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Clinicalnerpt Medical

Developed by pucpr
Portuguese clinical named entity recognition model based on BioBERTpt, supporting 13 UMLS-compatible clinical entity types
Downloads 55
Release Time : 3/2/2022

Model Overview

This model is specifically designed for named entity recognition tasks in Portuguese clinical texts, trained on the Brazilian clinical corpus SemClinBr, suitable for natural language processing applications in the medical field.

Model Features

UMLS-compatible Entity Recognition
Supports recognition of 13 clinical entity types compatible with the Unified Medical Language System (UMLS)
Domain-specific Training
Specially trained on the Brazilian clinical corpus SemClinBr, optimized for the medical domain
Transfer Learning Advantage
Enhances Portuguese biomedical NER models by reducing annotation requirements and avoiding full model retraining

Model Capabilities

Clinical text entity recognition
Medical terminology extraction
Portuguese clinical document processing

Use Cases

Medical Document Processing
Electronic Health Record Analysis
Extracts key medical entity information from Portuguese electronic health records
Improves efficiency of medical information retrieval and structuring
Clinical Research Support
Assists researchers in extracting structured data from clinical narratives
Accelerates clinical data analysis and research processes
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