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Identification of Boolean Network Models From Time Series Data Incorporating Prior Knowledge

机译:从包含先验知识的时间序列数据中识别布尔网络模型

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摘要

>Motivation: Mathematical models take an important place in science and engineering. A model can help scientists to explain dynamic behavior of a system and to understand the functionality of system components. Since length of a time series and number of replicates is limited by the cost of experiments, Boolean networks as a structurally simple and parameter-free logical model for gene regulatory networks have attracted interests of many scientists. In order to fit into the biological contexts and to lower the data requirements, biological prior knowledge is taken into consideration during the inference procedure. In the literature, the existing identification approaches can only deal with a subset of possible types of prior knowledge.>Results: We propose a new approach to identify Boolean networks from time series data incorporating prior knowledge, such as partial network structure, canalizing property, positive and negative unateness. Using vector form of Boolean variables and applying a generalized matrix multiplication called the semi-tensor product (STP), each Boolean function can be equivalently converted into a matrix expression. Based on this, the identification problem is reformulated as an integer linear programming problem to reveal the system matrix of Boolean model in a computationally efficient way, whose dynamics are consistent with the important dynamics captured in the data. By using prior knowledge the number of candidate functions can be reduced during the inference. Hence, identification incorporating prior knowledge is especially suitable for the case of small size time series data and data without sufficient stimuli. The proposed approach is illustrated with the help of a biological model of the network of oxidative stress response.>Conclusions: The combination of efficient reformulation of the identification problem with the possibility to incorporate various types of prior knowledge enables the application of computational model inference to systems with limited amount of time series data. The general applicability of this methodological approach makes it suitable for a variety of biological systems and of general interest for biological and medical research.
机译:>动机:数学模型在科学和工程学中占有重要地位。模型可以帮助科学家解释系统的动态行为并了解系统组件的功能。由于时间序列的长度和重复次数受实验成本的限制,布尔网络作为基因调控网络的结构简单且无参数的逻辑模型吸引了许多科学家的兴趣。为了适应生物学环境并降低数据要求,在推理过程中要考虑生物学先验知识。在文献中,现有的识别方法只能处理可能的先验知识类型的子集。>结果:我们提出了一种新方法,用于从结合了先验知识的时间序列数据中识别布尔网络,例如部分网络结构,渠道化属性,正负联合。使用布尔变量的矢量形式并应用称为半张量积(STP)的广义矩阵乘法,可以将每个布尔函数等效地转换为矩阵表达式。在此基础上,将识别问题重新表述为整数线性规划问题,以计算有效的方式揭示布尔模型的系统矩阵,其动力学与数据中捕获的重要动力学一致。通过使用先验知识,可以在推断过程中减少候选函数的数量。因此,结合了先验知识的识别特别适用于小尺寸时间序列数据和没有足够刺激的数据的情况。借助氧化应激反应网络的生物学模型对提出的方法进行了说明。>结论:将识别问题的有效重构与合并各种先验知识的可能性结合起来,计算模型推理在时间序列数据量有限的系统中的应用。这种方法学方法的普遍适用性使其适用于各种生物系统,并且对生物学和医学研究具有普遍的兴趣。

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