🧬 OpenMed-ZeroShot-NER-Species-Large-459M

Specialized model for Species Entity Recognition - Species and organism names

License Python GliNER OpenMed

πŸ“‹ Model Overview

Specialized in species and organism mentions with robust handling of scientific/common names and abbreviations.Applies to biodiversity mining, metagenomics reporting, and taxonomy-aware literature curation.

OpenMed ZeroShot NER is an advanced, domain-adapted Named Entity Recognition (NER) model designed specifically for medical, biomedical, and clinical text mining. Leveraging state-of-the-art zero-shot learning, this model empowers researchers, clinicians, and data scientists to extract expert-level biomedical entitiesβ€”such as diseases, chemicals, genes, species, and clinical findingsβ€”directly from unstructured text, without the need for task-specific retraining.

Built on the robust GLiNER architecture and fine-tuned on curated biomedical corpora, OpenMed ZeroShot NER delivers high-precision entity recognition for critical healthcare and life sciences applications. Its zero-shot capability means you can flexibly define and extract any entity type relevant to your workflow, from standard biomedical categories to custom clinical concepts, supporting rapid adaptation to new research domains and regulatory requirements.

Whether you are working on clinical NLP, biomedical research, electronic health record (EHR) de-identification, or large-scale literature mining, OpenMed ZeroShot NER provides a production-ready, open-source solution that combines expert-level accuracy with unmatched flexibility. Join the OpenMed community to accelerate your medical text analytics with cutting-edge, zero-shot NER technology.

🎯 Key Features

  • Zero-Shot Capability: Can recognize any entity type without specific training
  • High Precision: Optimized for biomedical entity recognition
  • Domain-Specific: Fine-tuned on curated LINNAEUS dataset
  • Production-Ready: Validated on clinical benchmarks
  • Easy Integration: Compatible with Hugging Face Transformers ecosystem
  • Flexible Entity Recognition: Add custom entity types without retraining

🏷️ Supported Entity Types

This zero-shot model can identify and classify biomedical entities, including but not limited to these entity types. You can also add custom entity types without retraining the model:

  • SPECIES

πŸ’‘ Zero-Shot Flexibility: As a GliNER-based model, you can specify any entity types you want to detect, even if they weren't part of the original training. Simply provide the entity labels when using the model, and it will adapt to recognize them.

πŸ“Š Dataset

Linnaeus corpus is designed for species name identification and taxonomic entity recognition in biomedical literature.

The Linnaeus corpus is a specialized biomedical NER dataset focused on species name identification and organism recognition in scientific literature. Named after Carl Linnaeus who established modern taxonomic nomenclature, this corpus contains annotations for species mentions that are normalized to NCBI Taxonomy identifiers. The dataset is crucial for biodiversity informatics, ecological research, and biological literature mining where accurate organism identification is essential. It supports the development of text mining systems for taxonomic studies, species distribution research, and comparative genomics applications. The corpus addresses the challenge of recognizing both scientific names and common names of organisms across diverse biological texts.

πŸ“Š Performance Metrics

Current Model Performance

  • Finetuned F1 vs. Base Model (on test dataset excluded from training): 0.95
  • F1 Improvement vs Base Model: 410.6%

πŸ† Top F1 Improvements on LINNAEUS Dataset

Rank Model Base F1 Finetuned F1 Ξ”F1 Ξ”F1 %
πŸ₯‡ 1 OpenMed-ZeroShot-NER-Species-Medium-209M 0.1565 0.9751 0.8185 523.0%
πŸ₯ˆ 2 OpenMed-ZeroShot-NER-Species-XLarge-770M 0.2801 0.9548 0.6747 240.9%
πŸ₯‰ 3 OpenMed-ZeroShot-NER-Species-Large-459M 0.1864 0.9520 0.7655 410.6%
4 OpenMed-ZeroShot-NER-Species-Base-220M 0.1829 0.9386 0.7557 413.2%
5 OpenMed-ZeroShot-NER-Species-Multi-209M 0.1461 0.8323 0.6862 469.6%

Rankings are sorted by finetuned F1 and show Ξ”F1% over base model. Test dataset is excluded from training.

OpenMed ZeroShot Clinical & Biomedical NER vs. Original GLiNER models

Figure: OpenMed ZeroShot Clinical & Biomedical NER vs. Original GLiNER models.

πŸš€ Quick Start

Installation

pip install gliner==0.2.21

Usage

from transformers import pipeline

# Load the model and tokenizer
# Model: https://huggingface.co/OpenMed/OpenMed-ZeroShot-NER-Species-Large-459M
model_name = "OpenMed/OpenMed-ZeroShot-NER-Species-Large-459M"

from gliner import GLiNER
model = GLiNER.from_pretrained("OpenMed-ZeroShot-NER-Species-Large-459M")

# Example usage with default entity types
text = "Escherichia coli bacteria were found in the water samples."

labels = ['SPECIES']
entities = model.predict_entities(text, labels, flat_ner=True, threshold=0.5)
for entity in entities:
    print(entity)

Zero-Shot Usage with Custom Entity Types

πŸ’‘ Tip: If you want to extract entities that are not present in the original training set (i.e., use custom or rare entity types), you may get better results by lowering the threshold parameter in model.predict_entities. For example, try threshold=0.3 or even lower, depending on your use case:

# You can specify custom entity types for zero-shot recognition - for instance:
custom_entities = ["MISC", "SPECIES", "PERSON", "LOCATION", "MEDICATION", "PROCEDURE"]

entities = model.predict_entities(text, custom_entities, flat_ner=True, threshold=0.1)
for entity in entities:
    print(entity)

Lowering the threshold makes the model more permissive and can help it recognize new or less common entity types, but may also increase false positives. Adjust as needed for your application.

πŸ“š Dataset Information

  • Dataset: LINNAEUS
  • Description: Species Entity Recognition - Species and organism names

Training Details

  • Base Model: gliner_large-v2.1
  • Training Framework: Hugging Face Transformers
  • Optimization: AdamW optimizer with learning rate scheduling
  • Validation: Cross-validation on held-out test set

πŸ’‘ Use Cases

This model is particularly useful for:

  • Clinical Text Mining: Extracting entities from medical records
  • Biomedical Research: Processing scientific literature
  • Drug Discovery: Identifying chemical compounds and drugs
  • Healthcare Analytics: Analyzing patient data and outcomes
  • Academic Research: Supporting biomedical NLP research
  • Custom Entity Recognition: Zero-shot detection of domain-specific entities

πŸ”¬ Model Architecture

  • Task: Zero-Shot Classification (Named Entity Recognition)
  • Labels: Dataset-specific entity types
  • Input: Biomedical text
  • Output: Named entity predictions

For more information about GLiNER, visit the GLiNER repository.

πŸ“œ License

Licensed under the Apache License 2.0. See LICENSE for details.

🀝 Contributing

I welcome contributions of all kinds! Whether you have ideas, feature requests, or want to join my mission to advance open-source Healthcare AI, I'd love to hear from you.

Follow OpenMed Org on Hugging Face πŸ€— and click "Watch" to stay updated on my latest releases and developments.

Citation

If you use this model in your research or applications, please cite the following paper:

@misc{panahi2025openmedneropensourcedomainadapted,
      title={OpenMed NER: Open-Source, Domain-Adapted State-of-the-Art Transformers for Biomedical NER Across 12 Public Datasets},
      author={Maziyar Panahi},
      year={2025},
      eprint={2508.01630},
      archivePrefix={arXiv},
      primaryClass={cs.CL},
      url={https://arxiv.org/abs/2508.01630},
}

Proper citation helps support and acknowledge my work. Thank you!

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