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Öğe From Deep Learning to the Discovery of Promising VEGFR-2 Inhibitors(Wiley-V C H Verlag Gmbh, 2024) Yucel, Mehmet Ali; Adal, Ercan; Aktekin, Mine Buga; Hepokur, Ceylan; Gambacorta, Nicola; Nicolotti, Orazio; Algul, OztekinVascular endothelial growth factor receptor 2 (VEGFR-2) stands as a prominent therapeutic target in oncology, playing a critical role in angiogenesis, tumor growth, and metastasis. FDA-approved VEGFR-2 inhibitors are associated with diverse side effects. Thus, finding novel and more effective inhibitors is of utmost importance. In this study, a deep learning (DL) classification model was first developed and then employed to select putative active VEGFR-2 inhibitors from an in-house chemical library including 187 druglike compounds. A pool of 18 promising candidates was shortlisted and screened against VEGFR-2 by using molecular docking. Finally, two compounds, RHE-334 and EA-11, were prioritized as promising VEGFR-2 inhibitors by employing PLATO, our target fishing and bioactivity prediction platform. Based on this rationale, we prepared RHE-334 and EA-11 and successfully tested their anti-proliferative potential against MCF-7 human breast cancer cells with IC50 values of 26.78 +/- 4.02 and 38.73 +/- 3.84 mu M, respectively. Their toxicities were instead challenged against the WI-38. Interestingly, expression studies indicated that, in the presence of RHE-334, VEGFR-2 was equal to 0.52 +/- 0.03, thus comparable to imatinib equal to 0.63 +/- 0.03. In conclusion, this workflow based on theoretical and experimental approaches demonstrates effective in identifying VEGFR-2 inhibitors and can be easily adapted to other medicinal chemistry goals. Cancer research aims for safer VEGFR-2 inhibitors. Using deep learning, we identified two promising candidates, RHE-334 and EA-11, prioritized through molecular docking and PLATO platform. In MCF-7 cells, RHE-334 showed significant anti-proliferative potential, comparable to imatinib. This study offers a novel approach for VEGFR-2 inhibition, demonstrating its adaptability to other medicinal chemistry pursuits. image