TY - JOUR
T1 - Evaluation of spatial epitope computational tools based on experimentally-confirmed dataset for protein antigens
AU - Xu, Xiao Lian
AU - Sun, Jing
AU - Liu, Qi
AU - Wang, Xiao Jing
AU - Xu, Tian Lei
AU - Zhu, Rui Xin
AU - Wu, Di
AU - Cao, Zhi Wei
N1 - Funding Information:
This work was supported by the National Basic Research Program of China (2010CB833601 and 2006AA02312), Shanghai Education Development Foundation (2000236018 and 2000236016), Young Excellent Talents in Tongji University (2008KJ073) and Shanghai Municipal Natural Science Foundation (07ZR14085).
PY - 2010
Y1 - 2010
N2 - Antibody molecules interact with antigen proteins through the epitope area, where the epitope residues are found to be discontinuous or spatial or conformational rather than linear on the protein surface. There are various computational algorithms to predict the spatial epitopes, and each of them have an outstanding performance based on their individual testing dataset. In this work, an independent dataset was created through collection of the epitope residual sites which have been confirmed by experiments. Based on this dataset, 6 popular web-servers developed for B-cell structural epitope prediction, including SEPPA, CEP, DiscoTope, ElliPro, PEPOP and BEpro, were evaluated and compared according to sensitivity, the positive predictive value, the successful pick-up rate and the area under the curve of the receiver operator characteristic (AUC). The results showed that the general performance of spatial epitope prediction tools did obtain substantial advancement, and SEPPA gave the best performance among the 6 tools. However, the current prediction accuracy was still far from satisfaction. Moreover, our comparison elucidated that the performance of the web-servers was significantly affected by their training datasets and the algorithms adopted. In this sense, the results of our research may improve the design of B-cell epitope prediction tools and provide additional clues when the users utilize these tools in their related research.
AB - Antibody molecules interact with antigen proteins through the epitope area, where the epitope residues are found to be discontinuous or spatial or conformational rather than linear on the protein surface. There are various computational algorithms to predict the spatial epitopes, and each of them have an outstanding performance based on their individual testing dataset. In this work, an independent dataset was created through collection of the epitope residual sites which have been confirmed by experiments. Based on this dataset, 6 popular web-servers developed for B-cell structural epitope prediction, including SEPPA, CEP, DiscoTope, ElliPro, PEPOP and BEpro, were evaluated and compared according to sensitivity, the positive predictive value, the successful pick-up rate and the area under the curve of the receiver operator characteristic (AUC). The results showed that the general performance of spatial epitope prediction tools did obtain substantial advancement, and SEPPA gave the best performance among the 6 tools. However, the current prediction accuracy was still far from satisfaction. Moreover, our comparison elucidated that the performance of the web-servers was significantly affected by their training datasets and the algorithms adopted. In this sense, the results of our research may improve the design of B-cell epitope prediction tools and provide additional clues when the users utilize these tools in their related research.
KW - Conformational epitope
KW - Discontinuous epitope
KW - Epitope prediction
KW - Independent dataset
KW - Protein antigen
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U2 - 10.1007/s11434-010-3199-z
DO - 10.1007/s11434-010-3199-z
M3 - Article
AN - SCOPUS:77954521521
SN - 1001-6538
VL - 55
SP - 2169
EP - 2174
JO - Chinese Science Bulletin
JF - Chinese Science Bulletin
IS - 20
ER -