GIST-CSBL/G2D-Diff
Official repository of the G2D-Diff
This project helps cancer researchers and drug discovery scientists design new small molecule drug structures tailored to specific cancer genotypes. By inputting complex genomic features of a cancer, it generates diverse, drug-like compounds that are predicted to be effective. This tool is for scientists working in precision oncology and drug development who need to identify potential hit-like drug candidates.
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Use this if you are developing new anti-cancer drugs and need to generate potential small molecule candidates that are specifically designed to target particular cancer genotypes.
Not ideal if you are looking for a tool to test existing drug efficacy or to analyze general drug-target interactions without a focus on de novo molecule generation for specific genotypes.
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Jul 15, 2025
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