Section 01
GAP: Introduction to the Graph Neural Network-based Genotype-Environment Interaction Phenotype Prediction Model
GAP (Genotype-Environment Graph Attention Prediction) is a genotype-environment interaction (G×E) phenotype prediction model based on graph neural networks (GNNs). It integrates genotype maps and environmental features to provide an efficient computational tool for predicting complex traits such as crop yield. This model addresses the limitations of traditional statistical methods in handling G×E interactions. By modeling genomic linkage disequilibrium (LD) relationships using graph structures and combining attention mechanisms to enable end-to-end learning, it features strong interpretability and good generalization ability, making it suitable for scenarios like crop breeding and environmental adaptability research.