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Epiextract4gard V2

Developed by ncats
A named entity recognition model fine-tuned on BioBERT, specializing in identifying epidemiological information in rare disease abstracts.
Downloads 34
Release Time : 3/2/2022

Model Overview

This model is used to identify locations (LOC), epidemiological types (EPI), and epidemiological rates (STAT) in text, specifically targeting epidemiological data extraction in the rare disease domain.

Model Features

Epidemiological Information Extraction
Optimized for epidemiological data in the rare disease domain, accurately identifying key indicators such as incidence and prevalence rates.
Weakly Supervised Learning
Trained using weakly supervised teaching methods, adapting to scenarios with limited annotated data.
Multi-Entity Recognition
Capable of simultaneously identifying three types of entities: locations, epidemiological types, and epidemiological rates.

Model Capabilities

Identify epidemiological types
Extract epidemiological rate data
Locate relevant geographical locations
Process rare disease-related texts

Use Cases

Medical Research
Rare Disease Epidemiology Research
Extract data on incidence and prevalence rates of rare diseases from medical literature
Can automatically identify epidemiological data such as '4.05 cases per 100,000 live births'
Disease Surveillance
Track the incidence of specific diseases in specific regions
Can identify case information such as '27 patients have been diagnosed with PKU in Iceland'
Public Health
Disease Burden Assessment
Assess the burden of diseases in different regions
Can compare incidence rate differences across regions
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