CELLULAR, A Cell Autophagy Imaging Dataset
al Outa, Amani; Hicks, Steven; Thambawita, Vajira L B; Andresen, Siri; Enserink, Jorrit Martijn; Halvorsen, Pål; Riegler, Michael Alexander; Knævelsrud, Helene
Peer reviewed, Journal article
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Date
2023Metadata
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Original version
10.1038/s41597-023-02687-xAbstract
Cells in living organisms are dynamic compartments that continuously respond to changes in their
environment to maintain physiological homeostasis. While basal autophagy exists in cells to aid in the
regular turnover of intracellular material, autophagy is also a critical cellular response to stress, such
as nutritional depletion. Conversely, the deregulation of autophagy is linked to several diseases, such
as cancer, and hence, autophagy constitutes a potential therapeutic target. Image analysis to follow
autophagy in cells, especially on high-content screens, has proven to be a bottleneck. Machine learning
(ML) algorithms have recently emerged as crucial in analyzing images to efficiently extract information,
thus contributing to a better understanding of the questions at hand. this paper presents CELLULaR,
an open dataset consisting of images of cells expressing the autophagy reporter mRFP-EGFP-Atg8a
with cell-specific segmentation masks. Each cell is annotated into either basal autophagy, activated
autophagy, or unknown. Furthermore, we introduce some preliminary experiments using the dataset
that can be used as a baseline for future research.