Effect of Genetic Architecture and Partitioning of Training Population on GEBVs, SNP Effects and GWAS: A Simulation Study
Abstract
1. Introduction
2. Materials and Methods
2.1. Data Simulation
2.2. Model
2.3. Derivation of SNP Effects from Breeding Values
2.4. GWAS
2.5. Correlation and Validation
2.6. Software
3. Results
3.1. Accuracy of GEBVs
3.2. Correlations Between GEBVs
3.3. Correlations Between SNP Effects
3.4. Manhattan Plots
4. Discussion
4.1. Training Population Size and Partitioning
4.2. QTL Number and Distribution
4.3. Generational Distance and LD Persistence
4.4. GEBVs and SNP Effects Stability
4.5. GWAS Stability and Interpretation
4.6. Practical Implications
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| GWAS | Genome-wide association study |
| GEBV | Genomic estimated breeding value |
| GRM | Genomic Relationship Matrix |
| SNP | Single-nucleotide polymorphism |
| QTL | Quantitative trait loci |
| TBV | True breeding value |
| LD | Linkage disequilibrium |
| ssGBLUP | Single-step genomic best linear unbiased prediction |
| GBLUP | Genomic best linear unbiased prediction |
| TR_ID | Training scenario based on animal identification number |
| TR_Gen | Training scenario based on generation subset |
| TR_GenBlock | Training scenario based on generation blocks |
| TR_Sex | Training scenario based on sex |
| N-100 | Normal distribution with 100 QTL |
| G-100 | Gamma distribution with 100 QTL |
| N-1000 | Normal distribution with 1000 QTL |
| G-1000 | Gamma distribution with 1000 QTL |
| USDA-NIFA | United States Department of Agriculture, National Institute of Food and Agriculture |
References
- García-Ruiz, A.; Cole, J.B.; VanRaden, P.M.; Wiggans, G.R.; Ruiz-López, F.J.; Van Tassell, C.P. Changes in Genetic Selection Differentials and Generation Intervals in US Holstein Dairy Cattle as a Result of Genomic Selection. Proc. Natl. Acad. Sci. USA 2016, 113, E3995–E4004. [Google Scholar] [CrossRef]
- Hayes, B.J.; Daetwyler, H.D.; Bowman, P.; Moser, G.; Tier, B.; Crump, R.; Khatkar, M.; Raadsma, H.; Goddard, M.E. Accuracy of Genomic Selection: Comparing Theory and Results. Proc. Assoc. Advmt Anim. Breed. Genet. 2009, 18, 34–37. [Google Scholar]
- Tan, X.; Liu, R.; Zhao, D.; He, Z.; Li, W.; Zheng, M.; Li, Q.; Wang, Q.; Liu, D.; Feng, F.; et al. Large-Scale Genomic and Transcriptomic Analyses Elucidate the Genetic Basis of High Meat Yield in Chickens. J. Adv. Res. 2024, 55, 1–16. [Google Scholar] [CrossRef] [PubMed]
- Visscher, P.M.; Wray, N.R.; Zhang, Q.; Sklar, P.; McCarthy, M.I.; Brown, M.A.; Yang, J. 10 Years of GWAS Discovery: Biology, Function, and Translation. Am. J. Hum. Genet. 2017, 101, 5–22. [Google Scholar] [CrossRef] [PubMed]
- Argyriadou, A.; Michailidou, S.; Vouraki, S.; Tsartsianidou, V.; Triantafyllidis, A.; Gelasakis, A.; Banos, G.; Arsenos, G. A Genome-Wide Association Study Reveals Novel SNP Markers Associated with Resilience Traits in Two Mediterranean Dairy Sheep Breeds. Front. Genet. 2023, 14, 1294573. [Google Scholar] [CrossRef] [PubMed]
