Neural network auto‐segmentation of serial‐block‐face scanning electron microscopy images exhibit collagen fibril structural differences with tendon type and health
Ellen T. Bloom,
Chandran R. Sabanayagam,
Jamie M. Benson
et al.
Abstract:A U‐Net machine learning algorithm was adapted to automatically segment tendon collagen fibril cross‐sections from serial block face scanning electron microscopy (SBF‐SEM) and create three‐dimensional (3D) renderings. We compared the performance of routine Otsu thresholding and U‐Net for a positional tendon that has low fibril density (rat tail tendon), an energy‐storing tendon that has high fibril density (rat plantaris tendon), and a high fibril density tendon hypothesized to have disorganized 3D ultrastruct… Show more
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