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首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >Host Genome Influence on Gut Microbial Composition and Microbial Prediction of Complex Traits in Pigs
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Host Genome Influence on Gut Microbial Composition and Microbial Prediction of Complex Traits in Pigs

机译:宿主基因组对肠道肠道微生物组成及复杂性状微生物预测的影响

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The aim of the present study was to analyze the interplay between gastrointestinal tract (GIT) microbiota, host genetics, and complex traits in pigs using extended quantitative-genetic methods. The study design consisted of 207 pigs that were housed and slaughtered under standardized conditions, and phenotyped for daily gain, feed intake, and feed conversion rate. The pigs were genotyped with a standard 60?K SNP chip. The GIT microbiota composition was analyzed by 16S rRNA gene amplicon sequencing technology. Eight from 49 investigated bacteria genera showed a significant narrow sense host heritability, ranging from 0.32 to 0.57. Microbial mixed linear models were applied to estimate the microbiota variance for each complex trait. The fraction of phenotypic variance explained by the microbial variance was 0.28, 0.21, and 0.16 for daily gain, feed conversion, and feed intake, respectively. The SNP data and the microbiota composition were used to predict the complex traits using genomic best linear unbiased prediction (G-BLUP) and microbial best linear unbiased prediction (M-BLUP) methods, respectively. The prediction accuracies of G-BLUP were 0.35, 0.23, and 0.20 for daily gain, feed conversion, and feed intake, respectively. The corresponding prediction accuracies of M-BLUP were 0.41, 0.33, and 0.33. Thus, in addition to SNP data, microbiota abundances are an informative source of complex trait predictions. Since the pig is a well-suited animal for modeling the human digestive tract, M-BLUP, in addition to G-BLUP, might be beneficial for predicting human predispositions to some diseases, and, consequently, for preventative and personalized medicine.
机译:本研究的目的是使用扩展的定量遗传方法分析猪胃肠道(GIT)微生物群,宿主遗传学和复杂性状之间的相互作用。该研究设计由207头猪组成,它们在标准条件下圈养和屠宰,并根据表型进行日增重,采食量和饲料转化率的表型。用标准60?K SNP芯片对猪进行基因分型。通过16S rRNA基因扩增子测序技术分析了GIT微生物群的组成。在研究的49个细菌属中,有8个显示出显着的狭义宿主遗传性,范围从0.32至0.57。应用微生物混合线性模型估算每种复杂性状的微生物群差异。对于每日增重,饲料转化率和饲料摄入量,由微生物差异解释的表型差异分数分别为0.28、0.21和0.16。 SNP数据和微生物群组成分别使用基因组最佳线性无偏预测(G-BLUP)和微生物最佳线性无偏预测(M-BLUP)方法来预测复杂性状。 G-BLUP的日增重,饲料转化率和饲料摄入量的预测准确度分别为0.35、0.23和0.20。 M-BLUP的相应预测精度为0.41、0.33和0.33。因此,除了SNP数据外,微生物群的丰度也是复杂性状预测的信息来源。由于猪是用于模拟人体消化道的合适动物,因此除了G-BLUP之外,M-BLUP可能对预测人类对某些疾病的易感性以及因此的预防和个性化医学也有利。

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