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Integrative physiology and systems biology: reductionism emergence and causality

机译:整合生理学和系统生物学:还原论出现和因果关系

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摘要

 Systems biology…is about putting together rather than taking apart, integration rather than reduction. It requires that we develop ways of thinking about integration that are as rigorous as our reductionist programmes, but different.... It means changing our philosophy, in the full sense of the term. Dennis Noble, 2006 [].Francis Crick's ‘Central Dogma’, which states that DNA encodes mRNA (transcription) and mRNA encodes protein (translation), has provided a conceptual basis for the biomedical sciences for more than 50 years []. However, the limitations of this framework are increasingly clear: inherited genetic code is a necessary, but not sufficient, explanation of how and why cells within a living organism behave as they do. The critical role of epigenetic change during life in determining the differentiation status of each cell has added a new dimension to our understanding of the relationship between genotype and phenotype. The heritability of some of these changes through mechanisms independent of alterations in the DNA sequence of base pairs has equally profound implications. Perhaps even more importantly, the assumption of linear causality (from gene via transcript to protein and thence function) implicit in Crick’s Central Dogma may in itself be flawed. Emergence, defined as ‘the arising of novel and coherent structures, patterns and properties during the process of self-organization in complex systems’ [], is arguably a defining characteristic of higher organisms: the Cartesian premise that the whole is no more than the sum of its parts is hard to defend when considering the physiology of complex eukaryotes. Cellular differentiation and the development of specific physiological functions are clearly determinist processes; the extraordinarily consistent development of intricate phenotypes in humans and other highly evolved species cannot conceivably be the result simply of stochastic processes. However, the nature of these processes may not be best explored through reductionist experimental approaches. Indeed, such approaches may, by their nature, fail to identify or account for emergent phenomena. In the reductionist paradigm, the multiple interacting systems of intact human physiology obscure the basic mechanisms underpinning phenotypic variation: they are the physiological ‘noise’ obscuring the biochemical signal. Conversely, the integrative paradigm views these systems and the emergent phenomena that result from them as providing the more relevant signal. To quote from Anderson, ‘The ability to reduce everything to simple fundamental laws does not imply the ability to start from those laws and reconstruct the universe. The constructionist hypothesis breaks down when confronted with the twin difficulties of scale and complexity. At each level of complexity entirely new properties appear. Psychology is not applied biology, nor is biology applied chemistry. We can now see that the whole becomes not merely more, but very different from the sum of its parts’ [].The speed and accuracy of biochemical analyses have been transformed in the years since DNA was first characterised as the biochemical substrate of evolution by Crick and Watson. Led by advances in genetic sequencing, the omics disciplines have opened a window on the study of biological function (biochemistry and physiology) that is arguably comparable to the revolution in the study of biological form (anatomy) that occurred in the sixteenth and seventeenth centuries with the advent of human cadaver dissection and light microscopy. Whole genome sequencing and high throughput transcriptomic, proteomic and metabalomic analyses are becoming commonplace. At the same time, the explosion in analytical power consequent upon the consistent increases in processing power achieved by modern ‘supercomputers’ is enabling previously inconceivable feats of computational biology. This processing power can be harnessed to explore the multiple hierarchical interrelationships within complex physiological systems and for iterative biological model generation: experimentation in silico. An additional benefit of this analytical power is the capacity to examine temporal patterns of