Bayrak Cigdem Sevim, Erman Burak
Computational Science and Engineering Program, Koc University, 34450, Sariyer, Istanbul, Turkey.
Mol Biosyst. 2012 Nov;8(11):3010-6. doi: 10.1039/c2mb25181g. Epub 2012 Sep 6.
In this work, we present a computational scheme for finding high probability conformations of peptides. The scheme calculates the probability of a given conformation of the given peptide sequence using the probability distribution of torsion states. Dependence of the states of a residue on the states of its first neighbors along the chain is considered. Prior probabilities of torsion states are obtained from a coil library. Posterior probabilities are calculated by the matrix multiplication Rotational Isomeric States Model of polymer theory. The conformation of a peptide with highest probability is determined by using a hidden Markov model Viterbi algorithm. First, the probability distribution of the torsion states of the residues is obtained. Using the highest probability torsion state, one can generate, step by step, states with lower probabilities. To validate the method, the highest probability state of residues in a given sequence is calculated and compared with probabilities obtained from the Coil Databank. Predictions based on the method are 32% better than predictions based on the most probable states of residues. The ensemble of "n" high probability conformations of a given protein is also determined using the Viterbi algorithm with multistep backtracking.
在这项工作中,我们提出了一种用于寻找肽的高概率构象的计算方案。该方案使用扭转状态的概率分布来计算给定肽序列的给定构象的概率。考虑了残基状态对其沿链的第一个相邻残基状态的依赖性。扭转状态的先验概率从卷曲文库中获得。后验概率通过聚合物理论的矩阵乘法旋转异构体状态模型计算。具有最高概率的肽的构象通过使用隐马尔可夫模型维特比算法来确定。首先,获得残基扭转状态的概率分布。使用最高概率的扭转状态,可以逐步生成概率较低的状态。为了验证该方法,计算给定序列中残基的最高概率状态,并与从卷曲数据库获得的概率进行比较。基于该方法的预测比基于残基最可能状态的预测要好32%。还使用具有多步回溯的维特比算法来确定给定蛋白质的“n”个高概率构象的集合。