- Chen, D.; Wu, P.; Yang, Q.; Wang, K.; Zhou, J.; Yang, X.; Jiang, A.; Shen, L.; Xiao, W.; Jiang, Y.; et al. Genome-Wide Association Study for Backfat Thickness at 100 Kg and Loin Muscle Thickness in Domestic Pigs Based on Genotyping by Sequencing. Physiol. Genom. 2019, 51, 261–266. [Google Scholar] [CrossRef] [PubMed]
- Jiang, J.; Ma, L.; Prakapenka, D.; VanRaden, P.M.; Cole, J.B.; Da, Y. A Large-Scale Genome-Wide Association Study in U.S. Holstein Cattle. Front. Genet. 2019, 10, 412. [Google Scholar] [CrossRef]
- Wang, H.; Misztal, I.; Aguilar, I.; Legarra, A.; Muir, W.M. Genome-Wide Association Mapping Including Phenotypes from Relatives without Genotypes. Genet. Res. 2012, 94, 73–83. [Google Scholar] [CrossRef]
- Daetwyler, H.D.; Capitan, A.; Pausch, H.; Stothard, P.; van Binsbergen, R.; Brøndum, R.F.; Liao, X.; Djari, A.; Rodriguez, S.C.; Grohs, C.; et al. Whole-Genome Sequencing of 234 Bulls Facilitates Mapping of Monogenic and Complex Traits in Cattle. Nat. Genet. 2014, 46, 858–865. [Google Scholar] [CrossRef]
- Georges, M.; Charlier, C.; Hayes, B. Harnessing Genomic Information for Livestock Improvement. Nat. Rev. Genet. 2019, 20, 135–156. [Google Scholar] [CrossRef]
- Habier, D.; Fernando, R.L.; Dekkers, J.C.M. The Impact of Genetic Relationship Information on Genome-Assisted Breeding Values. Genetics 2007, 177, 2389–2397. [Google Scholar] [CrossRef]
- Gianola, D. Priors in Whole-Genome Regression: The Bayesian Alphabet Returns. Genetics 2013, 194, 573–596. [Google Scholar] [CrossRef]
- Marigorta, U.M.; Rodríguez, J.A.; Gibson, G.; Navarro, A. Replicability and Prediction: Lessons and Challenges from GWAS. Trends Genet. TIG 2018, 34, 504–517. [Google Scholar] [CrossRef]
- Meuwissen, T.H.E.; Hayes, B.J.B.; Goddard, M.E.M. Prediction of Total Genetic Value Using Genome-Wide Dense Marker Maps. Genetics 2001, 157, 1819–1829. [Google Scholar] [CrossRef]
- Cole, J.B.; Wiggans, G.R.; Ma, L.; Sonstegard, T.S.; Lawlor, T.J.; Crooker, B.A.; Van Tassell, C.P.; Yang, J.; Wang, S.; Matukumalli, L.K.; et al. Genome-Wide Association Analysis of Thirty One Production, Health, Reproduction and Body Conformation Traits in Contemporary U.S. Holstein Cows. BMC Genom. 2011, 12, 408. [Google Scholar] [CrossRef]
- Hawken, R.J.; Zhang, Y.D.; Fortes, M.R.S.; Collis, E.; Barris, W.C.; Corbet, N.J.; Williams, P.J.; Fordyce, G.; Holroyd, R.G.; Walkley, J.R.W.; et al. Genome-Wide Association Studies of Female Reproduction in Tropically Adapted Beef Cattle. J. Anim. Sci. 2012, 90, 1398–1410. [Google Scholar] [CrossRef]
- Daetwyler, H.D.; Calus, M.P.L.; Pong-Wong, R.; de Los Campos, G.; Hickey, J.M. Genomic Prediction in Animals and Plants: Simulation of Data, Validation, Reporting, and Benchmarking. Genetics 2013, 193, 347–365. [Google Scholar] [CrossRef]
- Lourenco, D.A.L.; Fragomeni, B.O.; Bradford, H.L.; Menezes, I.R.; Ferraz, J.B.S.; Aguilar, I.; Tsuruta, S.; Misztal, I. Implications of SNP Weighting on Single-Step Genomic Predictions for Different Reference Population Sizes. J. Anim. Breed. Genet. Z. Tierz. Zucht. 2017, 134, 463–471. [Google Scholar] [CrossRef]
- Ma, P.; Lund, M.S.; Aamand, G.P.; Su, G. Use of a Bayesian Model Including QTL Markers Increases Prediction Reliability When Test Animals Are Distant from the Reference Population. J. Dairy. Sci. 2019, 102, 7237–7247. [Google Scholar] [CrossRef]
