The Virtual Lab of AI agents designs new SARS-CoV-2 nanobodies.

Publication date: Jul 29, 2025

Science frequently benefits from teams of interdisciplinary researchers, but many scientists do not have easy access to experts from multiple fields. While large language models (LLMs) have shown an impressive ability to aid researchers across diverse domains, their uses have been largely limited to answering specific scientific questions rather than performing open-ended research. Here, we expand the capabilities of LLMs for science by introducing the Virtual Lab, an AI-human research collaboration to perform sophisticated, interdisciplinary science research. The Virtual Lab consists of an LLM principal investigator agent guiding a team of LLM scientist agents through a series of research meetings, with a human researcher providing high-level feedback. We apply the Virtual Lab to design nanobody binders to recent variants of SARS-CoV-2. The Virtual Lab creates a novel computational nanobody design pipeline that incorporates ESM, AlphaFold-Multimer, and Rosetta and designs 92 new nanobodies. Experimental validation reveals a range of functional nanobodies with promising binding profiles across SARS-CoV-2 variants. In particular, two new nanobodies exhibit improved binding to the recent JN. 1 or KP. 3 variants while maintaining strong binding to the ancestral viral spike protein, suggesting exciting candidates for further investigation. This demonstrates how the Virtual Lab can rapidly make an impactful, real-world scientific discovery.

Concepts Keywords
Benefits Agents
Nanobodies Binding
Principal Cov
Researchers Design
Viral Designs
Interdisciplinary
Lab
Llm
Llms
Nanobodies
Research
Sars
Scientific
Variants
Virtual

Semantics

Type Source Name
disease IDO protein

Original Article

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