This paper presents a method for time-lapse 3D cell analysis. Specifically, we consider the problem of accurately localizing and quantitatively analyzing sub-cellular features, and for tracking individual cells from time-lapse 3D confocal cell image stacks. The heterogeneity of cells and the volume of multi-dimensional images presents a major challenge for fully automated analysis of morphogenesis and development of cells. This paper is motivated by the pavement cell growth process, and building a quantitative morphogenesis model. We propose a deep feature based segmentation method to accurately detect and label each cell region. An adjacency graph based method is used to extract sub-cellular features of the segmented cells. Finally, the robust graph based tracking algorithm using multiple cell features is proposed for associating cells at different time instances. We also demonstrate the generality of our tracking method on C. elegans fluorescent nuclei imagery. Extensive experiment results are provided and demonstrate the robustness of the proposed method. The code is available on GitHub and the method is available as a service through the BisQue portal.
CITATION STYLE
Jiang, J., Khan, A., Shailja, S., Belteton, S. A., Goebel, M., Szymanski, D. B., & Manjunath, B. S. (2023). Segmentation, tracking, and sub-cellular feature extraction in 3D time-lapse images. Scientific Reports, 13(1). https://doi.org/10.1038/s41598-023-29149-z
Mendeley helps you to discover research relevant for your work.