Identification of Promising Drug Candidates against Prostate Cancer through Computationally-Driven Drug Repurposing

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Abstract

Prostate cancer (PC) is one of the most common types of cancer in males. Although early stages of PC are generally associated with favorable outcomes, advanced phases of the disease present a significantly poorer prognosis. Moreover, currently available therapeutic options for the treatment of PC are still limited, being mainly focused on androgen deprivation therapies and being characterized by low efficacy in patients. As a consequence, there is a pressing need to identify alternative and more effective therapeutics. In this study, we performed large-scale 2D and 3D similarity analyses between compounds reported in the DrugBank database and ChEMBL molecules with reported anti-proliferative activity on various PC cell lines. The analyses included also the identification of biological targets of ligands with potent activity on PC cells, as well as investigations on the activity annotations and clinical data associated with the more relevant compounds emerging from the ligand-based similarity results. The results led to the prioritization of a set of drugs and/or clinically tested candidates potentially useful in drug repurposing against PC.

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Bernal, L., Pinzi, L., & Rastelli, G. (2023). Identification of Promising Drug Candidates against Prostate Cancer through Computationally-Driven Drug Repurposing. International Journal of Molecular Sciences, 24(4). https://doi.org/10.3390/ijms24043135

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