生物
软件
基因组选择
大数据
植物科学
计算生物学
数据科学
生物技术
遗传学
计算机科学
植物
数据挖掘
基因
基因型
单核苷酸多态性
程序设计语言
作者
José Crossa,Johannes W. R. Martini,Paolo Vitale,Paulino Pérez‐Rodríguez,Germano Costa‐Neto,Roberto Fritsche‐Neto,Daniel E. Runcie,Jaime Cuevas,Fernando Toledo,Hongyan Li,Pasquale De Vita,Guillermo Gerard,Susanne Dreisigacker,Leonardo Crespo‐Herrera,Carolina Saint Pierre,Alison R. Bentley,Morten Lillemo,Rodomiro Ortíz,Osval A. Montesinos-López,Abelardo Montesinos-López
标识
DOI:10.1016/j.tplants.2024.12.009
摘要
With growing evidence that genomic selection (GS) improves genetic gains in plant breeding, it is timely to review the key factors that improve its efficiency. In this feature review, we focus on the statistical machine learning (ML) methods and software that are democratizing GS methodology. We outline the principles of genomic-enabled prediction and discuss how statistical ML tools enhance GS efficiency with big data. Additionally, we examine various statistical ML tools developed in recent years for predicting traits across continuous, binary, categorical, and count phenotypes. We highlight the unique advantages of deep learning (DL) models used in genomic prediction (GP). Finally, we review software developed to democratize the use of GP models and recent data management tools that support the adoption of GS methodology.
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