English

RadLex Normalization in Radiology Reports

Computation and Language 2020-09-14 v1

Abstract

Radiology reports have been widely used for extraction of various clinically significant information about patients' imaging studies. However, limited research has focused on standardizing the entities to a common radiology-specific vocabulary. Further, no study to date has attempted to leverage RadLex for standardization. In this paper, we aim to normalize a diverse set of radiological entities to RadLex terms. We manually construct a normalization corpus by annotating entities from three types of reports. This contains 1706 entity mentions. We propose two deep learning-based NLP methods based on a pre-trained language model (BERT) for automatic normalization. First, we employ BM25 to retrieve candidate concepts for the BERT-based models (re-ranker and span detector) to predict the normalized concept. The results are promising, with the best accuracy (78.44%) obtained by the span detector. Additionally, we discuss the challenges involved in corpus construction and propose new RadLex terms.

Keywords

Cite

@article{arxiv.2009.05128,
  title  = {RadLex Normalization in Radiology Reports},
  author = {Surabhi Datta and Jordan Godfrey-Stovall and Kirk Roberts},
  journal= {arXiv preprint arXiv:2009.05128},
  year   = {2020}
}

Comments

Accepted at the AMIA Annual Symposium 2020

R2 v1 2026-06-23T18:27:32.877Z