» Articles » PMID: 38993729

ProtAgents: Protein Discovery Large Language Model Multi-agent Collaborations Combining Physics and Machine Learning

Overview
Journal Digit Discov
Date 2024 Jul 12
PMID 38993729
Authors
Affiliations
Soon will be listed here.
Abstract

Designing proteins beyond those found in nature holds significant promise for advancements in both scientific and engineering applications. Current methodologies for protein design often rely on AI-based models, such as surrogate models that address end-to-end problems by linking protein structure to material properties or . However, these models frequently focus on specific material objectives or structural properties, limiting their flexibility when incorporating out-of-domain knowledge into the design process or comprehensive data analysis is required. In this study, we introduce ProtAgents, a platform for protein design based on Large Language Models (LLMs), where multiple AI agents with distinct capabilities collaboratively address complex tasks within a dynamic environment. The versatility in agent development allows for expertise in diverse domains, including knowledge retrieval, protein structure analysis, physics-based simulations, and results analysis. The dynamic collaboration between agents, empowered by LLMs, provides a versatile approach to tackling protein design and analysis problems, as demonstrated through diverse examples in this study. The problems of interest encompass designing new proteins, analyzing protein structures and obtaining new first-principles data - natural vibrational frequencies - physics simulations. The concerted effort of the system allows for powerful automated and synergistic design of proteins with targeted mechanical properties. The flexibility in designing the agents, on one hand, and their capacity in autonomous collaboration through the dynamic LLM-based multi-agent environment on the other hand, unleashes great potentials of LLMs in addressing multi-objective materials problems and opens up new avenues for autonomous materials discovery and design.

Citing Articles

Molecular analysis and design using generative artificial intelligence multi-agent modeling.

Stewart I, Buehler M Mol Syst Des Eng. 2025; .

PMID: 40028422 PMC: 11868987. DOI: 10.1039/d4me00174e.


Automating alloy design and discovery with physics-aware multimodal multiagent AI.

Ghafarollahi A, Buehler M Proc Natl Acad Sci U S A. 2025; 122(4):e2414074122.

PMID: 39854228 PMC: 11789045. DOI: 10.1073/pnas.2414074122.


Deep learning and generative artificial intelligence in aging research and healthy longevity medicine.

Wilczok D Aging (Albany NY). 2025; 17(1):251-275.

PMID: 39836094 PMC: 11810058. DOI: 10.18632/aging.206190.


A review of large language models and autonomous agents in chemistry.

Ramos M, Collison C, White A Chem Sci. 2025; 16(6):2514-2572.

PMID: 39829984 PMC: 11739813. DOI: 10.1039/d4sc03921a.


The Application of Machine Learning on Antibody Discovery and Optimization.

Zheng J, Wang Y, Liang Q, Cui L, Wang L Molecules. 2025; 29(24.

PMID: 39770013 PMC: 11679646. DOI: 10.3390/molecules29245923.


References
1.
Boiko D, MacKnight R, Kline B, Gomes G . Autonomous chemical research with large language models. Nature. 2023; 624(7992):570-578. PMC: 10733136. DOI: 10.1038/s41586-023-06792-0. View

2.
Doruker P, Atilgan A, Bahar I . Dynamics of proteins predicted by molecular dynamics simulations and analytical approaches: application to alpha-amylase inhibitor. Proteins. 2000; 40(3):512-24. View

3.
Hu Y, Buehler M . End-to-End Protein Normal Mode Frequency Predictions Using Language and Graph Models and Application to Sonification. ACS Nano. 2022; 16(12):20656-20670. DOI: 10.1021/acsnano.2c07681. View

4.
Ni B, Kaplan D, Buehler M . Generative design of proteins based on secondary structure constraints using an attention-based diffusion model. Chem. 2023; 9(7):1828-1849. PMC: 10443900. DOI: 10.1016/j.chempr.2023.03.020. View

5.
Yang Z, Yu C, Buehler M . Deep learning model to predict complex stress and strain fields in hierarchical composites. Sci Adv. 2021; 7(15). PMC: 8034856. DOI: 10.1126/sciadv.abd7416. View