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On the use of qualitative reasoning to simulate and identify metabolic pathways

机译:关于使用定性推理来模拟和识别代谢途径

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Motivation: Perhaps the greatest challenge of modern biology is to develop accurate in silico models of cells. To do this we require computational formalisms for both simulation (how according to the model the state of the cell evolves over time) and identification (learning a model cell from observation of states). We propose the use of qualitative reasoning (QR) as a unified formalism for both tasks. The two most commonly used alternative methods of modelling biochemical pathways are ordinary differential equations (ODEs), and logical/graph-based (LG) models.Results: The QR formalism we use is an abstraction of ODEs. It enables the behaviour of many ODEs, with different functional forms and parameters, to be captured in a single QR model. QR has the advantage over LG models of explicitly including dynamics. To simulate biochemical pathways we have developed 'enzyme' and 'metabolite' QR building blocks that fit together to form models. These models are finite, directly executable, easy to interpret and robust. To identify QR models we have developed heuristic chemoinformatics graph analysis and machine learning procedures. The graph analysis procedure is a series of constraints and heuristics that limit the number of ways metabolites can combine to form pathways. The machine learning procedure is generate-and-test inductive logic programming. We illustrate the use of QR for modelling and simulation using the example of glycolysis.
机译:动机:也许现代生物学的最大挑战是开发精确的计算机计算机模型。为此,我们需要模拟(根据模型的状态随时间变化的模型)和识别(从状态观察中学习模型的单元)的计算形式。我们建议使用定性推理(QR)作为这两个任务的统一形式主义。对生化途径进行建模的两种最常用的替代方法是常微分方程(ODE)和基于逻辑/基于图的(LG)模型。结果:我们使用的QR形式主义是ODE的抽象。它可以在单个QR模型中捕获具有不同功能形式和参数的许多ODE的行为。与LG模型相比,QR具有明显包含动态特性的优势。为了模拟生物化学途径,我们开发了“酶”和“代谢物” QR构建基块,它们可以一起形成模型。这些模型是有限的,可直接执行的,易于解释且健壮的。为了识别QR模型,我们开发了启发式化学信息图分析和机器学习程序。图分析程序是一系列限制和启发式方法,它们限制了代谢物可以结合形成途径的方式。机器学习过程是生成和测试归纳逻辑编程。我们以糖酵解为例,说明了QR在建模和仿真中的使用。

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