PNNGS, a multi-convolutional parallel neural network for genomic selection

Genomic selection (GS) can accomplish breeding faster than phenotypic selection. Improving prediction accuracy is the key to promoting GS. To improve the GS prediction accuracy and stability, we introduce parallel convolution to deep learning for GS and call it a parallel neural network for genomic...

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Published inFrontiers in plant science Vol. 15; p. 1410596
Main Authors Xie, Zhengchao, Weng, Lin, He, Jingjing, Feng, Xianzhong, Xu, Xiaogang, Ma, Yinxing, Bai, Panpan, Kong, Qihui
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 03.09.2024
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Summary:Genomic selection (GS) can accomplish breeding faster than phenotypic selection. Improving prediction accuracy is the key to promoting GS. To improve the GS prediction accuracy and stability, we introduce parallel convolution to deep learning for GS and call it a parallel neural network for genomic selection (PNNGS). In PNNGS, information passes through convolutions of different kernel sizes in parallel. The convolutions in each branch are connected with residuals. Four different L loss functions train PNNGS. Through experiments, the optimal number of parallel paths for rice, sunflower, wheat, and maize is found to be 4, 6, 4, and 3, respectively. Phenotype prediction is performed on 24 cases through ridge-regression best linear unbiased prediction (RRBLUP), random forests (RF), support vector regression (SVR), deep neural network genomic prediction (DNNGP), and PNNGS. Serial DNNGP and parallel PNNGS outperform the other three algorithms. On average, PNNGS prediction accuracy is 0.031 larger than DNNGP prediction accuracy, indicating that parallelism can improve the GS model. Plants are divided into clusters through principal component analysis (PCA) and K-means clustering algorithms. The sample sizes of different clusters vary greatly, indicating that this is unbalanced data. Through stratified sampling, the prediction stability and accuracy of PNNGS are improved. When the training samples are reduced in small clusters, the prediction accuracy of PNNGS decreases significantly. Increasing the sample size of small clusters is critical to improving the prediction accuracy of GS.
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Chuang Ma, Northwest A&F University, China
Reviewed by: Jun Yan, China Agricultural University, China
Edited by: Andrés J. Cortés, Colombian Corporation for Agricultural Research (AGROSAVIA), Colombia
ISSN:1664-462X
1664-462X
DOI:10.3389/fpls.2024.1410596