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Clinicalnerpt Healthcare

Developed by pucpr
A Portuguese clinical named entity recognition model trained on BioBERTpt, supporting recognition of 13 UMLS-compatible clinical entities
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Release Time : 3/2/2022

Model Overview

This model is part of the BioBERTpt project, specifically designed to identify medical entities such as diseases and symptoms from Portuguese clinical texts.

Model Features

UMLS-compatible Entity Recognition
Supports recognition of 13 clinical entities compatible with the Unified Medical Language System (UMLS)
Trained on Brazilian Clinical Corpus
Optimized for Portuguese clinical texts through training on the Brazilian clinical corpus SemClinBr
Transfer Learning Application
Utilizes the BioBERTpt pre-trained model for transfer learning, reducing the need for annotated data

Model Capabilities

Clinical text entity recognition
Medical terminology extraction
Portuguese NLP processing

Use Cases

Clinical Document Processing
Diabetes Follow-up Record Analysis
Extract key medical entities from diabetes patients' follow-up records
Identify disease, treatment, and related entities
Kidney Function Report Processing
Analyze clinical reports related to kidney function changes
Extract kidney function indicators and diagnostic information
Medical Information Extraction
Electronic Health Record Analysis
Structurally extract medical information from electronic health records
Automatically identify patient conditions and treatment plans
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