
QSAR, molecular docking, and molecular designs of some anti-epilepsy compounds
Usman Abdulfatai, Stephen Ejeh, Abduljelil Ajala, Samuel Ndaghiya Adawara, Olasupo Sabitu Babatunde, Zakari Ya’u Ibrahim
Intelligent Pharmacy ›› 2024, Vol. 2 ›› Issue (3) : 427-434.
QSAR, molecular docking, and molecular designs of some anti-epilepsy compounds
Epilepsy is a non-communicable central nervous system (CNS) disease that accounts for approximately 0.8–1.2% of the global population at any time. The hyper-activities of gamma butyric acid aminotransferase (GABAAT) enzyme have been confirmed to be largely responsible for seizure/epilepsy. Because of this special function, the GABAAT enzyme has been the main target of many anti-epilepsy drugs (AEDs). To date, many discovered AEDs have not eradicated this neurological disease. Since experimental determinations of modern drugs are usually costly and sometimes non-eco-friendly, in-silco quantitative structure–activity relationship (QSAR)-machine learning, docking and pharmacokinetics (PMK) techniques were used to design and test the oral bio-availabilities of all the designed AEDs. QSAR models were generated, and the predictive properties of R2int = 0.9827, R2ext = 0.9407, and R2adj of 0.9667 indicate the evidence that the developed model was not by chance. Six (6) new AEDs were newly designed, and they were found to have better anti-epileptic activities values of 2.146799, 2.224866, 2.31479, 2.450313, 2.301474, and 2.618303 than the standard AED, Vigabatrin (0.40672). Also, the docked new compounds shows excellent binding energies of -127.001, -129.071, -130.515, -126.881, -130.771, and -126.974 kcal/mol compared to the referenced AED (-76.9173 kcal/mol). The PMK and absorption, distribution, metabolism, excretion, and toxicity (ADMET) investigations also revealed that all the designed compounds were found to be bio-available for human administration. ‘Therefore, the newly designed analogues (AEDs) could be considered as potential drug candidates for the treatment of epilepsy.
QSAR / AEDs / PMK / ADMET / GABAAT / CNS / Epilepsy
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