Journal article

piscesCSM: prediction of anticancer synergistic drug combinations

R AlJarf, CHM Rodrigues, Y Myung, DEV Pires, DB Ascher

Journal of Cheminformatics | Published : 2024

Abstract

Abstract: While drug combination therapies are of great importance, particularly in cancer treatment, identifying novel synergistic drug combinations has been a challenging venture. Computational methods have emerged in this context as a promising tool for prioritizing drug combinations for further evaluation, though they have presented limited performance, utility, and interpretability. Here, we propose a novel predictive tool, piscesCSM, that leverages graph-based representations to model small molecule chemical structures to accurately predict drug combinations with favourable anticancer synergistic effects against one or multiple cancer cell lines. Leveraging these insights, we developed..

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University of Melbourne Researchers