Approaches and Limitations of Machine Learning for Synthetic Ultrasound Generation: A Scoping Review.

Journal: Journal of ultrasound in medicine : official journal of the American Institute of Ultrasound in Medicine
Published Date:

Abstract

This scoping review examines the emerging field of synthetic ultrasound generation using machine learning (ML) models in radiology. Nineteen studies were analyzed, revealing three primary methodological strategies: unconditional generation, conditional generation, and domain translation. Synthetic ultrasound is mainly used to augment training datasets and as training material for radiologists. Blind expert assessment and Fréchet Inception Distance are common evaluation methods. Current limitations include the need for large training datasets, manual annotations for controllable generation, and insufficient research on incorporating new domain knowledge. While generative ultrasound models show promise, further work is required for clinical implementation.

Authors

  • Mauro Mendez
    Department of Medical Imaging, University of Toronto, Toronto, ON, M5T 1W7, Canada.
  • Shruthi Sundararaman
    Department of Medical Imaging, University of Toronto, Toronto, Ontario, Canada.
  • Linda Probyn
    Department of Radiology, Sunnybrook Health Sciences Centre, University of Toronto, Toronto, Ontario.
  • Pascal N Tyrrell
    Department of Medical Imaging, University of Toronto, Toronto, Ontario, Canada; Department of Statistical Sciences, University of Toronto, Toronto, Ontario, Canada. Electronic address: pascal.tyrrell@utoronto.ca.