Learning characteristics of graph neural networks predicting protein-ligand affinities

被引:15
|
作者
Mastropietro, Andrea [1 ,2 ]
Pasculli, Giuseppe [1 ]
Bajorath, Juergen [2 ,3 ]
机构
[1] Sapienza Univ Rome, Dept Comp Control & Management Engn Antonio Rubert, Rome, Italy
[2] Rhein Friedrich Wilhelms Univ, Dept Life Sci Informat, LIMES Program Unit Chem Biol & Med Chem, B IT, Bonn, Germany
[3] Lamarr Inst Machine Learning & Artificial Intellig, Bonn, Germany
基金
欧盟地平线“2020”;
关键词
CLASSIFICATION; QSAR;
D O I
10.1038/s42256-023-00756-9
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In drug design, compound potency prediction is a popular machine learning application. Graph neural networks (GNNs) predict ligand affinity from graph representations of protein-ligand interactions typically extracted from X-ray structures. Despite some promising findings leading to claims that GNNs can learn details of protein-ligand interactions, such predictions are also controversially viewed. For example, evidence has been presented that GNNs might not learn protein-ligand interactions but memorize ligand and protein training data instead. We have carried out affinity predictions with six GNN architectures on community-standard datasets and rationalized the predictions using explainable artificial intelligence. The results confirm a strong influence of ligand-but not protein-memorization during GNN learning and also show that some GNN architectures increasingly prioritize interaction information for predicting high affinities. Thus, while GNNs do not comprehensively account for protein-ligand interactions and physical reality, depending on the model, they balance ligand memorization with learning of interaction patterns. Graph neural networks have proved useful in modelling proteins and their ligand interactions, but it is not clear whether the patterns they identify have biological relevance or whether interactions are merely memorized. Mastropietro et al. use a Shapley value-based method to identify important edges in protein interaction graphs, enabling explanatory analysis of the model mechanisms.
引用
收藏
页码:1427 / 1436
页数:10
相关论文
共 50 条
  • [31] Path-integral method for predicting relative binding affinities of protein-ligand complexes
    Mulakala, Chandrika
    Kaznessis, Yiannis N.
    Journal of the American Chemical Society, 2009, 131 (12): : 4521 - 4528
  • [32] Statistical and machine learning approaches to predicting protein-ligand interactions
    Colwell, Lucy J.
    CURRENT OPINION IN STRUCTURAL BIOLOGY, 2018, 49 : 123 - 128
  • [33] A Comparative Assessment of Conventional and Machine-Learning-Based Scoring Functions in Predicting Binding Affinities of Protein-Ligand Complexes
    Ashtawy, Hossam M.
    Mahapatra, Nihar R.
    2011 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM 2011), 2011, : 627 - 630
  • [34] Enhancing protein-ligand binding affinity prediction through sequential fusion of graph and convolutional neural networks
    Yang, Yimin
    Zhang, Ruiqin
    Lin, Zijing
    JOURNAL OF COMPUTATIONAL CHEMISTRY, 2024, 45 (32) : 2929 - 2940
  • [35] DeepBindGCN: Integrating Molecular Vector Representation with Graph Convolutional Neural Networks for Protein-Ligand Interaction Prediction
    Zhang, Haiping
    Saravanan, Konda Mani
    Zhang, John Z. H.
    MOLECULES, 2023, 28 (12):
  • [36] Predicting protein-ligand binding affinities using transferable atom equivalent (TAE) techniques and machine-learning methods
    Breneman, CM
    Sukumar, N
    Ryan, MD
    Feng, J
    Tropsha, A
    Embrechts, MJ
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2003, 225 : U778 - U778
  • [37] GRAPH NEURAL NETWORKS FOR PREDICTING PROTEIN FUNCTIONS
    Ioannidis, Vassilis N.
    Marques, Antonio G.
    Giannakis, Georgios B.
    2019 IEEE 8TH INTERNATIONAL WORKSHOP ON COMPUTATIONAL ADVANCES IN MULTI-SENSOR ADAPTIVE PROCESSING (CAMSAP 2019), 2019, : 221 - 225
  • [38] Accurate prediction of protein-ligand interactions by combining physical energy functions and graph-neural networks
    Hong, Yiyu
    Ha, Junsu
    Sim, Jaemin
    Lim, Chae Jo
    Oh, Kwang-Seok
    Chandrasekaran, Ramakrishnan
    Kim, Bomin
    Choi, Jieun
    Ko, Junsu
    Shin, Woong-Hee
    Lee, Juyong
    JOURNAL OF CHEMINFORMATICS, 2024, 16 (01):
  • [39] CL-GNN: Contrastive Learning and Graph Neural Network for Protein-Ligand Binding Affinity Prediction
    Zhang, Yunjiang
    Huang, Chenyu
    Wang, Yaxin
    Li, Shuyuan
    Sun, Shaorui
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2025, 65 (04) : 1724 - 1735
  • [40] An all atom energy based computational protocol for predicting binding affinities of protein-ligand complexes
    Jain, T
    Jayaram, B
    FEBS LETTERS, 2005, 579 (29) : 6659 - 6666