- Alvarenga, A.B.; Veroneze, R.; Oliveira, H.R.; Marques, D.B.D.; Lopes, P.S.; Silva, F.F.; Brito, L.F. Comparing Alternative Single-Step GBLUP Approaches and Training Population Designs for Genomic Evaluation of Crossbred Animals. Front. Genet. 2020, 11, 263. [Google Scholar] [CrossRef]
- Tiezzi, F.; Maltecca, C. Accounting for Trait Architecture in Genomic Predictions of US Holstein Cattle Using a Weighted Realized Relationship Matrix. Genet. Sel. Evol. 2015, 47, 24. [Google Scholar] [CrossRef]
- Zhang, X.; Lourenco, D.; Aguilar, I.; Legarra, A.; Misztal, I. Weighting Strategies for Single-Step Genomic BLUP: An Iterative Approach for Accurate Calculation of GEBV and GWAS. Front. Genet. 2016, 7, 151. [Google Scholar] [CrossRef]
- MacLeod, I.M.; Bowman, P.J.; Vander Jagt, C.J.; Haile-Mariam, M.; Kemper, K.E.; Chamberlain, A.J.; Schrooten, C.; Hayes, B.J.; Goddard, M.E. Exploiting Biological Priors and Sequence Variants Enhances QTL Discovery and Genomic Prediction of Complex Traits. BMC Genom. 2016, 17, 144. [Google Scholar] [CrossRef]
- Su, G.; Christensen, O.F.; Janss, L.; Lund, M.S. Comparison of Genomic Predictions Using Genomic Relationship Matrices Built with Different Weighting Factors to Account for Locus-Specific Variances. J. Dairy. Sci. 2014, 97, 6547–6559. [Google Scholar] [CrossRef]
- Fragomeni, B.O.; Lourenco, D.A.L.; Legarra, A.; VanRaden, P.M.; Misztal, I. Alternative SNP Weighting for Single-Step Genomic Best Linear Unbiased Predictor Evaluation of Stature in US Holsteins in the Presence of Selected Sequence Variants. J. Dairy. Sci. 2019, 102, 10012–10019. [Google Scholar] [CrossRef] [PubMed]
- Fragomeni, B.O.; Lourenco, D.A.L.; Masuda, Y.; Legarra, A.; Misztal, I. Incorporation of Causative Quantitative Trait Nucleotides in Single-Step GBLUP. Genet. Sel. Evol. GSE 2017, 49, 59. [Google Scholar] [CrossRef]
- Vallejo, R.L.; Leeds, T.D.; Fragomeni, B.O.; Gao, G.; Hernandez, A.G.; Misztal, I.; Welch, T.J.; Wiens, G.D.; Palti, Y. Evaluation of Genome-Enabled Selection for Bacterial Cold Water Disease Resistance Using Progeny Performance Data in Rainbow Trout: Insights on Genotyping Methods and Genomic Prediction Models. Front. Genet. 2016, 7, 96. [Google Scholar] [CrossRef]
- VanRaden, P.M.; Tooker, M.E.; O’Connell, J.R.; Cole, J.B.; Bickhart, D.M. Selecting Sequence Variants to Improve Genomic Predictions for Dairy Cattle. Genet. Sel. Evol. GSE 2017, 49, 32. [Google Scholar] [CrossRef] [PubMed]
- Mancin, E.; Lourenco, D.; Bermann, M.; Mantovani, R.; Misztal, I. Accounting for Population Structure and Phenotypes From Relatives in Association Mapping for Farm Animals: A Simulation Study. Front. Genet. 2021, 12, 642065. [Google Scholar] [CrossRef]
- Lopes, M.S.; Bovenhuis, H.; van Son, M.; Nordbø, Ø.; Grindflek, E.H.; Knol, E.F.; Bastiaansen, J.W.M. Using Markers with Large Effect in Genetic and Genomic Predictions. J. Anim. Sci. 2017, 95, 59–71. [Google Scholar] [CrossRef] [PubMed]
- Dodd, G.R.; Gray, K.; Huang, Y.; Fragomeni, B. Single-Step GBLUP and GWAS Analyses Suggests Implementation of Unweighted Two Trait Approach for Heat Stress in Swine. Animals 2022, 12, 388. [Google Scholar] [CrossRef]
