Inferring Boolean network states from partial information.

Guy Karlebach
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Abstract

Networks of molecular interactions regulate key processes in living cells. Therefore, understanding their functionality is a high priority in advancing biological knowledge. Boolean networks are often used to describe cellular networks mathematically and are fitted to experimental datasets. The fitting often results in ambiguities since the interpretation of the measurements is not straightforward and since the data contain noise. In order to facilitate a more reliable mapping between datasets and Boolean networks, we develop an algorithm that infers network trajectories from a dataset distorted by noise. We analyze our algorithm theoretically and demonstrate its accuracy using simulation and microarray expression data.

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从部分信息推断布尔网络状态
分子相互作用网络调控着活细胞中的关键过程。因此,了解它们的功能是增进生物学知识的重中之重。布尔网络经常被用来对细胞网络进行数学描述,并与实验数据集进行拟合。由于对测量结果的解释并不直截了当,而且数据中含有噪声,因此拟合结果往往含糊不清。为了促进数据集与布尔网络之间更可靠的映射,我们开发了一种算法,可以从被噪声扭曲的数据集中推导出网络轨迹。我们从理论上分析了我们的算法,并使用模拟和微阵列表达数据证明了它的准确性。
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