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Related Concept Videos

Cell Migration01:09

Cell Migration

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Cell migration, the process by which cells move from one location to another, is essential for the proper development and viability of organisms throughout their life. When cells are not able to migrate properly to their ordained locations, various disorders may occur. For example, disruption in cell migration causes chronic inflammatory diseases such as arthritis.
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Cell polarity is the asymmetric distribution of cellular and membrane components, making one side of the cell different from the other. This polarity is essential to many processes such as embryogenesis, axon migration, glucose transport across epithelial cells, and directional cell migration. A migrating cell responds to intracellular or extracellular signals via molecular cascades that reorganize the actin cytoskeleton to establish this polarity. In these cells, the Rho family proteins Cdc42,...
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Related Experiment Video

Updated: May 12, 2025

Visualization and Quantification of High-Dimensional Cytometry Data using Cytofast and the Upstream Clustering Methods FlowSOM and Cytosplore
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CellRomeR: an R package for clustering cell migration phenotypes from microscopy data.

Iivari Kleino1, Mats Perk1, António G G Sousa1

  • 1Turku Bioscience Centre, University of Turku and Åbo Akademi University, Turku, FI-20520, Finland.

Bioinformatics Advances
|May 7, 2025
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Summary
This summary is machine-generated.

The R package CellRomeR analyzes cell migration by clustering cells based on morphology and motility. This tool reveals distinct cellular phenotypes and migration patterns, enhancing understanding of cell population heterogeneity.

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Area of Science:

  • Cell biology
  • Bioinformatics
  • Image analysis

Background:

  • Cell migration analysis often focuses on track characteristics, overlooking cell morphology and intensity heterogeneity.
  • Existing methods struggle to capture the full spectrum of cell behavior during migration.

Purpose of the Study:

  • To introduce CellRomeR, an R package for phenotypic clustering of cells based on microscopy image features.
  • To enable the identification and characterization of heterogeneity within migrating cell populations.
  • To link distinct cellular phenotypes with specific migration behaviors.

Main Methods:

  • Development of the CellRomeR R package.
  • Application of machine learning and iterative clustering projection for phenotypic analysis.
  • Clustering of cells along migration tracks to associate phenotypes with migration types.

Main Results:

  • CellRomeR facilitates phenotypic clustering of cells using morphological and motility features.
  • The package successfully identifies distinct cellular phenotypes and their associated migration patterns.
  • It enables the detection of migration behaviors linked to stable and unstable cell phenotypes.

Conclusions:

  • CellRomeR provides a user-friendly approach to analyze cell migration heterogeneity.
  • The package enhances the understanding of cellular behavior by integrating morphology and motility data.
  • It addresses limitations in clustering cell trajectories from microscopy data.