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An Open-source Protocol for Deep Learning-based Segmentation of Tubular Structures in 3D Fluorescence Microscopy

Ricardo Velasco1, Cristian Pérez-Gallardo2, Fabián Segovia-Miranda3

  • 1Bio-Cheminformatics Research Group, Universidad de Las Américas.

Journal of Visualized Experiments : Jove
|December 1, 2025
PubMed
Summary
This summary is machine-generated.

We developed an open-source toolbox for segmenting tubular structures in 3D microscopy images using deep learning. This tool enhances analysis with novel data augmentation, improving accuracy even with limited training data.

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Area of Science:

  • * Biomedical image analysis
  • * Computational biology
  • * Deep learning applications

Background:

  • * Segmenting tubular structures in 3D fluorescence microscopy images is crucial for understanding complex biological tissues.
  • * Challenges include image complexity, variability, and quality issues, hindering accurate analysis.
  • * Existing methods often require specialized programming skills, limiting accessibility for researchers.

Purpose of the Study:

  • * To introduce an open-source, user-friendly toolbox for end-to-end segmentation of tubular structures in 3D images.
  • * To provide researchers without formal programming training with advanced image analysis capabilities.
  • * To improve the accuracy and efficiency of tubular network segmentation in biological tissues.

Main Methods:

  • * Implementation of two deep learning architectures: 3D U-Net and 3D U-Net with attention mechanisms.
  • * Development of a simulation-based data augmentation strategy to generate artificial microscopy images with realistic artifacts.
  • * Systematic protocol guiding users through data augmentation, model training, evaluation, and inference.

Main Results:

  • * Both 3D U-Net architectures demonstrated strong performance in segmenting tubular networks.
  • * The attention U-Net slightly outperformed the standard U-Net when trained with augmented data.
  • * The simulation-based data augmentation strategy significantly enhanced model performance, especially with minimal training data.

Conclusions:

  • * The developed toolbox offers an accessible and efficient solution for segmenting tubular structures in 3D microscopy images.
  • * The simulation-based data augmentation is a key innovation, enabling robust segmentation with limited data.
  • * The toolbox democratizes advanced image analysis, empowering a broader range of researchers to study complex biological tissues.