Division of Toxicology and Risk Assessment, National Food Institute, Technical University of Denmark, Søborg, Denmark; Department for Systems Biology, Centre for Biological Sequence Analysis, Technical University of Denmark, Kgs. Lyngby, Denmark.
Basic Clin Pharmacol Toxicol. 2014 Jul;115(1):45-9. doi: 10.1111/bcpt.12216. Epub 2014 Mar 14.
Systems biology as a research field has emerged within the last few decades. Systems biology, often defined as the antithesis of the reductionist approach, integrates information about individual components of a biological system. In integrative systems biology, large data sets from various sources and databases are used to model and predict effects of chemicals on, for instance, human health. In toxicology, computational systems biology enables identification of important pathways and molecules from large data sets; tasks that can be extremely laborious when performed by a classical literature search. However, computational systems biology offers more advantages than providing a high-throughput literature search; it may form the basis for establishment of hypotheses on potential links between environmental chemicals and human diseases, which would be very difficult to establish experimentally. This is possible due to the existence of comprehensive databases containing information on networks of human protein-protein interactions and protein-disease associations. Experimentally determined targets of the specific chemical of interest can be fed into these networks to obtain additional information that can be used to establish hypotheses on links between the chemical and human diseases. Such information can also be applied for designing more intelligent animal/cell experiments that can test the established hypotheses. Here, we describe how and why to apply an integrative systems biology method in the hypothesis-generating phase of toxicological research.
系统生物学作为一个研究领域,在过去几十年中逐渐兴起。系统生物学通常被定义为对还原论方法的对立面,它整合了生物系统各个组成部分的信息。在综合系统生物学中,来自各种来源和数据库的大量数据集被用于对化学物质对人类健康等方面的影响进行建模和预测。在毒理学中,计算系统生物学能够从大量数据集中识别重要的途径和分子;而这些任务如果通过传统的文献搜索来完成,可能会非常繁琐。然而,计算系统生物学提供的优势不仅仅是进行高通量文献搜索;它还可以为建立环境化学物质与人类疾病之间潜在联系的假说提供基础,而这些假说如果通过实验来建立则非常困难。这是因为存在包含人类蛋白质-蛋白质相互作用和蛋白质-疾病关联网络信息的综合数据库。特定感兴趣的化学物质的实验确定的靶标可以被输入到这些网络中,以获得可用于建立化学物质与人类疾病之间联系假说的额外信息。这些信息还可以用于设计更智能的动物/细胞实验,以验证已建立的假说。在这里,我们描述了如何以及为什么在毒理学研究的假说生成阶段应用综合系统生物学方法。