Multi-Target Oncology Lead Identification Through Graph Neural Networks: AI-Driven Platforms for Cancer Drug Discovery
Keywords:
multi-target oncology lead identification, graph neural networks, platforms, cancer drug discovery, machine learningAbstract
Cancer is one of the most devastating diseases worldwide. The traditional avenue of treating patients has been through chemotherapy, but a recent innovation has transformed the growth of early 21st-century biotech companies. Drugs that act on molecular targets in tumors have revolutionized the treatment of cancer because each different drug can reduce the size of tumors at a different site.Downloads
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