Computational Immunomics
Computational immunomics applies bioinformatics methods to gain a deeper understanding of the immune system. Furthermore it assists medical research by providing computational models which help to solve immunology-related problems. In our group several aspects of computational immunomics are covered. Our research is supported by the SFB685 grant "Immuntherapie: Von den molekularen Grundlagen zur klinischen Anwendung".
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Antigen processing pathwayDevelopment and integration of methods for modelling all steps of the antigen processing pathway for MHC class I. This includes proteasomal cleavage, TAP transport, and MHC binding. |
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CAPWe have contributed to the development of the CAP database which is focused on proteins causing autoimmune responses in cancer. |
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MHC-peptide binding predictionUse of sequence- as well as structure-based methods for predicting the binding of peptides to molecules of MHC class I and II. |
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MS-ProteomicsAnalysis of mass spectrometry data generated by immunology-related experiments. Methods implemented in our OpenMS framework are extended to support this type of analysis. |
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T-cell receptorDevelopment of methods for structure prediction of the ternary MHC-peptide-TCR complex. |
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Vaccine designUse of experimental and predicted data to design an optimal vaccine. |
Teaching
- Lectures and seminars covering some of these topics are offered regularly.
Prediction services
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EpiToolKitEpiToolKit offers a variety of different prediction methods for major histocompatibility complex class I and II ligands (i.a. SVMHC, SYFPEITHI, Bimas) as well as minor histocompatibility antigens. These predictions are embedded in a user-friendly interface allowing refining, editing and constraining the searches conveniently. |
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SVMHCA method for predicting MHC class I binding peptide based on support vector machines. |
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WAPPA combined prediction server for the major events of the MHC class I processing pathway. |
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SVMTAPA beta-version of a prediction server for peptide affinity for TAP. |
Publications
- Pfeifer, N and Kohlbacher, O (2008). Multiple Instance Learning Allows MHC Class II Epitope Predictions across Alleles. Lecture Notes in Bioinformatics: Proceedings of WABI 2008, in press
- Feldhahn, M, Thiel, P, Schuler, M M, illen, N, Stevanovic, S, Rammensee, HG and Kohlbacher, O (2008). EpiToolKit - a web server for computational immunomics Nucleic Acids Res. 2008 Jul;36(Web Server issue):W519-W522.
- Dönnes, P, and Kohlbacher, O (2006). SVMHC: a server for prediction of MHC-binding peptides Nucleic Acids Res. 2006 Jul 1;34(Web Server issue):W194-7.
- Supper, J, Dönnes, P, and Kohlbacher, O (2005). Analysis of MHC-Peptide Binding Using Amino Acid Property-Based Decision Rules Springer Lecture Notes in Computer Science (LNCS) 3686:446-453.
- Dönnes, P, and Kohlbacher, O (2005). Integrated modelling of the major events in the MHC class I antigen processing pathway Protein Sci. 14(8):2132--2140.
- Schuler, MM, Dönnes, P, Nastke, M, Kohlbacher, O, Rammensee, H, and Stevanovic, S (2005). SNEP: SNP-derived Epitope Prediction program for minor H antigens. Immunogenetics 57(11):816-820.
- Istrail, S, Florea, L, Halldorsson, BV, Kohlbacher, O, Schwartz, RS, Yap, VB, Yewdell, JW, and Hoffman, SL (2004). Comparative Immuno-Peptidomics of Humans and their Pathogens Proc. Natl. Acad. Sci. USA 101(36):13268.
- Dönnes, P, Höglund, A, Sturm, M, Comtesse, N, Backes, C, Meese, E, Kohlbacher, O, and Lenhof, H (2004). Integrative analysis of cancer-related data using CAP FASEB Journal 18(12):1465-1467.
- Dönnes, P, and Elofsson, A (2002). Prediction of MHC class I binding peptides, using SVMHC BMC Bioinformatics 3(25).



