{"title":"Information and decision-making in dynamic cell signaling","authors":"D. Rand","doi":"10.1109/BIBM.2016.7822476","DOIUrl":null,"url":null,"abstract":"I will discuss a new theoretical approach to information and decisions in signalling systems and relate this to new experimental results about the NF-kappaB signalling system. NF-kappaB is an exemplar system that controls inflammation and in different contexts has varying effects on cell death and cell division. It is activated by various stress stimuli, including inflammatory cytokines such as TNFalpha and IL-1beta and is regarded as one of the most important stress response pathways in the mammalian cell. In a variety of conditions it displays oscillatory dynamics when stimulated, with the transcription factor entering the nucleus in a pulsatile fashion with a period of roughly 100 minutes. It is commonly claimed that it is information processing hub, taking in signals about the infection and stress status of the tissue environment and as a consequence of the oscillations, transmitting higher amounts of information to the hundreds of genes it controls. My aim is to develop a conceptual and mathematical framework to enable a rigorous quantifiable discussion of information in this context in order to follow Francis Crick's counsel that it is better in biology to follow the flow of information than those of matter or energy. In my approach the value of the information in the signalling system is defined by how well it can be used to make the “correct decisions” when those “decisions” are made by molecular networks. As part of this I will introduce a new mathematical method for the analysis and simulation of large stochastic non-linear oscillating systems. This allows an analytic analysis of the stochastic relationship between input and response and shows that for tightly-coupled systems like those based on current models for signalling systems, clocks, and the cell cycle this relationship is highly constrained and non-generic.","PeriodicalId":73283,"journal":{"name":"IEEE International Conference on Bioinformatics and Biomedicine workshops. IEEE International Conference on Bioinformatics and Biomedicine","volume":"86 1","pages":"3"},"PeriodicalIF":0.0000,"publicationDate":"2016-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"IEEE International Conference on Bioinformatics and Biomedicine workshops. IEEE International Conference on Bioinformatics and Biomedicine","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/BIBM.2016.7822476","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

I will discuss a new theoretical approach to information and decisions in signalling systems and relate this to new experimental results about the NF-kappaB signalling system. NF-kappaB is an exemplar system that controls inflammation and in different contexts has varying effects on cell death and cell division. It is activated by various stress stimuli, including inflammatory cytokines such as TNFalpha and IL-1beta and is regarded as one of the most important stress response pathways in the mammalian cell. In a variety of conditions it displays oscillatory dynamics when stimulated, with the transcription factor entering the nucleus in a pulsatile fashion with a period of roughly 100 minutes. It is commonly claimed that it is information processing hub, taking in signals about the infection and stress status of the tissue environment and as a consequence of the oscillations, transmitting higher amounts of information to the hundreds of genes it controls. My aim is to develop a conceptual and mathematical framework to enable a rigorous quantifiable discussion of information in this context in order to follow Francis Crick's counsel that it is better in biology to follow the flow of information than those of matter or energy. In my approach the value of the information in the signalling system is defined by how well it can be used to make the “correct decisions” when those “decisions” are made by molecular networks. As part of this I will introduce a new mathematical method for the analysis and simulation of large stochastic non-linear oscillating systems. This allows an analytic analysis of the stochastic relationship between input and response and shows that for tightly-coupled systems like those based on current models for signalling systems, clocks, and the cell cycle this relationship is highly constrained and non-generic.
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动态细胞信号传递中的信息与决策
我将讨论信号系统中信息和决策的新理论方法,并将其与NF-kappaB信号系统的新实验结果联系起来。NF-kappaB是控制炎症的典型系统,在不同情况下对细胞死亡和细胞分裂有不同的影响。它被各种应激刺激激活,包括炎性细胞因子如TNFalpha和il -1 β,被认为是哺乳动物细胞中最重要的应激反应途径之一。在各种条件下,当受到刺激时,它表现出振荡动力学,转录因子以大约100分钟的脉动方式进入细胞核。通常认为它是信息处理中心,接收有关组织环境的感染和压力状态的信号,并作为振荡的结果,将更多的信息传递给它控制的数百个基因。我的目标是建立一个概念和数学框架,以便在这种情况下对信息进行严格的量化讨论,以遵循弗朗西斯·克里克的建议,即在生物学中,关注信息流比关注物质或能量流更好。在我的方法中,信号系统中信息的价值取决于当这些“决定”由分子网络做出时,这些信息在做出“正确决定”时的效果。作为其中的一部分,我将介绍一种新的数学方法来分析和模拟大型随机非线性振荡系统。这允许对输入和响应之间的随机关系进行分析分析,并表明对于紧密耦合的系统,如基于当前信号系统、时钟和细胞周期模型的系统,这种关系是高度受限和非通用的。
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