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Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy

Tumor-specific molecules are needed across diverse areas of oncology for use in early detection, diagnosis, prognosis and therapy. Large and growing public databases of transcriptome sequencing data (RNA-seq) derived from tumors and normal tissues hold the potential of yielding tumor-specific molecu...

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Autores principales: Barrett, Christian L., DeBoever, Christopher, Jepsen, Kristen, Saenz, Cheryl C., Carson, Dennis A., Frazer, Kelly A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: National Academy of Sciences 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4466751/
https://www.ncbi.nlm.nih.gov/pubmed/26015570
http://dx.doi.org/10.1073/pnas.1508057112
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author Barrett, Christian L.
DeBoever, Christopher
Jepsen, Kristen
Saenz, Cheryl C.
Carson, Dennis A.
Frazer, Kelly A.
author_facet Barrett, Christian L.
DeBoever, Christopher
Jepsen, Kristen
Saenz, Cheryl C.
Carson, Dennis A.
Frazer, Kelly A.
author_sort Barrett, Christian L.
collection PubMed
description Tumor-specific molecules are needed across diverse areas of oncology for use in early detection, diagnosis, prognosis and therapy. Large and growing public databases of transcriptome sequencing data (RNA-seq) derived from tumors and normal tissues hold the potential of yielding tumor-specific molecules, but because the data are new they have not been fully explored for this purpose. We have developed custom bioinformatic algorithms and used them with 296 high-grade serous ovarian (HGS-OvCa) tumor and 1,839 normal RNA-seq datasets to identify mRNA isoforms with tumor-specific expression. We rank prioritized isoforms by likelihood of being expressed in HGS-OvCa tumors and not in normal tissues and analyzed 671 top-ranked isoforms by high-throughput RT-qPCR. Six of these isoforms were expressed in a majority of the 12 tumors examined but not in 18 normal tissues. An additional 11 were expressed in most tumors and only one normal tissue, which in most cases was fallopian or colon. Of the 671 isoforms, the topmost 5% (n = 33) ranked based on having tumor-specific or highly restricted normal tissue expression by RT-qPCR analysis are enriched for oncogenic, stem cell/cancer stem cell, and early development loci—including ETV4, FOXM1, LSR, CD9, RAB11FIP4, and FGFRL1. Many of the 33 isoforms are predicted to encode proteins with unique amino acid sequences, which would allow them to be specifically targeted for one or more therapeutic strategies—including monoclonal antibodies and T-cell–based vaccines. The systematic process described herein is readily and rapidly applicable to the more than 30 additional tumor types for which sufficient amounts of RNA-seq already exist.
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spelling pubmed-44667512015-06-18 Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy Barrett, Christian L. DeBoever, Christopher Jepsen, Kristen Saenz, Cheryl C. Carson, Dennis A. Frazer, Kelly A. Proc Natl Acad Sci U S A PNAS Plus Tumor-specific molecules are needed across diverse areas of oncology for use in early detection, diagnosis, prognosis and therapy. Large and growing public databases of transcriptome sequencing data (RNA-seq) derived from tumors and normal tissues hold the potential of yielding tumor-specific molecules, but because the data are new they have not been fully explored for this purpose. We have developed custom bioinformatic algorithms and used them with 296 high-grade serous ovarian (HGS-OvCa) tumor and 1,839 normal RNA-seq datasets to identify mRNA isoforms with tumor-specific expression. We rank prioritized isoforms by likelihood of being expressed in HGS-OvCa tumors and not in normal tissues and analyzed 671 top-ranked isoforms by high-throughput RT-qPCR. Six of these isoforms were expressed in a majority of the 12 tumors examined but not in 18 normal tissues. An additional 11 were expressed in most tumors and only one normal tissue, which in most cases was fallopian or colon. Of the 671 isoforms, the topmost 5% (n = 33) ranked based on having tumor-specific or highly restricted normal tissue expression by RT-qPCR analysis are enriched for oncogenic, stem cell/cancer stem cell, and early development loci—including ETV4, FOXM1, LSR, CD9, RAB11FIP4, and FGFRL1. Many of the 33 isoforms are predicted to encode proteins with unique amino acid sequences, which would allow them to be specifically targeted for one or more therapeutic strategies—including monoclonal antibodies and T-cell–based vaccines. The systematic process described herein is readily and rapidly applicable to the more than 30 additional tumor types for which sufficient amounts of RNA-seq already exist. National Academy of Sciences 2015-06-09 2015-05-26 /pmc/articles/PMC4466751/ /pubmed/26015570 http://dx.doi.org/10.1073/pnas.1508057112 Text en Freely available online through the PNAS open access option.
spellingShingle PNAS Plus
Barrett, Christian L.
DeBoever, Christopher
Jepsen, Kristen
Saenz, Cheryl C.
Carson, Dennis A.
Frazer, Kelly A.
Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy
title Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy
title_full Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy
title_fullStr Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy
title_full_unstemmed Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy
title_short Systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy
title_sort systematic transcriptome analysis reveals tumor-specific isoforms for ovarian cancer diagnosis and therapy
topic PNAS Plus
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4466751/
https://www.ncbi.nlm.nih.gov/pubmed/26015570
http://dx.doi.org/10.1073/pnas.1508057112
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