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Original Articles

A neuroinformatics study to compare inhibition efficiency of three natural ligands (Fawcettimine, Cernuine and Lycodine) against Human Brain Acetylcholinesterase

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Pages 25-34 | Received 25 Sep 2014, Accepted 29 Nov 2014, Published online: 22 Jan 2015
 

Abstract

Enzyme-inhibition is considered as a potent therapeutic approach to the treatment of diseases associated with acetylcholinesterase (AChE). The present study elucidates molecular interactions of human brain AChE, with three natural ligands Lycodine, Cernuine and Fawcettimine for comparison. Docking between these ligands and enzyme was performed using ‘Autodock 4.2’. It was determined that polar and hydrophobic interactions play an important role in the correct positioning of Lycodine, Cernuine and Fawcettimine within the ‘catalytic site’ of AChE to permit docking. This approach would be helpful to understand the selectivity of the given drug molecule in the treatment of neurological disorder. Moreover, the present study confirms that Lycodine is a more efficient inhibitor of human brain AChE compared to Cernuine and Fawcettimine with reference to ΔG and Ki values.

Acknowledgement

Shaikh S is supported by INSPIRE grant from DST, New Delhi, India (Grant Number: IF130056), which is sincerely acknowledged.

Declaration of interest: The authors declare that there is no conflict of interests regarding the publication of this paper.

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