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使用非靶向液相色谱-质谱代谢组学方法鉴定猪粪便中生物标志物与饲料效率的关联。

Using nontargeted LC-MS metabolomics to identify the Association of Biomarkers in pig feces with feed efficiency.

作者信息

Wu Jie, Ye Yong, Quan Jianping, Ding Rongrong, Wang Xingwang, Zhuang Zhanwei, Zhou Shenping, Geng Qian, Xu Cineng, Hong Linjun, Xu Zheng, Zheng Enqin, Cai Gengyuan, Wu Zhenfang, Yang Jie

机构信息

College of Animal Science and National Engineering Research Center for Breeding Swine Industry, South China Agricultural University, Guangzhou, 510642, China.

Guangdong Provincial Laboratory of Lingnan Modern Agricultural Science and Technology, Guangzhou, 510642, China.

出版信息

Porcine Health Manag. 2021 Jun 2;7(1):39. doi: 10.1186/s40813-021-00219-w.

Abstract

BACKGROUND

Improving feed efficiency is economically and environmentally beneficial in the pig industry. A deeper understanding of feed efficiency is essential on many levels for its highly complex nature. The aim of this project is to explore the relationship between fecal metabolites and feed efficiency-related traits, thereby identifying metabolites that may assist in the screening of the feed efficiency of pigs.

RESULTS

We performed fecal metabolomics analysis on 50 individuals selected from 225 Duroc x (Landrace x Yorkshire) (DLY) commercial pigs, 25 with an extremely high feed efficiency and 25 with an extremely low feed efficiency. A total of 6749 and 5644 m/z features were detected in positive and negative ionization modes by liquid chromatography-mass spectrometry (LC/MS). Regrettably, the PCA could not classify the the samples accurately. To improve the classification, OPLS-DA was introduced. However, the predictive ability of the OPLS-DA model did not perform well. Then, through weighted coexpression network analysis (WGCNA), we found that one module in each positive and negative mode was related to residual feed intake (RFI), and six and three metabolites were further identified. The nine metabolites were found to be involved in multiple metabolic pathways, including lipid metabolism (primary bile acid synthesis, linoleic acid metabolism), vitamin D, glucose metabolism, and others. Then, Lasso regression analysis was used to evaluate the importance of nine metabolites obtained by the annotation process.

CONCLUSIONS

Altogether, this study provides new insights for the subsequent evaluation of commercial pig feed efficiency through small molecule metabolites, but also provide a reference for the development of new feed additives.

摘要

背景

提高饲料效率在养猪业中具有经济和环境效益。由于饲料效率具有高度复杂的性质,因此在多个层面深入了解饲料效率至关重要。本项目的目的是探索粪便代谢物与饲料效率相关性状之间的关系,从而识别可能有助于筛选猪饲料效率的代谢物。

结果

我们对从225头杜洛克×(长白×大白)(DLY)商品猪中选出的50头猪进行了粪便代谢组学分析,其中25头饲料效率极高,25头饲料效率极低。通过液相色谱 - 质谱联用(LC/MS)在正离子和负离子模式下分别检测到6749和5644个m/z特征峰。遗憾的是,主成分分析(PCA)无法准确对样本进行分类。为了改进分类,引入了正交偏最小二乘法判别分析(OPLS-DA)。然而,OPLS-DA模型的预测能力表现不佳。然后,通过加权基因共表达网络分析(WGCNA),我们发现在正、负离子模式下各有一个模块与剩余采食量(RFI)相关,并进一步鉴定出6种和3种代谢物。发现这9种代谢物参与多种代谢途径,包括脂质代谢(初级胆汁酸合成、亚油酸代谢)、维生素D、葡萄糖代谢等。然后,使用套索回归分析来评估注释过程中获得的9种代谢物的重要性。

结论

总之,本研究为后续通过小分子代谢物评估商品猪饲料效率提供了新的见解,也为新型饲料添加剂的开发提供了参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/08c7/8170940/0948de2ff2a8/40813_2021_219_Fig1_HTML.jpg

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