Journal of Imaging (May 2022)

Deep Neural Network for Cardiac Magnetic Resonance Image Segmentation

  • David Chen,
  • Huzefa Bhopalwala,
  • Nakeya Dewaswala,
  • Shivaram P. Arunachalam,
  • Moein Enayati,
  • Nasibeh Zanjirani Farahani,
  • Kalyan Pasupathy,
  • Sravani Lokineni,
  • J. Martijn Bos,
  • Peter A. Noseworthy,
  • Reza Arsanjani,
  • Bradley J. Erickson,
  • Jeffrey B. Geske,
  • Michael J. Ackerman,
  • Philip A. Araoz,
  • Adelaide M. Arruda-Olson

DOI
https://doi.org/10.3390/jimaging8050149
Journal volume & issue
Vol. 8, no. 5
p. 149

Abstract

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The analysis and interpretation of cardiac magnetic resonance (CMR) images are often time-consuming. The automated segmentation of cardiac structures can reduce the time required for image analysis. Spatial similarities between different CMR image types were leveraged to jointly segment multiple sequences using a segmentation model termed a multi-image type UNet (MI-UNet). This model was developed from 72 exams (46% female, mean age 63 ± 11 years) performed on patients with hypertrophic cardiomyopathy. The MI-UNet for steady-state free precession (SSFP) images achieved a superior Dice similarity coefficient (DSC) of 0.92 ± 0.06 compared to 0.87 ± 0.08 for a single-image type UNet (p p = 0.001). The difference across image types was most evident for the left ventricular myocardium in SSFP images and for both the left ventricular cavity and the left ventricular myocardium in LGE images. For the right ventricle, there were no differences in DCS when comparing the MI-UNet with single-image type UNets. The joint segmentation of multiple image types increases segmentation accuracy for CMR images of the left ventricle compared to single-image models. In clinical practice, the MI-UNet model may expedite the analysis and interpretation of CMR images of multiple types.

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