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Roberta Es Clinical Trials Umls 7sgs Ner

Developed by medspaner
A Spanish medical named entity recognition model based on the RoBERTa architecture, capable of detecting 7 UMLS semantic group entities in clinical trial texts
Downloads 193
Release Time : 8/8/2022

Model Overview

This model is specifically designed to process Spanish clinical trial texts, identifying 7 types of medical entities including anatomical structures, chemicals, medical devices, pathological conditions, organisms, physiological processes, and medical procedures.

Model Features

UMLS Semantic Group Recognition
Capable of identifying 7 semantic group entities defined by the Unified Medical Language System (UMLS)
Spanish Language Optimization
Specially trained and optimized for Spanish medical texts
Clinical Trial Specialization
The model performs exceptionally well on clinical trial texts, making it suitable for processing medical research-related documents
High-Precision Recognition
Achieves an F1 score of 0.886 on the test set, demonstrating stable and reliable performance

Model Capabilities

Identify medical entities
Process Spanish texts
Analyze clinical trial documents
Extract medical concepts

Use Cases

Medical Research
Clinical Trial Document Analysis
Automatically extracts key information such as inclusion/exclusion criteria, study subjects, and treatment plans from clinical trials
Helps researchers quickly understand trial designs
Medical Literature Processing
Processes Spanish medical journal abstracts to extract key medical concepts
Improves literature retrieval and knowledge extraction efficiency
Medical Information Management
Electronic Medical Record Processing
Extracts structured medical information from Spanish electronic medical records
Supports clinical decision-making and data analysis
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