Edwards Lindsay M
Respiratory Data Sciences Group, GlaxoSmithKline Medicines Research, Stevenage, Hertfordshire, UK.
J Physiol. 2017 May 1;595(9):2849-2855. doi: 10.1113/JP272275. Epub 2017 Feb 21.
In the early to mid-20th century, reductionism as a concept in biology was challenged by key thinkers, including Ludwig von Bertalanffy. He proposed that living organisms were specific examples of complex systems and, as such, they should display characteristics including hierarchical organisation and emergent behaviour. Yet the true study of complete biological systems (for example, metabolism) was not possible until technological advances that occurred 60 years later. Technology now exists that permits the measurement of complete levels of the biological hierarchy, for example the genome and transcriptome. The complexity and scale of these data require computational models for their interpretation. The combination of these - systems thinking, high-dimensional data and computation - defines systems biology, typically accompanied by some notion of iterative model refinement. Only sequencing-based technologies, however, offer full coverage. Other 'omics' platforms trade coverage for sensitivity, although the densely connected nature of biological networks suggests that full coverage may not be necessary. Systems biology models are often characterised as either 'bottom-up' (mechanistic) or 'top-down' (statistical). This distinction can mislead, as all models rely on data and all are, to some degree, 'middle-out'. Systems biology has matured as a discipline, and its methods are commonplace in many laboratories. However, many challenges remain, especially those related to large-scale data integration.
在20世纪早期至中期,还原论作为生物学中的一个概念受到了包括路德维希·冯·贝塔朗菲在内的关键思想家的挑战。他提出,生物体是复杂系统的具体实例,因此,它们应表现出包括层次组织和涌现行为在内的特征。然而,直到60年后出现技术进步,才有可能对完整的生物系统(例如新陈代谢)进行真正的研究。现在存在的技术能够测量生物层次结构的完整水平,例如基因组和转录组。这些数据的复杂性和规模需要计算模型来进行解读。这些因素的结合——系统思维、高维数据和计算——定义了系统生物学,通常还伴随着某种迭代模型优化的概念。然而,只有基于测序的技术能够提供全面覆盖。其他“组学”平台则以牺牲覆盖范围来换取灵敏度,尽管生物网络的紧密连接性质表明全面覆盖可能并非必要。系统生物学模型通常被描述为“自下而上”(机械论)或“自上而下”(统计)。这种区分可能会产生误导,因为所有模型都依赖数据,并且在某种程度上都是“中间向外”的。系统生物学作为一门学科已经成熟,其方法在许多实验室中已很常见。然而,许多挑战仍然存在,尤其是与大规模数据整合相关的挑战。