SplicerEX: a tool for the automated detection and classification of mRNA changes from conventional and splice-sensitive microarray expression data.

dc.contributor.author

Robinson, Timothy J

dc.contributor.author

Forte, Eleonora

dc.contributor.author

Salinas, Raul E

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Puri, Shaan

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Marengo, Matthew

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Garcia-Blanco, Mariano A

dc.contributor.author

Luftig, Micah A

dc.date.accessioned

2022-03-28T20:41:06Z

dc.date.available

2022-03-28T20:41:06Z

dc.date.issued

2012-08

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2022-03-28T20:41:05Z

dc.description.abstract

The key postulate that one gene encodes one protein has been overhauled with the discovery that one gene can generate multiple RNA transcripts through alternative mRNA processing. In this study, we describe SplicerEX, a novel and uniquely motivated algorithm designed for experimental biologists that (1) detects widespread changes in mRNA isoforms from both conventional and splice sensitive microarray data, (2) automatically categorizes mechanistic changes in mRNA processing, and (3) mitigates known technological artifacts of exon array-based detection of alternative splicing resulting from 5' and 3' signal attenuation, background detection limits, and saturation of probe set signal intensity. In this study, we used SplicerEX to compare conventional and exon-based Affymetrix microarray data in a model of EBV transformation of primary human B cells. We demonstrated superior detection of 3'-located changes in mRNA processing by the Affymetrix U133 GeneChip relative to the Human Exon Array. SplicerEX-identified exon-level changes in the EBV infection model were confirmed by RT-PCR and revealed a novel set of EBV-regulated mRNA isoform changes in caspases 6, 7, and 8. Finally, SplicerEX as compared with MiDAS analysis of publicly available microarray data provided more efficiently categorized mRNA isoform changes with a significantly higher proportion of hits supported by previously annotated alternative processing events. Therefore, SplicerEX provides an important tool for the biologist interested in studying changes in mRNA isoform usage from conventional or splice-sensitive microarray platforms, especially considering the expansive amount of archival microarray data generated over the past decade. SplicerEX is freely available upon request.

dc.identifier

rna.033621.112

dc.identifier.issn

1355-8382

dc.identifier.issn

1469-9001

dc.identifier.uri

https://hdl.handle.net/10161/24737

dc.language

eng

dc.publisher

Cold Spring Harbor Laboratory

dc.relation.ispartof

RNA (New York, N.Y.)

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10.1261/rna.033621.112

dc.subject

B-Lymphocytes

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Cells, Cultured

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Cell Line, Transformed

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Humans

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Herpesvirus 4, Human

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Epstein-Barr Virus Infections

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RNA, Messenger

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Oligonucleotide Array Sequence Analysis

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Gene Expression Profiling

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Reverse Transcriptase Polymerase Chain Reaction

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Alternative Splicing

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Exons

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Algorithms

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Automation

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RNA Isoforms

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Biomarkers

dc.title

SplicerEX: a tool for the automated detection and classification of mRNA changes from conventional and splice-sensitive microarray expression data.

dc.type

Journal article

duke.contributor.orcid

Salinas, Raul E|0000-0001-9011-683X

duke.contributor.orcid

Luftig, Micah A|0000-0002-2964-1907

pubs.begin-page

1435

pubs.end-page

1445

pubs.issue

8

pubs.organisational-group

Duke

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School of Medicine

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Staff

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Basic Science Departments

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Institutes and Centers

pubs.organisational-group

Biochemistry

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Immunology

pubs.organisational-group

Molecular Genetics and Microbiology

pubs.organisational-group

Duke Cancer Institute

pubs.publication-status

Published

pubs.volume

18

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