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Low Complexity Point Tracking of the Myocardium in 2D Echocardiography

Abstract

Deep learning methods for point tracking are applicable in 2D echocardiography, but do not yet take advantage of domain specifics that enable extremely fast and efficient configurations. We developed MyoTracker, a low-complexity architecture (0.3M parameters) for point tracking in echocardiography. It builds on the CoTracker2 architecture by simplifying its components and extending the temporal context to provide point predictions for the entire sequence in a single step. We applied MyoTracker to the right ventricular (RV) myocardium in RV-focused recordings and compared the results with those of CoTracker2 and EchoTracker, another specialized point tracking architecture for echocardiography. MyoTracker achieved the lowest average point trajectory error at 2.00±0.53 mm. Calculating RV Free Wall Strain using MyoTracker’s point predictions resulted in a −0.3% bias with 95% limits of agreement from −6.1% to 5.4% compared to reference values from commercial software. This range falls within the interobserver variability reported in previous studies. The limits of agreement were wider for both CoTracker2 and EchoTracker, worse than the interobserver variability. At inference, MyoTracker used 67% less GPU memory than CoTracker2 and 84% less than EchoTracker on large sequences (100 frames). MyoTracker was 74 times faster during inference than CoTracker2 and 11 times faster than EchoTracker with our setup. Maintaining the entire sequence in the temporal context was the greatest contributor to MyoTracker’s accuracy. Slight additional gains can be made by re-enabling iterative refinement, at the cost of longer processing time. MyoTracker source code: https://github.com/artemcher/myotracker
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Category

Academic article

Language

English

Author(s)

  • Artem Chernyshov
  • John Anders Tomas Nyberg
  • Vegard Holmstrøm
  • Md Abulkalam Azad
  • Bjørnar Leangen Grenne
  • Håvard Dalen
  • Svein Arne Aase
  • Lasse Løvstakken
  • Andreas Østvik

Affiliation

  • SINTEF Digital / Health Research
  • St. Olavs Hospital, Trondheim University Hospital
  • Norwegian University of Science and Technology
  • GE Vingmed Ultrasound AS
  • Oslo University Hospital
  • Andre institusjoner

Date

30.10.2025

Year

2025

Published in

IEEE Access

Volume

13

Page(s)

186992 - 187004

View this publication at Norwegian Research Information Repository