通过细胞信号转导途径估计分子信息

Zahmeeth Sakkaff, Aditya Immaneni, M. Pierobon
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引用次数: 9

摘要

开发可靠的抽象、模型和生化通信通道的特征,这些通道将信息从生物细胞传播到生物细胞,这是能够通过这些通道进行普遍接口、控制和通信的系统工程的首要挑战之一,即生物-氮-物联网。真核细胞中的信号转导通路是这些通道的重要例子,特别是因为它们的表现与生物体的健康(如癌症)直接相关。本文提出了一种基于化学随机模拟工具和样本分布的信息论参数估计来表征信号转导通路通信性能的新计算方法。与以往文献不同的是,该方法不受数据大小的限制,考虑了动态路径演化中包含的信息,不仅估计了端到端的信息传播,还估计了通过路径各组成部分的信息。数值例子提供了一个案例研究的重点是流行的JAK-STAT途径,与免疫缺陷和癌症有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating the Molecular Information Through Cell Signal Transduction Pathways
The development of reliable abstractions, models, and characterizations of biochemical communication channels that propagate information from/to biological cells is one of the first challenges for the engineering of systems able to pervasively interface, control, and communicate through these channels, i.e., the Internet of Bio-N ano Things. Signal transduction pathways in eukaryotic cells are important examples of these channels, especially since their performance is directly linked to organisms' health, such as in cancer. In this paper, a novel computational approach is proposed to characterize the communication performance of signal transduction pathways based on chemical stochastic simulation tools, and the estimation of information-theoretic parameters from sample distributions. Differently from previous literature, this approach does not have constraints on the size of the data, accounts for the information contained in the dynamic pathway evolution, and estimates not only the end-to-end information propagation, but also the information through each component of the pathway. Numerical examples are provided as a case study focused on the popular JAK-STAT pathway, linked to immunodeficiency and cancer.
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