Davies Matthew N, Sansom Clare E, Beazley Claude, Moss David S
School of Crystallography, Birkbeck College, University of London, London, UK.
Mol Med. 2003 Sep-Dec;9(9-12):220-5. doi: 10.2119/2003-00032.sansom.
Antigenic peptide is presented to a T-cell receptor through the formation of a stable complex with a Major Histocompatibility Complex (MHC) molecule. Various predictive algorithms have been developed to estimate a peptide's capacity to form a stable complex with a given MHC Class II allele, a technique integral to the strategy of vaccine design. These have previously incorporated such computational techniques as quantitative matrices and neural networks. We have developed a novel predictive technique that uses molecular modeling of predetermined crystal structures to estimate the stability of an MHC Class II peptide complex. This is the 1st structure-based technique, as previous methods have been based on binding data. ROC curves are used to quantify the accuracy of the molecular modeling technique. The novel predictive technique is found to be comparable with the best predictive software currently available.
抗原肽通过与主要组织相容性复合体(MHC)分子形成稳定复合物而呈递给T细胞受体。已经开发了各种预测算法来估计肽与给定的II类MHC等位基因形成稳定复合物的能力,这是疫苗设计策略中不可或缺的一项技术。这些算法以前采用了定量矩阵和神经网络等计算技术。我们开发了一种新颖的预测技术,该技术利用预定晶体结构的分子模型来估计II类MHC肽复合物的稳定性。这是第一种基于结构的技术,因为以前的方法是基于结合数据的。ROC曲线用于量化分子建模技术的准确性。发现这种新颖的预测技术与目前可用的最佳预测软件相当。