将大麻植物化学物质作为抗 HCV 非核苷直接作用抑制剂的几何深度学习优先排序和验证。

IF 2.3 Q3 ENGINEERING, BIOMEDICAL Biomedical Engineering and Computational Biology Pub Date : 2024-12-12 eCollection Date: 2024-01-01 DOI:10.1177/11795972241306881
Ssemuyiga Charles, Mulumba Pius Edgar
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引用次数: 0

摘要

2014年至2020年,急性丙型肝炎病例数翻了一番,2020年至2021年间,急性丙型肝炎的发病率增加了7%。随着目前采用泛基因型HCV治疗,有必要提高这种治疗的可得性和可及性。然而,在基因型1和基因型5中发现了双重和三重daa耐药变异,在NS3/4A、NS5A和NS5B中存在耐药相关的氨基酸替换(RAASs)。本研究的作用是使用深度学习从大麻化合物数据库(CBD)中筛选新的潜在NS5B抑制剂。方法:使用经过训练的图神经网络(GNN)深度学习模型对CBD化合物进行虚拟筛选。由于其中一些配体具有可旋转键bbb10,因此采用了重新对接和常规对接来验证结果。经过ADMET筛选,从虚拟筛选和对接的前67个命中命中约31个被选中。为了验证他们的候选资格,我们对FEP/MD和分子模拟动力学进行了6次随机命中,以确认他们的候选资格。结果:从深度学习虚拟筛选中筛选出排名前200位的化合物,通过重新对接和常规对接对虚拟筛选结果进行验证。ADMET图谱在31个命中点中是最优的。模拟的配合物表明,这些撞击可能是具有合适的结合亲和力和FEP能量的抑制剂。二磷酸植酸和葡萄糖酸可能是抗NS5B的配体。
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Geometric Deep learning Prioritization and Validation of Cannabis Phytochemicals as Anti-HCV Non-nucleoside Direct-acting Inhibitors.

Introduction: The rate of acute hepatitis C increased by 7% between 2020 and 2021, after the number of cases doubled between 2014 and 2020. With the current adoption of pan-genotypic HCV therapy, there is a need for improved availability and accessibility of this therapy. However, double and triple DAA-resistant variants have been identified in genotypes 1 and 5 with resistance-associated amino acid substitutions (RAASs) in NS3/4A, NS5A, and NS5B. The role of this research was to screen for novel potential NS5B inhibitors from the cannabis compound database (CBD) using Deep Learning.

Methods: Virtual screening of the CBD compounds was performed using a trained Graph Neural Network (GNN) deep learning model. Re-docking and conventional docking were used to validate the results for these ligands since some had rotatable bonds >10. About 31 of the top 67 hits from virtual screening and docking were selected after ADMET screening. To verify their candidacy, 6 random hits were taken for FEP/MD and Molecular Simulation Dynamics to confirm their candidacy.

Results: The top 200 compounds from the deep learning virtual screening were selected, and the virtual screening results were validated by re-docking and conventional docking. The ADMET profiles were optimal for 31 hits. Simulated complexes indicate that these hits are likely inhibitors with suitable binding affinities and FEP energies. Phytil Diphosphate and glucaric acid were suggested as possible ligands against NS5B.

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Geometric Deep learning Prioritization and Validation of Cannabis Phytochemicals as Anti-HCV Non-nucleoside Direct-acting Inhibitors. Computer-Aided Discovery of Abrus precatorius Compounds With Anti-Schistosomal Potential. Synthesis and Application of Sustainable Tricalcium Phosphate Based Biomaterials From Agro-Based Materials: A Review. A Physical Framework to Study the Effect of Magnetic Fields on the Spike-Time Coding. On Mechanical Behavior and Characterization of Soft Tissues.
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