Chest radiographs and machine learning - Past, present and future.

Journal: Journal of medical imaging and radiation oncology
Published Date:

Abstract

Despite its simple acquisition technique, the chest X-ray remains the most common first-line imaging tool for chest assessment globally. Recent evidence for image analysis using modern machine learning points to possible improvements in both the efficiency and the accuracy of chest X-ray interpretation. While promising, these machine learning algorithms have not provided comprehensive assessment of findings in an image and do not account for clinical history or other relevant clinical information. However, the rapid evolution in technology and evidence base for its use suggests that the next generation of comprehensive, well-tested machine learning algorithms will be a revolution akin to early advances in X-ray technology. Current use cases, strengths, limitations and applications of chest X-ray machine learning systems are discussed.

Authors

  • Catherine M Jones
    I-MED Radiology Network, Brisbane, Queensland, Australia.
  • Quinlan D Buchlak
    School of Medicine, The University of Notre Dame, Sydney, NSW, Australia. quinlan.buchlak1@my.nd.edu.au.
  • Luke Oakden-Rayner
    Department of Medical Imaging Research, Royal Adelaide Hospital, Adelaide, Australia.
  • Michael Milne
    I-MED Radiology Network, Brisbane, Queensland, Australia.
  • Jarrel Seah
    Department of Neuroscience, Monash University, Melbourne, Australia; Radiology and Nuclear Medicine, Alfred Health, Melbourne, Australia.
  • Nazanin Esmaili
    School of Medicine, The University of Notre Dame, Sydney, NSW, Australia.
  • Ben Hachey
    Annalise.ai, Sydney, New South Wales, Australia.