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1.
Genet Sel Evol ; 55(1): 78, 2023 Nov 09.
Article in English | MEDLINE | ID: mdl-37946104

ABSTRACT

BACKGROUND: The ever-increasing availability of high-density genomic markers in the form of single nucleotide polymorphisms (SNPs) enables genomic prediction, i.e. the inference of phenotypes based solely on genomic data, in the field of animal and plant breeding, where it has become an important tool. However, given the limited number of individuals, the abundance of variables (SNPs) can reduce the accuracy of prediction models due to overfitting or irrelevant SNPs. Feature selection can help to reduce the number of irrelevant SNPs and increase the model performance. In this study, we investigated an incremental feature selection approach based on ranking the SNPs according to the results of a genome-wide association study that we combined with random forest as a prediction model, and we applied it on several animal and plant datasets. RESULTS: Applying our approach to different datasets yielded a wide range of outcomes, i.e. from a substantial increase in prediction accuracy in a few cases to minor improvements when only a fraction of the available SNPs were used. Compared with models using all available SNPs, our approach was able to achieve comparable performances with a considerably reduced number of SNPs in several cases. Our approach showcased state-of-the-art efficiency and performance while having a faster computation time. CONCLUSIONS: The results of our study suggest that our incremental feature selection approach has the potential to improve prediction accuracy substantially. However, this gain seems to depend on the genomic data used. Even for datasets where the number of markers is smaller than the number of individuals, feature selection may still increase the performance of the genomic prediction. Our approach is implemented in R and is available at https://github.com/FelixHeinrich/GP_with_IFS/ .


Subject(s)
Genome-Wide Association Study , Models, Genetic , Humans , Animals , Genome-Wide Association Study/methods , Genome , Genomics/methods , Phenotype
2.
Int J Mol Sci ; 22(2)2021 Jan 14.
Article in English | MEDLINE | ID: mdl-33466789

ABSTRACT

Regulatory SNPs (rSNPs) are a special class of SNPs which have a high potential to affect the phenotype due to their impact on DNA-binding of transcription factors (TFs). Thus, the knowledge about such rSNPs and TFs could provide essential information regarding different genetic programs, such as tissue development or environmental stress responses. In this study, we use a multi-omics approach by combining genomics, transcriptomics, and proteomics data of two different Brassica napus L. cultivars, namely Zhongshuang11 (ZS11) and Zhongyou821 (ZY821), with high and low oil content, respectively, to monitor the regulatory interplay between rSNPs, TFs and their corresponding genes in the tissues flower, leaf, stem, and root. By predicting the effect of rSNPs on TF-binding and by measuring their association with the cultivars, we identified a total of 41,117 rSNPs, of which 1141 are significantly associated with oil content. We revealed several enriched members of the TF families DOF, MYB, NAC, or TCP, which are important for directing transcriptional programs regulating differential expression of genes within the tissues. In this work, we provide the first genome-wide collection of rSNPs for B. napus and their impact on the regulation of gene expression in vegetative and floral tissues, which will be highly valuable for future studies on rSNPs and gene regulation.


Subject(s)
Brassica napus/genetics , Computer Simulation , Gene Expression Regulation, Plant , Plant Proteins/genetics , Polymorphism, Single Nucleotide , Transcription Factors/genetics , Algorithms , Brassica napus/classification , Brassica napus/metabolism , Computational Biology/methods , Flowers/genetics , Flowers/metabolism , Gene Expression Profiling/methods , Genomics/methods , Plant Leaves/genetics , Plant Leaves/metabolism , Plant Proteins/metabolism , Plant Roots/genetics , Plant Roots/metabolism , Plant Stems/genetics , Plant Stems/metabolism , Proteomics/methods , Species Specificity , Transcription Factors/metabolism
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