pyhealth
PyHealth: Healthcare AI Toolkit
Overview
PyHealth is a comprehensive Python library for healthcare AI that provides specialized tools, models, and datasets for clinical machine learning. Use this skill when developing healthcare prediction models, processing clinical data, working with medical coding systems, or deploying AI solutions in healthcare settings.
When to Use This Skill
Invoke this skill when:
- Working with healthcare datasets: MIMIC-III, MIMIC-IV, eICU, OMOP, sleep EEG data, medical images
- Clinical prediction tasks: Mortality prediction, hospital readmission, length of stay, drug recommendation
- Medical coding: Translating between ICD-9/10, NDC, RxNorm, ATC coding systems
- Processing clinical data: Sequential events, physiological signals, clinical text, medical images
- Implementing healthcare models: RETAIN, SafeDrug, GAMENet, StageNet, Transformer for EHR
- Evaluating clinical models: Fairness metrics, calibration, interpretability, uncertainty quantification
Core Capabilities
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