Center for Integrated Protein Sciences, Department of Biochemistry, Ludwig-Maximilians-University Munich, Munich, Germany.
RNA Biol. 2011 Jan-Feb;8(1):55-60. doi: 10.4161/rna.8.1.14067. Epub 2011 Jan 1.
RNA exosomes are large multi-subunit protein complexes involved in controlled and processive 3' to 5' RNA degradation. Exosomes form large molecular chambers and harbor multiple nuclease sites as well as RNA binding regions. This makes a quantitative kinetic analysis of RNA degradation with reliable parameter and error estimates challenging. For instance, recent quantitative biochemical assays revealed that degradation speed and efficiency depend on various factors, such as the type of RNA binding caps and the RNA length. We propose the combination of a differential equation model with bayesian Markov Chain Monte Carlo (MCMC) sampling for a more robust and reliable analysis of such complex kinetic systems. Using the exosome as a paradigm, it is shown that conventional "best fit" approaches to parameter estimation are outperformed by the MCMC method. The parameter distribution returned by MCMC sampling allows for a reliable and meaningful comparison of the data from different time series. In the case of the exosome, we find that the cap structures of the exosome have a direct effect on the recruitment and degradation of RNA, and that these effects are RNA length-dependent. The described approach can be widely applied to any processive reaction with a similar kinetics like the XRN1-dependent RNA degradation, RNA/DNA synthesis by polymerases, and protein synthesis by the ribosome.
RNA 外泌体是一种大型多亚基蛋白复合物,参与受控和连续的 3' 到 5' RNA 降解。外泌体形成大型分子腔,并含有多个核酸酶位点以及 RNA 结合区域。这使得对 RNA 降解进行定量动力学分析具有可靠的参数和误差估计变得具有挑战性。例如,最近的定量生化分析表明,降解速度和效率取决于各种因素,例如 RNA 结合帽的类型和 RNA 长度。我们提出将微分方程模型与贝叶斯马尔可夫链蒙特卡罗 (MCMC) 抽样相结合,以更稳健和可靠地分析这种复杂的动力学系统。我们以 exosome 为例,表明传统的“最佳拟合”参数估计方法不如 MCMC 方法有效。MCMC 抽样返回的参数分布允许对来自不同时间序列的数据进行可靠且有意义的比较。在 exosome 的情况下,我们发现 exosome 的帽结构对 RNA 的招募和降解有直接影响,并且这些影响与 RNA 长度有关。所描述的方法可以广泛应用于任何具有类似动力学的连续反应,如 XRN1 依赖性 RNA 降解、聚合酶的 RNA/DNA 合成以及核糖体的蛋白质合成。