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RadBERT: Adapting Transformer-based Language Models to Radiology.

An Yan1, Julian McAuley1, Xing Lu1

  • 1University of California, San Diego, 9500 Gilman Dr, La Jolla, CA 92093-0608 (A.Y., J.M., X.L., J.D., E.Y.C., A.G., C.N.H.); and Veterans Affairs San Diego Healthcare System, San Diego, Calif (E.Y.C., A.G.).

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Summary
This summary is machine-generated.

Tailored transformer models, RadBERT, significantly improved radiology natural language processing (NLP) tasks like classification and coding. These specialized models offer enhanced performance in analyzing radiology reports.

Keywords:
InformaticsNeural NetworksTransfer LearningTranslationUnsupervised Learning

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Area of Science:

  • Artificial Intelligence
  • Natural Language Processing
  • Medical Informatics

Background:

  • Transformer-based language models (e.g., BERT) are increasingly used in medical applications.
  • Adapting general language models to specific domains like radiology can potentially improve performance.
  • Radiology natural language processing (NLP) involves extracting meaningful information from unstructured radiology reports.

Purpose of the Study:

  • To investigate the efficacy of tailoring transformer-based language models for radiology NLP applications.
  • To develop and evaluate a family of radiology-adapted BERT models, named RadBERT.

Main Methods:

  • Developed six RadBERT variants by pretraining transformer models on 2.16-4.42 million radiology reports.
  • Fine-tuned RadBERT variants on three NLP tasks: abnormal sentence classification, report coding, and report summarization.
  • Compared RadBERT performance against five established transformer models using bootstrap resampling.

Main Results:

  • RadBERT variants significantly outperformed baseline models in abnormal sentence classification, especially with limited training data (<10%).
  • All RadBERT variants showed significant improvements in report coding across five coding systems.
  • RadBERT-BioMed-RoBERTa achieved the best performance in report summarization (ROUGE-1 score of 16.18 vs. 15.27).

Conclusions:

  • Transformer models specifically tailored to radiology demonstrate superior performance on radiology NLP tasks compared to general models.
  • RadBERT models offer a promising approach for advancing automated analysis of radiology reports.
  • Domain-specific pretraining enhances the effectiveness of transformer models in specialized medical fields.