G4-QuadScreen: A Computational Tool for Identifying Multi-Target-Directed Anticancer Leads against G-Quadruplex DNA

Cancers (Basel). 2023 Jul 27;15(15):3817. doi: 10.3390/cancers15153817.

Abstract

The study presents 'G4-QuadScreen', a user-friendly computational tool for identifying MTDLs against G4s. Also, it offers a few hit MTDLs based on in silico and in vitro approaches. Multi-tasking QSAR models were developed using linear discriminant analysis and random forest machine learning techniques for predicting the responses of interest (G4 interaction, G4 stabilization, G4 selectivity, and cytotoxicity) considering the variations in the experimental conditions (e.g., G4 sequences, endpoints, cell lines, buffers, and assays). A virtual screening with G4-QuadScreen and molecular docking using YASARA (AutoDock-Vina) was performed. G4 activities were confirmed via FRET melting, FID, and cell viability assays. Validation metrics demonstrated the high discriminatory power and robustness of the models (the accuracy of all models is ~>90% for the training sets and ~>80% for the external sets). The experimental evaluations showed that ten screened MTDLs have the capacity to selectively stabilize multiple G4s. Three screened MTDLs induced a strong inhibitory effect on various human cancer cell lines. This pioneering computational study serves a tool to accelerate the search for new leads against G4s, reducing false positive outcomes in the early stages of drug discovery. The G4-QuadScreen tool is accessible on the ChemoPredictionSuite website.

Keywords: FID assays; FRET experiments; G4 quadruplex; MTT assays; cancer; drug design; molecular docking; multi-tasking QSAR; virtual screening.

Grants and funding

The study was funded by Marie Skłodowska-Curie Individual Fellowships (H2020-MSCA-IF-2020) (Grant ID: 101029275, Project Acronym: G4-mtQSAR). The in vitro part of the research was partially funded by the Spanish Ministry for Science and Innovation, The National Research Agency and FEDER funds from the EU (grants PID2019-110751RB-I00, PID2019-108643GA-I00, EIN2020-112428, MFA/2022/014, and CEX2019-000919) and the Conselleria de Innovación, Universidades, Ciencia y Sociedad Digital of the Generalitat Valenciana (CIDEGENT/2018/015 y PROMETEO Grant CIPROM/2021/030). This study forms part of the Advanced Materials programme and was supported by MCIN with funding from the European Union NextGenerationEU (PRTR-C17.I1) and by Generalitat Valenciana.