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Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers

BACKGROUND: Genetic markers for thyroid cancers identified by microarray analysis have offered limited predictive accuracy so far because of the few classes of thyroid lesions usually taken into account. To improve diagnostic relevance, we have simultaneously analyzed microarray data from six public...

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Autores principales: Fontaine, Jean-Fred, Mirebeau-Prunier, Delphine, Raharijaona, Mahatsangy, Franc, Brigitte, Triau, Stephane, Rodien, Patrice, Goëau-Brissonniére, Olivier, Karayan-Tapon, Lucie, Mello, Marielle, Houlgatte, Rémi, Malthiery, Yves, Savagner, Frédérique
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2764086/
https://www.ncbi.nlm.nih.gov/pubmed/19893615
http://dx.doi.org/10.1371/journal.pone.0007632
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author Fontaine, Jean-Fred
Mirebeau-Prunier, Delphine
Raharijaona, Mahatsangy
Franc, Brigitte
Triau, Stephane
Rodien, Patrice
Goëau-Brissonniére, Olivier
Karayan-Tapon, Lucie
Mello, Marielle
Houlgatte, Rémi
Malthiery, Yves
Savagner, Frédérique
author_facet Fontaine, Jean-Fred
Mirebeau-Prunier, Delphine
Raharijaona, Mahatsangy
Franc, Brigitte
Triau, Stephane
Rodien, Patrice
Goëau-Brissonniére, Olivier
Karayan-Tapon, Lucie
Mello, Marielle
Houlgatte, Rémi
Malthiery, Yves
Savagner, Frédérique
author_sort Fontaine, Jean-Fred
collection PubMed
description BACKGROUND: Genetic markers for thyroid cancers identified by microarray analysis have offered limited predictive accuracy so far because of the few classes of thyroid lesions usually taken into account. To improve diagnostic relevance, we have simultaneously analyzed microarray data from six public datasets covering a total of 347 thyroid tissue samples representing 12 histological classes of follicular lesions and normal thyroid tissue. Our own dataset, containing about half the thyroid tissue samples, included all categories of thyroid lesions. METHODOLOGY/PRINCIPAL FINDINGS: Classifier predictions were strongly affected by similarities between classes and by the number of classes in the training sets. In each dataset, sample prediction was improved by separating the samples into three groups according to class similarities. The cross-validation of differential genes revealed four clusters with functional enrichments. The analysis of six of these genes (APOD, APOE, CLGN, CRABP1, SDHA and TIMP1) in 49 new samples showed consistent gene and protein profiles with the class similarities observed. Focusing on four subclasses of follicular tumor, we explored the diagnostic potential of 12 selected markers (CASP10, CDH16, CLGN, CRABP1, HMGB2, ALPL2, ADAMTS2, CABIN1, ALDH1A3, USP13, NR2F2, KRTHB5) by real-time quantitative RT-PCR on 32 other new samples. The gene expression profiles of follicular tumors were examined with reference to the mutational status of the Pax8-PPARγ, TSHR, GNAS and NRAS genes. CONCLUSION/SIGNIFICANCE: We show that diagnostic tools defined on the basis of microarray data are more relevant when a large number of samples and tissue classes are used. Taking into account the relationships between the thyroid tumor pathologies, together with the main biological functions and pathways involved, improved the diagnostic accuracy of the samples. Our approach was particularly relevant for the classification of microfollicular adenomas.
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spelling pubmed-27640862009-11-05 Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers Fontaine, Jean-Fred Mirebeau-Prunier, Delphine Raharijaona, Mahatsangy Franc, Brigitte Triau, Stephane Rodien, Patrice Goëau-Brissonniére, Olivier Karayan-Tapon, Lucie Mello, Marielle Houlgatte, Rémi Malthiery, Yves Savagner, Frédérique PLoS One Research Article BACKGROUND: Genetic markers for thyroid cancers identified by microarray analysis have offered limited predictive accuracy so far because of the few classes of thyroid lesions usually taken into account. To improve diagnostic relevance, we have simultaneously analyzed microarray data from six public datasets covering a total of 347 thyroid tissue samples representing 12 histological classes of follicular lesions and normal thyroid tissue. Our own dataset, containing about half the thyroid tissue samples, included all categories of thyroid lesions. METHODOLOGY/PRINCIPAL FINDINGS: Classifier predictions were strongly affected by similarities between classes and by the number of classes in the training sets. In each dataset, sample prediction was improved by separating the samples into three groups according to class similarities. The cross-validation of differential genes revealed four clusters with functional enrichments. The analysis of six of these genes (APOD, APOE, CLGN, CRABP1, SDHA and TIMP1) in 49 new samples showed consistent gene and protein profiles with the class similarities observed. Focusing on four subclasses of follicular tumor, we explored the diagnostic potential of 12 selected markers (CASP10, CDH16, CLGN, CRABP1, HMGB2, ALPL2, ADAMTS2, CABIN1, ALDH1A3, USP13, NR2F2, KRTHB5) by real-time quantitative RT-PCR on 32 other new samples. The gene expression profiles of follicular tumors were examined with reference to the mutational status of the Pax8-PPARγ, TSHR, GNAS and NRAS genes. CONCLUSION/SIGNIFICANCE: We show that diagnostic tools defined on the basis of microarray data are more relevant when a large number of samples and tissue classes are used. Taking into account the relationships between the thyroid tumor pathologies, together with the main biological functions and pathways involved, improved the diagnostic accuracy of the samples. Our approach was particularly relevant for the classification of microfollicular adenomas. Public Library of Science 2009-10-29 /pmc/articles/PMC2764086/ /pubmed/19893615 http://dx.doi.org/10.1371/journal.pone.0007632 Text en Fontaine et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Fontaine, Jean-Fred
Mirebeau-Prunier, Delphine
Raharijaona, Mahatsangy
Franc, Brigitte
Triau, Stephane
Rodien, Patrice
Goëau-Brissonniére, Olivier
Karayan-Tapon, Lucie
Mello, Marielle
Houlgatte, Rémi
Malthiery, Yves
Savagner, Frédérique
Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers
title Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers
title_full Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers
title_fullStr Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers
title_full_unstemmed Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers
title_short Increasing the Number of Thyroid Lesions Classes in Microarray Analysis Improves the Relevance of Diagnostic Markers
title_sort increasing the number of thyroid lesions classes in microarray analysis improves the relevance of diagnostic markers
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2764086/
https://www.ncbi.nlm.nih.gov/pubmed/19893615
http://dx.doi.org/10.1371/journal.pone.0007632
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