Abstract
This paper presents a new fast and accurate web service for protein model quality analysis, called PSICA (Protein Structural Information Conformity Analysis). It is designed to evaluate how much a tertiary model of a given protein primary sequence conforms to the known protein structures of similar protein sequences, and to evaluate the quality of predicted protein models. PSICA implements the MUfoldQA-S method, an efficient state-of-the-art protein model quality assessment (QA) method. In CASP12, MUfoldQA-S ranked No. 1 in the protein model QA select-20 category in terms of the difference between the predicted and true GDT-TS value of each model. For a given predicted 3D model, PSICA generates (i) predicted global GDT-TS value; (ii) interactive comparison between the model and other known protein structures; (iii) visualization of the predicted local quality of the model; and (iv) JSmol rendering of the model. Additionally, PSICA implements MUfoldQA-C, a new consensus method based on MUfoldQA-S. In CASP12, MUfoldQA-C ranked No. 1 in top 1 model GDT-TS loss on the select-20 QA category and No. 2 in the average difference between the predicted and true GDT-TS value of each model for both select-20 and best-150 QA categories. The PSICA server is freely available at http://qas.wangwb.com/∼wwr34/mufoldqa/index.html.
Cite
CITATION STYLE
Wang, W., Li, Z., Wang, J., Xu, D., & Shang, Y. (2019). PSICA: a fast and accurate web service for protein model quality analysis. Nucleic Acids Research, 47(W1), W443–W450. https://doi.org/10.1093/nar/gkz402
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