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A multi-omic analysis of human naive CD4+ T cells.


ABSTRACT: Cellular function and diversity are orchestrated by complex interactions of fundamental biomolecules including DNA, RNA and proteins. Technological advances in genomics, epigenomics, transcriptomics and proteomics have enabled massively parallel and unbiased measurements. Such high-throughput technologies have been extensively used to carry out broad, unbiased studies, particularly in the context of human diseases. Nevertheless, a unified analysis of the genome, epigenome, transcriptome and proteome of a single human cell type to obtain a coherent view of the complex interplay between various biomolecules has not yet been undertaken. Here, we report the first multi-omic analysis of human primary naïve CD4+ T cells isolated from a single individual.Integrating multi-omics datasets allowed us to investigate genome-wide methylation and its effect on mRNA/protein expression patterns, extent of RNA editing under normal physiological conditions and allele specific expression in naïve CD4+ T cells. In addition, we carried out a multi-omic comparative analysis of naïve with primary resting memory CD4+ T cells to identify molecular changes underlying T cell differentiation. This analysis provided mechanistic insights into how several molecules involved in T cell receptor signaling are regulated at the DNA, RNA and protein levels. Phosphoproteomics revealed downstream signaling events that regulate these two cellular states. Availability of multi-omics data from an identical genetic background also allowed us to employ novel proteogenomics approaches to identify individual-specific variants and putative novel protein coding regions in the human genome.We utilized multiple high-throughput technologies to derive a comprehensive profile of two primary human cell types, naïve CD4+ T cells and memory CD4+ T cells, from a single donor. Through vertical as well as horizontal integration of whole genome sequencing, methylation arrays, RNA-Seq, miRNA-Seq, proteomics, and phosphoproteomics, we derived an integrated and comparative map of these two closely related immune cells and identified potential molecular effectors of immune cell differentiation following antigen encounter.

SUBMITTER: Mitchell CJ 

PROVIDER: S-EPMC4636073 | biostudies-literature | 2015 Nov

REPOSITORIES: biostudies-literature

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A multi-omic analysis of human naïve CD4+ T cells.

Mitchell Christopher J CJ   Getnet Derese D   Kim Min-Sik MS   Manda Srikanth S SS   Kumar Praveen P   Huang Tai-Chung TC   Pinto Sneha M SM   Nirujogi Raja Sekhar RS   Iwasaki Mio M   Shaw Patrick G PG   Wu Xinyan X   Zhong Jun J   Chaerkady Raghothama R   Marimuthu Arivusudar A   Muthusamy Babylakshmi B   Sahasrabuddhe Nandini A NA   Raju Rajesh R   Bowman Caitlyn C   Danilova Ludmila L   Cutler Jevon J   Kelkar Dhanashree S DS   Drake Charles G CG   Prasad T S Keshava TS   Marchionni Luigi L   Murakami Peter N PN   Scott Alan F AF   Shi Leming L   Thierry-Mieg Jean J   Thierry-Mieg Danielle D   Irizarry Rafael R   Cope Leslie L   Ishihama Yasushi Y   Wang Charles C   Gowda Harsha H   Pandey Akhilesh A  

BMC systems biology 20151106


<h4>Background</h4>Cellular function and diversity are orchestrated by complex interactions of fundamental biomolecules including DNA, RNA and proteins. Technological advances in genomics, epigenomics, transcriptomics and proteomics have enabled massively parallel and unbiased measurements. Such high-throughput technologies have been extensively used to carry out broad, unbiased studies, particularly in the context of human diseases. Nevertheless, a unified analysis of the genome, epigenome, tra  ...[more]

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