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Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments

SIMPLE SUMMARY: Some colorectal cancer (CRC) outcomes are partially associated with genetics, and different studies have proposed several genetic variants as predictors. However, analysis of their performance in other populations is limited. Thus, our objectives were to assess their use in our cohor...

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Autores principales: Garcia-Etxebarria, Koldo, Etxart, Ane, Barrero, Maialen, Nafria, Beatriz, Segues Merino, Nerea Miren, Romero-Garmendia, Irati, Goel, Ajay, Franke, Andre, D’Amato, Mauro, Bujanda, Luis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10571592/
https://www.ncbi.nlm.nih.gov/pubmed/37835382
http://dx.doi.org/10.3390/cancers15194688
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author Garcia-Etxebarria, Koldo
Etxart, Ane
Barrero, Maialen
Nafria, Beatriz
Segues Merino, Nerea Miren
Romero-Garmendia, Irati
Goel, Ajay
Franke, Andre
D’Amato, Mauro
Bujanda, Luis
author_facet Garcia-Etxebarria, Koldo
Etxart, Ane
Barrero, Maialen
Nafria, Beatriz
Segues Merino, Nerea Miren
Romero-Garmendia, Irati
Goel, Ajay
Franke, Andre
D’Amato, Mauro
Bujanda, Luis
author_sort Garcia-Etxebarria, Koldo
collection PubMed
description SIMPLE SUMMARY: Some colorectal cancer (CRC) outcomes are partially associated with genetics, and different studies have proposed several genetic variants as predictors. However, analysis of their performance in other populations is limited. Thus, our objectives were to assess their use in our cohort and to find additional genetic variants associated with CRC outcomes. We found that some of the genetic variants proposed as predictors could be used in our cohort, although the addition of clinical data improved the performance. In addition, we found additional genetic variants that could be useful to predict the CRC manifestations in our population. Our findings will help to refine the use of genetic polymorphisms to predict CRC outcomes in our population, and we expect that our findings could be useful for other populations. ABSTRACT: Background: Some genetic polymorphisms (SNPs) have been proposed as predictors for different colorectal cancer (CRC) outcomes. This work aims to assess their performance in our cohort and find new SNPs associated with them. Methods: A total of 833 CRC cases were analyzed for seven outcomes, including the use of chemotherapy, and stratified by tumor location and stage. The performance of 63 SNPs was assessed using a generalized linear model and area under the receiver operating characteristic curve, and local SNPs were detected using logistic regressions. Results: In total 26 of the SNPs showed an AUC > 0.6 and a significant association (p < 0.05) with one or more outcomes. However, clinical variables outperformed some of them, and the combination of genetic and clinical data showed better performance. In addition, 49 suggestive (p < 5 × 10(−6)) SNPs associated with one or more CRC outcomes were detected, and those SNPs were located at or near genes involved in biological mechanisms associated with CRC. Conclusions: Some SNPs with clinical data can be used in our population as predictors of some CRC outcomes, and the local SNPs detected in our study could be feasible markers that need further validation as predictors.
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spelling pubmed-105715922023-10-14 Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments Garcia-Etxebarria, Koldo Etxart, Ane Barrero, Maialen Nafria, Beatriz Segues Merino, Nerea Miren Romero-Garmendia, Irati Goel, Ajay Franke, Andre D’Amato, Mauro Bujanda, Luis Cancers (Basel) Article SIMPLE SUMMARY: Some colorectal cancer (CRC) outcomes are partially associated with genetics, and different studies have proposed several genetic variants as predictors. However, analysis of their performance in other populations is limited. Thus, our objectives were to assess their use in our cohort and to find additional genetic variants associated with CRC outcomes. We found that some of the genetic variants proposed as predictors could be used in our cohort, although the addition of clinical data improved the performance. In addition, we found additional genetic variants that could be useful to predict the CRC manifestations in our population. Our findings will help to refine the use of genetic polymorphisms to predict CRC outcomes in our population, and we expect that our findings could be useful for other populations. ABSTRACT: Background: Some genetic polymorphisms (SNPs) have been proposed as predictors for different colorectal cancer (CRC) outcomes. This work aims to assess their performance in our cohort and find new SNPs associated with them. Methods: A total of 833 CRC cases were analyzed for seven outcomes, including the use of chemotherapy, and stratified by tumor location and stage. The performance of 63 SNPs was assessed using a generalized linear model and area under the receiver operating characteristic curve, and local SNPs were detected using logistic regressions. Results: In total 26 of the SNPs showed an AUC > 0.6 and a significant association (p < 0.05) with one or more outcomes. However, clinical variables outperformed some of them, and the combination of genetic and clinical data showed better performance. In addition, 49 suggestive (p < 5 × 10(−6)) SNPs associated with one or more CRC outcomes were detected, and those SNPs were located at or near genes involved in biological mechanisms associated with CRC. Conclusions: Some SNPs with clinical data can be used in our population as predictors of some CRC outcomes, and the local SNPs detected in our study could be feasible markers that need further validation as predictors. MDPI 2023-09-22 /pmc/articles/PMC10571592/ /pubmed/37835382 http://dx.doi.org/10.3390/cancers15194688 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/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 (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Garcia-Etxebarria, Koldo
Etxart, Ane
Barrero, Maialen
Nafria, Beatriz
Segues Merino, Nerea Miren
Romero-Garmendia, Irati
Goel, Ajay
Franke, Andre
D’Amato, Mauro
Bujanda, Luis
Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments
title Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments
title_full Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments
title_fullStr Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments
title_full_unstemmed Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments
title_short Genetic Variants as Predictors of the Success of Colorectal Cancer Treatments
title_sort genetic variants as predictors of the success of colorectal cancer treatments
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10571592/
https://www.ncbi.nlm.nih.gov/pubmed/37835382
http://dx.doi.org/10.3390/cancers15194688
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