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Augmented base pairing networks encode RNA-small molecule binding preferences

机译:增强碱基配对网络编码RNA小分子结合偏好

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RNA-small molecule binding is a key regulatory mechanism which can stabilize 3D structures and activate molecular functions. The discovery of RNA-targeting compounds is thus a current topic of interest for novel therapies. Our work is a first attempt at bringing the scalability and generalization abilities of machine learning methods to the problem of RNA drug discovery, as well as a step towards understanding the interactions which drive binding specificity. Our tool, RNAmigos, builds and encodes a network representation of RNA structures to predict likely ligands for novel binding sites. We subject ligand predictions to virtual screening and show that we are able to place the true ligand in the 71st-73rd percentile in two decoy libraries, showing a significant improvement over several baselines, and a state of the art method. Furthermore, we observe that augmenting structural networks with non-canonical base pairing data is the only representation able to uncover a significant signal, suggesting that such interactions are a necessary source of binding specificity. We also find that pre-training with an auxiliary graph representation learning task significantly boosts performance of ligand prediction. This finding can serve as a general principle for RNA structure-function prediction when data is scarce. RNAmigos shows that RNA binding data contains structural patterns with potential for drug discovery, and provides methodological insights for possible applications to other structure-function learning tasks.
机译:RNA-小分子结合是可以稳定3D结构并激活分子函数的关键调节机制。因此,发现RNA靶向化合物的目前对新疗法感兴趣的话题。我们的作品是首次尝试将机器学习方法的可扩展性和泛化能力带到RNA药物发现问题,以及理解驱动结合特异性的相互作用的步骤。我们的工具,R.Nigos,构建和编码RNA结构的网络表示,以预测新型结合位点的可能配体。我们对虚拟筛选的配体预测,并表明我们能够将真正的配体放置在两个诱饵文库中的71±73百分位中,显示出几种基线的显着改善,以及现有的方法。此外,我们观察到具有非规范基础配对数据的增强结构网络是能够揭示重要信号的唯一表示,表明这种相互作用是结合特异性的必要源。我们还发现,使用辅助图表表示学习任务的预训练显着提高了配体预测的性能。当数据稀缺时,该发现可以作为RNA结构功能预测的一般原则。 Ramigos表明RNA绑定数据包含具有药物发现潜力的结构模式,并为其他结构功能学习任务提供了可能应用的方法。

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