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Roberta Es Clinical Trials Ner

Developed by lcampillos
RoBERTa-based Spanish clinical trial text named entity recognition model capable of detecting 4 medical semantic groups
Downloads 277
Release Time : 6/30/2022

Model Overview

This model is used for medical named entity recognition in Spanish clinical trial texts, capable of identifying four types of medical entities: body parts, chemical entities, pathological conditions, and medical procedures.

Model Features

Medical Professional Entity Recognition
Capable of accurately identifying medical professional terms and entities in clinical trial texts
Four Semantic Group Recognition
Can detect four types of medical entities: body parts (ANAT), chemical entities (CHEM), pathological conditions (DISO), and medical procedures (PROC)
Spanish Language Optimization
Specifically trained and optimized for Spanish medical texts

Model Capabilities

Medical Text Analysis
Named Entity Recognition
Clinical Trial Data Processing

Use Cases

Medical Research
Clinical Trial Data Analysis
Automatically extracts key medical entity information from clinical trial texts
Helps researchers quickly analyze large volumes of clinical trial data
Medical Literature Processing
Processes professional terminology in Spanish medical journal abstracts
Improves efficiency and accuracy in medical literature processing
Medical Information Management
Electronic Medical Record Analysis
Extracts key medical information from Spanish electronic medical records
Assists in data organization and retrieval for medical information systems
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