Site4Drug: Predicting Drug-Binding Target Sites with an AI Agent

June 01, 2026 Β· Grace Period Β· πŸ› the ICML 2026 Workshop on Generative and Agentic AI for Biology

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Authors Taehan Kim, Sarrah Rose Mikhail Leung, Bharat Mekala, Jeongbin Park arXiv ID 2606.01816 Category q-bio.BM Cross-listed cs.LG Citations 0 Venue the ICML 2026 Workshop on Generative and Agentic AI for Biology
Abstract
Selecting where to intervene on a protein (i.e., choosing a targetable site) is often a more ambiguous and failure-prone bottleneck than selecting what binds, especially for membrane proteins where accessibility, topology, and post-translational modifications (PTMs) constrain actionable regions. We present Site4Drug, a modality-aware site-finding agent that outputs a ranked list of targetable regions with explicit constraints, evidence summaries, risk flags, and a traceable decision log. Rather than requiring users to specify the drug modality upfront, Site4Drug can recommend a binding modality (e.g., antibody/peptide-like vs small-molecule) from the same evidence used for site discovery, including topology, hydropathy, PTM propensity, disulfides, domain context, and sequence. Importantly, this evidence is applied consistently across modalities, including small-molecule pocket discovery, to avoid selecting chemically plausible but biologically occluded sites.
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