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Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform

SIMPLE SUMMARY: Molecular classification of cancers has the potential to automate and decrease errors in cancer classification. We previously showed that transcriptomic classification is comparable to methylomic and mutation methods for glioma classification and may provide benefit in predicting sur...

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Autores principales: Tran, Paul Minh Huy, Tran, Lynn Kim Hoang, Satter, Khaled bin, Purohit, Sharad, Nechtman, John, Hopkins, Diane I., dos Santos, Bruno, Bollag, Roni, Kolhe, Ravindra, Sharma, Suash, She, Jin Xiong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7865579/
https://www.ncbi.nlm.nih.gov/pubmed/33503830
http://dx.doi.org/10.3390/cancers13030439
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author Tran, Paul Minh Huy
Tran, Lynn Kim Hoang
Satter, Khaled bin
Purohit, Sharad
Nechtman, John
Hopkins, Diane I.
dos Santos, Bruno
Bollag, Roni
Kolhe, Ravindra
Sharma, Suash
She, Jin Xiong
author_facet Tran, Paul Minh Huy
Tran, Lynn Kim Hoang
Satter, Khaled bin
Purohit, Sharad
Nechtman, John
Hopkins, Diane I.
dos Santos, Bruno
Bollag, Roni
Kolhe, Ravindra
Sharma, Suash
She, Jin Xiong
author_sort Tran, Paul Minh Huy
collection PubMed
description SIMPLE SUMMARY: Molecular classification of cancers has the potential to automate and decrease errors in cancer classification. We previously showed that transcriptomic classification is comparable to methylomic and mutation methods for glioma classification and may provide benefit in predicting survival prognosis. Here we validate the transcriptomic classification method on a single molecule counting gene expression platform using formalin-fixed paraffin embedded samples. ABSTRACT: Gene expression profiling has been shown to be comparable to other molecular methods for glioma classification. We sought to validate a gene-expression based glioma classification method. Formalin-fixed paraffin embedded tissue and flash frozen tissue collected at the Augusta University (AU) Pathology Department between 2000–2019 were identified and 2 mm cores were taken. The RNA was extracted from these cores after deparaffinization and bead homogenization. One hundred sixty-eight genes were evaluated in the RNA samples on the nCounter instrument. Forty-eight gliomas were classified using a supervised learning algorithm trained by using data from The Cancer Genome Atlas. An ensemble of 1000 linear support vector models classified 30 glioma samples into TP1 with classification confidence of 0.99. Glioma patients in TP1 group have a poorer survival (HR (95% CI) = 4.5 (1.3–15.4), p = 0.005) with median survival time of 12.1 months, compared to non-TP1 groups. Network analysis revealed that cell cycle genes play an important role in distinguishing TP1 from non-TP1 cases and that these genes may play an important role in glioma survival. This could be a good clinical pipeline for molecular classification of gliomas.
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spelling pubmed-78655792021-02-07 Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform Tran, Paul Minh Huy Tran, Lynn Kim Hoang Satter, Khaled bin Purohit, Sharad Nechtman, John Hopkins, Diane I. dos Santos, Bruno Bollag, Roni Kolhe, Ravindra Sharma, Suash She, Jin Xiong Cancers (Basel) Article SIMPLE SUMMARY: Molecular classification of cancers has the potential to automate and decrease errors in cancer classification. We previously showed that transcriptomic classification is comparable to methylomic and mutation methods for glioma classification and may provide benefit in predicting survival prognosis. Here we validate the transcriptomic classification method on a single molecule counting gene expression platform using formalin-fixed paraffin embedded samples. ABSTRACT: Gene expression profiling has been shown to be comparable to other molecular methods for glioma classification. We sought to validate a gene-expression based glioma classification method. Formalin-fixed paraffin embedded tissue and flash frozen tissue collected at the Augusta University (AU) Pathology Department between 2000–2019 were identified and 2 mm cores were taken. The RNA was extracted from these cores after deparaffinization and bead homogenization. One hundred sixty-eight genes were evaluated in the RNA samples on the nCounter instrument. Forty-eight gliomas were classified using a supervised learning algorithm trained by using data from The Cancer Genome Atlas. An ensemble of 1000 linear support vector models classified 30 glioma samples into TP1 with classification confidence of 0.99. Glioma patients in TP1 group have a poorer survival (HR (95% CI) = 4.5 (1.3–15.4), p = 0.005) with median survival time of 12.1 months, compared to non-TP1 groups. Network analysis revealed that cell cycle genes play an important role in distinguishing TP1 from non-TP1 cases and that these genes may play an important role in glioma survival. This could be a good clinical pipeline for molecular classification of gliomas. MDPI 2021-01-25 /pmc/articles/PMC7865579/ /pubmed/33503830 http://dx.doi.org/10.3390/cancers13030439 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Tran, Paul Minh Huy
Tran, Lynn Kim Hoang
Satter, Khaled bin
Purohit, Sharad
Nechtman, John
Hopkins, Diane I.
dos Santos, Bruno
Bollag, Roni
Kolhe, Ravindra
Sharma, Suash
She, Jin Xiong
Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform
title Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform
title_full Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform
title_fullStr Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform
title_full_unstemmed Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform
title_short Retrospective Validation of a 168-Gene Expression Signature for Glioma Classification on a Single Molecule Counting Platform
title_sort retrospective validation of a 168-gene expression signature for glioma classification on a single molecule counting platform
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7865579/
https://www.ncbi.nlm.nih.gov/pubmed/33503830
http://dx.doi.org/10.3390/cancers13030439
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