Identifiying human MHC supertypes using bioinformatic methods

被引:86
作者
Doytchinova, IA [1 ]
Guan, PP [1 ]
Flower, DR [1 ]
机构
[1] Edward Jenner Inst Vaccine Res, Compton RG 7NN, Berks, England
关键词
D O I
10.4049/jimmunol.172.7.4314
中图分类号
R392 [医学免疫学]; Q939.91 [免疫学];
学科分类号
100102 ;
摘要
Classification of MHC molecules into supertypes in terms of peptide-binding specificities is an important issue, with direct implications for the development of epitope-based vaccines with wide population coverage. In view of extremely high MHC polymorphism (948 class I and 633 class II HLA alleles) the experimental solution of this task is presently impossible. In this study, we describe a bioinformatics; strategy for classifying MHC molecules into supertypes using information drawn solely from three-dimensional protein structure. Two chemometric techniques-hierarchical clustering and principal component analysis-were used independently on a set of 783 HLA class I molecules to identify supertypes based on structural similarities and molecular interaction fields calculated for the peptide binding site. Eight supertypes were defined: A2, A3, A24, B7, B27, B44, C1, and C4. The two techniques gave 77% consensus, i.e., 605 HLA class I alleles were classified in the same supertype by both methods. The proposed strategy allowed "supertype fingerprints" to be identified. Thus, the A2 supertype fingerprint is Tyr(9)/Phe(9), Arg(97), and His(114) or Tyr(116); the A3-Tyr(9)/Phe(9)/Ser(9), Ile(97) /Met(97) and Glut(114) or Asp(116); the A24-Ser(9) and Met(97); the B7-Asn(63) and Leu(81); the B27-Glu(63) and Leu(81); for B44-Ala(81); the C1-Ser(77); and the C4-Asn(77).
引用
收藏
页码:4314 / 4323
页数:10
相关论文
共 45 条
[1]   CLUSTERING OF CHEMICAL STRUCTURES ON THE BASIS OF 2-DIMENSIONAL SIMILARITY MEASURES [J].
BARNARD, JM ;
DOWNS, GM .
JOURNAL OF CHEMICAL INFORMATION AND COMPUTER SCIENCES, 1992, 32 (06) :644-649
[2]   The Protein Data Bank [J].
Berman, HM ;
Westbrook, J ;
Feng, Z ;
Gilliland, G ;
Bhat, TN ;
Weissig, H ;
Shindyalov, IN ;
Bourne, PE .
NUCLEIC ACIDS RESEARCH, 2000, 28 (01) :235-242
[3]   STRUCTURE OF THE HUMAN CLASS-I HISTOCOMPATIBILITY ANTIGEN, HLA-A2 [J].
BJORKMAN, PJ ;
SAPER, MA ;
SAMRAOUI, B ;
BENNETT, WS ;
STROMINGER, JL ;
WILEY, DC .
NATURE, 1987, 329 (6139) :506-512
[4]   THE FOREIGN ANTIGEN-BINDING SITE AND T-CELL RECOGNITION REGIONS OF CLASS-I HISTOCOMPATIBILITY ANTIGENS [J].
BJORKMAN, PJ ;
SAPER, MA ;
SAMRAOUI, B ;
BENNETT, WS ;
STROMINGER, JL ;
WILEY, DC .
NATURE, 1987, 329 (6139) :512-518
[5]   Three-dimensional quantitative structure-activity relationship analyses using comparative molecular field analysis and comparative molecular similarity indices analysis to elucidate selectivity differences of inhibitors binding to trypsin, thrombin, and factor Xa [J].
Böhm, M ;
Stürzebecher, J ;
Klebe, G .
JOURNAL OF MEDICINAL CHEMISTRY, 1999, 42 (03) :458-477
[6]   Prediction of protein side-chain rotamers from a backbone-dependent rotamer library: A new homology modeling tool [J].
Bower, MJ ;
Cohen, FE ;
Dunbrack, RL .
JOURNAL OF MOLECULAR BIOLOGY, 1997, 267 (05) :1268-1282
[7]   Use of structure Activity data to compare structure-based clustering methods and descriptors for use in compound selection [J].
Brown, RD ;
Martin, YC .
JOURNAL OF CHEMICAL INFORMATION AND COMPUTER SCIENCES, 1996, 36 (03) :572-584
[8]   Prediction of promiscuous peptides that bind HLA class I molecules [J].
Brusic, V ;
Petrovsky, N ;
Zhang, GL ;
Bajic, VB .
IMMUNOLOGY AND CELL BIOLOGY, 2002, 80 (03) :280-285
[9]   A geometric study of the amino acid sequence of class I HLA molecules [J].
Cano, P ;
Bo, F ;
Stass, S .
IMMUNOGENETICS, 1998, 48 (05) :324-334
[10]   A roadmap for HLA-A, HLA-B, and HLA-C peptide binding specificities [J].
Chelvanayagam, G .
IMMUNOGENETICS, 1996, 45 (01) :15-26