TY - JA AU - Montesinos-Lopez,O.A. AU - Montesinos-Lopez,A. AU - Mosqueda-Gonzalez,B.A. AU - Delgado-Enciso,I. AU - Chavira-Flores,M. AU - Crossa,J. AU - Dreisigacker,S. AU - Jin Sun AU - Ortiz,R. TI - Genomic prediction powered by multi-omics data SN - 1664-8021 PY - 2025/// CY - Switzerland PB - Frontiers Media, KW - Marker-assisted selection KW - AGROVOC KW - Plant breeding KW - Genotype environment interaction KW - Models KW - Rice KW - Maize N1 - Peer review; Open Access N2 - Genomic selection (GS) has transformed plant breeding by enabling early and accurate prediction of complex traits. However, its predictive performance is often constrained by the limited information captured through genomic markers alone, especially for traits influenced by intricate biological pathways. To address this, the integration of complementary omics layers—such as transcriptomics and metabolomics—has emerged as a promising strategy to enhance prediction accuracy by providing a more comprehensive view of the molecular mechanisms underlying phenotypic variation. We used three datasets, each collected under a single-environment condition, which allowed us to isolate the effects of omics integration without the confounding influence of genotype-by-environment interaction. We assessed 24 integration strategies combining three omics layers: genomics, transcriptomics, and metabolomics. These strategies encompassed both early data fusion (concatenation) and model-based integration techniques capable of capturing non-additive, nonlinear, and hierarchical interactions across omics layers. The evaluation was conducted using three real-world datasets from maize and rice, which varied in population size, trait complexity, and omics dimensionality. Our results indicate that specific integration methods—particularly those leveraging model-based fusion—consistently improve predictive accuracy over genomic-only models, especially for complex traits. Conversely, several commonly used concatenation approaches did not yield consistent benefits and, in some cases, underperformed. These findings underscore the importance of selecting appropriate integration strategies and suggest that more sophisticated modeling frameworks are necessary to fully exploit the potential of multi-omics data. Overall, this work highlights both the value and limitations of multi-omics integration for genomic prediction and offers practical insights into the design of omics-informed selection strategies for accelerating genetic gain in plant breeding programs UR - https://hdl.handle.net/10883/36103 DO - https://doi.org/10.3389/fgene.2025.1636438 T2 - Frontiers in Genetics ER -