关联权重矩阵确定了多品种种群中与公牛生育力特征相关的生物学途径

IF 1.8 3区 生物学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Animal genetics Pub Date : 2024-05-01 DOI:10.1111/age.13431
Wei Liang Andre Tan, Nicholas James Hudson, Laercio Ribeiro Porto Neto, Antonio Reverter, Juliana Afonso, Marina Rufino Salinas Fortes
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引用次数: 0

摘要

我们利用七个指标性状研究了公牛繁殖力的遗传基础,并通过 SNP 关联预测了基因间的相互作用。我们将正常精子百分比作为关联权重矩阵-部分相关信息论(AWM-PCIT)方法的关键表型。除了简单的候选基因列表外,AWM-PCIT 还能预测所选性状的重要基因相互作用和关联。这些相互作用形成了一个由 537 个基因组成的网络:38 个基因是转录辅因子,41 个基因是转录因子。该网络显示了两个不同的集群,一个集群有 294 个基因,另一个集群有 243 个基因。该网络富集于生育相关途径:类固醇生物合成、p53 信号传导和磷酸戊糖途径。富集分析还突出了与 "神经递质分泌调控 "和 "染色质形成 "相关的基因本体术语。我们的网络重现了之前在另一个用低密度基因型构建的网络中涉及的一些基因。序列级数据还突显了与公牛繁殖力相关的其他候选基因,如 FOXO4、FOXP3、GATA1、CYP27B1 和 EBP。三组调控基因--KDM5C、LRRK2 和 PME--因其总体联系而被认为是网络的核心。这三个基因可能通过与已知和未知的基因相互作用,影响公牛的生育能力。未来的研究可能会以这三组基因及其靶基因为目标,进一步丰富我们对雄性繁殖力的了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An association weight matrix identified biological pathways associated with bull fertility traits in a multi-breed population

An association weight matrix identified biological pathways associated with bull fertility traits in a multi-breed population

Using seven indicator traits, we investigated the genetic basis of bull fertility and predicted gene interactions from SNP associations. We used percent normal sperm as the key phenotype for the association weight matrix–partial correlation information theory (AWM-PCIT) approach. Beyond a simple list of candidate genes, AWM-PCIT predicts significant gene interactions and associations for the selected traits. These interactions formed a network of 537 genes: 38 genes were transcription cofactors, and 41 genes were transcription factors. The network displayed two distinct clusters, one with 294 genes and another with 243 genes. The network is enriched in fertility-associated pathways: steroid biosynthesis, p53 signalling, and the pentose phosphate pathway. Enrichment analysis also highlighted gene ontology terms associated with ‘regulation of neurotransmitter secretion’ and ‘chromatin formation’. Our network recapitulates some genes previously implicated in another network built with lower-density genotypes. Sequence-level data also highlights additional candidate genes relevant to bull fertility, such as FOXO4, FOXP3, GATA1, CYP27B1, and EBP. A trio of regulatory genes—KDM5C, LRRK2, and PME—was deemed core to the network because of their overarching connections. This trio probably influences bull fertility through their interaction with genes, both known and unknown as to their role in male fertility. Future studies may target the trio and their target genes to enrich our understanding of male fertility further.

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来源期刊
Animal genetics
Animal genetics 生物-奶制品与动物科学
CiteScore
4.60
自引率
4.20%
发文量
115
审稿时长
5 months
期刊介绍: Animal Genetics reports frontline research on immunogenetics, molecular genetics and functional genomics of economically important and domesticated animals. Publications include the study of variability at gene and protein levels, mapping of genes, traits and QTLs, associations between genes and traits, genetic diversity, and characterization of gene or protein expression and control related to phenotypic or genetic variation. The journal publishes full-length articles, short communications and brief notes, as well as commissioned and submitted mini-reviews on issues of interest to Animal Genetics readers.
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