Unveiling microbial biomarkers of ruminant methane emission through machine learning

被引:0
|
作者
Peng, Chengyao [1 ]
May, Ali [2 ]
Abeel, Thomas [1 ,3 ]
机构
[1] Delft Univ Technol, Delft Bioinformat Lab, Delft, Netherlands
[2] dsm firmenich Sci & Res, Delft, Netherlands
[3] Broad Inst & Harvard, Infect Dis & Microbiome Program, Cambridge, MA 02142 USA
关键词
rumen microbiome; enteric methane; ruminants; machine learning; regression; feature selection; precision animal feed; INDIGENOUSLY ASSOCIATED METHANOGENS; ANAEROBIC FUNGI; ENTERIC METHANE; GUT MICROBIOME; CATTLE;
D O I
10.3389/fmicb.2023.1308363
中图分类号
Q93 [微生物学];
学科分类号
071005 ; 100705 ;
摘要
BackgroundEnteric methane from cow burps, which results from microbial fermentation of high-fiber feed in the rumen, is a significant contributor to greenhouse gas emissions. A promising strategy to address this problem is microbiome-based precision feed, which involves identifying key microorganisms for methane production. While machine learning algorithms have shown success in associating human gut microbiome with various human diseases, there have been limited efforts to employ these algorithms to establish microbial biomarkers for methane emissions in ruminants.MethodsIn this study, we aim to identify potential methane biomarkers for methane emission from ruminants by employing regression algorithms commonly used in human microbiome studies, coupled with different feature selection methods. To achieve this, we analyzed the microbiome compositions and identified possible confounding metadata variables in two large public datasets of Holstein cows. Using both the microbiome features and identified metadata variables, we trained different regressors to predict methane emission. With the optimized models, permutation tests were used to determine feature importance to find informative microbial features.ResultsAmong the regression algorithms tested, random forest regression outperformed others and allowed the identification of several crucial microbial taxa for methane emission as members of the native rumen microbiome, including the genera Piromyces, Succinivibrionaceae UCG-002, and Acetobacter. Additionally, our results revealed that certain herd locations and feed composition markers, such as the lipid intake and neutral-detergent fiber intake, are also predictive features for methane emissions.ConclusionWe demonstrated that machine learning, particularly regression algorithms, can effectively predict cow methane emissions and identify relevant rumen microorganisms. Our findings offer valuable insights for the development of microbiome-based precision feed strategies aiming at reducing methane emissions.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Definition of the microbial rare biosphere through unsupervised machine learning
    Pascoal, Francisco
    Branco, Paula
    Torgo, Luis
    Costa, Rodrigo
    Magalhaes, Catarina
    COMMUNICATIONS BIOLOGY, 2025, 8 (01)
  • [22] Unveiling the drives behind tetracycline adsorption capacity with biochar through machine learning
    Zhang, Pengyan
    Liu, Chong
    Lao, Dongqing
    Nguyen, Xuan Cuong
    Paramasivan, Balasubramanian
    Qian, Xiaoyan
    Inyinbor, Adejumoke Abosede
    Hu, Xuefei
    You, Yongjun
    Li, Fayong
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [23] Unveiling phase transitions with machine learning
    Canabarro, Askery
    Fanchini, Felipe Fernandes
    Malvezzi, Andre Luiz
    Pereira, Rodrigo
    Chaves, Rafael
    PHYSICAL REVIEW B, 2019, 100 (04)
  • [24] Unveiling the robustness of machine learning families
    Fabra-Boluda, R.
    Ferri, C.
    Ramirez-Quintana, M. J.
    Martinez-Plumed, F.
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2024, 5 (03):
  • [25] Enhancing methane production in dry anaerobic digestion of ruminant manures through substrates ratio regulation for strengthened microbial interactions
    Wang, Rui
    Gu, Jing
    Wang, Qianqi
    Jiang, Sinan
    Wu, Zeyue
    Wang, Jie
    Li, Guoxue
    Gong, Xiaoyan
    ENVIRONMENTAL TECHNOLOGY & INNOVATION, 2023, 32
  • [26] Machine learning-aided unveiling the relationship between chemical pretreatment and methane production of lignocellulosic waste
    Song, Chao
    Zhang, Zhijing
    Wang, Xuefeng
    Hu, Xuejun
    Chen, Chang
    Liu, Guangqing
    WASTE MANAGEMENT, 2024, 187 : 235 - 243
  • [27] Characterizing hub biomarkers for post-transplant renal fibrosis and unveiling their immunological functions through RNA sequencing and advanced machine learning techniques
    Niu, Xinhao
    Xu, Cuidi
    Cheuk, Yin Celeste
    Xu, Xiaoqing
    Liang, Lifei
    Zhang, Pingbao
    Rong, Ruiming
    JOURNAL OF TRANSLATIONAL MEDICINE, 2024, 22 (01)
  • [28] Gait Event Timeseries Assessment through Spectral Biomarkers and Machine Learning
    Tigrini, Andrea
    Verdini, Federica
    Fiore, Sandro
    Scattolini, Mara
    Mobarak, Rami
    Gambi, Ennio
    Burattini, Laura
    Mengarelli, Alessandro
    2023 IEEE 36TH INTERNATIONAL SYMPOSIUM ON COMPUTER-BASED MEDICAL SYSTEMS, CBMS, 2023, : 257 - 262
  • [29] Altering Methane Emission, Fatty Acid Composition, and Microbial Profile during In Vitro Ruminant Fermentation by Manipulating Dietary Fatty Acid Ratios
    Sun, Xiaoge
    Wang, Qianqian
    Yang, Zhantao
    Xie, Tian
    Wang, Zhonghan
    Li, Shengli
    Wang, Wei
    FERMENTATION-BASEL, 2022, 8 (07):
  • [30] Unveiling non-steady chloride migration insights through explainable machine learning
    Taffese, Woubishet Zewdu
    Espinosa-Leal, Leonardo
    JOURNAL OF BUILDING ENGINEERING, 2024, 82