Computes semantic isolation and equity metrics for disease research in PubMed abstracts using PubMedBERT embeddings; generates visualizations and reports on research gaps.
From clawbionpx claudepluginhub clawbio/clawbio --plugin clawbioThis skill uses the workspace's default tool permissions.
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Calculates TAM/SAM/SOM using top-down, bottom-up, and value theory methodologies for market sizing, revenue estimation, and startup validation.
Measure how isolated or connected disease research is across the global biomedical literature, using PubMedBERT embeddings on PubMed abstracts spanning 175 GBD diseases.
If you ask ChatGPT to "measure research neglect for diseases," it will:
This skill encodes the correct methodological decisions:
Neglected tropical diseases (NTDs) are significantly more semantically isolated than other conditions (P < 0.001, Cohen's d = 0.8+). They exist in knowledge silos with limited cross-disciplinary research bridges. The 25 most isolated diseases are disproportionately Global South priority conditions.
05-00-heim-sem-setup.py # Validate environment, create directories
05-01-heim-sem-fetch.py # Retrieve PubMed abstracts (checkpointed)
05-02-heim-sem-embed.py # Generate PubMedBERT embeddings (MPS/CPU)
05-03-heim-sem-compute.py # Compute SII, KTP, RCC, temporal drift
05-04-heim-sem-figures.py # Generate publication figures
05-05-heim-sem-integrate.py # Merge with biobank + clinical trial dimensions
python semantic_sim.py --demo --output demo_report
The demo uses pre-computed embeddings and metrics for 175 GBD diseases and generates the full 4-panel figure instantly.
Semantic Similarity Index
=========================
Diseases analysed: 175
Total PubMed abstracts: 13,100,000
Embedding model: PubMedBERT (768-dim)
Metric Ranges:
SII: 0.0412 - 0.1893
KTP: 0.6234 - 0.9187
RCC: 0.0891 - 0.3421
Key Finding:
NTDs show +38% higher semantic isolation
P < 0.0001, Cohen's d = 0.84
14/25 most isolated diseases are Global South priority
Figures saved to: demo_report/
Fig5_Semantic_Structure.png (300 dpi)
Fig5_Semantic_Structure.pdf (vector)
Reproducibility:
commands.sh | environment.yml | checksums.sha256
If you use this skill in a publication, please cite: