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Supplemental Material for Baertschi et al., 2021

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DataCite Commons2021-09-02 更新2025-04-15 收录
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Figure S1. Density of SNP markers in the calibration set (334 S<sub>0</sub> plants) in the 12-chromosome. Figure S2. MAF distribution among the population of 334 S<sub>0</sub> plants.Figure S3. Linkage disequilibrium, measured as r<sup>2</sup> between all pairs of markers considered in a 50 variants window. Figure S4. Neighbor joining tree of Euclidean distance between the 334 S<sub>0</sub> plants Table S1. Genetic characterization of the population. A) Summary information on the distribution, MAF and heterozygosity of the 9 928 SNP loci. B) Observed heterozygosity (Ho) among the 334 genotypesTable S2. Average linkage disequilibrium (r2) between marker pairs according to chromosomes and the distance between markers, considering loci with MAF &gt;2.5%. Table S3. Summary of the cross-validation (CV) procedures used in the study. Table S4. Fixed effect and variance decomposition for 50 Temporal Checks randomly distributed across the design within each repetition, considering A) 50 S0:2 lines in the two sites in 2017 and 2018 trials and B) 50 S0:2 and 50 S0:3 lines in the two sites in the 2018 trialsTable S5. Average predictive ability for the SINSRO scenarios across all traits, years, GP methods and calibration set sizesTable S6. Average predictive ability for the SINSRO, BAL1 and BAL2 scenarios across all traits, years and calibration set sizes using GBLUPTable S7. Average predictive ability for the SINSRO and IMB scenarios across all traits, years and calibration set sizes using GBLUPTable S8. Average predictive ability for the BAL1, BAL2, IMB and IMB scenarios across all traits, years and calibration set sizes using RKHS DataSet file contains a ReadMe file as well as the genotype and phenotype information of the PCT27_TP334 population
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2021-09-02
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