Likić Vladimir A, McConville Malcolm J, Lithgow Trevor, Bacic Antony
Bio21 Molecular Science and Biotechnology Institute, The University of Melbourne, Parkville, VIC, 3010, Australia.
Adv Bioinformatics. 2010;2010:268925. doi: 10.1155/2010/268925. Epub 2011 Feb 9.
Biochemical systems biology augments more traditional disciplines, such as genomics, biochemistry and molecular biology, by championing (i) mathematical and computational modeling; (ii) the application of traditional engineering practices in the analysis of biochemical systems; and in the past decade increasingly (iii) the use of near-comprehensive data sets derived from 'omics platform technologies, in particular "downstream" technologies relative to genome sequencing, including transcriptomics, proteomics and metabolomics. The future progress in understanding biological principles will increasingly depend on the development of temporal and spatial analytical techniques that will provide high-resolution data for systems analyses. To date, particularly successful were strategies involving (a) quantitative measurements of cellular components at the mRNA, protein and metabolite levels, as well as in vivo metabolic reaction rates, (b) development of mathematical models that integrate biochemical knowledge with the information generated by high-throughput experiments, and (c) applications to microbial organisms. The inevitable role bioinformatics plays in modern systems biology puts mathematical and computational sciences as an equal partner to analytical and experimental biology. Furthermore, mathematical and computational models are expected to become increasingly prevalent representations of our knowledge about specific biochemical systems.
生化系统生物学通过倡导(i)数学和计算建模;(ii)将传统工程实践应用于生化系统分析;以及在过去十年中越来越多地(iii)使用源自“组学”平台技术的近乎全面的数据集,特别是相对于基因组测序的“下游”技术,包括转录组学、蛋白质组学和代谢组学,增强了诸如基因组学、生物化学和分子生物学等更传统的学科。未来在理解生物学原理方面的进展将越来越依赖于时空分析技术的发展,这些技术将为系统分析提供高分辨率数据。迄今为止,特别成功的策略包括(a)在mRNA、蛋白质和代谢物水平以及体内代谢反应速率上对细胞成分进行定量测量,(b)开发将生化知识与高通量实验产生的信息整合在一起的数学模型,以及(c)应用于微生物。生物信息学在现代系统生物学中不可避免地发挥的作用使数学和计算科学成为分析生物学和实验生物学的平等伙伴。此外,数学和计算模型预计将越来越普遍地成为我们关于特定生化系统的知识的表示形式。