Agent skill

multimodal-radpath-fusion-agent

Stars 163
Forks 31

Install this agent skill to your Project

npx add-skill https://github.com/majiayu000/claude-skill-registry/tree/main/skills/data/multimodal-radpath-fusion-agent

SKILL.md

---name: multimodal-radpath-fusion-agent description: AI-powered multimodal diagnostic fusion integrating radiology imaging (CT/MRI/PET), digital pathology (WSI), genomics, and clinical data for comprehensive cancer diagnosis and treatment planning. license: MIT metadata: author: AI Group version: "1.0.0" created: "2026-01-20" compatibility:

  • system: Python 3.10+ allowed-tools:
  • run_shell_command
  • read_file
  • write_file

keywords:

  • multimodal-radpath-fusion-agent
  • automation
  • biomedical measurable_outcome: execute task with >95% success rate. ---"

Multimodal Radiology-Pathology Fusion Agent

The Multimodal Radpath Fusion Agent integrates diverse clinical data sources including radiology imaging (CT, MRI, PET), digital pathology whole slide images, genomic profiling, and electronic health records using state-of-the-art multimodal deep learning for comprehensive cancer diagnosis, treatment response prediction, and prognostic modeling.

When to Use This Skill

  • When integrating radiology and pathology for unified tumor assessment.
  • For treatment response prediction using multimodal imaging.
  • To predict molecular features from imaging (imaging genomics).
  • When building comprehensive prognostic models.
  • For tumor board decision support with AI second opinion.

Core Capabilities

  1. Radiology-Pathology Fusion: Integrate macro and microscopic views.

  2. Imaging-Genomics Correlation: Predict molecular features from imaging.

  3. Treatment Response Prediction: Multi-modal response modeling.

  4. Survival Prediction: Comprehensive prognostic models.

  5. Tumor Characterization: Integrate phenotype from all modalities.

  6. Clinical Decision Support: AI-assisted tumor board recommendations.

Supported Modalities

Modality Data Type Features Extracted
CT DICOM volumes Radiomics, deep features
MRI Multi-sequence DICOM Texture, perfusion, ADC
PET SUV maps Metabolic features
H&E WSI SVS/NDPI images Histology, spatial patterns
IHC Stained slides Biomarker quantification
WES/WGS VCF Mutations, TMB, signatures
RNA-seq Expression matrix Pathway signatures
Clinical EHR data Demographics, labs, history

Fusion Architectures

Architecture Method Best For
AMRI-Net Attention fusion Radiology focus
PathOmCLIP Contrastive learning Path-omics alignment
SMuRF Swin Transformer Multi-region integration
MultiModal Transformer Self-attention All modalities
GNN Fusion Graph networks Spatial relationships

Workflow

  1. Data Ingestion: Collect radiology, pathology, genomics, clinical.

  2. Preprocessing: Standardize each modality.

  3. Feature Extraction: Extract modality-specific features.

  4. Alignment: Temporal and spatial alignment of data.

  5. Fusion: Multi-modal deep learning integration.

  6. Prediction: Diagnosis, response, survival prediction.

  7. Output: Integrated report with explanations.

Example Usage

User: "Integrate this lung cancer patient's CT scan, biopsy pathology, and genomic profiling for comprehensive assessment and treatment recommendation."

Agent Action:

bash
python3 Skills/Clinical/Multimodal_Radpath_Fusion_Agent/multimodal_fusion.py \
    --ct_dicom ct_chest/ \
    --pet_dicom pet_scan/ \
    --wsi_path biopsy.svs \
    --genomic_vcf tumor_wes.vcf \
    --rna_expression expression.tsv \
    --clinical_ehr patient_data.json \
    --task treatment_recommendation \
    --cancer_type nsclc \
    --output integrated_assessment/

Output Components

Output Description Format
Integrated Diagnosis Multi-modal classification .json
Treatment Prediction Response probabilities .json
Survival Estimate Prognostic curves .json, .png
Feature Attribution Modality importance .json
Attention Maps Visual explanations .npy, .png
Clinical Report Summary for tumor board .pdf
Confidence Scores Prediction uncertainty .json

Clinical Applications

Application Modalities Performance
NSCLC IO Response CT + H&E + PD-L1 AUC 0.85
HCC Treatment Selection MRI + H&E + AFP AUC 0.82
Breast Neoadjuvant MRI + H&E + HER2 AUC 0.88
HNSCC HPV/Prognosis CT + H&E + p16 AUC 0.89
GBM Survival MRI + H&E + MGMT C-index 0.76

Imaging-Genomics Predictions

Molecular Feature Imaging Modality Accuracy
EGFR mutation CT 75-80%
KRAS mutation CT 70-75%
PD-L1 expression CT + H&E 80-85%
MSI status H&E 85-90%
TMB level H&E 75-80%
HRD status H&E 78-83%

AI/ML Components

Feature Extraction:

  • 3D ResNet for CT/MRI volumes
  • Vision Transformers for WSI
  • Foundation models (CONCH, UNI)

Fusion Methods:

  • Cross-attention mechanisms
  • Multimodal transformers
  • Contrastive multimodal learning

Prediction Models:

  • Multi-task learning
  • Survival analysis (DeepSurv)
  • Uncertainty quantification

Prerequisites

  • Python 3.10+
  • PyTorch, transformers
  • SimpleITK, OpenSlide
  • Foundation model weights
  • GPU with 32GB+ VRAM (recommended)

Related Skills

  • Radiomics_Pathomics_Fusion_Agent - Imaging-specific fusion
  • Pathology_AI/CONCH_Agent - Pathology foundation model
  • Pan_Cancer_MultiOmics_Agent - Genomic integration
  • Virtual_Lab_Agent - AI research coordination

Integration with Clinical Workflow

Integration Point System Purpose
PACS Radiology archive Image retrieval
LIS Pathology system Slide access
EHR Medical records Clinical data
Tumor Board MDT platform Decision support
Reporting Clinical reports Documentation

Special Considerations

  1. Data Alignment: Ensure temporal correspondence
  2. Missing Modalities: Handle incomplete multimodal data
  3. Privacy: HIPAA compliance for clinical integration
  4. Validation: Multi-site validation essential
  5. Explainability: Clinical trust requires interpretability

Explainability Methods

Method Output Purpose
Attention Maps Heatmaps Important regions
SHAP Values Feature importance Modality contribution
GradCAM Activation maps Visual explanation
Counterfactuals What-if analysis Decision boundaries

Quality Control

QC Check Threshold Action
Image Quality Score >0.7 Flag for review
Data Completeness >80% fields Proceed or wait
Prediction Confidence >0.6 Report with confidence
Calibration ECE <0.1 Trust probabilities

Author

AI Group - Biomedical AI Platform

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