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DeepSuccinylSite: a deep learning based approach for protein succinylation site prediction

机译:Deepsuccinylsite:基于深度学习的蛋白质琥珀酰化位点预测方法

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Protein succinylation has recently emerged as an important and common post-translation modification (PTM) that occurs on lysine residues. Succinylation is notable both in its size (e.g., at 100?Da, it is one of the larger chemical PTMs) and in its ability to modify the net charge of the modified lysine residue from +?1 to ??1 at physiological pH. The gross local changes that occur in proteins upon succinylation have been shown to correspond with changes in gene activity and to be perturbed by defects in the citric acid cycle. These observations, together with the fact that succinate is generated as a metabolic intermediate during cellular respiration, have led to suggestions that protein succinylation may play a role in the interaction between cellular metabolism and important cellular functions. For instance, succinylation likely represents an important aspect of genomic regulation and repair and may have important consequences in the etiology of a number of disease states. In this study, we developed DeepSuccinylSite, a novel prediction tool that uses deep learning methodology along with embedding to identify succinylation sites in proteins based on their primary structure. Using an independent test set of experimentally identified succinylation sites, our method achieved efficiency scores of 79%, 68.7% and 0.48 for sensitivity, specificity and MCC respectively, with an area under the receiver operator characteristic (ROC) curve of 0.8. In side-by-side comparisons with previously described succinylation predictors, DeepSuccinylSite represents a significant improvement in overall accuracy for prediction of succinylation sites. Together, these results suggest that our method represents a robust and complementary technique for advanced exploration of protein succinylation.
机译:蛋白质琥珀酰化最近被出现为赖氨酸残基发生的重要和常见的翻译后修饰(PTM)。琥珀酰化在其尺寸(例如,在100℃时,它是较大的化学PTMS之一,并且在生理pH下将改性赖氨酸残基的净电荷改变为+ + + + 1至10℃。已经显示蛋白质中发生的蛋白质中发生的局部局部变化与基因活性的变化相对应,并通过柠檬酸循环中的缺陷扰动。这些观察结果与琥珀酸盐作为代谢中间体产生的事实导致了蛋白质琥珀酰化可能在细胞代谢与重要细胞功能之间的相互作用中起作用的建议。例如,琥珀酰化可能代表基因组调控和修复的一个重要方面,并且可能对许多疾病状态的病因产生重要的后果。在这项研究中,我们开发了深度琥珀酸盐,一种新的预测工具,一种使用深层学习方法以及嵌入蛋白质中的蛋白质化位点基于其主要结构。使用实验鉴定的琥珀酰化位点的独立测试集,我们的方法分别实现了效率,特异性和MCC的效率评分为79%,68.7%和0.48,其中接收器操作员特征(ROC)曲线为0.8。在与先前描述的琥珀酰化预测因子中的并排比较,DeepSucinylsite表示琥珀酰化位点预测的总体精度的显着改善。这些结果表明,我们的方法代表了蛋白质琥珀酰化的高级探索的稳健和互补技术。

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