SEPPA-mAb: spatial epitope prediction of protein antigens for mAbs

Author:

Qiu Tianyi12ORCID,Zhang Lu3,Chen Zikun3ORCID,Wang Yuan3,Mao Tiantian3,Wang Caicui3,Cun Yewei1,Zheng Genhui3ORCID,Yan Deyu3ORCID,Zhou Mengdi3,Tang Kailin3ORCID,Cao Zhiwei13

Affiliation:

1. School of Life Sciences, Fudan University , Shanghai  200092, China

2. Institute of Clinical Science, Zhongshan Hospital, Fudan University , Shanghai  200032, China

3. Shanghai Tenth People's Hospital, School of Life Sciences and Technology, Tongji University , Shanghai  200092, China

Abstract

Abstract Identifying the exact epitope positions for a monoclonal antibody (mAb) is of critical importance yet highly challenging to the Ab design of biomedical research. Based on previous versions of SEPPA 3.0, we present SEPPA-mAb for the above purpose with high accuracy and low false positive rate (FPR), suitable for both experimental and modelled structures. In practice, SEPPA-mAb appended a fingerprints-based patch model to SEPPA 3.0, considering the structural and physic-chemical complementarity between a possible epitope patch and the complementarity-determining region of mAb and trained on 860 representative antigen-antibody complexes. On independent testing of 193 antigen-antibody pairs, SEPPA-mAb achieved an accuracy of 0.873 with an FPR of 0.097 in classifying epitope and non-epitope residues under the default threshold, while docking-based methods gave the best AUC of 0.691, and the top epitope prediction tool gave AUC of 0.730 with balanced accuracy of 0.635. A study on 36 independent HIV glycoproteins displayed a high accuracy of 0.918 and a low FPR of 0.058. Further testing illustrated outstanding robustness on new antigens and modelled antibodies. Being the first online tool predicting mAb-specific epitopes, SEPPA-mAb may help to discover new epitopes and design better mAbs for therapeutic and diagnostic purposes. SEPPA-mAb can be accessed at http://www.badd-cao.net/seppa-mab/.

Funder

National Key R&D Program of China

National Natural Science Foundation of China

Shanghai Sailing Program

Publisher

Oxford University Press (OUP)

Subject

Genetics

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