AAVGen: Precision Engineering of Adeno-associated Viral Capsids for Renal Selective Targeting
Mohammadreza Ghaffarzadeh-Esfahani, Yousof Gheisari

TL;DR
AAVGen is an AI-driven framework that designs novel AAV capsids with improved kidney targeting, production, and stability, advancing gene therapy vector engineering.
Contribution
It introduces a generative AI model combining protein language modeling, supervised fine-tuning, and reinforcement learning for multi-trait AAV capsid design.
Findings
Generated AAV variants show superior multi-trait performance
Most variants maintain canonical capsid structure
Framework accelerates data-driven viral vector development
Abstract
Adeno-associated viruses (AAVs) are promising vectors for gene therapy, but their native serotypes face limitations in tissue tropism, immune evasion, and production efficiency. Engineering capsids to overcome these hurdles is challenging due to the vast sequence space and the difficulty of simultaneously optimizing multiple functional properties. The complexity also adds when it comes to the kidney, which presents unique anatomical barriers and cellular targets that require precise and efficient vector engineering. Here, we present AAVGen, a generative artificial intelligence framework for de novo design of AAV capsids with enhanced multi-trait profiles. AAVGen integrates a protein language model (PLM) with supervised fine-tuning (SFT) and a reinforcement learning technique termed Group Sequence Policy Optimization (GSPO). The model is guided by a composite reward signal derived from…
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Taxonomy
TopicsVirus-based gene therapy research · CRISPR and Genetic Engineering · Viral Infectious Diseases and Gene Expression in Insects
