| Literature DB >> 28017796 |
Ivan Carcamo-Orive1, Gabriel E Hoffman2, Paige Cundiff3, Noam D Beckmann2, Sunita L D'Souza4, Joshua W Knowles1, Achchhe Patel3, Dimitri Papatsenko5, Fahim Abbasi1, Gerald M Reaven1, Sean Whalen6, Philip Lee1, Mohammad Shahbazi1, Marc Y R Henrion2, Kuixi Zhu2, Sven Wang2, Panos Roussos7, Eric E Schadt2, Gaurav Pandey2, Rui Chang8, Thomas Quertermous9, Ihor Lemischka10.
Abstract
Variability in induced pluripotent stem cell (iPSC) lines remains a concern for disease modeling and regenerative medicine. We have used RNA-sequencing analysis and linear mixed models to examine the sources of gene expression variability in 317 human iPSC lines from 101 individuals. We found that ∼50% of genome-wide expression variability is explained by variation across individuals and identified a set of expression quantitative trait loci that contribute to this variation. These analyses coupled with allele-specific expression show that iPSCs retain a donor-specific gene expression pattern. Network, pathway, and key driver analyses showed that Polycomb targets contribute significantly to the non-genetic variability seen within and across individuals, highlighting this chromatin regulator as a likely source of reprogramming-based variability. Our findings therefore shed light on variation between iPSC lines and illustrate the potential for our dataset and other similar large-scale analyses to identify underlying drivers relevant to iPSC applications.Entities:
Keywords: Polycomb targets; allelic imbalance; differentiation variability; eQTL; iPSC library; key drivers; network analysis; transcriptional variability; variance partition
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Year: 2016 PMID: 28017796 PMCID: PMC5384872 DOI: 10.1016/j.stem.2016.11.005
Source DB: PubMed Journal: Cell Stem Cell ISSN: 1875-9777 Impact factor: 25.269