Improved prediction of post-translational modification crosstalk within proteins using DeepPCT.

Yu-Xiang Huang, Rong Liu
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Abstract

Motivation: Post-translational modification (PTM) crosstalk events play critical roles in biological processes. Several machine learning methods have been developed to identify PTM crosstalk within proteins, but the accuracy is still far from satisfactory. Recent breakthroughs in deep learning and protein structure prediction could provide a potential solution to this issue.

Results: We proposed DeepPCT, a deep learning algorithm to identify PTM crosstalk using AlphaFold2-based structures. In this algorithm, one deep learning classifier was constructed for sequence-based prediction by combining the residue and residue pair embeddings with cross-attention techniques, while the other classifier was established for structure-based prediction by integrating the structural embedding and a graph neural network. Meanwhile, a machine learning classifier was developed using novel structural descriptors and a random forest model to complement the structural deep learning classifier. By integrating the three classifiers, DeepPCT outperformed existing algorithms in different evaluation scenarios and showed better generalizability on new data owing to its less distance dependency.

Availability: Datasets, codes, and models of DeepPCT are freely accessible at https://github.com/hzau-liulab/DeepPCT/.

Supplementary information: Supplementary data are available at Bioinformatics online.

利用 DeepPCT 改进蛋白质翻译后修饰串扰的预测。
动机翻译后修饰(PTM)串联事件在生物过程中起着至关重要的作用。目前已开发出几种机器学习方法来识别蛋白质内的 PTM 串扰,但其准确性仍远远不能令人满意。最近在深度学习和蛋白质结构预测方面取得的突破为解决这一问题提供了可能:我们提出了一种深度学习算法 DeepPCT,利用基于 AlphaFold2 的结构来识别 PTM 串扰。在该算法中,一个深度学习分类器是通过将残基和残基对嵌入与交叉关注技术相结合来构建的,用于基于序列的预测;另一个分类器是通过将结构嵌入与图神经网络相结合来建立的,用于基于结构的预测。同时,利用新型结构描述符和随机森林模型开发了一种机器学习分类器,作为结构深度学习分类器的补充。通过整合这三种分类器,DeepPCT在不同的评估场景中表现优于现有算法,并且由于其较小的距离依赖性,在新数据上表现出更好的普适性:DeepPCT的数据集、代码和模型可在https://github.com/hzau-liulab/DeepPCT/.Supplementary information上免费获取:补充数据可在 Bioinformatics online 上获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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