In Silico Screening of Natural Flavonoids against 3-Chymotrypsin-like Protease of SARS-CoV-2 Using Machine Learning and Molecular Modeling.
Lianjin CaiFengyang HanBeihong JiXibing HeLuxuan WangTaoyu NiuJingchen ZhaiJunmei WangPublished in: Molecules (Basel, Switzerland) (2023)
The "Long-COVID syndrome" has posed significant challenges due to a lack of validated therapeutic options. We developed a novel multi-step virtual screening strategy to reliably identify inhibitors against 3-chymotrypsin-like protease of SARS-CoV-2 from abundant flavonoids, which represents a promising source of antiviral and immune-boosting nutrients. We identified 57 interacting residues as contributors to the protein-ligand binding pocket. Their energy interaction profiles constituted the input features for Machine Learning (ML) models. The consensus of 25 classifiers trained using various ML algorithms attained 93.9% accuracy and a 6.4% false-positive-rate. The consensus of 10 regression models for binding energy prediction also achieved a low root-mean-square error of 1.18 kcal/mol. We screened out 120 flavonoid hits first and retained 50 drug-like hits after predefined ADMET filtering to ensure bioavailability and safety profiles. Furthermore, molecular dynamics simulations prioritized nine bioactive flavonoids as promising anti-SARS-CoV-2 agents exhibiting both high structural stability (root-mean-square deviation < 5 Å for 218 ns) and low MM/PBSA binding free energy (<-6 kcal/mol). Among them, KB-2 (PubChem-CID, 14630497) and 9- O -Methylglyceofuran (PubChem-CID, 44257401) displayed excellent binding affinity and desirable pharmacokinetic capabilities. These compounds have great potential to serve as oral nutraceuticals with therapeutic and prophylactic properties as care strategies for patients with long-COVID syndrome.
Keyphrases
- sars cov
- molecular dynamics simulations
- machine learning
- molecular docking
- respiratory syndrome coronavirus
- binding protein
- healthcare
- dna binding
- case report
- clinical practice
- coronavirus disease
- deep learning
- palliative care
- emergency department
- artificial intelligence
- quality improvement
- resistance training
- mass spectrometry
- heavy metals
- risk assessment
- transcription factor
- protein kinase
- electronic health record
- human health
- chronic pain
- health insurance