水生动物基因组选择的深度学习。

IF 5.8 2区 生物学 Q1 MARINE & FRESHWATER BIOLOGY Marine Life Science & Technology Pub Date : 2024-09-27 eCollection Date: 2024-11-01 DOI:10.1007/s42995-024-00252-y
Yangfan Wang, Ping Ni, Marc Sturrock, Qifan Zeng, Bo Wang, Zhenmin Bao, Jingjie Hu
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引用次数: 0

摘要

近年来,基因组选择技术在水生动物育种中的应用受到了广泛的关注,因为它比基于家系的方法具有更高的准确性和更快的遗传进展。GS复杂性状的遗传分析并没有逃脱当前对人工智能的兴奋,包括对深度学习(DL)的重新兴趣,如深度神经网络(dnn)、卷积神经网络(cnn)和自动编码器。本文综述了DL在GS表型分型、基因分型和基因组估计育种价值(GEBV)预测中的应用现状和潜力。从这篇文章可以看出,cnn可以高效的获取水生动物的表型数据,并且没有伤害;dnn作为单核苷酸多态性(SNP)变异呼叫者在下一代测序(NGS)的基因分型评估中表现出更高的准确性至关重要;基于自编码器的基因型归算方法通过在易于移植的推理模型中编码复杂的基因型关系,能够实现高精度的基因型归算;稀疏dnn捕获了基因间的非线性关系,提高了水生动物GEBV预测的准确性。并对DL在水产养殖中的应用前景进行了展望。我们相信,未来DL将越来越多地应用于水生动物的分子育种。补充资料:在线版本包含补充资料,网址为10.1007/s42995-024-00252-y。
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Deep learning for genomic selection of aquatic animals.

Genomic selection (GS) applied to the breeding of aquatic animals has been of great interest in recent years due to its higher accuracy and faster genetic progress than pedigree-based methods. The genetic analysis of complex traits in GS does not escape the current excitement around artificial intelligence, including a renewed interest in deep learning (DL), such as deep neural networks (DNNs), convolutional neural networks (CNNs), and autoencoders. This article reviews the current status and potential of DL applications in phenotyping, genotyping and genomic estimated breeding value (GEBV) prediction of GS. It can be seen from this article that CNNs obtain phenotype data of aquatic animals efficiently, and without injury; DNNs as single nucleotide polymorphism (SNP) variant callers are critical to have shown higher accuracy in assessments of genotyping for the next-generation sequencing (NGS); autoencoder-based genotype imputation approaches are capable of highly accurate genotype imputation by encoding complex genotype relationships in easily portable inference models; sparse DNNs capture nonlinear relationships among genes to improve the accuracy of GEBV prediction for aquatic animals. Furthermore, future directions of DL in aquaculture are also discussed, which should expand the application to more aquaculture species. We believe that DL will be applied increasingly to molecular breeding of aquatic animals in the future.

Supplementary information: The online version contains supplementary material available at 10.1007/s42995-024-00252-y.

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来源期刊
Marine Life Science & Technology
Marine Life Science & Technology MARINE & FRESHWATER BIOLOGY-
CiteScore
9.60
自引率
10.50%
发文量
58
期刊介绍: Marine Life Science & Technology (MLST), established in 2019, is dedicated to publishing original research papers that unveil new discoveries and theories spanning a wide spectrum of life sciences and technologies. This includes fundamental biology, fisheries science and technology, medicinal bioresources, food science, biotechnology, ecology, and environmental biology, with a particular focus on marine habitats. The journal is committed to nurturing synergistic interactions among these diverse disciplines, striving to advance multidisciplinary approaches within the scientific field. It caters to a readership comprising biological scientists, aquaculture researchers, marine technologists, biological oceanographers, and ecologists.
期刊最新文献
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