Machine learning for medical ultrasound: status, methods, and future opportunities.

Journal: Abdominal radiology (New York)
Published Date:

Abstract

Ultrasound (US) imaging is the most commonly performed cross-sectional diagnostic imaging modality in the practice of medicine. It is low-cost, non-ionizing, portable, and capable of real-time image acquisition and display. US is a rapidly evolving technology with significant challenges and opportunities. Challenges include high inter- and intra-operator variability and limited image quality control. Tremendous opportunities have arisen in the last decade as a result of exponential growth in available computational power coupled with progressive miniaturization of US devices. As US devices become smaller, enhanced computational capability can contribute significantly to decreasing variability through advanced image processing. In this paper, we review leading machine learning (ML) approaches and research directions in US, with an emphasis on recent ML advances. We also present our outlook on future opportunities for ML techniques to further improve clinical workflow and US-based disease diagnosis and characterization.

Authors

  • Laura J Brattain
    MIT Lincoln Laboratory, 244 Wood St, Lexington, MA, 02420, USA. brattainl@ll.mit.edu.
  • Brian A Telfer
    MIT Lincoln Laboratory, 244 Wood St, Lexington, MA, 02420, USA.
  • Manish Dhyani
    Department of Internal Medicine, Steward Carney Hospital, Boston, MA, 02124, USA.
  • Joseph R Grajo
    Department of Radiology, Division of Abdominal Imaging, University of Florida College of Medicine, Gainesville, FL, USA.
  • Anthony E Samir
    Division of Ultrasound, Department of Radiology, Center for Ultrasound Research & Translation, Massachusetts General Hospital, Boston, MA, 02114, USA.