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Tracking Neutrophil Migration in Zebrafish Model Using Multi-Channel Feature Learning | IEEE Journals & Magazine | IEEE Xplore
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Tracking Neutrophil Migration in Zebrafish Model Using Multi-Channel Feature Learning


Abstract:

Tracking cells over time is crucial in the fields of computer vision and biomedical science. Studying neutrophils and their migratory profile is the highly topical fields...Show More

Abstract:

Tracking cells over time is crucial in the fields of computer vision and biomedical science. Studying neutrophils and their migratory profile is the highly topical fields in inflammation research due to determining role of these cells during immune responses. As neutrophils generally are of various shapes and motion, it remains challenging to track and describe their behaviours from multi-dimensional microscopy datasets. In this study, we propose a robust novel multi-channel feature learning (MCFL) model inspired by deep learning to extract the complex behaviour of neutrophils moved in time lapse images. In this model, the convolutional neural networks along with cell relocation distance and orientation channels learn the robust significant spatial and temporal features of an individual neutrophil. Additionally, we also proposed a new cell tracking framework to detect and track neutrophils in the original time-laps microscopy images, entails sampling, observation, and visualisation functions. Our proposed cell tracking-based-multi channel feature learning method has remarkable performance in rectifying common cell tracking problem compared with state-of the-art methods.
Published in: IEEE Journal of Biomedical and Health Informatics ( Volume: 25, Issue: 4, April 2021)
Page(s): 1197 - 1205
Date of Publication: 27 August 2020

ISSN Information:

PubMed ID: 32853155

References

References is not available for this document.