1. Academic Validation
  2. Deep learning techniques and mathematical modeling allow 3D analysis of mitotic spindle dynamics

Deep learning techniques and mathematical modeling allow 3D analysis of mitotic spindle dynamics

  • J Cell Biol. 2023 May 1;222(5):e202111094. doi: 10.1083/jcb.202111094.
David Dang 1 2 Christoforos Efstathiou 1 Dijue Sun 1 Haoran Yue 1 Nishanth R Sastry 2 Viji M Draviam 1
Affiliations

Affiliations

  • 1 School of Biological and Behavioural Sciences, Queen Mary University of London , London, UK.
  • 2 Department of Informatics, King's College London , London, UK.
Abstract

Time-lapse microscopy movies have transformed the study of subcellular dynamics. However, manual analysis of movies can introduce bias and variability, obscuring important insights. While automation can overcome such limitations, spatial and temporal discontinuities in time-lapse movies render methods such as 3D object segmentation and tracking difficult. Here, we present SpinX, a framework for reconstructing gaps between successive image frames by combining deep learning and mathematical object modeling. By incorporating expert feedback through selective annotations, SpinX identifies subcellular structures, despite confounding neighbor-cell information, non-uniform illumination, and variable fluorophore marker intensities. The automation and continuity introduced here allows the precise 3D tracking and analysis of spindle movements with respect to the cell cortex for the first time. We demonstrate the utility of SpinX using distinct spindle markers, cell lines, microscopes, and drug treatments. In summary, SpinX provides an exciting opportunity to study spindle dynamics in a sophisticated way, creating a framework for step changes in studies using time-lapse microscopy.

Figures
Products