2024
DOI: 10.1038/s41467-024-45362-4
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Orientation-invariant autoencoders learn robust representations for shape profiling of cells and organelles

James Burgess,
Jeffrey J. Nirschl,
Maria-Clara Zanellati
et al.

Abstract: Cell and organelle shape are driven by diverse genetic and environmental factors and thus accurate quantification of cellular morphology is essential to experimental cell biology. Autoencoders are a popular tool for unsupervised biological image analysis because they learn a low-dimensional representation that maps images to feature vectors to generate a semantically meaningful embedding space of morphological variation. The learned feature vectors can also be used for clustering, dimensionality reduction, out… Show more

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