State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou 510060, China.
School of Life Sciences, Zhengzhou University, Zhengzhou 450001, China.
Brief Bioinform. 2020 Sep 25;21(5):1798-1805. doi: 10.1093/bib/bbz107.
Protein lysine acetylation regulation is an important molecular mechanism for regulating cellular processes and plays critical physiological and pathological roles in cancers and diseases. Although massive acetylation sites have been identified through experimental identification and high-throughput proteomics techniques, their enzyme-specific regulation remains largely unknown. Here, we developed the deep learning-based protein lysine acetylation modification prediction (Deep-PLA) software for histone acetyltransferase (HAT)/histone deacetylase (HDAC)-specific acetylation prediction based on deep learning. Experimentally identified substrates and sites of several HATs and HDACs were curated from the literature to generate enzyme-specific data sets. We integrated various protein sequence features with deep neural network and optimized the hyperparameters with particle swarm optimization, which achieved satisfactory performance. Through comparisons based on cross-validations and testing data sets, the model outperformed previous studies. Meanwhile, we found that protein-protein interactions could enrich enzyme-specific acetylation regulatory relations and visualized this information in the Deep-PLA web server. Furthermore, a cross-cancer analysis of acetylation-associated mutations revealed that acetylation regulation was intensively disrupted by mutations in cancers and heavily implicated in the regulation of cancer signaling. These prediction and analysis results might provide helpful information to reveal the regulatory mechanism of protein acetylation in various biological processes to promote the research on prognosis and treatment of cancers. Therefore, the Deep-PLA predictor and protein acetylation interaction networks could provide helpful information for studying the regulation of protein acetylation. The web server of Deep-PLA could be accessed at http://deeppla.cancerbio.info.
蛋白质赖氨酸乙酰化调控是调节细胞过程的重要分子机制,在癌症和疾病中发挥着关键的生理和病理作用。尽管通过实验鉴定和高通量蛋白质组学技术已经鉴定了大量的乙酰化位点,但它们的酶特异性调控在很大程度上仍然未知。在这里,我们开发了基于深度学习的蛋白质赖氨酸乙酰化修饰预测(Deep-PLA)软件,用于基于深度学习的组蛋白乙酰转移酶(HAT)/组蛋白去乙酰化酶(HDAC)特异性乙酰化预测。从文献中整理了几种 HAT 和 HDAC 的实验鉴定的底物和位点,以生成酶特异性数据集。我们整合了各种蛋白质序列特征与深度神经网络,并使用粒子群优化优化超参数,从而达到了令人满意的性能。通过基于交叉验证和测试数据集的比较,该模型优于先前的研究。同时,我们发现蛋白质-蛋白质相互作用可以丰富酶特异性乙酰化调控关系,并在 Deep-PLA 网络服务器中可视化此信息。此外,对乙酰化相关突变的跨癌症分析表明,乙酰化调控在癌症中受到突变的强烈干扰,并在癌症信号的调控中起着重要作用。这些预测和分析结果可能为揭示各种生物过程中蛋白质乙酰化的调控机制提供有价值的信息,以促进对癌症预后和治疗的研究。因此,Deep-PLA 预测器和蛋白质乙酰化相互作用网络可以为研究蛋白质乙酰化的调控提供有价值的信息。Deep-PLA 的网络服务器可以在 http://deeppla.cancerbio.info 访问。