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首页> 外文期刊>WSEAS Transactions on Biology and Biomedicine >The evaluation of protein folding rate constant is improved by predicting the folding kinetic order with a SVM-based method
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The evaluation of protein folding rate constant is improved by predicting the folding kinetic order with a SVM-based method

机译:通过基于SVM的方法预测折叠动力学顺序可以改善蛋白质折叠速率常数的评估

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Protein folding is a problem of large interest since it concerns the mechanism by which the genetic information is translated into proteins with well defined three-dimensional (3D) structures and functions. Recent data on protein folding suggest that several pathologies such as prion and Alzheimer diseases may be due to change in protein stability during folding processes. Recently theoretical models have been developed to predict the protein folding rate considering the relationships of the process with tolopological parameters derived from the native (atomic-solved) protein structures. Previous works classified proteins in two different groups exhibiting either a single-exponential or a multi-exponential folding kinetics. It is well known that these two classes of proteins are related to different protein structural features. The increasing number of available experimental kinetic data allows the application to the problem of a machine learning approach, in order to predict the kinetic order of the folding process starting from the experimental data so far collected. This information can be used to improve the prediction of the folding rate. In this work first we describe a support vector machine-based method (SVM-KO) to predict for a given protein the kinetic order of the folding process. Using this method we can classify correctly 78% of the folding mechanisms over a set of 63 experimental data. Secondly we focus on the prediction of the logarithm of the folding rate. This value can be obtained as a linear regression task with a SVM-based method. In this paper we show that linear correlation of the predicted with experimental data can improve when the regression task is computed over two different sets, instead of one, each of them composed by the proteins with a correctly predicted two state or multistate kinetic order.
机译:蛋白质折叠是一个备受关注的问题,因为它涉及将遗传信息转化为具有明确定义的三维(3D)结构和功能的蛋白质的机制。关于蛋白质折叠的最新数据表明,几种疾病,例如pr病毒和阿尔茨海默氏病可能是由于折叠过程中蛋白质稳定性的变化所致。考虑到该过程与衍生自天然(原子溶解的)蛋白质结构的拓扑学参数之间的关系,最近已经开发了理论模型来预测蛋白质折叠速率。先前的工作将蛋白质分为两个不同的组,它们分别表现出单指数或多指数折叠动力学。众所周知,这两类蛋白质与不同的蛋白质结构特征有关。越来越多的可用实验动力学数据允许将其应用于机器学习方法的问题,以便从迄今为止收集的实验数据开始预测折叠过程的动力学顺序。该信息可用于改善折叠率的预测。在这项工作中,我们首先描述一种基于支持向量机的方法(SVM-KO),以预测给定蛋白质折叠过程的动力学顺序。使用这种方法,我们可以在一组63个实验数据中正确分类78%的折叠机制。其次,我们专注于折叠率对数的预测。可以使用基于SVM的方法将其作为线性回归任务获得。在本文中,我们表明,当在两个不同的集合(而不是一个集合)上计算回归任务时,预测值与实验数据的线性相关性会改善,而每个集合均由具有正确预测的两个状态或多状态动力学顺序的蛋白质组成。

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