Applying Natural Language Processing to Single-Report Prediction of Metastatic Disease Response Using the OR-RADS Lexicon

Author:

Elbatarny Lydia1ORCID,Do Richard K. G.2ORCID,Gangai Natalie2ORCID,Ahmed Firas2,Chhabra Shalini2,Simpson Amber L.13

Affiliation:

1. School of Computing, Queen’s University, Kingston, ON K7L 2N8, Canada

2. Department of Radiology, Memorial Sloan Kettering Cancer Center, New York, NY 10065, USA

3. Department of Biomedical and Molecular Sciences, Queen’s University, Kingston, ON K7L 2V7, Canada

Abstract

Generating Real World Evidence (RWE) on disease responses from radiological reports is important for understanding cancer treatment effectiveness and developing personalized treatment. A lack of standardization in reporting among radiologists impacts the feasibility of large-scale interpretation of disease response. This study examines the utility of applying natural language processing (NLP) to the large-scale interpretation of disease responses using a standardized oncologic response lexicon (OR-RADS) to facilitate RWE collection. Radiologists annotated 3503 retrospectively collected clinical impressions from radiological reports across several cancer types with one of seven OR-RADS categories. A Bidirectional Encoder Representations from Transformers (BERT) model was trained on this dataset with an 80–20% train/test split to perform multiclass and single-class classification tasks using the OR-RADS. Radiologists also performed the classification to compare human and model performance. The model achieved accuracies from 95 to 99% across all classification tasks, performing better in single-class tasks compared to the multiclass task and producing minimal misclassifications, which pertained mostly to overpredicting the equivocal and mixed OR-RADS labels. Human accuracy ranged from 74 to 93% across all classification tasks, performing better on single-class tasks. This study demonstrates the feasibility of the BERT NLP model in predicting disease response in cancer patients, exceeding human performance, and encourages the use of the standardized OR-RADS lexicon to improve large-scale prediction accuracy.

Funder

NIH/NCI Cancer Center Support

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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