(2024) Identification of new potential candidates to inhibit EGF via machine learning algorithm. European Journal of Pharmacology. p. 176176. ISSN 1879-0712 (Electronic) 0014-2999 (Linking)
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Abstract
One of the cost-effective alternative methods to find new inhibitors has been the repositioning approach of existing drugs. The advantage of computational drug repositioning method is saving time and cost to remove the pre-clinical step and accelerate the drug discovery process. Hence, an ensemble computational-experimental approach, consisting of three steps, a machine learning model, simulation of drug-target interaction and experimental characterization, was developed. The machine learning type used here was a different tree classification method, which is one of the best randomize machine learning model to identify potential inhibitors from weak inhibitors. This model was trained more than one-hundred times, and forty top trained models were extracted for the drug repositioning step. The machine learning step aimed to discover the approved drugs with the highest possible success rate in the experimental step. Therefore, among all the identified molecules with more than 0.9 probability in more than 70 of the models, nine compounds, were selected. Besides, out of the nine chosen drugs, seven compounds have been confirmed to inhibit EGF in the published articles since 2019. Hence, two identified compounds, in addition to gefitinib, as a positive control, five weak-inhibitors and one neutral, were considered via molecular docking study. Finally, the eight proposed drugs, including gefitinib, were investigated using MTT assay and In-Cell ELISA to characterize the drugs' effect on A431 cell growth and EGF-signaling. From our experiments, we could conclude that salicylic acid and piperazine could play an EGF-inhibitor role like gefitinib.
Item Type: | Article |
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Keywords: | Molecular Docking Simulation *Epidermal Growth Factor Gefitinib *Machine Learning Algorithms Drug Repositioning/methods A431 Drug repositioning Egf In-cell ELISA MTT assay Machine learning Tyrosine kinase phosphorylation competing financial interests or personal relationships that could have appeared to influence the work reported in this paper. |
Page Range: | p. 176176 |
Journal or Publication Title: | European Journal of Pharmacology |
Journal Index: | Pubmed |
Volume: | 963 |
Identification Number: | https://doi.org/10.1016/j.ejphar.2023.176176 |
ISSN: | 1879-0712 (Electronic) 0014-2999 (Linking) |
Depositing User: | خانم ناهید ضیائی |
URI: | http://eprints.mui.ac.ir/id/eprint/30349 |
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