Détail du document
Identifiant

oai:arXiv.org:2409.16486

Sujet
Quantitative Biology - Quantitativ... Computer Science - Artificial Inte...
Auteur
Aqeel, Imra
Catégorie

Computer Science

Année

2024

Date de référencement

02/10/2024

Mots clés
covid 19 potential inhibitors
Métrique

Résumé

The global pandemic due to emergence of COVID 19 has created the unrivaled public health crisis.

It has huge morbidity rate never comprehended in the recent decades.

Researchers have made many efforts to find the optimal solution of this pandemic.

Progressively, drug repurposing is an emergent and powerful strategy with saving cost, time, and labor.

Lacking of identified repurposed drug candidates against COVID 19 demands more efforts to explore the potential inhibitors for effective cure.

In this study, we used the combination of molecular docking and machine learning regression approaches to explore the potential inhibitors for the treatment of COVID 19.

We calculated the binding affinities of these drugs to multitarget proteins using molecular docking process.

We perform the QSAR modeling by employing various machine learning regression approaches to identify the potential inhibitors against COVID 19.

Our findings with best scores of R2 and RMSE demonstrated that our proposed Decision Tree Regression (DTR) model is the most appropriate model to explore the potential inhibitors.

We proposed five novel promising inhibitors with their respective Zinc IDs ZINC (3873365, 85432544, 8214470, 85536956, and 261494640) within the range of -19.7 kcal/mol to -12.6 kcal/mol.

We further analyzed the physiochemical and pharmacokinetic properties of these most potent inhibitors to examine their behavior.

The analysis of these properties is the key factor to promote an effective cure for public health.

Our work constructs an efficient structure with which to probe the potential inhibitors against COVID-19, creating the combination of molecular docking with machine learning regression approaches.

;Comment: 22 pages

Aqeel, Imra, 2024, To Explore the Potential Inhibitors against Multitarget Proteins of COVID 19 using In Silico Study

Document

Ouvrir

Partager

Source

Articles recommandés par ES/IODE IA

Lung cancer risk and exposure to air pollution: a multicenter North China case–control study involving 14604 subjects
lung cancer case–control air pollution never-smokers nomogram model controls lung-related 14604 subjects north polluted consistent smokers quit exposure lung cancer risk air people factor smoking pollution study history