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G2PDeep: a web-based deep-learning framework for quantitative phenotype prediction and discovery of genomic markers

机译:G2PDEEP:一种基于网络的深度学习框架用于定量表型预测和基因组标记的发现

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摘要

G2PDeep is an open-access web server, which provides a deep-learning framework for quantitative phenotype prediction and discovery of genomics markers. It uses zygosity or single nucleotide polymorphism (SNP) information from plants and animals as the input to predict quantitative phenotype of interest and genomic markers associated with phenotype. It provides a one-stop-shop platform for researchers to create deep-learning models through an interactive web interface and train these models with uploaded data, using high-performance computing resources plugged at the backend. G2PDeep also provides a series of informative interfaces to monitor the training process and compare the performance among the trained models. The trained models can then be deployed automatically. The quantitative phenotype and genomic markers are predicted using a user-selected trained model and the results are visualized. Our state-of-the-art model has been benchmarked and demonstrated competitive performance in quantitative phenotype predictions by other researchers. In addition, the server integrates the soybean nested association mapping (SoyNAM) dataset with five phenotypes, including grain yield, height, moisture, oil, and protein. A publicly available dataset for seed protein and oil content has also been integrated into the server. The G2PDeep server is publicly available at http://g2pdeep.org. The Python-based deep-learning model is available at https://github.com/shuaizengMU/G2PDeep_model.
机译:G2PDeep是一个开放式访问Web服务器,为定量表型预测和基因组标记的发现提供了深度学习框架。它使用来自植物和动物的Zygosity或单一核苷酸多态性(SNP)信息作为预测与表型相关的感兴趣的定量表型和基因组标志物的输入。它为研究人员提供了一站式商店平台,通过交互式Web界面创建深度学习模型,并使用在后端插入的高性能计算资源,使用上传的数据训练这些模型。 G2PDeep还提供了一系列信息界面来监控培训过程,并比较培训型号之间的性能。然后可以自动部署训练有素的模型。使用用户选择的训练模型预测定量表型和基因组标记,并且结果被可视化。我们最先进的模式已经基准测试,并以其他研究人员的定量表型预测表现出竞争性能。此外,服务器整合了大豆嵌套关联映射(Soynam)数据集,其中包含五种表型,包括谷物产量,高度,水分,油和蛋白质。用于种子蛋白和油含量的公共数据集也已集成到服务器中。 G2PDEEP服务器在http://g2pdeep.org上公开提供。基于Python的深度学习模型可在https://github.com/shuaizengmu/g2pdeep_model上获得。

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