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filoVision: using deep learning and tip markers to automate filopodia analysis.

Casey EddingtonJessica K SchwartzMargaret A Titus
Published in: Journal of cell science (2024)
Filopodia are slender, actin-filled membrane projections used by various cell types for environment exploration. Analyzing filopodia often involves visualizing them using actin, filopodia tip, or membrane markers. Due to the diversity of cell types that extend filopodia, from amoeboid to mammalian, it can be challenging for some to find a reliable filopodia analysis workflow suited for their cell type and preferred visualization method. The lack of an automated workflow capable of analyzing amoeboid filopodia with only a filopodia tip label prompted the development of filoVision. filoVision is an adaptable deep learning platform featuring filoTips and filoSkeleton. filoTips uses a single tip marker to label filopodia tips and the cytosol, allowing information extraction without actin or membrane markers. In contrast, filoSkeleton combines a tip marker with actin labeling for a more comprehensive analysis of filopodia shafts in addition to tip protein analysis. The ZeroCostDL4Mic deep learning framework facilitates accessibility and customization for different datasets and cell types, making filoVision a flexible tool for automated analysis of tip-marked filopodia across various cell types and user data.
Keyphrases
  • deep learning
  • single cell
  • cell therapy
  • machine learning
  • artificial intelligence
  • magnetic resonance
  • healthcare
  • electronic health record
  • cell migration
  • binding protein
  • single molecule