Hybrid Approach to Identify Druglikeness Leading Compounds against COVID-19 3CL Protease
Imra Aqeel, Abdul Majid

TL;DR
This study presents a hybrid in-silico framework combining QSAR modeling, ADMET analysis, and molecular docking to identify and prioritize drug-like molecules against SARS-CoV-2 3CL Protease, aiding COVID-19 drug discovery.
Contribution
The paper introduces a novel hybrid approach integrating machine learning, ADMET, and docking analyses to efficiently identify potential COVID-19 therapeutics from existing compounds.
Findings
Identified 13 promising bioactive molecules as drug candidates.
Proposed ETR-based QSAR model outperforms other regressors.
Shortlisted six molecules with high binding affinity for further testing.
Abstract
SARS-COV-2 is a positive single-strand RNA-based macromolecule that has caused the death of more than 6.3 million people since June 2022. Moreover, by disturbing global supply chains through lockdown, the virus has indirectly caused devastating damage to the global economy. It is vital to design and develop drugs for this virus and its various variants. In this paper, we developed an in-silico study-based hybrid framework to repurpose existing therapeutic agents in finding drug-like bioactive molecules that would cure Covid-19. We employed the Lipinski rules on the retrieved molecules from the ChEMBL database and found 133 drug-likeness bioactive molecules against SARS coronavirus 3CL Protease. Based on standard IC50, the dataset was divided into three classes active, inactive, and intermediate. Our comparative analysis demonstrated that the proposed Extra Tree Regressor (ETR) based…
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Taxonomy
TopicsComputational Drug Discovery Methods · Diverse Scientific Research Studies · Machine Learning in Bioinformatics
