Three-dimensional topology-based analysis segments volumetric and spatiotemporal fluorescence microscopy

Luca Panconi*, Amy Tansell, Alexander J. Collins, Maria Makarova, Dylan M. Owen

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

Image analysis techniques provide objective and reproducible statistics for interpreting microscopy data. At higher dimensions, three-dimensional (3D) volumetric and spatiotemporal data highlight additional properties and behaviors beyond the static 2D focal plane. However, increased dimensionality carries increased complexity, and existing techniques for general segmentation of 3D data are either primitive, or highly specialized to specific biological structures. Borrowing from the principles of 2D topological data analysis (TDA), we formulate a 3D segmentation algorithm that implements persistent homology to identify variations in image intensity. From this, we derive two separate variants applicable to spatial and spatiotemporal data, respectively. We demonstrate that this analysis yields both sensitive and specific results on simulated data and can distinguish prominent biological structures in fluorescence microscopy images, regardless of their shape. Furthermore, we highlight the efficacy of temporal TDA in tracking cell lineage and the frequency of cell and organelle replication.
Original languageEnglish
Article numbere1
JournalBiological Imaging
Volume4
Early online date14 Dec 2023
DOIs
Publication statusPublished - 1 Jan 2024

Bibliographical note

Funding statement
We acknowledge funding from Oxford Nanoimaging (ONI) and the Engineering and Physical Sciences Research Council through the University of Birmingham CDT in Topological Design, grant code EP/S02297X/1.

Keywords

  • fluorescence microscopy
  • cell segmentation
  • cell tracking
  • R
  • topological data analysis

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