4.7 Article

Rapid, automated nerve histomorphometry through open-source artificial intelligence

Journal

SCIENTIFIC REPORTS
Volume 12, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41598-022-10066-6

Keywords

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Funding

  1. German Research Foundation [DA 2255/1-1]
  2. Canada Research Chair in Quantitative Magnetic Resonance Imaging
  3. Canadian Institute of Health Research [CIHR FDN-143263]
  4. Canada Foundation for Innovation [32454, 34824]
  5. Fonds de Recherche du Quebec-Sante [28826]
  6. Natural Sciences and Engineering Research Council of Canada [RGPIN-201907244]
  7. Canada First Research Excellence Fund [35450]
  8. Fonds de recherche du Quebec -Nature et technologies (FRQNT)

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This study aimed to develop and validate a deep learning model for automated segmentation and histomorphometry of myelinated peripheral nerve fibers from light microscopic images. The model achieved high accuracy for automated segmentation and morphometry, outperforming manual methods in terms of consistency and analysis time reduction.
We aimed to develop and validate a deep learning model for automated segmentation and histomorphometry of myelinated peripheral nerve fibers from light microscopic images. A convolutional neural network integrated in the AxonDeepSeg framework was trained for automated axon/myelin segmentation using a dataset of light-microscopic cross-sectional images of osmium tetroxide-stained rat nerves including various axonal regeneration stages. In a second dataset, accuracy of automated segmentation was determined against manual axon/myelin labels. Automated morphometry results, including axon diameter, myelin sheath thickness and g-ratio were compared against manual straight-line measurements and morphometrics extracted from manual labels with AxonDeepSeg as a reference standard. The neural network achieved high pixel-wise accuracy for nerve fiber segmentations with a mean (+/- standard deviation) ground truth overlap of 0.93 (+/- 0.03) for axons and 0.99 (+/- 0.01) for myelin sheaths, respectively. Nerve fibers were identified with a sensitivity of 0.99 and a precision of 0.97. For each nerve fiber, the myelin thickness, axon diameter, g-ratio, solidity, eccentricity, orientation, and individual x -and y-coordinates were determined automatically. Compared to manual morphometry, automated histomorphometry showed superior agreement with the reference standard while reducing the analysis time to below 2.5% of the time needed for manual morphometry. This open-source convolutional neural network provides rapid and accurate morphometry of entire peripheral nerve cross-sections. Given its easy applicability, it could contribute to significant time savings in biomedical research while extracting unprecedented amounts of objective morphologic information from large image datasets.

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