Population size in QTL detection using quantile regression in genome‑wide association studies.

The aim of this study was to evaluate the performance of Quantile Regression (QR) in Genome-Wide Association Studies (GWAS) regarding the ability to detect QTLs (Quantitative Trait Locus) associated with phenotypic traits of interest, considering different population sizes. For this, simulated data was used, with traits of different levels of heritability (0.30 and 0.50), and controlled by 3 and 100 QTLs. Populations of 1,000 to 200 individuals were defined, with a random reduction of 100 individuals for each population. The power of detection of QTLs and the false positive rate were obtained by means of QR considering three different quantiles (0.10, 0.50 and 0.90) and also by means of the General Linear Model (GLM). In general, it was observed that the QR models showed greater power of detection of QTLs in all scenarios evaluated and a relatively low false positive rate in scenarios with a greater number of individuals. The models with the highest detection power of true QTLs at the extreme quantils (0.10 and 0.90) were the ones with the highest detection power of true QTLs. In contrast, the analysis based on the GLM detected few (scenarios with larger population size) or no QTLs in the evaluated scenarios. In the scenarios with low heritability, QR obtained a high detection power. Thus, it was verified that the use of QR in GWAS is effective, allowing the detection of QTLs associated with traits of interest even in scenarios with few genotyped and phenotyped individuals.

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Main Authors: OLIVEIRA, G. F., NASCIMENTO, A. C. C., AZEVEDO, C. F., CELERI, M. de O., BARROSO, L. M. A., SANT’ANNA, I. de C., VIANA, J. M. S., RESENDE, M. D. V. de, NASCIMENTO, M.
Other Authors: GABRIELA FRANÇA OLIVEIRA, UNIVERSIDADE FEDERAL DE VIÇOSA
Format: Artigo de periódico biblioteca
Language:Portugues
pt_BR
Published: 2023-12-08
Subjects:Regression analysis, Phenotypic variation, Genome-wide association study,
Online Access:http://www.alice.cnptia.embrapa.br/alice/handle/doc/1159390
https://doi.org/10.1038/s41598-023-36730-z
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spelling dig-alice-doc-11593902023-12-08T19:32:10Z Population size in QTL detection using quantile regression in genome‑wide association studies. OLIVEIRA, G. F. NASCIMENTO, A. C. C. AZEVEDO, C. F. CELERI, M. de O. BARROSO, L. M. A. SANT’ANNA, I. de C. VIANA, J. M. S. RESENDE, M. D. V. de NASCIMENTO, M. GABRIELA FRANÇA OLIVEIRA, UNIVERSIDADE FEDERAL DE VIÇOSA ANA CAROLINA CAMPANA NASCIMENTO, UNIVERSIDADE FEDERAL DE VIÇOSA CAMILA FERREIRA AZEVEDO, UNIVERSIDADE FEDERAL DE VIÇOSA MAURÍCIO DE OLIVEIRA CELERI, UNIVERSIDADE FEDERAL DE VIÇOSA LAÍS MAYARA AZEVEDO BARROSO, INSTITUTO FEDERAL DE EDUCAÇÃO, CIÊNCIA E TECNOLOGIA DE MATO GROSSO ISABELA DE CASTRO SANT’ANNA, INSTITUTO AGRONÔMICO DE CAMPINAS JOSÉ MARCELO SORIANO VIANA, UNIVERSIDADE FEDERAL DE VIÇOSA MARCOS DEON VILELA DE RESENDE, CNPCa MOYSÉS NASCIMENTO, UNIVERSIDADE FEDERAL DE VIÇOSA. Regression analysis Phenotypic variation Genome-wide association study The aim of this study was to evaluate the performance of Quantile Regression (QR) in Genome-Wide Association Studies (GWAS) regarding the ability to detect QTLs (Quantitative Trait Locus) associated with phenotypic traits of interest, considering different population sizes. For this, simulated data was used, with traits of different levels of heritability (0.30 and 0.50), and controlled by 3 and 100 QTLs. Populations of 1,000 to 200 individuals were defined, with a random reduction of 100 individuals for each population. The power of detection of QTLs and the false positive rate were obtained by means of QR considering three different quantiles (0.10, 0.50 and 0.90) and also by means of the General Linear Model (GLM). In general, it was observed that the QR models showed greater power of detection of QTLs in all scenarios evaluated and a relatively low false positive rate in scenarios with a greater number of individuals. The models with the highest detection power of true QTLs at the extreme quantils (0.10 and 0.90) were the ones with the highest detection power of true QTLs. In contrast, the analysis based on the GLM detected few (scenarios with larger population size) or no QTLs in the evaluated scenarios. In the scenarios with low heritability, QR obtained a high detection power. Thus, it was verified that the use of QR in GWAS is effective, allowing the detection of QTLs associated with traits of interest even in scenarios with few genotyped and phenotyped individuals. 2023-12-08T19:32:09Z 2023-12-08T19:32:09Z 2023-12-08 2023 Artigo de periódico Scientific Reports, v. 13, Article 9585, 2023. http://www.alice.cnptia.embrapa.br/alice/handle/doc/1159390 https://doi.org/10.1038/s41598-023-36730-z Portugues pt_BR openAccess 10 p.
