Siamese Tracking of Cell Behaviour Patterns

Open Access
Authors
Publication date 2020
Journal Proceedings of Machine Learning Research
Event 3rd Conference on Medical Imaging with Deep Learning
Volume | Issue number 121
Pages (from-to) 570-587
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Tracking and segmentation of biological cells in video sequences is a challenging problem, especially due to the similarity of the cells and high levels of inherent noise. Most machine learning-based approaches lack robustness and suffer from sensitivity to less prominent events such as mitosis, apoptosis and cell collisions. Due to the large variance in medical image characteristics, most approaches are dataset-specific and do not generalise well on other datasets. In this paper, we propose a simple end-to-end cascade neural architecture that can effectively model the movement behaviour of biological cells and predict collision and mitosis events. Our approach uses U-Net for an initial segmentation which is then improved through processing by a siamese tracker capable of matching each cell along the temporal axis. By facilitating the re-segmentation of collided and mitotic cells, our method demonstrates its capability to handle volatile trajectories and unpredictable cell locations while being invariant to cell morphology. We demonstrate that our tracking approach achieves state-of-the-art results on PhC-C2DL-PSC and Fluo-N2DH-SIM+ datasets and ranks second on the DIC-C2DH-HeLa dataset of the cell tracking challenge benchmarks.
Document type Article
Note Medical Imaging with Deep Learning, 6-8 July 2020, Montreal, QC, Canada
Language English
Published at http://proceedings.mlr.press/v121/panteli20a.html
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