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Tytuł pozycji:

AK-Score: Accurate Protein-Ligand Binding Affinity Prediction Using an Ensemble of 3D-Convolutional Neural Networks.

Tytuł:
AK-Score: Accurate Protein-Ligand Binding Affinity Prediction Using an Ensemble of 3D-Convolutional Neural Networks.
Autorzy:
Kwon Y; Department of Chemistry, Kangwon National University, Gangwon-do, Chuncheon 24341, Korea.
Shin WH; Department of Chemical Science Education, Sunchon National University, Jeollanam-do, Suncheon 57922, Korea.
Ko J; Arontier, 241 Gangnam-daero, Seocho-gu, Seoul 06735, Korea.
Lee J; Department of Chemistry, Kangwon National University, Gangwon-do, Chuncheon 24341, Korea.
Źródło:
International journal of molecular sciences [Int J Mol Sci] 2020 Nov 10; Vol. 21 (22). Date of Electronic Publication: 2020 Nov 10.
Typ publikacji:
Journal Article
Język:
English
Imprint Name(s):
Original Publication: Basel, Switzerland : MDPI, [2000-
MeSH Terms:
Neural Networks, Computer*
Protein Binding*
Proteins/*chemistry
Proteins/*metabolism
Computer-Aided Design ; Databases, Protein ; Deep Learning ; Drug Design ; Drug Discovery ; Humans ; Ligands ; Molecular Docking Simulation ; Molecular Dynamics Simulation ; User-Computer Interface
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Grant Information:
2019M3E5D4066897 National Research Foundation of Korea; 2019M3E5D4066898 National Research Foundation of Korea; 2020R1F1A1075998 National Research Foundation of Korea; 2018R1C1B600543513 National Research Foundation of Korea; C1014914-01-01 Arontier; KSC-2018-CRE-0039 National Supercomputing Center with supercomputing resources
Contributed Indexing:
Keywords: ResNext; binding affinity prediction; convolutional neural network; deep learning; docking score; protein-ligand binding affinity
Substance Nomenclature:
0 (Ligands)
0 (Proteins)
Entry Date(s):
Date Created: 20201113 Date Completed: 20210505 Latest Revision: 20240330
Update Code:
20240330
PubMed Central ID:
PMC7697539
DOI:
10.3390/ijms21228424
PMID:
33182567
Czasopismo naukowe
Accurate prediction of the binding affinity of a protein-ligand complex is essential for efficient and successful rational drug design. Therefore, many binding affinity prediction methods have been developed. In recent years, since deep learning technology has become powerful, it is also implemented to predict affinity. In this work, a new neural network model that predicts the binding affinity of a protein-ligand complex structure is developed. Our model predicts the binding affinity of a complex using the ensemble of multiple independently trained networks that consist of multiple channels of 3-D convolutional neural network layers. Our model was trained using the 3772 protein-ligand complexes from the refined set of the PDBbind-2016 database and tested using the core set of 285 complexes. The benchmark results show that the Pearson correlation coefficient between the predicted binding affinities by our model and the experimental data is 0.827, which is higher than the state-of-the-art binding affinity prediction scoring functions. Additionally, our method ranks the relative binding affinities of possible multiple binders of a protein quite accurately, comparable to the other scoring functions. Last, we measured which structural information is critical for predicting binding affinity and found that the complementarity between the protein and ligand is most important.
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