TY - JOUR AU - Bidabadi, Siamak Shirani AU - Sharifi, Parisa AU - Jain, S. Mohan PY - 2021 DA - 2021/09/15 TI - Plant Breeding Integrated with Genomic-Enabled Prediction JO - OBM Genetics SP - 137 VL - 05 IS - 03 AB - Plant breeding programs have used conventional breeding methods, such as hybridization, induced mutations, and other methods to manipulate the plant genome within the species' natural genetic boundaries to improve crop varieties. However, repeatedly using conventional breeding methods might lead to the erosion of the gene reservoir, thereby rendering crops vulnerable to environmental stresses and hampering future progress in crop production, food and nutritional security, and socio-economic benefits. Integrating innovative technologies in breeding programs to accelerate gene flow is critical for sustaining global plant production. Genomic prediction is a promising tool to assist the rapid selection of premiere genotypes and accelerate breeding gains for climate-resilient plant varieties. This review surveys the annals and principles of genomic-enabled prediction. Based on the problem that is investigated through the prediction, as well as several other factors, such as trait heritability, the relationship between the individuals to be predicted and those used to train the models for prediction, the number of markers, sample size, and the interaction between genotype and environment, different levels of accuracy have been reported. Genomic prediction might play a decisive role and facilitate gene flow from gene bank accessions to elite lines in future breeding programs. SN - 2577-5790 UR - https://doi.org/10.21926/obm.genet.2103137 DO - 10.21926/obm.genet.2103137 ID - Bidabadi2021 ER -