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应用路径建模方法解析肉品腐败过程中微生物群落、挥发性有机化合物和异味特征之间的因果关系。

Application of a path-modelling approach for deciphering causality relationships between microbiota, volatile organic compounds and off-odour profiles during meat spoilage.

机构信息

Secalim, INRAE, Oniris, Nantes, France.

Secalim, INRAE, Oniris, Nantes, France.

出版信息

Int J Food Microbiol. 2021 Jun 16;348:109208. doi: 10.1016/j.ijfoodmicro.2021.109208. Epub 2021 Apr 28.

Abstract

Microbiological spoilage of meat is considered as a process which involves mainly bacterial metabolism leading to degradation of meat sensory qualities. Studying spoilage requires the collection of different types of experimental data encompassing microbiological, physicochemical and sensorial measurements. Within this framework, the objective herein was to carry out a multiblock path modelling workflow to decipher causality relationships between different types of spoilage-related responses: composition of microbiota, volatilome and off-odour profiles. Analyses were performed with the Path-ComDim approach on a large-scale dataset collected on fresh turkey sausages. This approach enabled to quantify the importance of causality relationships determined a priori between each type of responses as well as to identify important responses involved in spoilage, then to validate causality assumptions. Results were very promising: the data integration confirmed and quantified the causality between data blocks, exhibiting the dynamical nature of spoilage, mainly characterized by the evolution of off-odour profiles caused by the production of volatile organic compounds such as ethanol or ethyl acetate. This production was possibly associated with several bacterial species like Lactococcus piscium, Leuconostoc gelidum, Psychrobacter sp. or Latilactobacillus fuchuensis. Likewise, the production of acetoin and diacetyl in meat spoilage was highlighted. The Path-ComDim approach illustrated here with meat spoilage can be applied to other large-scale and heterogeneous datasets associated with pathway scenarios and represents a promising key tool for deciphering causality in complex biological phenomena.

摘要

微生物引起的肉类腐败被认为是一个主要涉及细菌代谢的过程,导致肉的感官质量下降。研究腐败需要收集涵盖微生物学、物理化学和感官测量的不同类型的实验数据。在这个框架内,本研究的目的是进行多块路径建模工作流程,以揭示与不同类型的腐败相关响应之间的因果关系:微生物群落组成、挥发物组和异味谱。使用 Path-ComDim 方法对在新鲜火鸡香肠上收集的大规模数据集进行了分析。该方法能够定量确定每个类型的响应之间预先确定的因果关系的重要性,以及识别参与腐败的重要响应,然后验证因果关系假设。结果非常有希望:数据集成证实并量化了数据块之间的因果关系,表现出腐败的动态性质,主要特征是由挥发性有机化合物(如乙醇或乙酸乙酯)的产生引起的异味谱的演变。这种产生可能与几种细菌物种有关,如乳球菌、凝胶乳杆菌、假单胞菌或越光乳杆菌。同样,肉类腐败中乙酰酮和双乙酰的产生也得到了强调。本文中用肉腐败说明的 Path-ComDim 方法可应用于其他与途径情景相关的大规模和异质数据集,代表了解释复杂生物现象中因果关系的有前途的关键工具。

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