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BoolFilter: an R package for estimation and identification of partially-observed Boolean dynamical systems

机译:BoolFilter:一个R包用于估计和标识部分观测的布尔动力系统

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摘要

BackgroundGene regulatory networks govern the function of key cellular processes, such as control of the cell cycle, response to stress, DNA repair mechanisms, and more. Boolean networks have been used successfully in modeling gene regulatory networks. In the Boolean network model, the transcriptional state of each gene is represented by 0 (inactive) or 1 (active), and the relationship among genes is represented by logical gates updated at discrete time points. However, the Boolean gene states are never observed directly, but only indirectly and incompletely through noisy measurements based on expression technologies such as cDNA microarrays, RNA-Seq, and cell imaging-based assays. The Partially-Observed Boolean Dynamical System (POBDS) signal model is distinct from other deterministic and stochastic Boolean network models in removing the requirement of a directly observable Boolean state vector and allowing uncertainty in the measurement process, addressing the scenario encountered in practice in transcriptomic analysis.
机译:BackgroundGene调控网络控制着关键细胞过程的功能,例如控制细胞周期,对压力的反应,DNA修复机制等。布尔网络已成功用于建模基因调控网络。在布尔网络模型中,每个基因的转录状态由0(不活动)或1(活动)表示,基因之间的关系由在离散时间点更新的逻辑门表示。但是,从不直接观察布尔基因状态,而只能通过基于表达技术(例如cDNA微阵列,RNA-Seq和基于细胞成像的分析)的噪声测量来间接和不完全观察到布尔基因状态。部分观测布尔动力系统(POBDS)信号模型与其他确定性和随机布尔网络模型不同,它消除了对直接可观测布尔状态向量的要求,并允许测量过程中存在不确定性,从而解决了转录组分析中实际遇到的情况。

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