Please use this identifier to cite or link to this item: https://repository.monashhealth.org/monashhealthjspui/handle/1/52578
Title: Longitudinal data and a semantic similarity reward for chest X-ray report generation.
Authors: Nicolson A.;Dowling J.;Anderson D.;Koopman B.
Institution: (Nicolson, Dowling, Koopman) The Australian e-Health Research Centre, CSIRO Health and Biosecurity, Brisbane, Australia
(Dowling, Koopman) School of Electrical Engineering & Computer Science, University of Queensland, Brisbane, Australia
(Anderson) Imaging Associates, Melbourne, Australia
(Anderson) St Vincent's Hospital, Melbourne, Australia
(Anderson) Monash Health, Melbourne, Australia
Issue Date: 11-Oct-2024
Copyright year: 2024
Publisher: Elsevier Ltd
Place of publication: United Kingdom
Publication information: Informatics in Medicine Unlocked. 50(no pagination), 2024. Article Number: 101585. Date of Publication: January 2024.
Journal: Informatics in Medicine Unlocked
Abstract: Radiologists face high burnout rates, partially due to the increasing volume of Chest X-rays (CXRs) requiring interpretation and reporting. Automated CXR report generation holds promise for reducing this burden and improving patient care. While current models show potential, their diagnostic accuracy is limited. Our proposed CXR report generator integrates elements of the radiologist workflow and introduces a novel reward for reinforcement learning. Our approach leverages longitudinal data from a patient's prior CXR study and effectively handles cases where no prior study exists, thus mirroring the radiologist's workflow. In contrast, existing models typically lack this flexibility, often requiring prior studies for the model to function optimally. Our approach also incorporates all CXRs from a patient's study and distinguishes between report sections through section embeddings. Our reward for reinforcement learning leverages CXR-BERT, which forces our model to learn the clinical semantics of radiology reporting. We conduct experiments on publicly available datasets - MIMIC-CXR and Open-i IU X-ray - with metrics shown to more closely correlate with radiologists' assessment of reporting. Results from our study demonstrate that the proposed model generates reports that are more aligned with radiologists' reports than state-of-the-art models, such as those utilising large language models, reinforcement learning, and multi-task learning. The proposed model improves the diagnostic accuracy of CXR report generation, which could one day reduce radiologists' workload and enhance patient care. Our Hugging Face checkpoint (https://huggingface.co/aehrc/cxrmate) and code (https://github.com/aehrc/cxrmate) are publicly available.Copyright © 2024
DOI: http://monash.idm.oclc.org/login?url=https://dx.doi.org/10.1016/j.imu.2024.101585
URI: https://repository.monashhealth.org/monashhealthjspui/handle/1/52578
Type: Article
Subjects: burnout
radiologist
radiology
thorax radiography
Type of Clinical Study or Trial: Observational study (cohort, case-control, cross sectional, or survey)
Appears in Collections:Articles

Show full item record

Page view(s)

2
checked on Oct 23, 2024

Google ScholarTM

Check


Items in Monash Health Research Repository are protected by copyright, with all rights reserved, unless otherwise indicated.