Noguchi Hideki, Kato Ryuji, Hanai Taizo, Matsubara Yukari, Honda Hiroyuki, Brusic Vladimir, Kobayashi Takeshi
Department of Biotechnology, School of Engineering, Nagoya University, Furo-cho, Chikusa-ku, Nagoya 464-8603, Japan.
J Biosci Bioeng. 2002;94(3):264-70. doi: 10.1263/jbb.94.264.
Elucidating the interaction between major histocompatibility complex (MHC) molecules and antigenic peptides is fundamental to better understanding of the processes involved in immune responses and for the development of innovative immunotherapies. In the present study, hidden Markov models (HMM) were combined with the successive state splitting (SSS) algorithm for optimization of the HMM structure, to predict peptide binders to the human MHC class II molecule HLA-DRB1*0101. The predictive performance of our model (S-HMM) was compared with fully connected HMM and artificial neural network (ANN) methods using the relative operating characteristic (ROC) analysis. The S-HMM predictions had values of ROC > or = 0.85 which was at least as good, or better than the comparison methods. In addition, S-HMM is trained on positive data only and does not require exhaustive data preprocessing, such as peptide alignment. Our results demonstrated that S-HMM combines the high accuracy of predictions with the simplicity of implementation and is therefore useful for analyzing MHC class II binding peptides. In particular the S-HMM may be trained using only positive data and, the preprocessing of training data, such as peptide alignment and the selection of binding cores, is not required in this method.
阐明主要组织相容性复合体(MHC)分子与抗原肽之间的相互作用,对于更好地理解免疫反应过程以及开发创新免疫疗法至关重要。在本研究中,隐马尔可夫模型(HMM)与连续状态分裂(SSS)算法相结合以优化HMM结构,用于预测人类MHC II类分子HLA - DRB1*0101的肽结合物。使用相对操作特征(ROC)分析,将我们模型(S - HMM)的预测性能与全连接HMM和人工神经网络(ANN)方法进行比较。S - HMM预测的ROC值≥0.85,至少与比较方法一样好或更好。此外,S - HMM仅在阳性数据上进行训练,不需要诸如肽比对等详尽的数据预处理。我们的结果表明,S - HMM将预测的高精度与实现的简单性相结合,因此对于分析MHC II类结合肽很有用。特别是S - HMM可以仅使用阳性数据进行训练,并且该方法不需要对训练数据进行诸如肽比对和结合核心选择等预处理。