Bardini R, Politano G, Benso A, Di Carlo S
Politecnico di Torino, Department of Control and Computer Engineering, 10129 Torino, Italy.
Comput Struct Biotechnol J. 2017 Aug 10;15:396-402. doi: 10.1016/j.csbj.2017.07.005. eCollection 2017.
During the last decades, high-throughput techniques allowed for the extraction of a huge amount of data from biological systems, unveiling more of their underling complexity. Biological systems encompass a wide range of space and time scales, functioning according to flexible hierarchies of mechanisms making an intertwined and dynamic interplay of regulations. This becomes particularly evident in processes such as ontogenesis, where regulative assets change according to process context and timing, making structural phenotype and architectural complexities emerge from a single cell, through local interactions. The information collected from biological systems are naturally organized according to the functional levels composing the system itself. In systems biology, biological information often comes from overlapping but different scientific domains, each one having its own way of representing phenomena under study. That is, the different parts of the system to be modelled may be described with different formalisms. For a model to have improved accuracy and capability for making a good knowledge base, it is good to comprise different system levels, suitably handling the relative formalisms. Models which are both multi-level and hybrid satisfy both these requirements, making a very useful tool in computational systems biology. This paper reviews some of the main contributions in this field.
在过去几十年中,高通量技术使得从生物系统中提取大量数据成为可能,揭示了其更多潜在的复杂性。生物系统涵盖了广泛的空间和时间尺度,按照灵活的机制层次运行,形成相互交织且动态的调节相互作用。这在诸如个体发育等过程中尤为明显,在个体发育过程中,调节资产会根据过程背景和时间而变化,使得结构表型和结构复杂性从单个细胞通过局部相互作用而出现。从生物系统收集的信息自然地按照构成系统本身的功能层次进行组织。在系统生物学中,生物信息通常来自重叠但不同的科学领域,每个领域都有其自身表示所研究现象的方式。也就是说,要建模的系统的不同部分可能用不同的形式主义来描述。为了使模型具有更高的准确性和构建良好知识库的能力,最好包含不同的系统层次,并适当地处理相关的形式主义。多层次且混合的模型满足这两个要求,成为计算系统生物学中非常有用的工具。本文综述了该领域的一些主要贡献。