Janes Kevin A, Yaffe Michael B
Cell Decision Processes Center, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA.
Nat Rev Mol Cell Biol. 2006 Nov;7(11):820-8. doi: 10.1038/nrm2041.
New technologies are permitting large-scale quantitative studies of signal-transduction networks. Such data are hard to understand completely by inspection and intuition. 'Data-driven models' help users to analyse large data sets by simplifying the measurements themselves. Data-driven modelling approaches such as clustering, principal components analysis and partial least squares can derive biological insights from large-scale experiments. These models are emerging as standard tools for systems-level research in signalling networks.
新技术使对信号转导网络进行大规模定量研究成为可能。仅通过审视和直觉很难完全理解这类数据。“数据驱动模型”通过简化测量本身来帮助用户分析大型数据集。诸如聚类分析、主成分分析和偏最小二乘法等数据驱动建模方法能够从大规模实验中获取生物学见解。这些模型正逐渐成为信号网络系统层面研究的标准工具。