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Point tracking as a temporal Cue for robust myocardial segmentation in echocardiography videos.

May 11, 2026pubmed logopapers

Authors

Khodabakhshian B,Hashemi N,Saadat A,Gholami Z,Hwang IC,Sojoudi S,Luong C,Abolmaesumi P,Tsang T

Affiliations (4)

  • University of British Columbia, University Blvd, Vancouver, BC, V6T 1Z4, British Columbia, Canada. [email protected].
  • University of British Columbia, University Blvd, Vancouver, BC, V6T 1Z4, British Columbia, Canada. [email protected].
  • University of British Columbia, University Blvd, Vancouver, BC, V6T 1Z4, British Columbia, Canada.
  • Vancouver General Hospital, West 12th Avenue, Vancouver, BC, V5Z 1M9, British Columbia, Canada.

Abstract

Myocardium segmentation in echocardiography videos is a challenging task due to low contrast, noise, and anatomical variability. Traditional deep learning models either process frames independently, ignoring temporal information, or rely on memory-based feature propagation, which accumulates error over time. We propose PointSeg, a transformer-based segmentation framework that integrates point tracking as a temporal cue to ensure stable and consistent segmentation of myocardium across frames. Our method leverages a point-tracking module trained on a synthetic echocardiography dataset to track key anatomical landmarks across video sequences. These tracked trajectories provide an explicit motion-aware signal that guides segmentation, reducing drift and eliminating the need for memory-based feature accumulation. Additionally, we incorporate a temporal smoothing loss to further enhance temporal consistency across frames. We evaluate our approach on both public and private echocardiography datasets. Experimental results demonstrate that PointSeg has statistically similar accuracy in terms of Dice to state-of-the-art segmentation models in high-quality echo data, while it achieves better segmentation accuracy in lower-quality echo with improved temporal stability. Furthermore, PointSeg has the key advantage of pixel-level myocardium motion information as opposed to other segmentation methods. Such information is essential in the computation of other downstream tasks such as myocardial strain measurement and regional wall motion abnormality detection. PointSeg demonstrates that point tracking can serve as an effective temporal cue for consistent video segmentation, offering a reliable and generalizable approach for myocardium segmentation in echocardiography videos. The code is available at https://github.com/DeepRCL/PointSeg .

Topics

Journal Article

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