Literature DB >> 21949216

Lessons from a decade of integrating cancer copy number alterations with gene expression profiles.

Norman Huang1, Parantu K Shah, Cheng Li.   

Abstract

Over the last decade, multiple functional genomic datasets studying chromosomal aberrations and their downstream effects on gene expression have accumulated for several cancer types. A vast majority of them are in the form of paired gene expression profiles and somatic copy number alterations (CNA) information on the same patients identified using microarray platforms. In response, many algorithms and software packages are available for integrating these paired data. Surprisingly, there has been no serious attempt to review the currently available methodologies or the novel insights brought using them. In this work, we discuss the quantitative relationships observed between CNA and gene expression in multiple cancer types and biological milestones achieved using the available methodologies. We discuss the conceptual evolution of both, the step-wise and the joint data integration methodologies over the last decade. We conclude by providing suggestions for building efficient data integration methodologies and asking further biological questions.

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Mesh:

Year:  2011        PMID: 21949216      PMCID: PMC3357489          DOI: 10.1093/bib/bbr056

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  85 in total

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  25 in total

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7.  ICan: an integrated co-alteration network to identify ovarian cancer-related genes.

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8.  Recurrent transcriptional clusters in the genome of mouse pluripotent stem cells.

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9.  Genome Fusion Detection: a novel method to detect fusion genes from SNP-array data.

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10.  Investigating inter-chromosomal regulatory relationships through a comprehensive meta-analysis of matched copy number and transcriptomics data sets.

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