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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 900M NER was created through fine-tuning of MediAlbertina PT-PT 900M 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 900M 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.

Model B-D I-D B-S I-S B-PM I-PM B-SV I-SV B-R I-R B-M I-M B-DO I-DO B-P I-P
F1 F1 F1 F1 F1 F1 F1 F1 F1 F1 F1 F1 F1 F1 F1 F1
albertina-900m-portuguese-ptpt-encoder 0.721 0.786 0.734 0.775 0.737 0.805 0.859 0.811 0.803 0.816 0.913 0.871 0.853 0.895 0.769 0.785
medialbertina_pt-pt_900m 0.799 0.832 0.754 0.782 0.786 0.813 0.916 0.788 0.821 0.83 0.926 0.895 0.85 0.885 0.779 0.807

Data

MediAlbertina PT-PT 900M 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_900m_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.

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