scientific-skills/Evidence Insights/unstructured-medical-text-miner/SKILL.md
Mine unstructured clinical text from MIMIC-IV to extract diagnostic logic.
npx skillsauth add aipoch/medical-research-skills unstructured-medical-text-minerInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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See ## Features above for related details.
scripts/__init__.py plus 1 additional script(s).references/ for task-specific guidance.pandas>=1.3.0
spacy>=3.4.0
scispacy>=0.5.1
radlex (for radiology terminology)
negspacy (for negation detection)
See ## Usage above for related details.
cd "20260318/scientific-skills/Evidence Insight/unstructured-medical-text-miner"
python -m py_compile scripts/main.py
python scripts/main.py --help
Example run plan:
CONFIG block or documented parameters if the script uses fixed settings.python scripts/main.py with the validated inputs.See ## Workflow above for related details.
scripts/__init__.py with additional helper scripts under scripts/.references/ contains supporting rules, prompts, or checklists.Use this command to verify that the packaged script entry point can be parsed before deeper execution.
python -m py_compile scripts/main.py
Use these concrete commands for validation. They are intentionally self-contained and avoid placeholder paths.
python -m py_compile scripts/main.py
python scripts/main.py --help
python scripts/main.py -h
Mine "text data" that has been long overlooked in MIMIC-IV, extracting unstructured diagnostic logic, order details, and progress notes.
The MIMIC-IV database contains large amounts of structured data (vital signs, laboratory results, etc.), but its true clinical value is often hidden in unstructured text:
This Skill provides a complete text mining toolchain to transform raw medical text into analyzable structured insights.
from skills.unstructured_medical_text_miner.scripts.main import MedicalTextMiner
# Initialize miner
miner = MedicalTextMiner()
# Load MIMIC-IV note data
miner.load_notes(notes_path="path/to/noteevents.csv")
# Extract all text records for a specific patient
patient_texts = miner.get_patient_texts(subject_id=10000032)
# Execute complete information extraction
insights = miner.extract_insights(
text=patient_texts,
extract_entities=True,
extract_relations=True,
extract_timeline=True
)
| Field Name | Description | Required | |--------|------|------| | subject_id | Patient unique identifier | Yes | | hadm_id | Hospital admission record identifier | No | | note_type | Note type (DS/RR/ECG, etc.) | Yes | | note_text | Note text content | Yes | | charttime | Record time | No |
{
"entities": [
{
"text": "acute myocardial infarction",
"type": "DISEASE",
"start": 156,
"end": 183,
"confidence": 0.94
},
{
"text": "aspirin 81mg",
"type": "MEDICATION",
"start": 245,
"end": 257,
"attributes": {
"dose": "81mg",
"frequency": "daily"
}
}
]
}
{
"clinical_logic": {
"presenting_complaint": "chest pain",
"differential_diagnoses": ["ACS", "PE", "aortic dissection"],
"workup": ["ECG", "troponin", "CTA chest"],
"final_diagnosis": "STEMI",
"treatment_plan": ["PCI", "dual antiplatelet"]
}
}
{
"timeline": [
{
"time": "2020-03-15 08:30",
"event": "admission",
"description": "presented with chest pain"
},
{
"time": "2020-03-15 09:15",
"event": "ECG",
"description": "ST elevation in V1-V4"
}
]
}
# config.yaml
extraction:
entity_types: ["DISEASE", "SYMPTOM", "MEDICATION", "PROCEDURE", "ANATOMY"]
relation_types: ["TREATS", "CAUSES", "CONTRAINDICATED_WITH"]
enable_negation_detection: true
models:
ner_model: "en_core_sci_lg" # or "en_core_sci_scibert"
relation_model: "custom_relation_extractor"
output:
format: "json" # json/fhir/kg
include_raw_text: false
# Process single file
python -m skills.unstructured_medical_text_miner.scripts.main \
--input notes.csv \
--output extracted.json \
--extract all
# Process specific patient
python -m skills.unstructured_medical_text_miner.scripts.main \
--subject-id 10000032 \
--db-path mimic_iv.db \
--output patient_insights.json
Skill ID: 213 Category: Medical Data Mining Complexity: Advanced
| Risk Indicator | Assessment | Level | |----------------|------------|-------| | Code Execution | Python/R scripts executed locally | Medium | | Network Access | No external API calls | Low | | File System Access | Read input files, write output files | Medium | | Instruction Tampering | Standard prompt guidelines | Low | | Data Exposure | Output files saved to workspace | Low |
# Python dependencies
pip install -r requirements.txt
Every final response should make these items explicit when they are relevant:
scripts/main.py fails, report the failure point, summarize what still can be completed safely, and provide a manual fallback.This skill accepts requests that match the documented purpose of unstructured-medical-text-miner and include enough context to complete the workflow safely.
Do not continue the workflow when the request is out of scope, missing a critical input, or would require unsupported assumptions. Instead respond:
unstructured-medical-text-mineronly handles its documented workflow. Please provide the missing required inputs or switch to a more suitable skill.
Use the following fixed structure for non-trivial requests:
If the request is simple, you may compress the structure, but still keep assumptions and limits explicit when they affect correctness.
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