Noguchi H, Hanai T, Honda H, Harrison L C, Kobayashi T
Department of Biotechnology, Graduate School of Engineering, Nagoya University, Furo-cho, Chikusa-ku, Nagoya 464-8603, Japan.
J Biosci Bioeng. 2001;92(3):227-31. doi: 10.1263/jbb.92.227.
Characterizing the interaction between major histocompatibility complex (MHC) molecules and antigenic peptides is critical for understanding immunity and developing immunotherapies for autoimmune diseases and cancer. To identify the peptide binding motif and predict peptides that bind to the human MHC classII molecule HLA-DR4(*0401), we applied a fuzzy neural network (FNN) capable of extracting the relationship between input and output. Analysis of the peptide binding motif revealed that the hydrophilicity of the position 1 residue located on the N-terminal side of the nonamer (9mer) was the most important variable and that the van der Waals volume and hydrophilicity of the position 6 residue and the hydrophilicity of the position 7 residue were also important variables. The estimation accuracy (A(ROC) value) was high and the binding motif extracted from the FNN agreed with that derived experimentally. This study demonstrates that FNN modeling allows candidate antigenic peptides to be selected without the need for further experiments.
表征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理解免疫以及开发针对自身免疫性疾病和癌症的免疫疗法至关重要。为了确定肽结合基序并预测与人MHC II类分子HLA - DR4(* 0401)结合的肽,我们应用了一种能够提取输入与输出之间关系的模糊神经网络(FNN)。对肽结合基序的分析表明,位于九聚体(9mer)N端侧的第1位残基的亲水性是最重要的变量,并且第6位残基的范德华体积和亲水性以及第7位残基的亲水性也是重要变量。估计准确性(A(ROC)值)很高,并且从FNN中提取的结合基序与通过实验得出的一致。这项研究表明,FNN建模无需进一步实验即可选择候选抗原肽。