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Autori principali: Deng, Pengcheng, Liu, Kening, Zhou, Mengxi, Li, Mingxi, Yang, Rui, Cao, Chuzhe, Wang, Maojun, Zhang, Zeyu
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.08662
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author Deng, Pengcheng
Liu, Kening
Zhou, Mengxi
Li, Mingxi
Yang, Rui
Cao, Chuzhe
Wang, Maojun
Zhang, Zeyu
author_facet Deng, Pengcheng
Liu, Kening
Zhou, Mengxi
Li, Mingxi
Yang, Rui
Cao, Chuzhe
Wang, Maojun
Zhang, Zeyu
contents Genomic Selection (GS) uses whole-genome information to predict crop phenotypes and accelerate breeding. Traditional GS methods, however, struggle with prediction accuracy for complex traits and large datasets. We propose DPCformer, a deep learning model integrating convolutional neural networks with a self-attention mechanism to model complex genotype-phenotype relationships. We applied DPCformer to 13 traits across five crops (maize, cotton, tomato, rice, chickpea). Our approach uses an 8-dimensional one-hot encoding for SNP data, ordered by chromosome, and employs the PMF algorithm for feature selection. Evaluations show DPCformer outperforms existing methods. In maize datasets, accuracy for traits like days to tasseling and plant height improved by up to 2.92%. For cotton, accuracy gains for fiber traits reached 8.37%. On small-sample tomato data, the Pearson Correlation Coefficient for a key trait increased by up to 57.35%. In chickpea, the yield correlation was boosted by 16.62%. DPCformer demonstrates superior accuracy, robustness in small-sample scenarios, and enhanced interpretability, providing a powerful tool for precision breeding and addressing global food security challenges.
format Preprint
id arxiv_https___arxiv_org_abs_2510_08662
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DPCformer: An Interpretable Deep Learning Model for Genomic Prediction in Crops
Deng, Pengcheng
Liu, Kening
Zhou, Mengxi
Li, Mingxi
Yang, Rui
Cao, Chuzhe
Wang, Maojun
Zhang, Zeyu
Machine Learning
Artificial Intelligence
Genomic Selection (GS) uses whole-genome information to predict crop phenotypes and accelerate breeding. Traditional GS methods, however, struggle with prediction accuracy for complex traits and large datasets. We propose DPCformer, a deep learning model integrating convolutional neural networks with a self-attention mechanism to model complex genotype-phenotype relationships. We applied DPCformer to 13 traits across five crops (maize, cotton, tomato, rice, chickpea). Our approach uses an 8-dimensional one-hot encoding for SNP data, ordered by chromosome, and employs the PMF algorithm for feature selection. Evaluations show DPCformer outperforms existing methods. In maize datasets, accuracy for traits like days to tasseling and plant height improved by up to 2.92%. For cotton, accuracy gains for fiber traits reached 8.37%. On small-sample tomato data, the Pearson Correlation Coefficient for a key trait increased by up to 57.35%. In chickpea, the yield correlation was boosted by 16.62%. DPCformer demonstrates superior accuracy, robustness in small-sample scenarios, and enhanced interpretability, providing a powerful tool for precision breeding and addressing global food security challenges.
title DPCformer: An Interpretable Deep Learning Model for Genomic Prediction in Crops
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2510.08662