Literature DB >> 35927396

Automatic counting of retinal ganglion cells in the entire mouse retina based on improved YOLOv5.

Jing Zhang1, Yi-Bo Huo1, Jia-Liang Yang2, Xiang-Zhou Wang1, Bo-Yun Yan1, Xiao-Hui Du1, Ru-Qian Hao1, Fang Yang2, Juan-Xiu Liu1, Lin Liu3, Yong Liu1, Hou-Bin Zhang4.   

Abstract

Glaucoma is characterized by the progressive loss of retinal ganglion cells (RGCs), although the pathogenic mechanism remains largely unknown. To study the mechanism and assess RGC degradation, mouse models are often used to simulate human glaucoma and specific markers are used to label and quantify RGCs. However, manually counting RGCs is time-consuming and prone to distortion due to subjective bias. Furthermore, semi-automated counting methods can produce significant differences due to different parameters, thereby failing objective evaluation. Here, to improve counting accuracy and efficiency, we developed an automated algorithm based on the improved YOLOv5 model, which uses five channels instead of one, with a squeeze-and-excitation block added. The complete number of RGCs in an intact mouse retina was obtained by dividing the retina into small overlapping areas and counting, and then merging the divided areas using a non-maximum suppression algorithm. The automated quantification results showed very strong correlation (mean Pearson correlation coefficient of 0.993) with manual counting. Importantly, the model achieved an average precision of 0.981. Furthermore, the graphics processing unit (GPU) calculation time for each retina was less than 1 min. The developed software has been uploaded online as a free and convenient tool for studies using mouse models of glaucoma, which should help elucidate disease pathogenesis and potential therapeutics.

Entities:  

Keywords:  Cell counting; Deep learning; Glaucomatous optic neuropathies; Improved YOLOv5; Retinal ganglion cell

Mesh:

Year:  2022        PMID: 35927396      PMCID: PMC9486514          DOI: 10.24272/j.issn.2095-8137.2022.025

Source DB:  PubMed          Journal:  Zool Res        ISSN: 2095-8137


  22 in total

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