This work highlights the growing significance of computational tools in drug discovery, from atomistic simulations that uncover molecular mechanisms behind therapeutic actions to multivariate analysis for pattern recognition in large datasets. In Chapter 2, two metadynamics-based protocols were set-up and applied to classify M3 receptor antagonists by residence time, contributing to structure-kinetic relationship (SKR) analysis and demonstrating how chemical modifications influence the (un)binding kinetics. Chapter 3 introduces a multiscale computational protocol based on enhanced sampling and QM/MM simulations to characterize the mechanism of action of known azole urea inhibitors of MGL. This approach was successfully applied to drive the synthesis of a new compound, endowed with nanomolar activity. In Chapter 4 a similar computational protocol was applied to investigate the mechanism of action of new tyrosine kinase inhibitors (TKIs) targeting the catalytic lysine of EGFR, designed to overcome the resistance to osimertinib, the front-line treatment for non-small cell lung cancer (NSCLC). Chapter 5 explores alternative strategies to prevent the insurgence of osimertinib resistance in NSCLC investigating the role played by lipid metabolism in cancer cells. Multivariate analysis of lipidomic data obtained from LC-MS experiments on osimertinib-sensitive and -resistant cells revealed that the combination of osimertinib with a glucosylceramide synthase inhibitor (e.g., venglustat) is a promising strategy to delay the onset of resistance, potentially extending the progression-free survival of NSCLC patients.

Big data analysis for drug discovery: from molecular simulations to lipidomics

Francesca, Galvani
2025

Abstract

This work highlights the growing significance of computational tools in drug discovery, from atomistic simulations that uncover molecular mechanisms behind therapeutic actions to multivariate analysis for pattern recognition in large datasets. In Chapter 2, two metadynamics-based protocols were set-up and applied to classify M3 receptor antagonists by residence time, contributing to structure-kinetic relationship (SKR) analysis and demonstrating how chemical modifications influence the (un)binding kinetics. Chapter 3 introduces a multiscale computational protocol based on enhanced sampling and QM/MM simulations to characterize the mechanism of action of known azole urea inhibitors of MGL. This approach was successfully applied to drive the synthesis of a new compound, endowed with nanomolar activity. In Chapter 4 a similar computational protocol was applied to investigate the mechanism of action of new tyrosine kinase inhibitors (TKIs) targeting the catalytic lysine of EGFR, designed to overcome the resistance to osimertinib, the front-line treatment for non-small cell lung cancer (NSCLC). Chapter 5 explores alternative strategies to prevent the insurgence of osimertinib resistance in NSCLC investigating the role played by lipid metabolism in cancer cells. Multivariate analysis of lipidomic data obtained from LC-MS experiments on osimertinib-sensitive and -resistant cells revealed that the combination of osimertinib with a glucosylceramide synthase inhibitor (e.g., venglustat) is a promising strategy to delay the onset of resistance, potentially extending the progression-free survival of NSCLC patients.
Big data analysis for drug discovery: from molecular simulations to lipidomics
22-mag-2025
ENG
molecular simulations
enhanced sampling
metadynamics
residence time
quantum mechanics/molecular mechanics
potential of mean force
covalent drugs
mechanism of action
liquid chromatography-mass spectrometry
lipidomics
muscarinic receptor
monoglyceride lipase
epidermal growth factor receptor
osimertinib-resistance
glucosylceramide synthase
CHEM-07/A
Alessio, Lodola
Università degli Studi di Parma. Dipartimento di Scienze degli alimenti e del farmaco
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14242/213373
Il codice NBN di questa tesi è URN:NBN:IT:UNIPR-213373