An Interaction-based Approach for Affinity Prediction between Antigen Peptide and Human Leukocyte Antigen Using COMBINE Analysis
[摘要] In peptide vaccine therapy, a peptide with high affinity for human leukocyte antigen (HLA), is important to stimulate the immune system to kill cancer cells. Several methods to predict HLAâpeptide binding have been reported, but most of them rely on informatics to analyze the amino acid sequence of the peptide. Although intermolecular-interaction-based analysis is expected to improve prediction accuracy, such a method generally involves a high computational cost. Therefore, comparative binding energy (COMBINE) analysis, a 3D-quantitative structureâactivity relationship method, combined with a rapidly implemented protein modeling method, was applied to solve this problem. The new method enabled quick evaluation of peptide affinity predictions with accuracy beyond a statistical method. In addition, several amino acid residues of HLA, which are known to be important for peptide binding, could be identified.
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[效力级别] [学科分类] 生物化学/生物物理
[关键词] Peptide vaccine therapy;ããããã¯ã¯ãã³çæ³;Human leukocyte antigen (HLA);Comparative binding energy (COMBINE)analysis;Comparative binding energy (COMBINE) è§£æ;Quantitative structureâactivity relationship;å®éçæ§é æ´»æ§ç¸é¢ [时效性]