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Putting humpty-dumpty together: Mining causal mechanistic biochemical models from big data

机译:放荡不羁:从大数据中挖掘因果机制的生化模型

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In traditional engineering disciplines, the construction of a system is usually preceded by a formal or informal specification of the design of the system being developed. In biochemical applications, however, a detailed specification of the system's structure and dynamics is usually unavailable. Thus, mechanistic details of biochemical systems must be mined from experimental observations. In this paper, we adopt a formal methods approach towards deriving causal mechanistic models from time-series observations of biochemical systems. The mined model captures causality among multiple biological events and also allows causal relationships between sets of events. We exploit results from trace theory and use the power of powerful constraint solvers to develop a new framework for causality identification and reasoning that captures dynamic relationships among species in biochemical reaction networks.
机译:在传统的工程学科中,通常在对系统进行构造之前,先对要开发的系统进行正式或非正式的设计说明。但是,在生化应用中,通常无法获得系统结构和动力学的详细说明。因此,必须从实验观察中挖掘生化系统的机械细节。在本文中,我们采用正式的方法从生化系统的时间序列观察中得出因果机制模型。挖掘的模型捕获多个生物事件之间的因果关系,并且还允许事件集之间的因果关系。我们利用跟踪理论的结果,并使用强大的约束求解器的功能来开发因果关系识别和推理的新框架,从而捕获生化反应网络中物种之间的动态关系。

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