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dc.date.accessioned2016-01-22T14:46:38Z
dc.date.available2016-09-13T22:31:32Z
dc.date.issued2016
dc.identifier.urihttp://hdl.handle.net/10852/48677
dc.description.abstractFor many high-dimensional studies, additional information on the variables, like (genomic) annotation or external p-values, is available. In the context of binary and continuous prediction, we develop a method for adaptive group-regularized (logistic) ridge regression, which makes structural use of such ‘co-data’. Here, ‘groups’ refer to a partition of the variables according to the co-data. We derive empirical Bayes estimates of group-specific penalties, which possess several nice properties: (i) They are analytical. (ii) They adapt to the informativeness of the co-data for the data at hand. (iii) Only one global penalty parameter requires tuning by cross-validation. In addition, the method allows use of multiple types of co-data at little extra computational effort. We show that the group-specific penalties may lead to a larger distinction between ‘near-zero’ and relatively large regression parameters, which facilitates post hoc variable selection. The method, termed GRridge, is implemented in an easy-to-use R-package. It is demonstrated on two cancer genomics studies, which both concern the discrimination of precancerous cervical lesions from normal cervix tissues using methylation microarray data. For both examples, GRridge clearly improves the predictive performances of ordinary logistic ridge regression and the group lasso. In addition, we show that for the second study, the relatively good predictive performance is maintained when selecting only 42 variables. This is a peer reviewed version of the following article: Better prediction by use of co-data: adaptive group-regularized ridge regression, which has been published in final form at http://dx.doi.org/10.1002/sim.6732. This article may be used for non-commercial purposes in accordance with Wiley Terms and Conditions for Self-Archiving.en_US
dc.language.isoenen_US
dc.relation.ispartofLien, Tonje Gulbrandsen (2015) Statistical methods for epigenomic data: Studying the importance of 3D chromatin structure and DNA-methylation. Doctoral thesis. http://urn.nb.no/URN:NBN:no-52548
dc.relation.urihttp://urn.nb.no/URN:NBN:no-52548
dc.titleBetter prediction by use of co-data: adaptive group-regularized ridge regressionen_US
dc.typeJournal articleen_US
dc.creator.authorvan de Wiel, Mark A.
dc.creator.authorLien, Tonje G.
dc.creator.authorVerlaat, Wina
dc.creator.authorvan Wieringen, Wessel N.
dc.creator.authorWilting, Saskia M.
dc.identifier.jtitleStatistics in Medicine
dc.identifier.volume35
dc.identifier.issue3
dc.identifier.startpage368
dc.identifier.endpage381
dc.identifier.doihttp://dx.doi.org/10.1002/sim.6732
dc.identifier.urnURN:NBN:no-52531
dc.type.documentTidsskriftartikkelen_US
dc.type.peerreviewedPeer reviewed
dc.identifier.fulltextFulltext https://www.duo.uio.no/bitstream/handle/10852/48677/1/van-de-wiel-et-al.pdf
dc.type.versionAcceptedVersion


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