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Gliner Biomed Small V1.0

Developed by Ihor
GLiNER-Biomedical Edition is an efficient open NER model suite based on the GLiNER framework, specifically designed for the biomedical field, capable of identifying various entities in biomedical texts.
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Release Time : 2/19/2025

Model Overview

This model leverages synthetic annotations distilled from large generative biomedical language models, achieving state-of-the-art zero-shot and few-shot performance in biomedical entity recognition tasks.

Model Features

Specialized for Biomedical Field
Optimized specifically for biomedical texts, capable of accurately identifying professional terms and entities in medical records and research reports.
Zero-shot/Few-shot Learning Capability
Achieves high-performance entity recognition without requiring large amounts of annotated data.
Lightweight and Efficient
Smaller in size compared to large language models, suitable for resource-constrained scenarios.
Multi-Entity Type Recognition
Can simultaneously identify various biomedical entity types such as diseases, drugs, dosages, and laboratory tests.

Model Capabilities

Biomedical entity recognition
Multi-label classification
Zero-shot learning
Few-shot learning

Use Cases

Clinical Record Analysis
Electronic Medical Record Entity Extraction
Automatically extracts key information such as diagnoses, medications, and treatment plans from patient electronic medical records.
Accurately identifies entities like diseases, drugs, and dosages.
Medical Research
Literature Information Extraction
Extracts key entities and relationships from medical research papers.
Helps researchers quickly obtain research data.
Medical Knowledge Graph Construction
Knowledge Graph Data Source Processing
Automatically processes large amounts of medical texts to construct knowledge graphs.
Improves the efficiency of knowledge graph construction.
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