Programming Biomolecular Interactions with All-Atom Generative Model

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AI-generated deep summary by claude@2026-06, 2026-06-19 · read from full text

The study presents AnewOmni, a unified all-atom generative framework trained on over 5 million biomolecular complexes, aimed at transferring molecular design strategies across different molecular scales by assembling chemically meaningful atomic building blocks. Using programmable graph prompts, the authors steer generation by chemical, topological, and geometric constraints and show that an atom-to-block latent space can capture interaction patterns and physical priors for small molecules, peptides, and nanobodies. They report designs targeting KRAS G12D and PCSK9 (including binding-site-free orthosteric peptide and allosteric small-molecule inhibitor design) with 23%–75% reported functional success using relatively low-throughput validation. The work’s main limitation is that validation throughput is low, and the paper does not provide details beyond the success ranges for functional confirmation. The paper does not explicitly discuss endometriosis or adenomyosis; it was included in the corpus via a keyword match in the upstream search index.

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ABSTRACT Biomolecular interactions lie at the core of cellular life, spanning diverse molecular modalities from small molecules to nucleic acids and proteins. Nevertheless, design strategies remain separated despite shared physicochemical principles of molecular recognition. Here we present AnewOmni, a unified generative framework trained on more than 5 million biomolecular complexes, that enables transferable molecular design across molecular scales by assembling chemically meaningful building blocks at atomic resolution. We further introduce programmable graph prompts to support user-defined chemical, topological, and geometric steering during generation, exploring hybrid and unconventional chemistries beyond canonical structures. We demonstrate that transferable learning of interaction patterns and physical constraints across molecular modalities is possible, via an atom-to-block latent space capturing both atomic details and structural priors. The framework successfully designed small molecules, peptides, and nanobodies targeting the challenging KRAS G12D switch II pocket, as well as orthosteric peptides and allosteric small-molecule inhibitors for PCSK9 in the absence of known binding site, achieving 23%-75% success with only low-throughput validation, bypassing modality-specific high-throughput screening. AnewOmni is the first to succeed in functional molecular design across all scales, from small chemical entities to large biologics, and represents a stepstone towards general molecular reasoning engines, advocating a generative foundation model for biomolecular interactions to enter regimes where data and human intuition remain limited. Competing Interest Statement The authors have declared no competing interest. Footnotes Section of Code Availability updated to include open-source github links and platforms. Template of the paper updated to include the icons of major organizations.

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europepmc
last seen: 2026-05-20T01:45:00.602351+00:00
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last seen: 2026-05-23T02:00:01.238055+00:00
License: CC-BY-4.0