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Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries

BACKGROUND: Lynch syndrome (LS) is the most common form of inherited predisposition to colorectal cancer (CRC), accounting for 2-5% of all CRC. LS is an autosomal dominant disease characterized by mutations in the mismatch repair genes mutL homolog 1 (MLH1), mutS homolog 2 (MSH2), postmeiotic segreg...

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Autores principales: Monteiro Santos, Erika Maria, Valentin, Mev Dominguez, Carneiro, Felipe, de Oliveira, Ligia Petrolini, de Oliveira Ferreira, Fabio, Junior, Samuel Aguiar, Nakagawa, Wilson Toshihiko, Gomy, Israel, de Faria Ferraz, Victor Evangelista, da Silva Junior, Wilson Araujo, Carraro, Dirce Maria, Rossi, Benedito Mauro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3305354/
https://www.ncbi.nlm.nih.gov/pubmed/22321913
http://dx.doi.org/10.1186/1471-2407-12-64
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author Monteiro Santos, Erika Maria
Valentin, Mev Dominguez
Carneiro, Felipe
de Oliveira, Ligia Petrolini
de Oliveira Ferreira, Fabio
Junior, Samuel Aguiar
Nakagawa, Wilson Toshihiko
Gomy, Israel
de Faria Ferraz, Victor Evangelista
da Silva Junior, Wilson Araujo
Carraro, Dirce Maria
Rossi, Benedito Mauro
author_facet Monteiro Santos, Erika Maria
Valentin, Mev Dominguez
Carneiro, Felipe
de Oliveira, Ligia Petrolini
de Oliveira Ferreira, Fabio
Junior, Samuel Aguiar
Nakagawa, Wilson Toshihiko
Gomy, Israel
de Faria Ferraz, Victor Evangelista
da Silva Junior, Wilson Araujo
Carraro, Dirce Maria
Rossi, Benedito Mauro
author_sort Monteiro Santos, Erika Maria
collection PubMed
description BACKGROUND: Lynch syndrome (LS) is the most common form of inherited predisposition to colorectal cancer (CRC), accounting for 2-5% of all CRC. LS is an autosomal dominant disease characterized by mutations in the mismatch repair genes mutL homolog 1 (MLH1), mutS homolog 2 (MSH2), postmeiotic segregation increased 1 (PMS1), post-meiotic segregation increased 2 (PMS2) and mutS homolog 6 (MSH6). Mutation risk prediction models can be incorporated into clinical practice, facilitating the decision-making process and identifying individuals for molecular investigation. This is extremely important in countries with limited economic resources. This study aims to evaluate sensitivity and specificity of five predictive models for germline mutations in repair genes in a sample of individuals with suspected Lynch syndrome. METHODS: Blood samples from 88 patients were analyzed through sequencing MLH1, MSH2 and MSH6 genes. The probability of detecting a mutation was calculated using the PREMM, Barnetson, MMRpro, Wijnen and Myriad models. To evaluate the sensitivity and specificity of the models, receiver operating characteristic curves were constructed. RESULTS: Of the 88 patients included in this analysis, 31 mutations were identified: 16 were found in the MSH2 gene, 15 in the MLH1 gene and no pathogenic mutations were identified in the MSH6 gene. It was observed that the AUC for the PREMM (0.846), Barnetson (0.850), MMRpro (0.821) and Wijnen (0.807) models did not present significant statistical difference. The Myriad model presented lower AUC (0.704) than the four other models evaluated. Considering thresholds of ≥ 5%, the models sensitivity varied between 1 (Myriad) and 0.87 (Wijnen) and specificity ranged from 0 (Myriad) to 0.38 (Barnetson). CONCLUSIONS: The Barnetson, PREMM, MMRpro and Wijnen models present similar AUC. The AUC of the Myriad model is statistically inferior to the four other models.
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spelling pubmed-33053542012-03-16 Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries Monteiro Santos, Erika Maria Valentin, Mev Dominguez Carneiro, Felipe de Oliveira, Ligia Petrolini de Oliveira Ferreira, Fabio Junior, Samuel Aguiar Nakagawa, Wilson Toshihiko Gomy, Israel de Faria Ferraz, Victor Evangelista da Silva Junior, Wilson Araujo Carraro, Dirce Maria Rossi, Benedito Mauro BMC Cancer Research Article BACKGROUND: Lynch syndrome (LS) is the most common form of inherited predisposition to colorectal cancer (CRC), accounting for 2-5% of all CRC. LS is an autosomal dominant disease characterized by mutations in the mismatch repair genes mutL homolog 1 (MLH1), mutS homolog 2 (MSH2), postmeiotic segregation increased 1 (PMS1), post-meiotic segregation increased 2 (PMS2) and mutS homolog 6 (MSH6). Mutation risk prediction models can be incorporated into clinical practice, facilitating the decision-making process and identifying individuals for molecular investigation. This is extremely important in countries with limited economic resources. This study aims to evaluate sensitivity and specificity of five predictive models for germline mutations in repair genes in a sample of individuals with suspected Lynch syndrome. METHODS: Blood samples from 88 patients were analyzed through sequencing MLH1, MSH2 and MSH6 genes. The probability of detecting a mutation was calculated using the PREMM, Barnetson, MMRpro, Wijnen and Myriad models. To evaluate the sensitivity and specificity of the models, receiver operating characteristic curves were constructed. RESULTS: Of the 88 patients included in this analysis, 31 mutations were identified: 16 were found in the MSH2 gene, 15 in the MLH1 gene and no pathogenic mutations were identified in the MSH6 gene. It was observed that the AUC for the PREMM (0.846), Barnetson (0.850), MMRpro (0.821) and Wijnen (0.807) models did not present significant statistical difference. The Myriad model presented lower AUC (0.704) than the four other models evaluated. Considering thresholds of ≥ 5%, the models sensitivity varied between 1 (Myriad) and 0.87 (Wijnen) and specificity ranged from 0 (Myriad) to 0.38 (Barnetson). CONCLUSIONS: The Barnetson, PREMM, MMRpro and Wijnen models present similar AUC. The AUC of the Myriad model is statistically inferior to the four other models. BioMed Central 2012-02-09 /pmc/articles/PMC3305354/ /pubmed/22321913 http://dx.doi.org/10.1186/1471-2407-12-64 Text en Copyright ©2012 Santos et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Monteiro Santos, Erika Maria
Valentin, Mev Dominguez
Carneiro, Felipe
de Oliveira, Ligia Petrolini
de Oliveira Ferreira, Fabio
Junior, Samuel Aguiar
Nakagawa, Wilson Toshihiko
Gomy, Israel
de Faria Ferraz, Victor Evangelista
da Silva Junior, Wilson Araujo
Carraro, Dirce Maria
Rossi, Benedito Mauro
Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries
title Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries
title_full Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries
title_fullStr Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries
title_full_unstemmed Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries
title_short Predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries
title_sort predictive models for mutations in mismatch repair genes: implication for genetic counseling in developing countries
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3305354/
https://www.ncbi.nlm.nih.gov/pubmed/22321913
http://dx.doi.org/10.1186/1471-2407-12-64
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