Robust regression based genome-wide multi-trait QTL analysis

被引:0
作者
Md. Jahangir Alam
Janardhan Mydam
Md. Ripter Hossain
S. M. Shahinul Islam
Md. Nurul Haque Mollah
机构
[1] University of Rajshahi,Bioinformatics Laboratory, Department of Statistics
[2] John H. Stroger,Division of Neonatology, Department of Pediatrics
[3] Jr. Hospital of Cook County,Department of Pediatrics
[4] Rush Medical Center,Institute of Biological Science
[5] University of Rajshahi,undefined
来源
Molecular Genetics and Genomics | 2021年 / 296卷
关键词
Multi-trait QTL mapping; Simple interval mapping (SIM); Multivariate normal distribution; Minimum ; -divergence method; Robust regression;
D O I
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中图分类号
学科分类号
摘要
In genome-wide quantitative trait locus (QTL) mapping studies, multiple quantitative traits are often measured along with the marker genotypes. Multi-trait QTL (MtQTL) analysis, which includes multiple quantitative traits together in a single model, is an efficient technique to increase the power of QTL identification. The two most widely used classical approaches for MtQTL mapping are Gaussian Mixture Model-based MtQTL (GMM-MtQTL) and Linear Regression Model-based MtQTL (LRM-MtQTL) analyses. There are two types of LRM-MtQTL approach known as least squares-based LRM-MtQTL (LS-LRM-MtQTL) and maximum likelihood-based LRM-MtQTL (ML-LRM-MtQTL). These three classical approaches are equivalent alternatives for QTL detection, but ML-LRM-MtQTL is computationally faster than GMM-MtQTL and LS-LRM-MtQTL. However, one major limitation common to all the above classical approaches is that they are very sensitive to outliers, which leads to misleading results. Therefore, in this study, we developed an LRM-based robust MtQTL approach, called LRM-RobMtQTL, for the backcross population based on the robust estimation of regression parameters by maximizing the β-likelihood function induced from the β-divergence with multivariate normal distribution. When β = 0, the proposed LRM-RobMtQTL method reduces to the classical ML-LRM-MtQTL approach. Simulation studies showed that both ML-LRM-MtQTL and LRM-RobMtQTL methods identified the same QTL positions in the absence of outliers. However, in the presence of outliers, only the proposed method was able to identify all the true QTL positions. Real data analysis results revealed that in the presence of outliers only our LRM-RobMtQTL approach can identify all the QTL positions as those identified in the absence of outliers by both methods. We conclude that our proposed LRM-RobMtQTL analysis approach outperforms the classical MtQTL analysis methods.
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页码:1103 / 1119
页数:16
相关论文
共 176 条
  • [1] Alam MJ(2016)Regression based robust QTL analysis for Rajshahi Univ J Sci Eng 44 95-99
  • [2] Alamin M(2018) population J Bio-Sci 24 75-81
  • [3] Sultana MH(2020)Robust linear regression based simple interval mapping for QTL analysis with backcross population Plant Genetic Resour 18 382-395
  • [4] Amanullah M(2020)Bioinformatics studies on structures, functions and diversifications of rolling leaf related genes in rice ( Int J Stat Sci 20 61-78
  • [5] Mollah MNH(2021) L.) J Bioinf Comput Biol 19 205004401-205004423
  • [6] Alam MJ(1998)Robust QTL analysis based on robust estimation of bivariate normal distribution with backcross population Am J Human Genetics 62 1198-1211
  • [7] Alamin M(2019)Regression based fast multi-trait genome-wide QTL analysis J Exp Bot 70 3693-3698
  • [8] Hossain MR(2017)Multipoint quantitative-trait linkage analysis in general pedigrees Genet Sel Evol 49 62-890
  • [9] Islam SMS(2003)To clean or not to clean phenotypic datasets for outlier plants in genetic analyses? Bioinformatics 19 889-822
  • [10] Mollah MNH(2017)Multiple-trait QTL mapping and genomic prediction for wool traits in sheep G3: Genes|genomes|genetics 7 813-22