Using synthetic data generation to train a cardiac motion tag tracking neural network.

Journal: Medical image analysis
Published Date:

Abstract

A CNN based method for cardiac MRI tag tracking was developed and validated. A synthetic data simulator was created to generate large amounts of training data using natural images, a Bloch equation simulation, a broad range of tissue properties, and programmed ground-truth motion. The method was validated using both an analytical deforming cardiac phantom and in vivo data with manually tracked reference motion paths. In the analytical phantom, error was investigated relative to SNR, and accurate results were seen for SNR>10 (displacement error <0.3 mm). Excellent agreement was seen in vivo for tag locations (mean displacement difference = -0.02 pixels, 95% CI [-0.73, 0.69]) and calculated cardiac circumferential strain (mean difference = 0.006, 95% CI [-0.012, 0.024]). Automated tag tracking with a CNN trained on synthetic data is both accurate and precise.

Authors

  • Michael Loecher
    Department of Radiology, Stanford University, USA. Electronic address: mloecher@stanford.edu.
  • Luigi E Perotti
    Department of Mechanical and Aerospace Engineering, University of Central Florida, USA.
  • Daniel B Ennis
    Department of Radiology, Stanford University, Stanford, CA, 94305, USA.