- Gaynor, R.C.; Gorjanc, G.; Hickey, J.M. AlphaSimR: An R Package for Breeding Program Simulations. G3 2021, 11, jkaa017. [Google Scholar] [CrossRef]
- Aguilar, I.; Misztal, I.; Johnson, D.L.; Legarra, A.; Tsuruta, S.; Lawlor, T.J. Hot Topic: A Unified Approach to Utilize Phenotypic, Full Pedigree, and Genomic Information for Genetic Evaluation of Holstein Final Score. J. Dairy. Sci. 2010, 93, 743–752. [Google Scholar] [CrossRef]
- Christensen, O.F.; Lund, M.S. Genomic Prediction When Some Animals Are Not Genotyped. Genet. Sel. Evol. GSE 2010, 42, 2. [Google Scholar] [CrossRef]
- Legarra, A.; Aguilar, I.; Misztal, I. A Relationship Matrix Including Full Pedigree and Genomic Information. J. Dairy. Sci. 2009, 92, 4656–4663. [Google Scholar] [CrossRef] [PubMed]
- VanRaden, P.M. Efficient Methods to Compute Genomic Predictions. J. Dairy. Sci. 2008, 91, 4414–4423. [Google Scholar] [CrossRef]
- Zhang, Z.; Liu, J.; Ding, X.; Bijma, P.; Koning, D.-J.d.; Zhang, Q. Best Linear Unbiased Prediction of Genomic Breeding Values Using a Trait-Specific Marker-Derived Relationship Matrix. PLoS ONE 2010, 5, e12648. [Google Scholar] [CrossRef] [PubMed]
- Hill, W.; Mackay, T.D.S. Falconer and Introduction to Quantitative Genetics. Genetics 2004, 167, 1529–1536. [Google Scholar] [CrossRef] [PubMed]
- Tukey, J.W. Comparing Individual Means in the Analysis of Variance. Biometrics 1949, 5, 99–114. [Google Scholar] [CrossRef] [PubMed]
- CRAN: Ggplot2 Citation Info. Available online: https://cran.r-project.org/web/packages/ggplot2/citation.html (accessed on 15 April 2026).
- Isidro, J.; Jannink, J.-L.; Akdemir, D.; Poland, J.; Heslot, N.; Sorrells, M.E. Training Set Optimization under Population Structure in Genomic Selection. Theor. Appl. Genet. 2015, 128, 145–158. [Google Scholar] [CrossRef]
- Norman, A.; Taylor, J.; Edwards, J.; Kuchel, H. Optimising Genomic Selection in Wheat: Effect of Marker Density, Population Size and Population Structure on Prediction Accuracy. G3 GenesGenomesGenetics 2018, 8, 2889–2899. [Google Scholar] [CrossRef]
- Daetwyler, H.D.; Pong-Wong, R.; Villanueva, B.; Woolliams, J.A. The Impact of Genetic Architecture on Genome-Wide Evaluation Methods. Genetics 2010, 185, 1021–1031. [Google Scholar] [CrossRef]
- Meuwissen, T.; Hayes, B.; Goddard, M. Accelerating Improvement of Livestock with Genomic Selection. Annu. Rev. Anim. Biosci. 2013, 1, 221–237. [Google Scholar] [CrossRef]
- Wientjes, Y.C.; Calus, M.P.; Goddard, M.E.; Hayes, B.J. Impact of QTL Properties on the Accuracy of Multi-Breed Genomic Prediction. Genet. Sel. Evol. 2015, 47, 42. [Google Scholar] [CrossRef]
- Muir, W.M. Comparison of Genomic and Traditional BLUP-Estimated Breeding Value Accuracy and Selection Response under Alternative Trait and Genomic Parameters. J. Anim. Breed. Genet. Z. Tierz. Zucht. 2007, 124, 342–355. [Google Scholar] [CrossRef]
- Goddard, M.E.; Hayes, B.J. Mapping Genes for Complex Traits in Domestic Animals and Their Use in Breeding Programmes. Nat. Rev. Genet. 2009, 10, 381–391. [Google Scholar] [CrossRef]
