Physical-aware model accuracy estimation for protein complex using deep learning method

被引:0
|
作者
Wang, Haodong [1 ]
Sun, Meng [1 ]
Xie, Lei [1 ]
Liu, Dong [1 ]
Zhang, Guijun [1 ]
机构
[1] Zhejiang Univ Technol, Coll Informat Engn, Hangzhou 310023, Peoples R China
关键词
Estimation of model accuracy; Single-model method; Protein complex structure prediction; PREDICTION; SCORE;
D O I
10.1016/j.csbj.2025.01.017
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
With the breakthrough of AlphaFold2 on monomers, the research focus of structure prediction has shifted to protein complexes, driving the continued development of new methods for multimer structure prediction. Therefore, it is crucial to accurately estimate quality scores for the multimer model independent of the used prediction methods. In this work, we propose a physical-aware deep learning method, DeepUMQA-PA, to evaluate the residue-wise quality of protein complex models. Given the input protein complex model, the residue-based contact area and orientation features were first constructed using Voronoi tessellation, representing the potential physical interactions and hydrophobic properties. Then, the relationship between local residues and the overall complex topology as well as the inter-residue evolutionary information are characterized by geometry-based features, protein language model embedding representation, and knowledge-based statistical potential features. Finally, these features are fed into a fused network architecture employing equivalent graph neural network and ResNet network to estimate residue-wise model accuracy. Experimental results on the CASP15 test set demonstrate that our method outperforms the state-of-the-art method DeepUMQA3 by 3.69% and 3.49% on Pearson and Spearman, respectively. Notably, our method achieved 16.8% and 15.5% improvement in Pearson and Spearman, respectively, for the evaluation of nanobody-antigens. In addition, DeepUMQA-PA achieved better MAE scores than AlphaFold-Multimer and AlphaFold3 self-assessment methods on 43 % and 50% of the targets, respectively. All these results suggest that physical-aware information based on the area and orientation of atom-atom and atom-solvent contacts has the potential to capture sequence-structurequality relationships of proteins, especially in the case of flexible proteins. The DeepUMQA-PA server is freely available at http://zhanglab-bioinf.com/DeepUMQA-PA/.
引用
收藏
页码:478 / 487
页数:10
相关论文
共 50 条
  • [1] Physical-aware Memory BIST Datapath Synthesis: Architecture and Case-studies on Complex SoCs
    Devanathan, V. R.
    Bhavsar, Sunil
    Mehrotra, Rajat
    2011 20TH ASIAN TEST SYMPOSIUM (ATS), 2011, : 457 - 458
  • [2] Evaluation of DNA-protein complex structures using the deep learning method
    Zeng, Chengwei
    Jian, Yiren
    Zhuo, Chen
    Li, Anbang
    Zeng, Chen
    Zhao, Yunjie
    PHYSICAL CHEMISTRY CHEMICAL PHYSICS, 2023, 26 (01) : 130 - 143
  • [3] Recent advances and challenges in protein complex model accuracy estimation
    Liang, Fang
    Sun, Meng
    Xie, Lei
    Zhao, Xuanfeng
    Liu, Dong
    Zhao, Kailong
    Zhang, Guijun
    COMPUTATIONAL AND STRUCTURAL BIOTECHNOLOGY JOURNAL, 2024, 23 : 1824 - 1832
  • [4] Assessment of protein model structure accuracy estimation in CASP13: Challenges in the era of deep learning
    Won, Jonghun
    Baek, Minkyung
    Monastyrskyy, Bohdan
    Kryshtafovych, Andriy
    Seok, Chaok
    PROTEINS-STRUCTURE FUNCTION AND BIOINFORMATICS, 2019, 87 (12) : 1351 - 1360
  • [5] Enhancing the accuracy of wind speed estimation model using an efficient hybrid deep learning algorithm
    Singh, Sarvendra Kumar
    Jha, S. K.
    Gupta, Rahul
    SUSTAINABLE ENERGY TECHNOLOGIES AND ASSESSMENTS, 2024, 61
  • [6] Accuracy-Aware Compression of Channel Impulse Responses using Deep Learning
    Altstidl, Thomas
    Kram, Sebastian
    Herrmann, Oskar
    Stahlke, Maximilian
    Feigl, Tobias
    Mutschler, Christopher
    INTERNATIONAL CONFERENCE ON INDOOR POSITIONING AND INDOOR NAVIGATION (IPIN 2021), 2021,
  • [7] Learning physical-aware diffusion priors for zero-shot restoration of scattering-affected images
    Qiao, Yuanjian
    Shao, Mingwen
    Meng, Lingzhuang
    Zuo, Wangmeng
    PATTERN RECOGNITION, 2025, 163
  • [8] Improved protein structure refinement guided by deep learning based accuracy estimation
    Hiranuma, Naozumi
    Park, Hahnbeom
    Baek, Minkyung
    Anishchenko, Ivan
    Dauparas, Justas
    Baker, David
    NATURE COMMUNICATIONS, 2021, 12 (01)
  • [9] Improved protein structure refinement guided by deep learning based accuracy estimation
    Naozumi Hiranuma
    Hahnbeom Park
    Minkyung Baek
    Ivan Anishchenko
    Justas Dauparas
    David Baker
    Nature Communications, 12
  • [10] Classifying WiFi "Physical Fingerprints" using Complex Deep Learning
    Smith, Logan
    Smith, Nicholas
    Hopkins, Joshua
    Rayborn, Daniel
    Ball, John E.
    Tang, Bo
    Young, Maxwell
    AUTOMATIC TARGET RECOGNITION XXX, 2020, 11394