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DNNGP, a deep neural network-based method for genomic prediction using multi-omics data in plants.

Authors :
Wang, Kelin
Abid, Muhammad Ali
Rasheed, Awais
Crossa, Jose
Hearne, Sarah
Li, Huihui
Source :
Molecular Plant (Cell Press); Jan2023, Vol. 16 Issue 1, p279-293, 15p
Publication Year :
2023

Abstract

Genomic prediction is an effective way to accelerate the rate of agronomic trait improvement in plants. Traditional methods typically use linear regression models with clear assumptions; such methods are unable to capture the complex relationships between genotypes and phenotypes. Non-linear models (e.g., deep neural networks) have been proposed as a superior alternative to linear models because they can capture complex non-additive effects. Here we introduce a deep learning (DL) method, deep neural network genomic prediction (DNNGP), for integration of multi-omics data in plants. We trained DNNGP on four datasets and compared its performance with methods built with five classic models: genomic best linear unbiased prediction (GBLUP); two methods based on a machine learning (ML) framework, light gradient boosting machine (LightGBM) and support vector regression (SVR); and two methods based on a DL framework, deep learning genomic selection (DeepGS) and deep learning genome-wide association study (DLGWAS). DNNGP is novel in five ways. First, it can be applied to a variety of omics data to predict phenotypes. Second, the multilayered hierarchical structure of DNNGP dynamically learns features from raw data, avoiding overfitting and improving the convergence rate using a batch normalization layer and early stopping and rectified linear activation (rectified linear unit) functions. Third, when small datasets were used, DNNGP produced results that are competitive with results from the other five methods, showing greater prediction accuracy than the other methods when large-scale breeding data were used. Fourth, the computation time required by DNNGP was comparable with that of commonly used methods, up to 10 times faster than DeepGS. Fifth, hyperparameters can easily be batch tuned on a local machine. Compared with GBLUP, LightGBM, SVR, DeepGS and DLGWAS, DNNGP is superior to these existing widely used genomic selection (GS) methods. Moreover, DNNGP can generate robust assessments from diverse datasets, including omics data, and quickly incorporate complex and large datasets into usable models, making it a promising and practical approach for straightforward integration into existing GS platforms. The application of deep learning to plant breeding is an active area of research. This work reports a new method, DNNGP, for prediction of quantitative traits from multi-omics data in the context of genomic selection in plants. DNNGP performs as well as or better than several commonly used methods in a broad range of tasks. The insights gained through the development, testing, and application of DNNGP can benefit genomics applications of deep learning in the future. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
16742052
Volume :
16
Issue :
1
Database :
Complementary Index
Journal :
Molecular Plant (Cell Press)
Publication Type :
Academic Journal
Accession number :
161080837
Full Text :
https://doi.org/10.1016/j.molp.2022.11.004