institution EMBRAPA
collection DSpace
country Brasil
countrycode BR
component Bibliográfico
access En linea
databasecode dig-alice
tag biblioteca
region America del Sur
libraryname Sistema de bibliotecas de EMBRAPA
language Portugues
pt_BR
topic Regression analysis
Phenotypic variation
Genome-wide association study
Regression analysis
Phenotypic variation
Genome-wide association study
spellingShingle Regression analysis
Phenotypic variation
Genome-wide association study
Regression analysis
Phenotypic variation
Genome-wide association study
OLIVEIRA, G. F.
NASCIMENTO, A. C. C.
AZEVEDO, C. F.
CELERI, M. de O.
BARROSO, L. M. A.
SANT’ANNA, I. de C.
VIANA, J. M. S.
RESENDE, M. D. V. de
NASCIMENTO, M.
Population size in QTL detection using quantile regression in genome‑wide association studies.
description The aim of this study was to evaluate the performance of Quantile Regression (QR) in Genome-Wide Association Studies (GWAS) regarding the ability to detect QTLs (Quantitative Trait Locus) associated with phenotypic traits of interest, considering different population sizes. For this, simulated data was used, with traits of different levels of heritability (0.30 and 0.50), and controlled by 3 and 100 QTLs. Populations of 1,000 to 200 individuals were defined, with a random reduction of 100 individuals for each population. The power of detection of QTLs and the false positive rate were obtained by means of QR considering three different quantiles (0.10, 0.50 and 0.90) and also by means of the General Linear Model (GLM). In general, it was observed that the QR models showed greater power of detection of QTLs in all scenarios evaluated and a relatively low false positive rate in scenarios with a greater number of individuals. The models with the highest detection power of true QTLs at the extreme quantils (0.10 and 0.90) were the ones with the highest detection power of true QTLs. In contrast, the analysis based on the GLM detected few (scenarios with larger population size) or no QTLs in the evaluated scenarios. In the scenarios with low heritability, QR obtained a high detection power. Thus, it was verified that the use of QR in GWAS is effective, allowing the detection of QTLs associated with traits of interest even in scenarios with few genotyped and phenotyped individuals.
author2 GABRIELA FRANÇA OLIVEIRA, UNIVERSIDADE FEDERAL DE VIÇOSA
author_facet GABRIELA FRANÇA OLIVEIRA, UNIVERSIDADE FEDERAL DE VIÇOSA
OLIVEIRA, G. F.
NASCIMENTO, A. C. C.
AZEVEDO, C. F.
CELERI, M. de O.
BARROSO, L. M. A.
SANT’ANNA, I. de C.
VIANA, J. M. S.
RESENDE, M. D. V. de
NASCIMENTO, M.
format Artigo de periódico
topic_facet Regression analysis
Phenotypic variation
Genome-wide association study
author OLIVEIRA, G. F.
NASCIMENTO, A. C. C.
AZEVEDO, C. F.
CELERI, M. de O.
BARROSO, L. M. A.
SANT’ANNA, I. de C.
VIANA, J. M. S.
RESENDE, M. D. V. de
NASCIMENTO, M.
author_sort OLIVEIRA, G. F.
title Population size in QTL detection using quantile regression in genome‑wide association studies.
title_short Population size in QTL detection using quantile regression in genome‑wide association studies.
title_full Population size in QTL detection using quantile regression in genome‑wide association studies.
title_fullStr Population size in QTL detection using quantile regression in genome‑wide association studies.
title_full_unstemmed Population size in QTL detection using quantile regression in genome‑wide association studies.
title_sort population size in qtl detection using quantile regression in genome‑wide association studies.
publishDate 2023-12-08
url http://www.alice.cnptia.embrapa.br/alice/handle/doc/1159390
https://doi.org/10.1038/s41598-023-36730-z
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