Naseer Sheraz, Ali Rao Faizan, Khan Yaser Daanial, Dominic P D D
Department of Computer Science, University of Management and Technology, Lahore, Pakistan.
Department of Computer and Information Sciences, Universiti Teknologi PETRONAS, Perak Darul Ridzuan, Malaysia.
J Biomol Struct Dyn. 2022;40(22):11691-11704. doi: 10.1080/07391102.2021.1962738. Epub 2021 Aug 16.
Lysine glutarylation is a post-translation modification which plays an important regulatory role in a variety of physiological and enzymatic processes including mitochondrial functions and metabolic processes both in eukaryotic and prokaryotic cells. This post-translational modification influences chromatin structure and thereby results in global regulation of transcription, defects in cell-cycle progression, DNA damage repair, and telomere silencing. To better understand the mechanism of lysine glutarylation, its identification in a protein is necessary, however, experimental methods are time-consuming and labor-intensive. Herein, we propose a new computational prediction approach to supplement experimental methods for identification of lysine glutarylation site prediction by deep neural networks and Chou's Pseudo Amino Acid Composition (PseAAC). We employed well-known deep neural networks for feature representation learning and classification of peptide sequences. Our approach opts raw pseudo amino acid compositions and obsoletes the need to separately perform costly and cumbersome feature extraction and selection. Among the developed deep learning-based predictors, the standard neural network-based predictor demonstrated highest scores in terms of accuracy and all other performance evaluation measures and outperforms majority of previously reported predictors without requiring expensive feature extraction process. iGluK-Deep:Computational Identification of lysine glutarylationsites using deep neural networks with general Pseudo Amino Acid Compositions Sheraz Naseer, Rao Faizan Ali, Yaser Daanial Khan, P.D.D DominicCommunicated by Ramaswamy H. Sarma.
赖氨酸戊二酰化是一种翻译后修饰,在包括真核细胞和原核细胞的线粒体功能及代谢过程在内的多种生理和酶促过程中发挥着重要的调节作用。这种翻译后修饰会影响染色质结构,从而导致转录的全局调控、细胞周期进程缺陷、DNA损伤修复以及端粒沉默。为了更好地理解赖氨酸戊二酰化的机制,有必要在蛋白质中对其进行鉴定,然而,实验方法既耗时又费力。在此,我们提出一种新的计算预测方法,通过深度神经网络和周氏伪氨基酸组成(PseAAC)来补充用于鉴定赖氨酸戊二酰化位点预测的实验方法。我们采用著名的深度神经网络进行肽序列的特征表示学习和分类。我们的方法选择原始伪氨基酸组成,不再需要单独进行昂贵且繁琐的特征提取和选择。在已开发的基于深度学习的预测器中,基于标准神经网络的预测器在准确性和所有其他性能评估指标方面表现出最高分数,并且在不需要昂贵的特征提取过程的情况下优于大多数先前报道的预测器。iGluK-Deep:使用具有通用伪氨基酸组成的深度神经网络对赖氨酸戊二酰化位点进行计算鉴定 谢拉兹·纳赛尔、拉奥·法赞·阿里、亚西尔·达尼亚尔·汗、P.D.D·多米尼克 由拉马斯瓦米·H·萨尔马传达