- Morgante, F.; Huang, W.; Maltecca, C.; Mackay, T.F.C. Effect of Genetic Architecture on the Prediction Accuracy of Quantitative Traits in Samples of Unrelated Individuals. Heredity 2018, 120, 500–514. [Google Scholar] [CrossRef] [PubMed]
- Liu, Z.; Alkhoder, H.; Reinhardt, F.; Reents, R. Accuracy and Bias of Genomic Prediction for Second-Generation Candidates. Interbull Bull. 2016, 50, 17–23. [Google Scholar]
- Habier, D.; Tetens, J.; Seefried, F.-R.; Lichtner, P.; Thaller, G. The Impact of Genetic Relationship Information on Genomic Breeding Values in German Holstein Cattle. Genet. Sel. Evol. 2010, 42, 5. [Google Scholar] [CrossRef]
- Karaman, E.; Su, G.; Croue, I.; Lund, M.S. Genomic Prediction Using a Reference Population of Multiple Pure Breeds and Admixed Individuals. Genet. Sel. Evol. 2021, 53, 46. [Google Scholar] [CrossRef] [PubMed]
- Lund, M.S.; van den Berg, I.; Ma, P.; Brøndum, R.F.; Su, G. Review: How to Improve Genomic Predictions in Small Dairy Cattle Populations. Animal 2016, 10, 1042–1049. [Google Scholar] [CrossRef]
- Wientjes, Y.C.J.; Veerkamp, R.F.; Calus, M.P.L. The Effect of Linkage Disequilibrium and Family Relationships on the Reliability of Genomic Prediction. Genetics 2013, 193, 621–631. [Google Scholar] [CrossRef]
- Legarra, A.; Garcia-Baccino, C.A.; Wientjes, Y.C.J.; Vitezica, Z.G. The Correlation of Substitution Effects across Populations and Generations in the Presence of Nonadditive Functional Gene Action. Genetics 2021, 219, iyab138. [Google Scholar] [CrossRef]
- Richter, J.; Hidalgo, J.; Bussiman, F.; Breen, V.; Misztal, I.; Lourenco, D. Temporal Dynamics of Genetic Parameters and SNP Effects for Performance and Disorder Traits in Poultry Undergoing Genomic Selection. J. Anim. Sci. 2024, 102, skae097. [Google Scholar] [CrossRef]
- Habier, D.; Fernando, R.L.; Garrick, D.J. Genomic BLUP Decoded: A Look into the Black Box of Genomic Prediction. Genetics 2013, 194, 597–607. [Google Scholar] [CrossRef]
- Dekkers, J.C.M.; Su, H.; Cheng, J. Predicting the Accuracy of Genomic Predictions. Genet. Sel. Evol. 2021, 53, 55. [Google Scholar] [CrossRef]
- Misztal, I.; Legarra, A.; Aguilar, I. Using Recursion to Compute the Inverse of the Genomic Relationship Matrix. J. Dairy. Sci. 2014, 97, 3943–3952. [Google Scholar] [CrossRef]
- Fragomeni, B.O.; Lourenco, D.A.L.; Tsuruta, S.; Masuda, Y.; Aguilar, I.; Legarra, A.; Lawlor, T.J.; Misztal, I. Hot Topic: Use of Genomic Recursions in Single-Step Genomic Best Linear Unbiased Predictor (BLUP) with a Large Number of Genotypes. J. Dairy. Sci. 2015, 98, 4090–4094. [Google Scholar] [CrossRef]
- Pocrnic, I.; Lourenco, D.A.L.; Masuda, Y.; Legarra, A.; Misztal, I. The Dimensionality of Genomic Information and Its Effect on Genomic Prediction. Genetics 2016, 203, 573–581. [Google Scholar] [CrossRef]
- Fragomeni, B.d.O.; Misztal, I.; Lourenco, D.L.; Aguilar, I.; Okimoto, R.; Muir, W.M. Changes in Variance Explained by Top SNP Windows over Generations for Three Traits in Broiler Chicken. Front. Genet. 2014, 5, 332. [Google Scholar] [CrossRef]
