Leveraging information across HLA alleles/supertypes improves epitope prediction

被引:44
作者
Heckerman, David [1 ]
Kadie, Carl [1 ]
Listgarten, Jennifer [1 ]
机构
[1] Microsoft Res, Redmond, WA 98052 USA
关键词
classifier; epitope; features; multi-task; prediction;
D O I
10.1089/cmb.2007.R013
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
We present a model for predicting HLA class I restricted CTL epitopes. In contrast to almost all other work in this area, we train a single model on epitopes from all RLA alleles and supertypes, yet retain the ability to make epitope predictions for specific RLA alleles. We are therefore able to leverage data across all HLA alleles and/or their supertypes, automatically learning what information should be shared and also how to combine allele-specific, supertype-specific, and global information in a principled way. We show that this leveraging can improve prediction of epitopes having HLA alleles with known supertypes, and dramatically increases our ability to predict epitopes having alleles which do not fall into any of the known supertypes. Our model, which is based on logistic regression, is simple to implement and understand, is solved by finding a single global maximum, and is more accurate (to our knowledge) than any other model.
引用
收藏
页码:736 / 746
页数:11
相关论文
共 20 条
[11]   An integrative approach to CTL epitope prediction: A combined algorithm integrating MHC class I binding, TAP transport efficiency, and proteasomal cleavage predictions [J].
Larsen, MV ;
Lundegaard, C ;
Lamberth, K ;
Buus, S ;
Brunak, S ;
Lund, O ;
Nielsen, M .
EUROPEAN JOURNAL OF IMMUNOLOGY, 2005, 35 (08) :2295-2303
[12]   The quest for an AIDS vaccine:: is the CD8+ T-cell approach feasible? [J].
McMichael, A ;
Hanke, T .
NATURE REVIEWS IMMUNOLOGY, 2002, 2 (04) :283-291
[13]   Application of an artificial neural network to predict specific class I MHC binding peptide sequences [J].
Milik, M ;
Sauer, D ;
Brunmark, AP ;
Yuan, LL ;
Vitiello, A ;
Jackson, MR ;
Peterson, PA ;
Skolnick, J ;
Glass, CA .
NATURE BIOTECHNOLOGY, 1998, 16 (08) :753-756
[14]   Reliable prediction of T-cell epitopes using neural networks with novel sequence representations [J].
Nielsen, M ;
Lundegaard, C ;
Worning, P ;
Lauemoller, SL ;
Lamberth, K ;
Buus, S ;
Brunak, S ;
Lund, O .
PROTEIN SCIENCE, 2003, 12 (05) :1007-1017
[15]  
PARHAM P, 2004, IMMUNE SYSTEM
[16]  
Platt JC, 2000, ADV NEUR IN, P61
[17]   SYFPEITHI: database for MHC ligands and peptide motifs [J].
Rammensee, HG ;
Bachmann, J ;
Emmerich, NPN ;
Bachor, OA ;
Stevanovic, S .
IMMUNOGENETICS, 1999, 50 (3-4) :213-219
[18]   Enhancement to the RANKPEP resource for the prediction of peptide binding to MHC molecules using profiles [J].
Reche, PA ;
Glutting, JP ;
Zhang, H ;
Reinherz, EL .
IMMUNOGENETICS, 2004, 56 (06) :405-419
[19]  
Yanover C, 2005, LECT NOTES COMPUT SC, V3500, P456
[20]   Application of support vector machines for T-cell epitopes prediction [J].
Zhao, YD ;
Pinilla, C ;
Valmori, D ;
Martin, R ;
Simon, R .
BIOINFORMATICS, 2003, 19 (15) :1978-1984