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整合系统生物学分析揭示奶牛乳腺炎潜在功能模块

Integrative Systems Biology Analysis Elucidates Mastitis Disease Underlying Functional Modules in Dairy Cattle.

作者信息

Ghahramani Nooshin, Shodja Jalil, Rafat Seyed Abbas, Panahi Bahman, Hasanpur Karim

机构信息

Department of Animal Science, Faculty of Agriculture, University of Tabriz, Tabriz, Iran.

Department of Genomics, Branch for Northwest & West Region, Agricultural Biotechnology Research Institute of Iran (ABRII), Agricultural Research, Education and Extension Organization (AREEO), Tabriz, Iran.

出版信息

Front Genet. 2021 Oct 8;12:712306. doi: 10.3389/fgene.2021.712306. eCollection 2021.

Abstract

Mastitis is the most prevalent disease in dairy cattle and one of the most significant bovine pathologies affecting milk production, animal health, and reproduction. In addition, mastitis is the most common, expensive, and contagious infection in the dairy industry. A meta-analysis of microarray and RNA-seq data was conducted to identify candidate genes and functional modules associated with mastitis disease. The results were then applied to systems biology analysis weighted gene coexpression network analysis (WGCNA), Gene Ontology, enrichment analysis for the Kyoto Encyclopedia of Genes and Genomes (KEGG), and modeling using machine-learning algorithms. Microarray and RNA-seq datasets were generated for 2,089 and 2,794 meta-genes, respectively. Between microarray and RNA-seq datasets, a total of 360 meta-genes were found that were significantly enriched as "peroxisome," "NOD-like receptor signaling pathway," "IL-17 signaling pathway," and "TNF signaling pathway" KEGG pathways. The turquoise module ( = 214 genes) and the brown module ( = 57 genes) were identified as critical functional modules associated with mastitis through WGCNA. , and genes were detected as hub genes in identified functional modules. Finally, using attribute weighting and machine-learning methods, hub genes that are sufficiently informative in mastitis were used to optimize predictive models. The constructed model proposed the optimal approach for the meta-genes and validated several high-ranked genes as biomarkers for mastitis using the decision tree (DT) method. The candidate genes and pathways proposed in this study may shed new light on the underlying molecular mechanisms of mastitis disease and suggest new approaches for diagnosing and treating mastitis in dairy cattle.

摘要

乳腺炎是奶牛中最普遍的疾病,也是影响产奶量、动物健康和繁殖的最重要的牛类病理之一。此外,乳腺炎是乳制品行业中最常见、最昂贵且具有传染性的感染疾病。进行了一项关于微阵列和RNA测序数据的荟萃分析,以识别与乳腺炎疾病相关的候选基因和功能模块。然后将结果应用于系统生物学分析——加权基因共表达网络分析(WGCNA)、基因本体论、京都基因与基因组百科全书(KEGG)富集分析以及使用机器学习算法进行建模。分别为2089个和2794个元基因生成了微阵列和RNA测序数据集。在微阵列和RNA测序数据集之间,共发现360个元基因在KEGG途径中显著富集为“过氧化物酶体”“NOD样受体信号通路”“IL-17信号通路”和“TNF信号通路”。通过WGCNA鉴定出绿松石模块(=214个基因)和棕色模块(=57个基因)是与乳腺炎相关的关键功能模块。在鉴定出的功能模块中检测到 、 和 基因作为枢纽基因。最后,使用属性加权和机器学习方法,在乳腺炎中具有足够信息的枢纽基因被用于优化预测模型。构建的模型提出了针对元基因的最佳方法,并使用决策树(DT)方法验证了几个排名靠前的基因作为乳腺炎的生物标志物。本研究中提出的候选基因和途径可能为乳腺炎疾病的潜在分子机制提供新的线索,并为奶牛乳腺炎的诊断和治疗提出新的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e7e3/8531812/a95edfe42a40/fgene-12-712306-g0001.jpg

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