Chaudhari Meenal, Thapa Niraj, Ismail Hamid, Chopade Sandhya, Caragea Doina, Köhn Maja, Newman Robert H, Kc Dukka B
Department of Computational Data Science and Engineering, North Carolina A&T State University, Greensboro, NC, United States.
Department of Computer Science, Kansas State University, Manhattan, KS, United States.
Front Cell Dev Biol. 2021 Jun 24;9:662983. doi: 10.3389/fcell.2021.662983. eCollection 2021.
Phosphorylation, which is mediated by protein kinases and opposed by protein phosphatases, is an important post-translational modification that regulates many cellular processes, including cellular metabolism, cell migration, and cell division. Due to its essential role in cellular physiology, a great deal of attention has been devoted to identifying sites of phosphorylation on cellular proteins and understanding how modification of these sites affects their cellular functions. This has led to the development of several computational methods designed to predict sites of phosphorylation based on a protein's primary amino acid sequence. In contrast, much less attention has been paid to dephosphorylation and its role in regulating the phosphorylation status of proteins inside cells. Indeed, to date, dephosphorylation site prediction tools have been restricted to a few tyrosine phosphatases. To fill this knowledge gap, we have employed a transfer learning strategy to develop a deep learning-based model to predict sites that are likely to be dephosphorylated. Based on independent test results, our model, which we termed DTL-DephosSite, achieved efficiency scores for phosphoserine/phosphothreonine residues of 84%, 84% and 0.68 with respect to sensitivity (SN), specificity (SP) and Matthew's correlation coefficient (MCC). Similarly, DTL-DephosSite exhibited efficiency scores of 75%, 88% and 0.64 for phosphotyrosine residues with respect to SN, SP, and MCC.
磷酸化由蛋白激酶介导,并与蛋白磷酸酶作用相反,是一种重要的翻译后修饰,可调节许多细胞过程,包括细胞代谢、细胞迁移和细胞分裂。由于其在细胞生理学中的重要作用,人们投入了大量精力来确定细胞蛋白上的磷酸化位点,并了解这些位点的修饰如何影响其细胞功能。这导致了几种计算方法的发展,旨在根据蛋白质的一级氨基酸序列预测磷酸化位点。相比之下,人们对去磷酸化及其在调节细胞内蛋白质磷酸化状态中的作用关注较少。事实上,迄今为止,去磷酸化位点预测工具仅限于少数酪氨酸磷酸酶。为了填补这一知识空白,我们采用了迁移学习策略来开发一种基于深度学习的模型,以预测可能发生去磷酸化的位点。根据独立测试结果,我们命名为DTL-DephosSite的模型在磷酸丝氨酸/磷酸苏氨酸残基的灵敏度(SN)、特异性(SP)和马修斯相关系数(MCC)方面分别达到了84%、84%和0.68的效率得分。同样,DTL-DephosSite在磷酸酪氨酸残基的SN、SP和MCC方面分别表现出75%、88%和0.64的效率得分。