Free SKILL.md scraped from GitHub. Clone the repo or copy the file directly into your Claude Code skills directory.
npx versuz@latest install freedomintelligence-openclaw-medical-skills-skills-cart-design-optimizer-agentgit clone https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills.gitcp OpenClaw-Medical-Skills/SKILL.MD ~/.claude/skills/freedomintelligence-openclaw-medical-skills-skills-cart-design-optimizer-agent/SKILL.md<!--
# COPYRIGHT NOTICE
# This file is part of the "Universal Biomedical Skills" project.
# Copyright (c) 2026 MD BABU MIA, PhD <md.babu.mia@mssm.edu>
# All Rights Reserved.
#
# This code is proprietary and confidential.
# Unauthorized copying of this file, via any medium is strictly prohibited.
#
# Provenance: Authenticated by MD BABU MIA
-->
---
name: 'cart-design-optimizer-agent'
description: 'AI-guided CAR-T cell design for solid tumors using antigen prioritization, safety-by-design architectures, and exhaustion-resistant engineering.'
measurable_outcome: Execute skill workflow successfully with valid output within 15 minutes.
allowed-tools:
- read_file
- run_shell_command
---
# CAR-T Design Optimizer Agent
The **CAR-T Design Optimizer Agent** provides end-to-end AI-guided design of chimeric antigen receptor T-cells. It integrates antigen prioritization, safety-constrained CAR architectures, exhaustion resistance engineering, and computational modeling of CAR-T kinetics for optimized therapeutic design.
## When to Use This Skill
* When designing CAR-T therapies for solid tumors with limited target antigens.
* To optimize CAR construct sequences for reduced exhaustion and self-activation.
* For selecting safety-by-design architectures (logic-gated, modular, armored).
* When predicting CAR-T expansion, persistence, and efficacy.
* To engineer exhaustion-resistant CAR-T cells via gene editing strategies.
## Core Capabilities
1. **Antigen Prioritization**: AI-driven ranking of target antigens based on tumor specificity, expression levels, and safety profiles.
2. **CARMSeD Prediction**: Predictive model forecasting CAR constructs prone to tonic signaling, self-activation, and dysfunction.
3. **Safety Architecture Design**: Logic-gated (synNotch), ON/OFF switches, armored designs for solid tumor safety.
4. **Exhaustion Resistance**: CRISPR target selection (TOX, NR4A, PD-1 knockouts) and PD-1 locus integration strategies.
5. **Pharmacokinetic Modeling**: Multi-population models predicting CAR-T expansion, distribution, and persistence.
6. **LLM-Assisted Design**: Constrained large language model reasoning for evidence synthesis and design justification.
## CAR Architecture Options
| Architecture | Mechanism | Best For |
|--------------|-----------|----------|
| Standard 2nd Gen | CD28 or 4-1BB costimulation | Hematological malignancies |
| Logic-Gated (AND) | Requires 2 antigens for activation | Solid tumors, safety |
| synNotch Priming | TME signal triggers CAR expression | Local activation |
| Armored CAR | Cytokine secretion (IL-15, IL-21) | Hostile TME |
| Universal/SUPRA | Adaptable targeting via adaptor | Multi-antigen, flexibility |
| PD-1 Knock-in | CAR in PD-1 locus | Exhaustion resistance |
## Workflow
1. **Antigen Selection**: Analyze tumor expression data to prioritize targets.
2. **Safety Assessment**: Evaluate off-tumor expression in normal tissues.
3. **CAR Design**: Generate construct sequences with selected domains.
4. **CARMSeD Screening**: Predict self-activation and exhaustion propensity.
5. **Architecture Selection**: Match patient/tumor to optimal CAR design.
6. **Gene Editing Design**: Select CRISPR targets for enhanced function.
7. **Output**: Optimized CAR sequence, predicted performance, manufacturing specs.
## Example Usage
**User**: "Design an optimized CAR-T construct targeting HER2 for breast cancer with minimized exhaustion."
**Agent Action**:
```bash
python3 Skills/Immunology_Vaccines/CART_Design_Optimizer_Agent/cart_designer.py \
--target HER2 \
--tumor_type breast_cancer \
--expression_data tumor_rnaseq.tsv \
--normal_tissues gtex_expression.tsv \
--architecture synnotch_armored \
--exhaustion_engineering tox_knockout \
--model carmsed_v2 \
--output cart_design_report/
```
## CARMSeD Model Details
**Prediction Targets**:
- Tonic signaling propensity
- Self-activation risk
- Exhaustion trajectory
- Proliferative capacity
**Input Features**:
- scFv binding affinity
- Hinge/spacer length
- Costimulatory domain
- Transmembrane sequence
- Expression system
**Validated Performance**:
- AUC > 0.85 for dysfunction prediction
- In vitro to in vivo correlation
## Anti-Exhaustion Engineering Strategies
| Target | Method | Effect |
|--------|--------|--------|
| TOX | CRISPR KO | Prevents exhaustion program |
| NR4A1-3 | Triple KO | Blocks exhaustion TFs |
| PD-1 locus | CAR integration | TME-responsive expression |
| c-Jun | Overexpression | Overcomes AP-1 imbalance |
| DNMT3A | KO | Epigenetic reprogramming |
## Computational Pharmacokinetics
**Lotka-Volterra Model**:
```
dC/dt = r*C*(1 - C/K) - k*C*T # CAR-T expansion
dT/dt = -α*C*T # Tumor killing
```
**Multi-Population Extensions**:
- Memory vs. effector subsets
- Exhaustion state transitions
- Cytokine-mediated effects
- Checkpoint interactions
## Prerequisites
* Python 3.10+
* PyTorch for ML models
* CRISPRscan for guide design
* Protein structure tools (optional)
## Related Skills
* TCell_Exhaustion_Analysis_Agent - For exhaustion profiling
* Neoantigen_Vaccine_Agent - For antigen identification
* CRISPR_Design_Agent - For gene editing optimization
## Clinical Considerations
1. **Cytokine Release Syndrome**: Risk assessment and mitigation designs
2. **ICANS Neurotoxicity**: CNS penetration modeling
3. **Manufacturing**: Transduction efficiency predictions
4. **Persistence**: Memory phenotype engineering
## Author
AI Group - Biomedical AI Platform
<!-- AUTHOR_SIGNATURE: 9a7f3c2e-MD-BABU-MIA-2026-MSSM-SECURE -->