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Clinicalnerpt Sign

Developed by pucpr
A Portuguese clinical sign named entity recognition model based on BioBERTpt, used to extract sign-related entities from clinical texts
Downloads 16
Release Time : 3/2/2022

Model Overview

This model is part of the BioBERTpt project, specifically designed to identify sign-related named entities in Portuguese clinical texts, compatible with UMLS standards.

Model Features

UMLS Compatible
The 13 clinical entities recognized by the model are compatible with the Unified Medical Language System (UMLS) standard
Domain Optimization
Specially optimized for Portuguese clinical texts, trained on the Brazilian clinical corpus SemClinBr
Transfer Learning
Reduces the need for annotated data by transferring knowledge from multilingual BERT models to the Portuguese clinical domain

Model Capabilities

Clinical Text Analysis
Medical Entity Recognition
Sign Extraction
Portuguese NLP Processing

Use Cases

Clinical Document Processing
Electronic Medical Record Analysis
Automatically extract sign information from patient electronic medical records
Improves the structuring of clinical documents
Clinical Research Data Extraction
Identify relevant sign entities from clinical research texts
Accelerates clinical data collection and analysis
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