Angelo Murphy, Bhargava Yash, Kierzek Elzbieta, Kierzek Ryszard, Hayes Ryan L, Zhang Wen, Vilseck Jonah Z, Aoki Scott Takeo
Department of Biochemistry and Molecular Biology, Indiana University School of Medicine, Indianapolis, IN 46202, USA.
Institute of Bioorganic Chemistry, Polish Academy of Sciences, Poznan 61-704, Poland.
bioRxiv. 2024 Dec 11:2024.12.10.627848. doi: 10.1101/2024.12.10.627848.
RNA-binding proteins shape biology through their widespread functions in RNA biochemistry. Their function requires the recognition of specific RNA motifs for targeted binding. These RNA binding elements can be composed of both unmodified and chemically modified RNAs, of which over 170 chemical modifications have been identified in biology. Unmodified RNA sequence preferences for RNA-binding proteins have been widely studied, with numerous methods available to identify their preferred sequence motifs. However, only a few techniques can detect preferred RNA modifications, and no current method can comprehensively screen the vast array of hundreds of natural RNA modifications. Prior work demonstrated that λ-dynamics is an accurate in silico method to predict RNA base binding preferences of an RNA-binding antibody. This work extends that effort by using λ-dynamics to predict unmodified and modified RNA binding preferences of human Pumilio, a prototypical RNA binding protein. A library of RNA modifications was screened at eight nucleotide positions along the RNA to identify modifications predicted to affect Pumilio binding. Computed binding affinities were compared with experimental data to reveal high predictive accuracy. In silico force field accuracies were also evaluated between CHARMM and Amber RNA force fields to determine the best parameter set to use in binding calculations. This work demonstrates that λ-dynamics can predict RNA interactions to a bona fide RNA-binding protein without the requirements of chemical reagents or new methods to experimentally test binding at the bench. Advancing in silico methods like λ-dynamics will unlock new frontiers in understanding how RNA modifications shape RNA biochemistry.
RNA结合蛋白通过其在RNA生物化学中的广泛功能塑造生物学过程。它们的功能需要识别特定的RNA基序以进行靶向结合。这些RNA结合元件可以由未修饰的和化学修饰的RNA组成,其中在生物学中已鉴定出超过170种化学修饰。RNA结合蛋白对未修饰RNA序列的偏好已得到广泛研究,有多种方法可用于识别它们偏好的序列基序。然而,只有少数技术能够检测偏好的RNA修饰,目前还没有方法可以全面筛选数百种天然RNA修饰的庞大阵列。先前的工作表明,λ动力学是一种准确的计算机模拟方法,可预测RNA结合抗体的RNA碱基结合偏好。这项工作通过使用λ动力学来预测典型RNA结合蛋白人类Pumilio对未修饰和修饰RNA的结合偏好,扩展了这一努力。在RNA上沿八个核苷酸位置筛选了一个RNA修饰文库,以识别预测会影响Pumilio结合的修饰。将计算出的结合亲和力与实验数据进行比较,以揭示高预测准确性。还评估了CHARMM和Amber RNA力场之间的计算机模拟力场准确性,以确定在结合计算中使用的最佳参数集。这项工作表明,λ动力学可以预测与真正的RNA结合蛋白的RNA相互作用,而无需化学试剂或新方法在实验台上测试结合。像λ动力学这样的计算机模拟方法的进步将为理解RNA修饰如何塑造RNA生物化学开辟新的前沿领域。