Title :
Integrating multi-platform genomic data using hierarchical Bayesian relevance vector machines
Author :
Srivastava, Sanjeev ; Wenyi Wang ; Zinn, Pascal O. ; Colen, Rivka R. ; Baladandayuthapani, Veerabhadran
Abstract :
We present a statistical framework, hierarchical relevance vector machine (H-RVM), for improved prediction of scalar outcomes using interacting high-dimensional input covariates from different sources. We illustrate our methodology for integrating genomic data from multiple platforms to predict observed clinical phenotypes. H-RVM is a hierarchical Bayesian generalization of the relevance vector machine and its learning algorithm is a special case of the computationally efficient variational method of hierarchic kernel learning frame-work. We apply H-RVM to data from the Cancer Genome Atlas based Glioblastoma study to predict imaging-based tumor volume by integrating gene and miRNA expression data and show that H-RVM performs much better in prediction as compared to competing methods.
Keywords :
RNA; belief networks; bioinformatics; cancer; genetics; genomics; learning (artificial intelligence); molecular biophysics; operating system kernels; statistical analysis; support vector machines; tumours; variational techniques; cancer genome atlas; clinical phenotypes; gene expression data; genomic data integration; glioblastoma study; hierarchic kernel learning framework; hierarchical Bayesian relevance vector machines; high-dimensional input covariates; imaging-based tumor volume; learning algorithm; miRNA expression data; scalar outcome prediction; statistical framework; variational method; Bayesian modeling; genomics; high-dimensional data analysis; multiple kernel learning; prediction;
Conference_Titel :
Genomic Signal Processing and Statistics, (GENSIPS), 2012 IEEE International Workshop on
Conference_Location :
Washington, DC
Print_ISBN :
978-1-4673-5234-5
DOI :
10.1109/GENSIPS.2012.6507716