- Wolc, A.; Arango, J.; Settar, P.; Fulton, J.E.; O’Sullivan, N.P.; Preisinger, R.; Habier, D.; Fernando, R.; Garrick, D.J.; Hill, W.G.; et al. Genome-Wide Association Analysis and Genetic Architecture of Egg Weight and Egg Uniformity in Layer Chickens. Anim. Genet. 2012, 43, 87–96. [Google Scholar] [CrossRef]
- Veerkamp, R.F.; Bouwman, A.C.; Schrooten, C.; Calus, M.P.L. Genomic Prediction Using Preselected DNA Variants from a GWAS with Whole-Genome Sequence Data in Holstein–Friesian Cattle. Genet. Sel. Evol. 2016, 48, 95. [Google Scholar] [CrossRef]
- Grinde, K.E.; Browning, B.L.; Reiner, A.P.; Thornton, T.A.; Browning, S.R. Adjusting for Principal Components Can Induce Collider Bias in Genome-Wide Association Studies. PLoS Genet. 2024, 20, e1011242. [Google Scholar] [CrossRef]
- Smith, J.L.; Wilson, M.L.; Nilson, S.M.; Rowan, T.N.; Schnabel, R.D.; Decker, J.E.; Seabury, C.M. Genome-Wide Association and Genotype by Environment Interactions for Growth Traits in U.S. Red Angus Cattle. BMC Genom. 2022, 23, 517. [Google Scholar] [CrossRef]
- Romé, H.; Varenne, A.; Hérault, F.; Chapuis, H.; Alleno, C.; Dehais, P.; Vignal, A.; Burlot, T.; Le Roy, P. GWAS Analyses Reveal QTL in Egg Layers That Differ in Response to Diet Differences. Genet. Sel. Evol. 2015, 47, 83. [Google Scholar] [CrossRef]
- Technow, F.; Schrag, T.A.; Schipprack, W.; Bauer, E.; Simianer, H.; Melchinger, A.E. Genome Properties and Prospects of Genomic Prediction of Hybrid Performance in a Breeding Program of Maize. Genetics 2014, 197, 1343–1355. [Google Scholar] [CrossRef]
- Wolc, A.; Kranis, A.; Arango, J.; Settar, P.; Fulton, J.E.; O’Sullivan, N.P.; Avendano, A.; Watson, K.A.; Hickey, J.M.; de los Campos, G.; et al. Implementation of Genomic Selection in the Poultry Industry. Anim. Front. 2016, 6, 23–31. [Google Scholar] [CrossRef]
- Pocrnic, I.; Lourenco, D.A.L.; Masuda, Y.; Misztal, I. Dimensionality of Genomic Information and Performance of the Algorithm for Proven and Young for Different Livestock Species. Genet. Sel. Evol. 2016, 48, 82. [Google Scholar] [CrossRef]
- Goddard, M. Genomic Selection: Prediction of Accuracy and Maximisation of Long Term Response. Genetica 2009, 136, 245–257. [Google Scholar] [CrossRef]
- Hollifield, M.K.; Bermann, M.; Lourenco, D.; Misztal, I. Exploring the Statistical Nature of Independent Chromosome Segments. Livest. Sci. 2023, 270, 105207. [Google Scholar] [CrossRef]
- Coffey, M. Dairy Cows: In the Age of the Genotype, #phenotypeisking. Anim. Front. 2020, 10, 19–22. [Google Scholar] [CrossRef]
- Tsuruta, S.; Lourenco, D.A.L.; Masuda, Y.; Lawlor, T.J.; Misztal, I. Reducing Computational Cost of Large-Scale Genomic Evaluation by Using Indirect Genomic Prediction. JDS Commun. 2021, 2, 356–360. [Google Scholar] [CrossRef]
- Garcia, A.L.S.; Masuda, Y.; Tsuruta, S.; Miller, S.; Misztal, I.; Lourenco, D. Indirect Predictions with a Large Number of Genotyped Animals Using the Algorithm for Proven and Young. J. Anim. Sci. 2020, 98, skaa154. [Google Scholar] [CrossRef]
- Bernal Rubio, Y.L.; Gualdrón Duarte, J.L.; Bates, R.O.; Ernst, C.W.; Nonneman, D.; Rohrer, G.A.; King, A.; Shackelford, S.D.; Wheeler, T.L.; Cantet, R.J.C.; et al. Meta-Analysis of Genome-Wide Association from Genomic Prediction Models. Anim. Genet. 2016, 47, 36–48. [Google Scholar] [CrossRef]
