首页> 外文期刊>Biochimica et biophysica acta: BBA: International journal of biochemistry, biophysics and molecular biololgy. Proteins and Proteomics >Predictive models of protease specificity based on quantitative protease-activity profiling data
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Predictive models of protease specificity based on quantitative protease-activity profiling data

机译:基于定量蛋白酶活性分析数据的蛋白酶特异性预测模型

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摘要

Bioinformatics-based prediction of protease substrates can help to elucidate regulatory proteolytic pathways that control a broad range of biological processes such as apoptosis and blood coagulation. The majority of published predictive models are position weight matrices (PWM) reflecting specificity of proteases toward target sequence. These models are typically derived from experimental data on positions of hydrolyzed peptide bonds and show a reasonable predictive power. New emerging techniques that not only register the cleavage position but also measure catalytic efficiency of proteolysis are expected to improve the quality of predictions or at least substantially reduce the number of tested substrates required for confident predictions. The main goal of this study was to develop new prediction models based on such data and to estimate the performance of the constructed models. We used data on catalytic efficiency of proteolysis measured for eight major human matrix metalloproteinases to construct predictive models of protease specificity using a variety of regression analysis techniques. The obtained results suggest that efficiency-based (quantitative) models show a comparable performance with conventional PWM-based algorithms, while less training data are required. The derived list of candidate cleavage sites in human secreted proteins may serve as a starting point for experimental analysis.
机译:基于生物信息学的蛋白酶基材的预测可以有助于阐明调节蛋白水解途径,其控制广泛的生物方法如细胞凋亡和血液凝固。大多数公布的预测模型是将蛋白酶朝向靶序列的特异性反射的位置重量矩阵(PWM)。这些模型通常来自关于水解肽键的位置的实验数据,并显示出合理的预测力。预计不仅注册裂解位置而且测量蛋白水解催化效率的新的新兴技术预计将提高预测的质量或至少基本上减少自信预测所需的测试基板的数量。本研究的主要目标是基于此类数据开发新的预测模型,并估计构造模型的性能。我们使用了八大人基质金属蛋白酶测量的蛋白水解催化效率的数据,以使用各种回归分析技术构建蛋白酶特异性的预测模型。所获得的结果表明,基于效率的(定量)模型显示出具有传统PWM的算法的可比性,而需要较少的训练数据。人分泌蛋白质中的候选裂解位点的衍生列表可以作为实验分析的起点。

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