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Predicting the Druggability of Protein-Protein Interactions Based on Sequence and Structure Features of Active Pockets

机译:基于活性囊的序列和结构特征预测蛋白质-蛋白质相互作用的可药用性

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摘要

Protein-protein interactions (PPIs) are becoming highly attractive targets for drug discovery. Motivated by the rapid accumulation of PPI data in public database and the success stories concerning the targeting of PPIs, a machine-learning method based on sequence and structure properties was developed to access the druggability of PPIs. Here, a comprehensive non-redundant set of 34 druggable and 122 less druggable PPIs were firstly presented from the perspective of pockets. When tested by outer 5-fold cross-validation, the most representative model in discriminating the druggable PPIs from the less-druggable ones yielded an average accuracy of 88.24% (sensitivity of 82.38% and specificity of 92.00%). Moreover, a promising result was also obtained for the independent test set. Compared to other methods, the method gives a comparative performance, which is most likely due to the construction of a training set that encompasses less druggable PPIs and also the information of active pockets that have evolved to bind a natural ligand.
机译:蛋白质间相互作用(PPI)成为药物发现的高度有吸引力的目标。基于公共数据库中PPI数据的快速积累和有关PPI定位的成功案例的推动,人们开发了一种基于序列和结构特性的机器学习方法来访问PPI的可药用性。在这里,首先从口袋的角度提出了一套全面的非冗余的34种可药物治疗的PPI和122种药物较少的PPI。当通过外部5倍交叉验证进行测试时,最能区分可药物性PPI与药物剂量不那么高的模型的平均准确度为88.24%(敏感性为82.38%,特异性为92.00%)。此外,独立测试集也获得了可喜的结果。与其他方法相比,该方法具有比较性能,这很可能是由于构建了一个训练集,该训练集包含较少可药物化的PPI,并且还包含进化为结合天然配体的活性囊的信息。

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