| Literature DB >> 21731530 |
Susan Gruber1, Mark J van der Laan.
Abstract
A concrete example of the collaborative double-robust targeted likelihood estimator (C-TMLE) introduced in a companion article in this issue is presented, and applied to the estimation of causal effects and variable importance parameters in genomic data. The focus is on non-parametric estimation in a point treatment data structure. Simulations illustrate the performance of C-TMLE relative to current competitors such as the augmented inverse probability of treatment weighted estimator that relies on an external non-collaborative estimator of the treatment mechanism, and inefficient estimation procedures including propensity score matching and standard inverse probability of treatment weighting. C-TMLE is also applied to the estimation of the covariate-adjusted marginal effect of individual HIV mutations on resistance to the anti-retroviral drug lopinavir. The influence curve of the C-TMLE is used to establish asymptotically valid statistical inference. The list of mutations found to have a statistically significant association with resistance is in excellent agreement with mutation scores provided by the Stanford HIVdb mutation scores database.Entities:
Keywords: causal effect; collaborative double robust; cross-validation; double robust; efficient influence curve; estimator selection; locally efficient; maximum likelihood estimation; model selection; penalization; penalized likelihood; super efficiency; super learning; targeted maximum likelihood estimation; targeted nuisance parameter estimator selection; variable importance
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Year: 2010 PMID: 21731530 PMCID: PMC3126668 DOI: 10.2202/1557-4679.1182
Source DB: PubMed Journal: Int J Biostat ISSN: 1557-4679 Impact factor: 0.968