ToFiE, a Topology-aware Fiber Extraction workflow for 3D reconstruction of dense and heterogeneous biological fiber networks from microscopy images
Risa Togo, Sara Cardona, Irène Nagle, Gijsje H. Koenderink, Behrooz Fereidoonnezhad + 1 more
TLDR
ToFiE is an open-source workflow for 3D reconstruction of dense biological fiber networks from microscopy, preserving critical connectivity.
Key contributions
- Introduces ToFiE, an open-source workflow for 3D reconstruction of dense biological fiber networks.
- Preserves critical network topology and fiber connectivity, addressing limitations of current segmentation methods.
- Validated using synthetic microscopy images and real collagen gels with diverse microstructures.
- Enables extraction of mechanically relevant network information from various fibrous materials.
Why it matters
Current methods struggle to preserve network topology, which is crucial for understanding mechanical behavior. ToFiE provides a robust solution, enabling accurate analysis of fibrous materials. This advances our ability to study biological structures like collagen and fibrin.
Original Abstract
Fibrous networks are ubiquitous structural components in biology, spanning cellulose in plant cell walls, fibrin in blood clots, and collagen in the extracellular matrix of animal tissues. Theoretical models predict that network connectivity critically influences their mechanical behavior. However, accurately reconstructing network topology from 3D image data remains a major challenge as current segmentation methods are not designed to preserve network topology and often rely on intensity-based thresholding, which can fragment fibers and distort junction connectivity. Here, we introduce ToFiE, an open-source topology-aware fiber extraction workflow for reconstructing dense and heterogeneous fibrous networks from high resolution microscopy images while preserving connectivity in three dimensions. We validate ToFiE using synthetic fluorescence microscopy images of fiber networks with varying topologies and signal-to-noise ratios. We further demonstrate its performance by reconstructing the fiber networks of a library of collagen gels with various microstructures, imaged using confocal fluorescence microscopy. Altogether, the results establish ToFiE as a practical semi-automated framework for extracting mechanically relevant network information from imaging data across a broad range of fibrous materials.
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