An automatic approach for cell detection and segmentation of corneal endothelium in specular microscope

Graefes Arch Clin Exp Ophthalmol. 2022 Apr;260(4):1215-1224. doi: 10.1007/s00417-021-05483-8. Epub 2021 Nov 6.

Abstract

Purpose: Specular microscopy is an indispensable tool for clinicians seeking to monitor the corneal endothelium. Automated methods of determining endothelial cell density (ECD) are limited in their ability to analyze images of poor quality. We describe and assess an image processing algorithm to analyze corneal endothelial images.

Methods: A set of corneal endothelial images acquired with a Konan CellChek specular microscope was analyzed using three methods: flex-center, Konan Auto Tracer, and the proposed method. In this technique, the algorithm determines the region of interest, filters the image to differentiate cell boundaries from their interiors, and utilizes stochastic watershed segmentation to draw cell boundaries and assess ECD based on the masked region. We compared ECD measured by the algorithm with manual and automated results from the specular microscope.

Results: We analyzed a total of 303 images manually, using the Auto Tracer, and with the proposed image processing method. Relative to manual analysis across all images, the mean error was 0.04% in the proposed method (p = 0.23 for difference) whereas Auto Tracer demonstrated a bias towards overestimation, with a mean error of 5.7% (p = 2.06× 10-8). The relative mean absolute errors were 6.9% and 7.9%, respectively, for the proposed and Auto Tracer. The average time for analysis of each image using the proposed method was 2.5 s.

Conclusion: We demonstrate a computationally efficient algorithm to analyze corneal endothelial cell density that can be implemented on devices for clinical and research use.

Keywords: Automatic cell segmentation; Cell density estimation; Laplacian of Gaussian; Specular microscopy; Stochastic watershed segmentation.

MeSH terms

  • Cell Count
  • Endothelium, Corneal*
  • Humans
  • Image Processing, Computer-Assisted / methods
  • Microscopy* / methods
  • Reproducibility of Results