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基于深度学习的物种特异性蛋白质 S-谷胱甘肽化位点预测。

Deep learning based prediction of species-specific protein S-glutathionylation sites.

机构信息

School of Life Sciences, Zhengzhou University, Zhengzhou 450001, China.

State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou 510060, China.

出版信息

Biochim Biophys Acta Proteins Proteom. 2020 Jul;1868(7):140422. doi: 10.1016/j.bbapap.2020.140422. Epub 2020 Mar 29.

DOI:10.1016/j.bbapap.2020.140422
PMID:32234550
Abstract

As a widespread and reversible post-translational modification of proteins, S-glutathionylation specifically generates the mixed disulfides between cysteine residues and glutathione, which regulates various biological processes including oxidative stress, nitrosative stress and signal transduction. The identification of proteins and specific sites that undergo S-glutathionylation is crucial for understanding the underlying mechanisms and regulatory effects of S-glutathionylation. Experimental identification of S-glutathionylation sites is laborious and time-consuming, whereas computational predictions are more attractive due to their high speed and convenience. Here, we developed a novel computational framework DeepGSH (http://deepgsh.cancerbio.info/) for species-specific S-glutathionylation sites prediction, based on deep learning and particle swarm optimization algorithms. 5-fold cross validation indicated that DeepGSH was able to achieve an AUC of 0.8393 and 0.8458 for Homo sapiens and Mus musculus. According to critical evaluation and comparison, DeepGSH showed excellent robustness and better performance than existing tools in both species, demonstrating DeepGSH was suitable for S-glutathionylation prediction. The prediction results of DeepGSH might provide guidance for experimental validation of S-glutathionylation sites and helpful information to understand the intrinsic mechanisms.

摘要

作为一种广泛存在且可逆的蛋白质翻译后修饰方式,S-谷胱甘肽化特别生成半胱氨酸残基和谷胱甘肽之间的混合二硫键,从而调节各种生物过程,包括氧化应激、硝化应激和信号转导。鉴定发生 S-谷胱甘肽化的蛋白质和特定位点对于理解 S-谷胱甘肽化的潜在机制和调节作用至关重要。S-谷胱甘肽化位点的实验鉴定既费力又费时,而计算预测则因其速度快、方便而更具吸引力。在这里,我们基于深度学习和粒子群优化算法,开发了一种新的计算框架 DeepGSH(http://deepgsh.cancerbio.info/),用于物种特异性的 S-谷胱甘肽化位点预测。5 折交叉验证表明,DeepGSH 能够分别为智人和小鼠实现 AUC 为 0.8393 和 0.8458。根据关键评估和比较,DeepGSH 在两个物种中的稳健性和性能均优于现有工具,表明 DeepGSH 适用于 S-谷胱甘肽化预测。DeepGSH 的预测结果可能为 S-谷胱甘肽化位点的实验验证提供指导,并为理解内在机制提供有用信息。

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