crossvalidated risk. We propose to use a doubly robust loss function with roots in efficient estimation theory for marginal causal effects (Moore and van der Laan, 2009;Díaz et al, 2015). In our context, double robustness means that the estimated rules will have certain optimality properties under consistent estimation of at least one of two nuisance parameters: (a) the hazard of the outcome at each time point conditional on covariates and treatment, and (b) the hazard of censoring and the treatment mechanism.…”
Section: Introductionmentioning
confidence: 99%