2024
DOI: 10.1101/2024.07.25.605164
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Interpretable representation learning for 3D multi-piece intracellular structures using point clouds

Ritvik Vasan,
Alexandra J. Ferrante,
Antoine Borensztejn
et al.

Abstract: A key challenge in understanding subcellular organization is quantifying interpretable measurements of intracellular structures with complex multi-piece morphologies in an objective, robust and generalizable manner. Here we introduce a morphology-appropriate representation learning framework that uses 3D rotation invariant autoencoders and point clouds. This framework is used to learn representations of complex multi-piece morphologies that are independent of orientation, compact, and easy to interpret. We app… Show more

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