Edit model card

MediAlbertina

The first publicly available medical language model trained with real European Portuguese data.

MediAlbertina is a family of encoders from the Bert family, DeBERTaV2-based, resulting from the continuation of the pre-training of PORTULAN's Albertina models with Electronic Medical Records shared by Portugal's largest public hospital.

Like its antecessors, MediAlbertina models are distributed under the MIT license.

Model Description

MediAlbertina PT-PT 1.5 NER was created through fine-tuning of MediAlbertina PT-PT 1.5B on real European Portuguese EMRs that have been hand-annotated for the following entities:

  • Diagnostico (D): All types of diseases and conditions following the ICD-10-CM guidelines.
  • Sintoma (S): Any complaints or evidence from healthcare professionals indicating that a patient is experiencing a medical condition.
  • Medicamento (M): Something that is administrated to the patient (through any route), including drugs, specific food/drink, vitamins, or blood for transfusion.
  • Dosagem (D): Dosage and frequency of medication administration.
  • ProcedimentoMedico (PM): Anything healthcare professionals do related to patients, including exams, moving patients, administering something, or even surgeries.
  • SinalVital (SV): Quantifiable indicators in a patient that can be measured, always associated with a specific result. Examples include cholesterol levels, diuresis, weight, or glycaemia.
  • Resultado (R): Results can be associated with Medical Procedures and Vital Signs. It can be a numerical value if something was measured (e.g., the value associated with blood pressure) or a descriptor to indicate the result (e.g., positive/negative, functional).
  • Progresso (P): Describes the progress of patient’s condition. Typically, it includes verbs like improving, evolving, or regressing and mentions to patient’s stability.

MediAlbertina PT-PT 1.5B NER achieved superior results to the same adaptation made on a non-medical Portuguese language model, demonstrating the effectiveness of this domain adaptation, and its potential for medical AI in Portugal.

Checkpoints Prec Rec F1
Albertina PT-PT 900M 0.814 0.814 0.813
Albertina PT-PT 1.5B 0.833 0.845 0.838
MediAlbertina PT-PT900M 0.84 0.828 0.832
MediAlbertina PT-PT 1.5B 0.842 0.845 0.843

Data

MediAlbertina PT-PT 1.5B NER was fine-tuned on about 10k hand-annotated medical entities from about 4k fully anonymized medical sentences from Portugal's largest public hospital. This data was acquired under the framework of the FCT project DSAIPA/AI/0122/2020 AIMHealth-Mobile Applications Based on Artificial Intelligence.

How to use

from transformers import pipeline

ner_pipeline = pipeline('ner', model='portugueseNLP/medialbertina_pt-pt_1.5b_NER', aggregation_strategy='average')
sentence = 'Durante o procedimento endoscópico, foram encontrados pólipos no cólon do paciente.'
entities = ner_pipeline(sentence)
for entity in entities:
    print(f"{entity['entity_group']} - {sentence[entity['start']:entity['end']]}")

Citation

MediAlbertina is developed by a joint team from ISCTE-IUL, Portugal, and Select Data, CA USA. For a fully detailed description, check the respective publication:

@article{MediAlbertina PT-PT,
      title={MediAlbertina: An European Portuguese medical language model}, 
      author={Miguel Nunes and João Boné and João Ferreira
              and Pedro Chaves and Luís Elvas},
      year={2024},
      journal={CBM},
      volume={182}
      url={https://doi.org/10.1016/j.compbiomed.2024.109233}
}

Please use the above cannonical reference when using or citing this model.

Acknowledgements

This work was financially supported by Project Blockchain.PT – Decentralize Portugal with Blockchain Agenda, (Project no 51), WP2, Call no 02/C05-i01.01/2022, funded by the Portuguese Recovery and Resillience Program (PRR), The Portuguese Republic and The European Union (EU) under the framework of Next Generation EU Program.

Downloads last month
23
Safetensors
Model size
1.56B params
Tensor type
F32
·
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Collection including portugueseNLP/medialbertina_pt-pt_1.5b_NER