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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.
Liu et al. (Mon,) studied this question.
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