Literature DB >> 15737074

Iterative partial least squares with right-censored data analysis: a comparison to other dimension reduction techniques.

Jie Huang1, David Harrington.   

Abstract

In the linear model with right-censored responses and many potential explanatory variables, regression parameter estimates may be unstable or, when the covariates outnumber the uncensored observations, not estimable. We propose an iterative algorithm for partial least squares, based on the Buckley-James estimating equation, to estimate the covariate effect and predict the response for a future subject with a given set of covariates. We use a leave-two-out cross-validation method for empirically selecting the number of components in the partial least-squares fit that approximately minimizes the error in estimating the covariate effect of a future observation. Simulation studies compare the methods discussed here with other dimension reduction techniques. Data from the AIDS Clinical Trials Group protocol 333 are used to motivate the methodology.

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Year:  2005        PMID: 15737074     DOI: 10.1111/j.0006-341X.2005.040304.x

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  7 in total

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Journal:  Lifetime Data Anal       Date:  2004-12       Impact factor: 1.588

3.  A Selective Review on Random Survival Forests for High Dimensional Data.

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4.  Dimension reduction of microarray gene expression data: the accelerated failure time model.

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Journal:  J Bioinform Comput Biol       Date:  2009-12       Impact factor: 1.122

5.  Regularized estimation for the accelerated failure time model.

Authors:  T Cai; J Huang; L Tian
Journal:  Biometrics       Date:  2009-06       Impact factor: 2.571

6.  Explainable machine learning can outperform Cox regression predictions and provide insights in breast cancer survival.

Authors:  Arturo Moncada-Torres; Marissa C van Maaren; Mathijs P Hendriks; Sabine Siesling; Gijs Geleijnse
Journal:  Sci Rep       Date:  2021-03-26       Impact factor: 4.379

7.  Flexible boosting of accelerated failure time models.

Authors:  Matthias Schmid; Torsten Hothorn
Journal:  BMC Bioinformatics       Date:  2008-06-06       Impact factor: 3.169

  7 in total

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