Title :
Phenotype-Dependent Coexpression Gene Clusters: Application to Normal and Premature Ageing
Author :
Kun Wang ; Das, Avinash ; Zheng-Mei Xiong ; Kan Cao ; Hannenhalli, Sridhar
Author_Institution :
Center for Bioinf. & Comput. Biol., Univ. of Maryland, College Park, MD, USA
Abstract :
Hutchinson Gilford progeria syndrome (HGPS) is a rare genetic disease with symptoms of aging at a very early age. Its molecular basis is not entirely clear, although profound gene expression changes have been reported, and there are some known and other presumed overlaps with normal aging process. Identification of genes with agingor HGPS-associated expression changes is thus an important problem. However, standard regression approaches are currently unsuitable for this task due to limited sample sizes, thus motivating development of alternative approaches. Here, we report a novel iterative multiple regression approach that leverages co-expressed gene clusters to identify gene clusters whose expression co-varies with age and/or HGPS. We have applied our approach to novel RNA-seq profiles in fibroblast cell cultures at three different cellular ages, both from HGPS patients and normal samples. After establishing the robustness of our approach, we perform a comparative investigation of biological processes underlying normal aging and HGPS. Our results recapitulate previously known processes underlying aging as well as suggest numerous unique processes underlying aging and HGPS. The approach could also be useful in detecting phenotype-dependent co-expression gene clusters in other contexts with limited sample sizes.
Keywords :
RNA; bioinformatics; cellular biophysics; diseases; genetics; iterative methods; medical disorders; molecular biophysics; molecular clusters; molecular configurations; regression analysis; HGPS patients; HGPS-associated expression; Hutchinson Gilford progeria syndrome; RNA-seq profiles; aging-associated expression; biological processes; cellular ages; fibroblast cell cultures; gene identification; iterative multiple regression approach; limited sample sizes; molecular basis; normal ageing application; phenotype-dependent coexpression gene clusters; premature ageing application; profound gene expression changes; rare genetic disease; standard regression approaches; Aging; Bioinformatics; Computational biology; Educational institutions; Gene expression; Proteins; Vectors; Algorithms; Biology and genetics; Models; Parameter learning; biology and genetics; models; parameter learning;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2014.2359446