A novel retinal ganglion cell quantification tool based on deep learning.

Sci Rep

Department of Biology, Neural Circuit Development and Regeneration Research Group, KU Leuven, Leuven, Belgium.

Published: January 2021

AI Article Synopsis

  • Glaucoma leads to the loss of retinal ganglion cells (RGCs) and is a major cause of blindness, prompting research to find effective therapies while using rodent models for studying the disease.
  • A new software tool called RGCode utilizes deep learning for automated quantification of RGCs in mouse retinas, offering a user-friendly interface that outputs total counts, retinal area, and density.
  • RGCode has been trained on specific retinal samples and shows superior performance compared to manual counting, with potential for broader applications in RGC quantification.

Article Abstract

Glaucoma is a disease associated with the loss of retinal ganglion cells (RGCs), and remains one of the primary causes of blindness worldwide. Major research efforts are presently directed towards the understanding of disease pathogenesis and the development of new therapies, with the help of rodent models as an important preclinical research tool. The ultimate goal is reaching neuroprotection of the RGCs, which requires a tool to reliably quantify RGC survival. Hence, we demonstrate a novel deep learning pipeline that enables fully automated RGC quantification in the entire murine retina. This software, called RGCode (Retinal Ganglion Cell quantification based On DEep learning), provides a user-friendly interface that requires the input of RBPMS-immunostained flatmounts and returns the total RGC count, retinal area and density, together with output images showing the computed counts and isodensity maps. The counting model was trained on RBPMS-stained healthy and glaucomatous retinas, obtained from mice subjected to microbead-induced ocular hypertension and optic nerve crush injury paradigms. RGCode demonstrates excellent performance in RGC quantification as compared to manual counts. Furthermore, we convincingly show that RGCode has potential for wider application, by retraining the model with a minimal set of training data to count FluoroGold-traced RGCs.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7804414PMC
http://dx.doi.org/10.1038/s41598-020-80308-yDOI Listing

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