Treffer: Interpretable representation learning for 3D multi-piece intracellular structures using point clouds.

Title:
Interpretable representation learning for 3D multi-piece intracellular structures using point clouds.
Authors:
Vasan R; Allen Institute for Cell Science, Seattle, WA, USA., Ferrante AJ; Allen Institute for Cell Science, Seattle, WA, USA., Borensztejn A; Allen Institute for Cell Science, Seattle, WA, USA., Frick CL; Allen Institute for Cell Science, Seattle, WA, USA., Gaudreault N; Allen Institute for Cell Science, Seattle, WA, USA., Mogre SS; Allen Institute for Cell Science, Seattle, WA, USA., Morris B; Allen Institute for Cell Science, Seattle, WA, USA., Pires GG; Allen Institute for Cell Science, Seattle, WA, USA., Rafelski SM; Allen Institute for Cell Science, Seattle, WA, USA., Theriot JA; Department of Biology and Howard Hughes Medical Institute, University of Washington, Seattle, WA, USA., Viana MP; Allen Institute for Cell Science, Seattle, WA, USA.
Source:
BioRxiv : the preprint server for biology [bioRxiv] 2024 Aug 13. Date of Electronic Publication: 2024 Aug 13.
Publication Type:
Journal Article; Preprint
Language:
English
Journal Info:
Country of Publication: United States NLM ID: 101680187 Publication Model: Electronic Cited Medium: Internet ISSN: 2692-8205 (Electronic) Linking ISSN: 26928205 NLM ISO Abbreviation: bioRxiv Subsets: PubMed not MEDLINE
Comments:
Update in: Nat Methods. 2025 Jul;22(7):1531-1544. doi: 10.1038/s41592-025-02729-9.. (PMID: 40610730)
Grant Information:
UM1 HG011593 United States HG NHGRI NIH HHS
Entry Date(s):
Date Created: 20240802 Latest Revision: 20250709
Update Code:
20250710
PubMed Central ID:
PMC11291148
DOI:
10.1101/2024.07.25.605164
PMID:
39091871
Database:
MEDLINE

Weitere Informationen

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 apply our framework to intracellular structures with punctate morphologies (e.g. DNA replication foci) and polymorphic morphologies (e.g. nucleoli). We systematically compare our framework to image-based autoencoders across several intracellular structure datasets, including a synthetic dataset with pre-defined rules of organization. We explore the trade-offs in the performance of different models by performing multi-metric benchmarking across efficiency, generative capability, and representation expressivity metrics. We find that our framework, which embraces the underlying morphology of multi-piece structures, facilitates the unsupervised discovery of sub-clusters for each structure. We show how our approach can also be applied to phenotypic profiling using a dataset of nucleolar images following drug perturbations. We implement and provide all representation learning models using CytoDL, a python package for flexible and configurable deep learning experiments.

Declaration of interests The authors declare no competing interests.