Borioni_2020_J.Comput.Aided.Mol.Des_34_1079

Reference

Title : An activity prediction model for steroidal and triterpenoidal inhibitors of Acetylcholinesterase enzyme - Borioni_2020_J.Comput.Aided.Mol.Des_34_1079
Author(s) : Borioni JL , Cavallaro V , Pierini AB , Murray AP , Penenory AB , Puiatti M , Garcia ME
Ref : J Comput Aided Mol Des , 34 :1079 , 2020
Abstract :

Nowadays, the importance of computational methods in the design of therapeutic agents in a more efficient way is indisputable. Particularly, these methods have been important in the design of novel acetylcholinesterase enzyme inhibitors related to Alzheimer's disease. In this sense, in this report a computational model of linear prediction of acetylcholinesterase inhibitory activity of steroids and triterpenes is presented. The model is based in a correlation between binding energies obtained from molecular dynamic simulations (after docking studies) and [Formula: see text] values of a training set. This set includes a family of natural and semi-synthetic structurally related alkaloids reported in bibliography. These types of compounds, with some structural complexity, could be used as building blocks for the synthesis of many important biologically active compounds Therefore, the present study proposes an alternative based on the use of conventional and easily accessible tools to make progress on the rational design of molecules with biological activity.

PubMedSearch : Borioni_2020_J.Comput.Aided.Mol.Des_34_1079
PubMedID: 32632601

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Citations formats

Borioni JL, Cavallaro V, Pierini AB, Murray AP, Penenory AB, Puiatti M, Garcia ME (2020)
An activity prediction model for steroidal and triterpenoidal inhibitors of Acetylcholinesterase enzyme
J Comput Aided Mol Des 34 :1079

Borioni JL, Cavallaro V, Pierini AB, Murray AP, Penenory AB, Puiatti M, Garcia ME (2020)
J Comput Aided Mol Des 34 :1079