variability in putative physiological signals (rather than the absolute values of specific variables). Previously, we have sought average data to identify ‘representative’ values. Now, the pattern of variability of the signal over time (time-series data) is recognised as a signal in itself. It seems likely that the pattern of variation over time exhibited by many physiological variables is a reflection of the robustness of the underlying homeostatic control systems, and that loss of this variability is a sign of dysfunction and ill health. For example, loss of heart rate variability is recognised to be a risk factor for early death following myocardial infarction. It may be that maintenance of complex patterns of variability is a defining feature of beneficial adaptation to environmental stressors; conversely, loss of such variability may be a signal of maladaptation.This month in Extreme Physiology & Medicine, Lindsay Edwards and Ines Thiele review the application of systems biology methods to the study of human integrative physiology, with particular focus on applications relating to conditions of environmental stress []. Edwards and Thiele define systems biology as ‘an iterative process of computational model-building and experimental model-revision with the aim of understanding or simulating complex biological systems’. Further, they highlight the limited number of physiologically relevant perturbations that are ethically acceptable in humans and highlight the value of environmental and exertional stressors in this context.Whether there is truly a distinction between systems biology and integrative physiology is unclear []. Both disciplines focus on the form and function of cells and cellular systems through the study of physical and chemical phenomena. As has been commented previously, it is only the amount of data, and the rate of its accumulation, that distinguishes one from the other []. That is not to say that systems biology will not yield new insights. The application of the tools and techniques of computational biology to mega data sets incorporating omics readouts and high-resolution phenotypic metadata may transform our understanding of phenomena with causation at multiple hierarchical levels within the cell and organism as well as identifying the key determinants of the development of emergent phenomena. Such insights may also fundamentally alter our understanding of causality in physiological systems and thereby shape our views of the very nature of integrative physiology.
机译:系统生物学……是关于整合而不是分解,整合而不是缩减。它要求我们开发一种与整合主义的方案一样严格但又不同的思考整合的方式。...这意味着在整个意义上改变我们的理念。丹尼斯·诺布尔(Dennis Noble,2006)。弗朗西斯·克里克(Francis Crick)的“中央教条”,指出DNA编码mRNA(转录)和mRNA编码蛋白质(翻译),已经为生物医学科学提供了超过50年的概念基础[]。但是,该框架的局限性越来越明显:遗传基因代码是对生物体内细胞如何以及为何如此运行的必要但不是充分的解释。表观遗传变化在决定生命中每个细胞分化状态的过程中的关键作用为我们对基因型和表型之间关系的理解增加了新的维度。通过不依赖于碱基对的DNA序列改变的机制,其中一些改变的遗传力具有同等深远的意义。也许甚至更重要的是,克里克中央教条所隐含的线性因果关系(从基因到转录本再到蛋白质以及从那里的功能)的假设本身可能有缺陷。出现被定义为“复杂系统自组织过程中新颖而连贯的结构,样式和特性的产生” [],可以说是高级生物的定义特征:笛卡尔的前提是整体不超过考虑到复杂的真核生物的生理学,其各个部分的总和很难辩护。细胞分化和特定生理功能的发展显然是决定性的过程。人类和其他高度进化物种中复杂表型的异常一致发展不可能仅是随机过程的结果。但是,通过还原论实验方法可能无法最好地探索这些过程的性质。确实,此类方法本质上可能无法识别或解释紧急现象。在还原论范式中,完整的人类生理学的多种相互作用系统掩盖了表型变异的基本机制:它们是掩盖生化信号的生理“噪声”。相反,集成范式将这些系统以及由此产生的新兴现象视为提供了更相关的信号。引用安德森的话来说,‘将所有事物简化为简单的基本定律的能力并不意味着可以从这些定律出发并重建宇宙。当面对规模和复杂性的双重困难时,建构主义的假设就破裂了。在复杂性的每个级别上,都会出现新的属性。心理学不是应用生物学,生物学也不是化学。现在我们可以看到,整个过程不仅变得越来越多,而且与各个部分的总和也大不相同。自从DNA首次被DNA表征为进化的生化底物以来,多年来,生化分析的速度和准确性已经发生了转变。克里克和沃森。在基因测序技术的进步的带动下,组学学科为生物学功能(生物化学和生理学)的研究打开了一个窗口,可以说与十六世纪和十七世纪发生的生物学形式(解剖学)的革命相提并论。人尸体解剖和光学显微镜的问世。全基因组测序和高通量转录组学,蛋白质组学和代谢组学分析正变得司空见惯。同时,由于现代“超级计算机”所实现的处理能力的不断提高,分析能力的爆炸式增长使以前不可思议的计算生物学壮举成为可能。可以利用这种处理能力来探索复杂的生理系统内的多个层次的相互关系,并用于迭代的生物学模型生成:计算机模拟实验。这种分析能力的另一个好处是能够检查假定的生理信号(而不是特定变量的绝对值)的时间变化规律。以前,我们一直在寻找平均数据来识别“代表”价值。现在,信号随时间变化的模式(时间序列数据)本身被识别为信号。许多生理变量表现出的随时间变化的模式似乎反映了潜在的稳态控制系统的鲁棒性,这种可变性的丧失是功能障碍和健康不良的迹象。例如,心率变异性下降被认为是心肌梗死后早期死亡的危险因素。维持复杂的可变性模式可能是有益地适应环境压力因素的一个决定性特征。相反,丧失这种可变性可能是适应不良的信号。本月《极端生理与医学》杂志的Lindsay Edwards和Ines Thiele回顾了系统生物学方法在人类整合生理学研究中的应用,特别着重于与疾病状况相关的应用。环境压力[]。 Edwards和Thiele将系统生物学定义为“计算模型构建和实验模型修订的迭代过程,目的是理解或模拟复杂的生物系统”。此外,它们突显了人类在伦理上可接受的有限的生理相关扰动,并突显了在此背景下环境压力和运动压力的价值。系统生物学与整合生理学之间是否真正存在区分尚不清楚[]。这两门学科都通过研究物理和化学现象来研究细胞和细胞系统的形式和功能。如前所述,只有数据量及其累积速率才能将一个与另一个区分开。这并不是说系统生物学不会产生新的见解。将计算生物学的工具和技术应用于结合了组学读数和高分辨率表型元数据的大型数据集,可能会改变我们对细胞和生物体内多个层次的因果关系现象的理解,并确定发展的关键因素紧急现象。这些见解也可能从根本上改变我们对生理系统因果关系的理解,从而塑造我们对综合生理学本质的看法。

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