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Stanford Deidentifier Only I2b2

Developed by StanfordAIMI
Transformer-based automated de-identification system for radiology reports, combining rule-based methods for high-precision PHI recognition and replacement
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Release Time : 6/9/2022

Model Overview

Specifically designed for de-identification processing of biomedical radiology reports, capable of automatically detecting protected health information (PHI) and replacing it with simulated content to meet HIPAA privacy requirements

Model Features

High-precision PHI Detection
Achieves 97.9 F1 score on known institution radiology reports and 99.6 on new institutions, surpassing manual annotation levels
Cross-institution Adaptability
Demonstrated excellent generalization capabilities on multiple test sets including i2b2 2006/2014
Hybrid Method Design
Combines PubMedBERT transformer model with 'Hiding in Plain Sight' rule-based methods for precise recognition and natural replacement
Large-scale Training Data
Trained on 6,193 multi-institution cross-domain documents (including 6,193 radiology reports and medical records)

Model Capabilities

Radiology Report PHI Entity Recognition
Automated Protected Health Information Replacement
Multi-type PHI Detection (dates, doctor names, institutions, etc.)
Cross-institution Document Processing

Use Cases

Medical Privacy Protection
Radiology Report De-identification
Automatically processes sensitive information in chest X-ray/CT reports
PHI core content recognition recall rate reaches 99.1%
Research Data Sharing
Provides HIPAA-compliant anonymized data for medical research
Surpasses manual annotation levels on i2b2 2014 data
Healthcare Information Systems
Electronic Medical Record Processing
Integrated into healthcare information systems to automate de-identification workflows
Supports medical data transmission systems like MedClinical
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