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      "text": "DEL data links DNA sequences to a set of possible molecules. A GNN specially adapted to this structure reduces noise and leverages all molecules in the set to predict binding affinity.\nAnagenex has used this technique to find hits to challenging targets with a >20% confirmation rate (VS 1% for traditional HTS or 5% for docking).\nAnagenex uses the model to design and synthesize new libraries, closing a lab-powered active training loop.",
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