Litcius/Paper detail

spheresDT/Mpacts-PiCS: cell tracking and shape retrieval in membrane-labeled embryos

Wim Thiels, Bart Smeets, Maxim Cuvelier, Francesca Caroti, Rob Jelier

2021Bioinformatics23 citationsDOIOpen Access PDF

Abstract

MOTIVATION: Uncovering the cellular and mechanical processes that drive embryo formation requires an accurate read out of cell geometries over time. However, automated extraction of 3D cell shapes from time-lapse microscopy remains challenging, especially when only membranes are labeled. RESULTS: We present an image analysis framework for automated tracking and three-dimensional cell segmentation in confocal time lapses. A sphere clustering approach allows for local thresholding and application of logical rules to facilitate tracking and unseeded segmentation of variable cell shapes. Next, the segmentation is refined by a discrete element method simulation where cell shapes are constrained by a biomechanical cell shape model. We apply the framework on Caenorhabditis elegans embryos in various stages of early development and analyze the geometry of the 7- and 8-cell stage embryo, looking at volume, contact area and shape over time. AVAILABILITY AND IMPLEMENTATION: The Python code for the algorithm and for measuring performance, along with all data needed to recreate the results is freely available at 10.5281/zenodo.5108416 and 10.5281/zenodo.4540092. The most recent version of the software is maintained at https://bitbucket.org/pgmsembryogenesis/sdt-pics. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

Topics & Concepts

EmbryoTracking (education)Computer scienceArtificial intelligenceCellComputational biologyInformation retrievalBiologyCell biologyGeneticsPsychologyPedagogyCellular Mechanics and InteractionsPiezoelectric Actuators and ControlPoint processes and geometric inequalities