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Toward a next generation of predictive models: A systems biology primer.

机译:迈向下一代预测模型:系统生物学入门。

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In the area of predictive microbiology, most models focus on simplicity and general applicability, and can be classified as black box models with the main emphasis on the description of the macroscopic (population level) microbial behavior as a response to the environment. Their validity to describe pure cultures in simple, liquid media under moderate environmental conditions is widely illustrated and accepted. However, experiments have shown that extrapolation of these models outside the range of experimental validation is not allowed as such. In general, the applicability and robustness of existing models under a wider range of conditions and in more realistic situations can definitely be improved by unraveling the underlying mechanisms and incorporating intracellular (microscopic) information. Following a systems biology approach, the link between the intracellular fluxes and the extracellular measurements is established by techniques of metabolic flux analysis. The modeling approach presented in this paper will lead to more accurate predictive models for more complex systems, such as co-cultures and structured environments, based on a top-down systems biology approach. A theoretical case study in predictive microbiology is presented in which the potentials of metabolic network-based models are illustrated. This tutorial paper is directed toward food scientists, who want to get familiar with the mathematical framework used in metabolic flux analysis and adopt these tools in predictive microbiology; the paper is also oriented toward researchers in systems biology, who want to explore the potential and limitations of systems biology tools when applied to challenging (non-steady state) conditions as encountered with bacterial populations in food products. All rights reserved, Elsevier.
机译:在预测微生物学领域,大多数模型都集中在简单性和通用性上,可以归类为黑盒模型,主要侧重于描述宏观(种群水平)微生物行为对环境的响应。它们在中等环境条件下以简单的液体介质描述纯净培养物的有效性得到了广泛的说明和接受。但是,实验表明,不允许在实验验证范围之外外推这些模型。通常,通过揭示潜在机制并结合细胞内(微观)信息,可以肯定地改善现有模型在更大范围的条件下和更实际的情况下的适用性和鲁棒性。遵循系统生物学方法,通过代谢通量分析技术建立了细胞内通量和细胞外测量之间的联系。本文提出的建模方法将基于自上而下的系统生物学方法,为更复杂的系统(例如共培养和结构化环境)提供更准确的预测模型。提出了预测微生物学的理论案例研究,其中阐明了基于代谢网络模型的潜力。本教程针对的是食品科学家,他们希望熟悉代谢通量分析中使用的数学框架,并在预测性微生物学中采用这些工具。本文还针对系统生物学的研究人员,他们希望探索将系统生物学工具应用于食品中细菌种群所面临的挑战性(非稳态)条件时的潜力和局限性。保留所有权利,Elsevier。

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