---name: aav-vector-design-agent description: AI-powered adeno-associated virus (AAV) vector design for gene therapy including capsid engineering, promoter selection, and tropism optimization. license: MIT metadata: author: AI Group version: "1.0.0" created: "2026-01-19" compatibility: - system: Python 3.10+ allowed-tools: - run_shell_command - read_file - write_file keywords: - aav-vector-design-agent - automation - biomedical measurable_outcome: execute task with >95% success rate. ---" # AAV Vector Design Agent The **AAV Vector Design Agent** provides AI-driven design of adeno-associated virus vectors for gene therapy applications. It covers capsid selection and engineering, promoter/enhancer design, transgene optimization, and manufacturing considerations. ## When to Use This Skill * When selecting optimal AAV serotype for tissue-specific targeting. * To design novel capsid variants with enhanced properties. * For optimizing transgene expression cassettes. * When predicting immunogenicity and neutralizing antibody escape. * To design liver-detargeted or CNS-tropic vectors. ## Core Capabilities 1. **Capsid Selection**: Match AAV serotype to target tissue based on tropism profiles. 2. **Capsid Engineering**: Design modified capsids for enhanced transduction or immune evasion. 3. **Promoter Design**: Select and optimize tissue-specific or ubiquitous promoters. 4. **Transgene Optimization**: Codon optimization and regulatory element design. 5. **Immunogenicity Prediction**: Predict NAb binding and T-cell epitopes. 6. **Manufacturing Assessment**: Evaluate producibility and purification considerations. ## AAV Serotype Tropism | Serotype | Primary Tropism | Clinical Use | |----------|-----------------|--------------| | AAV1 | Muscle, CNS | Glybera (muscle) | | AAV2 | Broad (liver, muscle) | Luxturna (retina) | | AAV5 | CNS, liver, retina | Hemgenix (liver) | | AAV8 | Liver, muscle | Multiple trials | | AAV9 | CNS, cardiac, liver | Zolgensma (CNS) | | AAVrh10 | CNS, liver | CNS trials | | AAVrh74 | Muscle | Elevidys (muscle) | | AAV-PHP.eB | CNS (mouse) | Research | ## Workflow 1. **Input**: Target tissue, therapeutic gene, patient population characteristics. 2. **Capsid Selection**: Rank serotypes by tropism profile match. 3. **Capsid Engineering**: Design modifications if needed (peptide insertion, point mutations). 4. **Cassette Design**: Optimize ITR-to-ITR expression cassette. 5. **Immunogenicity Analysis**: Predict NAb prevalence and T-cell epitopes. 6. **Manufacturing Review**: Assess production feasibility. 7. **Output**: Complete vector design with rationale. ## Example Usage **User**: "Design an AAV vector for liver-directed gene therapy in hemophilia B with low immunogenicity." **Agent Action**: ```bash python3 Skills/Gene_Therapy/AAV_Vector_Design_Agent/aav_designer.py \ --target_tissue liver \ --therapeutic_gene F9 \ --indication hemophilia_b \ --minimize_immunogenicity true \ --nab_escape true \ --promoter liver_specific \ --output aav_design/ ``` ## Expression Cassette Components ``` 5' ITR - [Promoter] - [5' UTR] - [Transgene] - [WPRE] - [PolyA] - 3' ITR Packaging limit: ~4.7 kb between ITRs ``` **Promoter Options**: | Promoter | Type | Size | Application | |----------|------|------|-------------| | CAG | Ubiquitous | 1.7 kb | Strong expression | | EF1α | Ubiquitous | 1.2 kb | Constitutive | | LP1 | Liver-specific | 0.5 kb | Hepatocyte targeting | | hSyn | Neuron-specific | 0.5 kb | CNS applications | | MCK | Muscle-specific | 0.6 kb | Myopathies | | CMV | Ubiquitous | 0.6 kb | High initial (silenced) | ## Capsid Engineering Strategies **Directed Evolution**: - Error-prone PCR libraries - DNA shuffling - Selection in target tissue **Rational Design**: - Peptide display (insertion in variable loops) - Point mutations for receptor targeting - Tyrosine-to-phenylalanine for stability **Machine Learning**: - Sequence-function models - Generative models for novel capsids - Tropism prediction ## Immunogenicity Considerations **Pre-existing NAbs**: | Serotype | NAb Prevalence | |----------|----------------| | AAV2 | 30-60% | | AAV5 | 15-30% | | AAV8 | 15-25% | | AAV9 | 20-35% | **Mitigation Strategies**: - Serotype selection based on patient screening - Engineered NAb-evading capsids - Immunosuppression protocols - Plasmapheresis ## AI/ML Components **Tropism Prediction**: - CNN on capsid sequence - Cell-type specific transduction - Cross-species translation **Immunogenicity Modeling**: - MHC binding prediction - T-cell epitope mapping - NAb epitope prediction **Expression Optimization**: - Codon optimization algorithms - RNA structure prediction - miRNA target site avoidance ## Manufacturing Considerations | Factor | Impact | Optimization | |--------|--------|--------------| | Capsid yield | Production cost | Sequence modifications | | Empty/full ratio | Potency | Purification method | | Aggregation | Stability | Formulation | | DNA packaging | Transgene size | Cassette design | ## Prerequisites * Python 3.10+ * Sequence analysis tools * Immunoinformatics packages * Structural biology tools ## Related Skills * CRISPR_Design_Agent - For gene editing payloads * Protein_Engineering - For capsid design * RNA_Therapeutics - For alternative modalities ## Regulatory Considerations 1. **Biodistribution**: Required for IND 2. **Shedding**: Vector in bodily fluids 3. **Germline transmission**: Gonadal presence 4. **Integration risk**: Random vs site-specific 5. **Immunogenicity**: Pre-existing and induced ## Author AI Group - Biomedical AI Platform