Dong Liu, Jun Liu, Haodong Wang, Fang Liang, Guijun Zhang
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DeepUMQA-X: Comprehensive and insightful estimation of model accuracy for protein single-chain and complex
An open protein model quality assessment server is essential for improving the accuracy of structure prediction and advancing the application of protein models in the biology community. In the post-AlphaFold2 era, protein complex structure prediction often relies on large-scale sampling for high-precision structures, while accurate scoring, ranking, and selection of protein models have become critical challenges that urgently need to be addressed. This work presents a comprehensive web server, DeepUMQA-X, which combines our single-model protocols for various evaluation metrics with a consensus strategy for protein model accuracy estimation (EMA). The server supports multiple protein single-chain or complex models as input, providing overall, interface, and residue accuracy estimates for each model. In the CASP16 EMA blind test, DeepUMQA-X achieved top performance across nearly all tracks, including QMODE1, QMODE2, QMODE3, and self-assessment. Remarkably, its single-model protocols outperformed all other single-model methods in accuracy assessment. Additionally, the server ranked first in a one-year (9 June 2023 to 1 June 2024) CAMEO-QE blind test. By integrating single-model approaches with a consensus-based strategy, DeepUMQA-X effectively bridges the performance gap between currently predominant consensus methods and the increasingly demanded single-model methods. The DeepUMQA-X server is freely available at http://zhanglab-bioinf.com/DeepUMQA-X.
期刊介绍:
Nucleic Acids Research (NAR) is a scientific journal that publishes research on various aspects of nucleic acids and proteins involved in nucleic acid metabolism and interactions. It covers areas such as chemistry and synthetic biology, computational biology, gene regulation, chromatin and epigenetics, genome integrity, repair and replication, genomics, molecular biology, nucleic acid enzymes, RNA, and structural biology. The journal also includes a Survey and Summary section for brief reviews. Additionally, each year, the first issue is dedicated to biological databases, and an issue in July focuses on web-based software resources for the biological community. Nucleic Acids Research is indexed by several services including Abstracts on Hygiene and Communicable Diseases, Animal Breeding Abstracts, Agricultural Engineering Abstracts, Agbiotech News and Information, BIOSIS Previews, CAB Abstracts, and EMBASE.