- Sul, J.H.; Martin, L.S.; Eskin, E. Population Structure in Genetic Studies: Confounding Factors and Mixed Models. PLoS Genet. 2018, 14, e1007309. [Google Scholar] [CrossRef]








| Genetic Architecture | TR_ID Subset Comparison | Top 10 | Top 100 | Top 200 |
|---|---|---|---|---|
| N-100 | All vs. Odd | 5.2 (0.37) | 46.4 (2.10) | 102.6 (4.65) |
| N-100 | Odd vs. Even | 2.1 (0.24) | 25.8 (1.52) | 61.4 (3.20) |
| N-100 | All vs. Even | 5.4 (0.40) | 48.2 (2.18) | 105.1 (4.82) |
| N-1000 | All vs. Odd | 7.1 (0.33) | 58.6 (2.35) | 121.7 (5.05) |
| N-1000 | Odd vs. Even | 3.2 (0.30) | 34.5 (1.80) | 76.2 (3.75) |
| N-1000 | All vs. Even | 7.8 (0.29) | 61.3 (2.42) | 126.4 (5.18) |
| G-100 | All vs. Odd | 4.3 (0.32) | 42.1 (1.95) | 94.3 (4.30) |
| G-100 | Odd vs. Even | 2.2 (0.22) | 22.6 (1.35) | 55.7 (3.05) |
| G-100 | All vs. Even | 5.0 (0.36) | 45.3 (2.05) | 99.4 (4.52) |
| G-1000 | All vs. Odd | 6.2 (0.35) | 55.4 (2.28) | 118.5 (4.95) |
| G-1000 | Odd vs. Even | 4.1 (0.31) | 37.2 (1.88) | 81.3 (3.90) |
| G-1000 | All vs. Even | 7.0 (0.32) | 59.2 (1.16) | 124.2 (1.77) |
| Genetic Architecture | TR_ID Subset | QTL Threshold | Total Windows Above Threshold | TP Windows | FP Windows |
|---|---|---|---|---|---|
| N-100 | All | 0.20 | 5.2 (0.37) | 4.1 (0.24) | 1.1 (0.22) |
| N-100 | Odd | 0.20 | 5.0 (0.32) | 3.1 (0.29) | 1.9 (0.25) |
| N-100 | Even | 0.20 | 5.1 (0.34) | 3.2 (0.28) | 1.9 (0.24) |
| N-1000 | All | 0.10 | 8.4 (0.51) | 6.2 (0.37) | 2.2 (0.33) |
| N-1000 | Odd | 0.10 | 7.8 (0.44) | 5.3 (0.34) | 2.5 (0.29) |
| N-1000 | Even | 0.10 | 8.1 (0.48) | 5.6 (0.36) | 2.5 (0.31) |
| G-100 | All | 0.30 | 6.1 (0.40) | 5.0 (0.32) | 1.1 (0.22) |
| G-100 | Odd | 0.30 | 5.9 (0.36) | 4.1 (0.31) | 1.8 (0.24) |
| G-100 | Even | 0.30 | 6.0 (0.38) | 4.0 (0.30) | 2.0 (0.26) |
| G-1000 | All | 0.10 | 9.0 (0.55) | 6.7 (0.42) | 2.3 (0.35) |
| G-1000 | Odd | 0.10 | 8.5 (0.49) | 5.8 (0.39) | 2.7 (0.32) |
| G-1000 | Even | 0.10 | 8.7 (0.52) | 6.0 (0.40) | 2.7 (0.34) |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 by the authors. 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.
Share and Cite
Dutta, G.; Wilmot, H.; Schifano, E.D.; Fragomeni, B. Effect of Genetic Architecture and Partitioning of Training Population on GEBVs, SNP Effects and GWAS: A Simulation Study. Genes 2026, 17, 670. https://doi.org/10.3390/genes17060670
Dutta G, Wilmot H, Schifano ED, Fragomeni B. Effect of Genetic Architecture and Partitioning of Training Population on GEBVs, SNP Effects and GWAS: A Simulation Study. Genes. 2026; 17(6):670. https://doi.org/10.3390/genes17060670
Chicago/Turabian StyleDutta, Gaurav, Hélène Wilmot, Elizabeth D. Schifano, and Breno Fragomeni. 2026. "Effect of Genetic Architecture and Partitioning of Training Population on GEBVs, SNP Effects and GWAS: A Simulation Study" Genes 17, no. 6: 670. https://doi.org/10.3390/genes17060670
APA StyleDutta, G., Wilmot, H., Schifano, E. D., & Fragomeni, B. (2026). Effect of Genetic Architecture and Partitioning of Training Population on GEBVs, SNP Effects and GWAS: A Simulation Study. Genes, 17(6), 670. https://doi.org/10.3390/genes17060670

