Causal estimation of the relationship between reproductive performance and the fecal bacteriome in cattle.

IF 4.9 Q1 MICROBIOLOGY
Yutaka Taguchi, Haruki Yamano, Yudai Inabu, Hirokuni Miyamoto, Koki Hayasaki, Noriyuki Maeda, Yoshiro Kanmera, Seiji Yamasaki, Noboru Ota, Kenji Mukawa, Atsushi Kurotani, Shigeharu Moriya, Teruno Nakaguma, Chitose Ishii, Makiko Matsuura, Tetsuji Etoh, Yuji Shiotsuka, Ryoichi Fujino, Motoaki Udagawa, Satoshi Wada, Jun Kikuchi, Hiroshi Ohno, Hideyuki Takahashi
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引用次数: 0

Abstract

Background: The gut bacteriome influences host metabolic and physiological functions. However, its relationship with reproductive performance remains unclear. In this study, we evaluated the relationship between the gut bacteriome and reproductive performance in beef cattle, such as Japanese black heifers. Artificial insemination (AI) was performed after 300 days of age, and the number of AI required for pregnancy (AI number) was evaluated. The relationship of the fecal bacteriome at 150 and 300 days of age and reproductive performance was visualized using statistical structural equation modelling between traits based on four types of machine-learning algorithms (linear discriminant analysis, association analysis, random forest, and XGBoost).

Results: The heifers were classified into superior (1.04 ± 0.04 cycles, n = 26) and inferior groups (3.87 ± 0.27 cycles, n = 23) according to the median frequency of AI. The fecal bacteria of the two groups were examined and compared using differential analysis, which demonstrated that the genera Rikenellaceae RC9 gut group and Christensenellaceae R-7 group were increased in the superior group. Subsequently, correlation analysis evaluated the interrelationships between bacteriomes, which demonstrated that the patterns exhibited distinct characteristics. Therefore, four machine-learning algorithms were employed to identify the distinctive factors between the two groups. The directed acyclic graphs carried out by DirectLiNGAM based on these extracted factors inferred that the family Erysipelotrichaceae and the genera Clostridium sensu stricto 1 and Family XIII AD3011 group at 150 days of age were strongly associated with an increase in AI number. Furthermore, a pathway involved in creatinine degradation (PWY-4722) at 150 days of age was related to an increase in AI number. However, bacteriomes and/or pathways at 300 days of age were not necessarily related to AI number.

Conclusions: In this study, a causal inference methodology was applied to investigate AI-dependent gut bacterial communities in pregnant cattle. These findings suggest that AI numbers, which are crucial for beef cattle production management, could be inferred from the fecal bacterial patterns nearly six months before the AI, rather than immediately before. This study provides a novel perspective of the gut environment and its role in reproductive performance.

牛繁殖性能与粪便菌群关系的因果估计。
背景:肠道菌群影响宿主代谢和生理功能。然而,它与生殖性能的关系尚不清楚。在这项研究中,我们评估了肠道细菌群与肉牛繁殖性能之间的关系,如日本黑母牛。300日龄后进行人工授精(AI),评估妊娠所需人工授精数(AI number)。采用基于4种机器学习算法(线性判别分析、关联分析、随机森林和XGBoost)的性状统计结构方程建模,对150日龄和300日龄粪便菌群与繁殖性能的关系进行可视化。结果:按人工授精频率中位数分为优等组(1.04±0.04个周期,n = 26)和低等组(3.87±0.27个周期,n = 23)。采用差异分析对两组粪便细菌进行了检测和比较,结果表明,优势组Rikenellaceae RC9肠道组和Christensenellaceae R-7肠道组的细菌数量均有所增加。随后,相关分析评估了细菌组之间的相互关系,表明这些模式具有明显的特征。因此,采用了四种机器学习算法来识别两组之间的独特因素。通过DirectLiNGAM基于这些提取因子绘制的有向无环图推断,150日龄时丹毒科、严格感梭菌属1和family XIII AD3011组与AI数量的增加密切相关。此外,150日龄时参与肌酐降解的途径(PWY-4722)与AI数量的增加有关。然而,300日龄时的细菌群和/或途径与AI数并不一定相关。结论:在本研究中,采用因果推理方法研究了怀孕牛的ai依赖性肠道细菌群落。这些发现表明,对肉牛生产管理至关重要的人工智能数量可以从人工智能前近6个月的粪便细菌模式中推断出来,而不是在人工智能之前。这项研究为肠道环境及其在繁殖性能中的作用提供了一个新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.20
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审稿时长
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