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A novel algorithm for the virtual screening of extensive small molecule libraries against ERCC1/XPF protein-protein interaction for the identification of resistance-bypassing potential anticancer molecules.
Ghazy, Salma; Oktay, Lalehan; Durdagi, Serdar.
Affiliation
  • Ghazy S; Department of Biophysics, Computational Biology and Molecular Simulations Laboratory, School of Medicine, Bahçesehir University, Istanbul, Turkiye.
  • Oktay L; Lab for Innovative Drugs (Lab4IND), Computational Drug Design Center (HITMER), Bahçesehir University, Istanbul, Turkiye.
  • Durdagi S; Department of Biophysics, Computational Biology and Molecular Simulations Laboratory, School of Medicine, Bahçesehir University, Istanbul, Turkiye.
Turk J Biol ; 48(2): 91-111, 2024.
Article in En | MEDLINE | ID: mdl-39051064
ABSTRACT
Background and

aim:

Cancer cell's innate chemotherapeutic resistance continues to be an obstacle in molecular oncology. This theory is firmly tied to the cancer cells' integral DNA repair mechanisms continuously neutralizing the effects of chemotherapy. Amidst these mechanisms, the nuclear excision repair pathway is crucial in renovating DNA lesions prompted by agents like Cisplatin. The ERCC1/XPF complex stands center-stage as a structure-specific endonuclease in this repair pathway. Targeting the ERCC1/XPF dimerization brings forth a strategy to augment chemotherapy by eschewing the resistance mechanism integral to cancer cells. This study tracks and identifies small anticancer molecules, with ERCC1/XPF inhibiting potential, within extensive small-molecule compound libraries. Materials and

methods:

A novel hybrid virtual screening algorithm, conjoining ligand- and target-based approaches, was developed. All-atom molecular dynamics (MD) simulations were then run on the obtained hit molecules to reveal their structural and dynamic contributions within the binding site. MD simulations were followed by MM/GBSA calculations to qualify the change in binding free energies of the protein/ligand complexes throughout MD simulations.

Results:

Conducted analyses highlight new potential inhibitors AN-487/40936989 from the SPECS SC library, K219-1359, and K786-1161 from the ChemDiv Representative Set library as showing better predicted activity than previously discovered ERCC1/XPF inhibitor, CHEMBL3617209.

Conclusion:

The algorithm implemented in this study expands our comprehension of chemotherapeutic resistance and how to overcome it through identifying ERCC1/XPF inhibitors with the aim of enhancing chemotherapeutic impact giving hope for ameliorated cancer treatment outcomes.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Turk J Biol Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Turk J Biol Year: 2024 Document type: Article