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首页> 外文期刊>Current Bioinformatics >Ubipredictor: A New Tool for Species-Specific Prediction of Ubiquitination Sites Using Linear Discriminant Analysis
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Ubipredictor: A New Tool for Species-Specific Prediction of Ubiquitination Sites Using Linear Discriminant Analysis

机译:Ubipredictor:使用线性判别分析进行物种特定的泛素化位点预测的新工具

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摘要

Ubiquitination is involved in various cellular processes such as protein degradation and stability, cell cycle progression, transcriptional regulation, antigen processing, DNA repair, inflammation and regulation of apoptosis, etc. In silico prediction of potential candidate lysine (K) for ubiquitination will not only save time and money but will also generate valuable data for further scientific research. We developed Ubipredictor (http://chemdp.com/ubipredictor.php) tool for prediction of potential ubiquitinated lysine in protein sequences of human, mouse and yeast dataset using LDA. The statistically significant features selected through LDA were amino acid dimers, position specific score matrix (PSSM) and physicochemical properties of amino acid like electrostatic charge, heat capacity, codon diversity and secondary structure, etc. Testing on three different model organism datasets (human, mouse, yeast) showed that the predictive performance of Ubipredictor was better than two existing tools. On human and mouse datasets, Ubipredictor was found to be more sensitive than Ubipred and Ubpred. Unlike previously designed tools, we trained Ubipredictor specifically on experimentally verified ubiquitinated dataset for each of the human mouse and yeast species.
机译:泛素化涉及各种细胞过程,例如蛋白质降解和稳定性,细胞周期进程,转录调控,抗原加工,DNA修复,炎症和凋亡调控等。计算机预测泛素化的潜在赖氨酸(K)不仅会可以节省时间和金钱,但同时也将产生有价值的数据,以供进一步科学研究。我们开发了Ubipredictor(http://chemdp.com/ubipredictor.php)工具,用于使用LDA预测人,小鼠和酵母数据集蛋白质序列中潜在的泛素化赖氨酸。通过LDA选择的具有统计学意义的特征是氨基酸二聚体,位置比分矩阵(PSSM)和氨基酸的理化特性,例如静电荷,热容量,密码子多样性和二级结构等。在三个不同的模型生物数据集(人,鼠标)显示,Ubipredictor的预测性能优于两个现有工具。在人和小鼠数据集上,发现Ubipredictor比Ubipred和Ubpred更敏感。与以前设计的工具不同,我们在针对每个人类小鼠和酵母物种的经过实验验证的泛素化数据集上专门培训了Ubipredictor。

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