Bayesian variable selection in structured high-dimensional covariate spaces with applications in genomics


Autoria(s): Li, F; Zhang, NR
Data(s)

01/09/2010

Formato

1202 - 1214

Identificador

Journal of the American Statistical Association, 2010, 105 (491), pp. 1202 - 1214

0162-1459

http://hdl.handle.net/10161/4400

http://hdl.handle.net/10161/4400

Idioma(s)

en_US

Relação

Journal of the American Statistical Association

10.1198/jasa.2010.tm08177

Journal of the American Statistical Association

Palavras-Chave #Ising model #Markov chain Monte Carlo #Motif analysis #Phase transition #Undirected graph
Tipo

Journal Article

Resumo

We consider the problem of variable selection in regression modeling in high-dimensional spaces where there is known structure among the covariates. This is an unconventional variable selection problem for two reasons: (1) The dimension of the covariate space is comparable, and often much larger, than the number of subjects in the study, and (2) the covariate space is highly structured, and in some cases it is desirable to incorporate this structural information in to the model building process. We approach this problem through the Bayesian variable selection framework, where we assume that the covariates lie on an undirected graph and formulate an Ising prior on the model space for incorporating structural information. Certain computational and statistical problems arise that are unique to such high-dimensional, structured settings, the most interesting being the phenomenon of phase transitions. We propose theoretical and computational schemes to mitigate these problems. We illustrate our methods on two different graph structures: the linear chain and the regular graph of degree k. Finally, we use our methods to study a specific application in genomics: the modeling of transcription factor binding sites in DNA sequences. © 2010 American Statistical Association.