基于多体统计势准确预测酶突变体活性。
Accurate prediction of enzyme mutant activity based on a multibody statistical potential.
作者信息
Masso Majid, Vaisman Iosif I
机构信息
Laboratory for Structural Bioinformatics, School of Computational Sciences, George Mason University, 10900 University Boulevard, MSN 5B3, Manassas, VA 20110, USA.
出版信息
Bioinformatics. 2007 Dec 1;23(23):3155-61. doi: 10.1093/bioinformatics/btm509. Epub 2007 Oct 31.
MOTIVATION
An important area of research in biochemistry and molecular biology focuses on characterization of enzyme mutants. However, synthesis and analysis of experimental mutants is time consuming and expensive. We describe a machine-learning approach for inferring the activity levels of all unexplored single point mutants of an enzyme, based on a training set of such mutants with experimentally measured activity.
RESULTS
Based on a Delaunay tessellation-derived four-body statistical potential function, a perturbation vector measuring environmental changes relative to wild type (wt) at every residue position uniquely characterizes each enzyme mutant for model development and prediction. First, a measure of model performance utilizing area (AUC) under the receiver operating characteristic (ROC) curve surpasses 0.83 and 0.77 for data sets of experimental HIV-1 protease and T4 lysozyme mutants, respectively. Additionally, a novel method is introduced for evaluating statistical significance associated with the number of correct test set predictions obtained from a trained model. Third, 100 stratified random splits of the protease and T4 lysozyme mutant data sets into training and test sets achieve 77.0% and 80.8% mean accuracy, respectively. Next, protease and T4 lysozyme models trained with experimental mutants are used to predict activity levels for all remaining mutants; a subsequent search for publications reporting on dozens of these test mutants reveals that experimental results are matched by 79% and 86% of predictions, respectively. Finally, learning curves for each mutant enzyme system indicate the influence of training set size on model performance.
AVAILABILITY
Prediction databases at http://proteins.gmu.edu/automute/
动机
生物化学和分子生物学的一个重要研究领域聚焦于酶突变体的表征。然而,实验突变体的合成与分析既耗时又昂贵。我们描述了一种机器学习方法,该方法基于一组具有实验测量活性的此类突变体训练集,来推断一种酶的所有未探索单点突变体的活性水平。
结果
基于德劳内三角剖分导出的四体统计势函数,一个测量每个残基位置相对于野生型(wt)环境变化的扰动向量,能唯一地表征每个酶突变体,用于模型开发和预测。首先,利用受试者工作特征(ROC)曲线下面积(AUC)来衡量模型性能,对于实验性HIV - 1蛋白酶和T4溶菌酶突变体数据集,该值分别超过0.83和0.77。此外,引入了一种新方法来评估与从训练模型获得的正确测试集预测数量相关的统计显著性。第三,将蛋白酶和T4溶菌酶突变体数据集进行100次分层随机划分为训练集和测试集,平均准确率分别达到77.0%和80.8%。接下来,用实验突变体训练的蛋白酶和T4溶菌酶模型用于预测所有其余突变体的活性水平;随后搜索关于数十个这些测试突变体的出版物报告发现,实验结果分别与79%和86%的预测相匹配。最后,每个突变酶系统的学习曲线表明了训练集大小对模型性能的影响。