Genomic prediction using composite training sets is an effective method for exploiting germplasm conserved in rice gene banks

The Crop Journal - Tập 10 - Trang 1073-1082 - 2022
Sang He1, Hongyan Liu2, Junhui Zhan1, Yun Meng1, Yamei Wang1, Feng Wang3, Guoyou Ye1,4
1CAAS-IRRI Joint Laboratory for Genomics-Assisted Germplasm Enhancement, Agricultural Genomics Institute in Shenzhen, Chinese Academy of Agricultural Sciences, Shenzhen 518120, Guangdong, China
2Hainan Key Laboratory for Sustainable Utilization of Tropical Bioresource, College of Tropical Crops, Hainan University, Haikou, 570228, Hainan, China
3Guangdong Provincial Key Laboratory of New Technology in Rice Breeding, Rice Research Institute, Guangdong Academy of Agricultural Sciences, Guangzhou 510640, Guangdong, China
4Rice Breeding Innovations Platform, International Rice Research Institute, DAPO Box 7777, Metro Manila, Philippines

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