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---
name: 'cytokine-storm-analysis-agent'
description: 'AI-powered cytokine release syndrome (CRS) and cytokine storm analysis for prediction, monitoring, and management in immunotherapy and infectious disease.'
measurable_outcome: Execute skill workflow successfully with valid output within 15 minutes.
allowed-tools:
- read_file
- run_shell_command
---
# Cytokine Storm Analysis Agent
The **Cytokine Storm Analysis Agent** provides comprehensive AI-driven analysis of cytokine release syndrome (CRS) and hyperinflammatory states. It integrates cytokine profiling, clinical parameters, and immunological markers for early prediction, severity grading, and treatment guidance in CAR-T therapy, sepsis, and viral infections.
## When to Use This Skill
* When monitoring CAR-T patients for cytokine release syndrome risk.
* To predict CRS severity and timing post-immunotherapy.
* For analyzing cytokine panels in sepsis and viral infections (COVID-19).
* When guiding tocilizumab/siltuximab anti-IL-6 therapy decisions.
* To distinguish CRS from ICANS, HLH, and other inflammatory syndromes.
## Core Capabilities
1. **CRS Risk Prediction**: ML models predict CRS development and severity from baseline factors (tumor burden, disease type, CAR-T product).
2. **Real-Time Monitoring**: Track cytokine dynamics (IL-6, IFN-γ, IL-10, ferritin) with early warning alerts.
3. **Severity Grading**: Automated ASTCT CRS grading using clinical parameters and biomarkers.
4. **Differential Diagnosis**: Distinguish CRS from HLH/MAS, ICANS, infection, and tumor lysis syndrome.
5. **Treatment Guidance**: AI-driven recommendations for tocilizumab, corticosteroids, and supportive care.
6. **Outcome Prediction**: Model response to anti-cytokine therapy and overall outcomes.
## Cytokine Panel Analysis
| Cytokine | Role in CRS | Kinetics | Therapeutic Target |
|----------|-------------|----------|-------------------|
| IL-6 | Central mediator | Early peak | Tocilizumab, Siltuximab |
| IFN-γ | T-cell activation | Early | Emapalumab |
| IL-1β | Inflammasome | Early | Anakinra |
| IL-10 | Regulatory | Variable | - |
| TNF-α | Pro-inflammatory | Early | Infliximab (caution) |
| IL-2 | T-cell expansion | Early | - |
| GM-CSF | Myeloid activation | Sustained | Lenzilumab |
## ASTCT CRS Grading (Automated)
| Grade | Fever | Hypotension | Hypoxia |
|-------|-------|-------------|---------|
| 1 | ≥38°C | None | None |
| 2 | ≥38°C | Responsive to fluids | Low-flow O2 |
| 3 | ≥38°C | One vasopressor | High-flow O2 |
| 4 | ≥38°C | Multiple vasopressors | Ventilation |
## Workflow
1. **Input**: Cytokine levels, vital signs, laboratory values, treatment history.
2. **Risk Assessment**: Baseline CRS risk stratification pre-therapy.
3. **Monitoring**: Real-time cytokine tracking with trend analysis.
4. **Grading**: Automated CRS grade assignment per ASTCT criteria.
5. **Differential**: Rule out mimics (infection, HLH, ICANS).
6. **Treatment**: Generate management recommendations.
7. **Output**: CRS risk score, grade, differential diagnosis, treatment plan.
## Example Usage
**User**: "Monitor this CAR-T patient's cytokine levels and predict CRS severity."
**Agent Action**:
```bash
python3 Skills/Immunology_Vaccines/Cytokine_Storm_Analysis_Agent/crs_analyzer.py \
--patient_data demographics.json \
--cytokines cytokine_panel.csv \
--vitals vital_signs.csv \
--labs laboratory_values.csv \
--cart_product tisagenlecleucel \
--day_post_infusion 5 \
--model crs_predictor_v3 \
--output crs_report.json
```
## AI/ML Models
**CRS Risk Prediction**:
- Features: tumor burden (LDH), lymphodepletion intensity, CAR-T dose, disease type
- Model: Gradient boosting with SHAP interpretability
- Performance: AUC 0.82-0.88 for severe CRS
**Severity Trajectory**:
- Time-series modeling of cytokine dynamics
- LSTM networks for temporal patterns
- Early warning 24-48 hours before clinical deterioration
**Treatment Response**:
- Tocilizumab response prediction
- Corticosteroid escalation timing
- ICU admission risk
## Differential Diagnosis Decision Tree
```
Fever + Elevated Cytokines
|
CAR-T context?
/ \
Yes No
| |
Hypotension? Infection workup
| |
CRS Sepsis vs viral
|
Neuro symptoms?
|
ICANS vs CRS
|
Ferritin >10,000?
|
HLH/MAS evaluation
```
## Clinical Decision Support
**Tocilizumab Indication**:
- Grade 2+ CRS
- Rapidly rising cytokines
- High-risk baseline features
**Corticosteroid Indication**:
- Tocilizumab-refractory CRS
- ICANS any grade
- Grade 3+ CRS
## Prerequisites
* Python 3.10+
* scikit-learn, XGBoost for ML
* Time-series analysis libraries
* FHIR client for EHR integration
## Related Skills
* CART_Design_Optimizer_Agent - For CAR-T design
* TCell_Exhaustion_Analysis_Agent - For T-cell function
* Clinical_NLP - For extracting symptoms from notes
## Special Populations
1. **Pediatric**: Different baseline cytokine ranges
2. **Post-COVID**: Altered inflammatory responses
3. **Bridging Therapy**: Impact on CRS risk
4. **Concurrent Infection**: Confounding cytokine elevation
## Author
AI Group - Biomedical AI Platform
<!-- AUTHOR_SIGNATURE: 9a7f3c2e-MD-BABU-MIA-2026-MSSM-SECURE -->