...
首页> 外文期刊>Animal Feed Science and Technology >Mechanistic modelling of in vitro fermentation and methane production by rumen microbiota
【24h】

Mechanistic modelling of in vitro fermentation and methane production by rumen microbiota

机译:瘤胃微生物体外发酵和产甲烷的机理模型

获取原文
获取原文并翻译 | 示例

摘要

Existing mechanistic models of the rumen ecosystem have proven to be useful to better understand and represent rumen fermentation. Opportunities for improving rumen fermentation models include a better representation of the microbiota, hydrogen dynamics and a mechanistic description of pH. The objective of this work was to include such aspects in the development of a mathematical model of rumen fermentation under in vitro conditions. The developed model integrates microbial metabolism, acid-base reactions and liquid-gas transfer. Model construction was based on an aggregated representation of the hydrolysis of carbohydrates and proteins, and the further fermentation of soluble monomers. The model is a differential algebraic equation model with 18 compartments. One of the main contributions of the model developed here resides in the mechanistic description of pH, the use of biochemical reactions and partition rules to define the stoichiometry of fermentation, the representation of hydrogen metabolism, and the representation of the rumen microbiota into functional groups associated with the utilization of hexoses, amino acids and hydrogen. The model was calibrated with published data from a 2 x 2 factorial experiment devoted to assessing the relative importance of the type of inoculum and substrate on the fermentation pattern. The treatments were the level of concentrate in the substrate (low concentrate vs. high concentrate), and the inocula type (obtained from goats fed at low or high concentrate). The model was implemented in Matlab. The code is available on request for academic purposes. Model evaluation was performed by regression analysis and the calculation of statistical indicators using the model predicted values and observed values. The model was capable to represent in a satisfactory fashion the dynamics of the fermentation, that is the pH, the individual volatile fatty acids and the gas compounds, namely methane, hydrogen and carbon dioxide. The model predictions exhibited high concordance correlation coefficients (CCC). For the pH and the CH4, the CCC was of 0.91 and 0.93 respectively. For the other variables CCC >0.96. The model developed was instrumental to quantify the differences of the fermentation pattern between the treatment combinations. These differences were mainly captured by parameters related to the flux distribution and were found to be dependent mainly on the type of inoculum. For instance, the flux towards butyrate production from sugars utilization for the microbiota of the inoculum adapted to high concentrate was about 30% higher than that for the inoculum adapted to low concentrate. This result, however, requires further validation with new data. Further developments are needed to incorporate physiological in vivo factors into our model. Nevertheless, the structure developed here appears to be a promising approach for enhancing the mechanistic description of the rumen microbial ecosystem. (C) 2016 Elsevier B.V. All rights reserved.
机译:事实证明,瘤胃生态系统的现有机制模型有助于更好地理解和代表瘤胃发酵。改善瘤胃发酵模型的机会包括更好地展现微生物群,氢动力学和对pH的机械描述。这项工作的目的是将这些方面包括在体外条件下瘤胃发酵的数学模型的开发中。开发的模型集成了微生物代谢,酸碱反应和液-气传递。模型构建基于碳水化合物和蛋白质水解以及可溶性单体进一步发酵的总体表示。该模型是具有18个格的微分代数方程模型。此处开发的模型的主要贡献之一在于pH的机械描述,使用生化反应和分配规则来定义发酵的化学计量,氢代谢的表示以及瘤胃微生物群与相关功能团的表示利用己糖,氨基酸和氢。该模型已使用来自2 x 2析因实验的公开数据进行了校准,该实验致力于评估接种物类型和底物对发酵模式的相对重要性。处理方法是基质中的浓缩物水平(低浓缩物与高浓缩物)和接种类型(从以低或高浓缩物喂养的山羊获得)。该模型是在Matlab中实现的。该代码可应要求用于学术目的。通过回归分析和使用模型预测值和观察值的统计指标计算来执行模型评估。该模型能够以令人满意的方式表示发酵的动力学,即pH,各个挥发性脂肪酸和气体化合物(即甲烷,氢气和二氧化碳)。模型预测显示出较高的一致性相关系数(CCC)。对于pH和CH4,CCC分别为0.91和0.93。对于其他变量,CCC> 0.96。建立的模型有助于量化处理组合之间发酵模式的差异。这些差异主要由与通量分布相关的参数捕获,并且发现主要取决于接种物的类型。例如,适于高浓缩物的接种菌的微生物群从糖利用向丁酸盐生产的通量比适于低浓缩物的接种菌的通量高约30%。但是,此结果需要使用新数据进行进一步验证。需要进一步发展,以将生理体内因素纳入我们的模型。尽管如此,这里开发的结构似乎是增强瘤胃微生物生态系统机理描述的一种有前途的方法。 (C)2016 Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号