Babysitter image-algorithm-validator
Medical image processing algorithm validation skill for segmentation, detection, and analysis algorithms
install
source · Clone the upstream repo
git clone https://github.com/a5c-ai/babysitter
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/a5c-ai/babysitter "$T" && mkdir -p ~/.claude/skills && cp -r "$T/library/specializations/domains/science/biomedical-engineering/skills/image-algorithm-validator" ~/.claude/skills/a5c-ai-babysitter-image-algorithm-validator && rm -rf "$T"
manifest:
library/specializations/domains/science/biomedical-engineering/skills/image-algorithm-validator/SKILL.mdtags
source content
Image Algorithm Validator Skill
Purpose
The Image Algorithm Validator Skill supports validation of medical image processing algorithms, including segmentation, detection, and analysis algorithms, ensuring performance meets clinical requirements.
Capabilities
- Ground truth dataset curation guidance
- Performance metric calculation (Dice, IoU, sensitivity, specificity)
- Inter-observer variability analysis
- Statistical comparison methods
- Validation dataset stratification
- Multi-reader multi-case study design
- FDA AI/ML guidance alignment
- Failure case analysis
- Edge case identification
- Performance boundary testing
- Cross-validation methodology
Usage Guidelines
When to Use
- Validating image analysis algorithms
- Curating validation datasets
- Designing reader studies
- Preparing regulatory submissions
Prerequisites
- Algorithm development complete
- Ground truth established
- Validation dataset available
- Performance criteria defined
Best Practices
- Use representative, diverse datasets
- Establish robust ground truth methodology
- Assess performance across subgroups
- Document failure modes
Process Integration
This skill integrates with the following processes:
- Medical Image Processing Algorithm Development
- AI/ML Medical Device Development
- Clinical Evaluation Report Development
- Software Verification and Validation
Dependencies
- SimpleITK library
- scikit-image
- MONAI framework
- Evaluation frameworks
- Statistical analysis tools
Configuration
image-algorithm-validator: algorithm-types: - segmentation - detection - classification - registration - quantification metrics: - Dice - IoU - sensitivity - specificity - AUC - Hausdorff-distance validation-methods: - holdout - cross-validation - external-validation
Output Artifacts
- Dataset curation protocols
- Ground truth documentation
- Performance reports
- Statistical analyses
- Reader study results
- Failure mode catalogs
- Regulatory submission sections
- Validation summaries
Quality Criteria
- Ground truth methodology validated
- Metrics appropriate for algorithm type
- Dataset representative of intended use
- Statistical analysis rigorous
- Subgroup performance assessed
- Documentation supports regulatory review