Proof-of-Concept Analysis of a Deep Learning Model to Conduct Automated Segmentation of OCT Images for Macular Hole Volume

Ophthalmic Surg Lasers Imaging Retina. 2022 Apr;53(4):208-214. doi: 10.3928/23258160-20220315-02. Epub 2022 Apr 1.

Abstract

Background and objective: To determine whether an automated artificial intelligence (AI) model could assess macular hole (MH) volume on swept-source optical coherence tomography (OCT) images.

Patients and methods: This was a proof-of-concept consecutive case series. Patients with an idiopathic full-thickness MH undergoing pars plana vitrectomy surgery with 1 year of follow-up were considered for inclusion. MHs were manually graded by a vitreoretinal surgeon from preoperative OCT images to delineate MH volume. This information was used to train a fully three-dimensional convolutional neural network for automatic segmentation. The main outcome was the correlation of manual MH volume to automated volume segmentation.

Results: The correlation between manual and automated MH volume was R2 = 0.94 (n = 24). Automated MH volume demonstrated a higher correlation to change in visual acuity from preoperative to the postoperative 1-year time point compared with the minimum linear diameter (volume: R2 = 0.53; minimum linear diameter: R2 = 0.39).

Conclusion: MH automated volume segmentation on OCT imaging demonstrated high correlation to manual MH volume measurements. [Ophthalmic Surg Lasers Imaging Retina. 2022;53(4):208-214.].

MeSH terms

  • Artificial Intelligence
  • Deep Learning*
  • Humans
  • Retinal Perforations* / diagnostic imaging
  • Retinal Perforations* / surgery
  • Retrospective Studies
  • Tomography, Optical Coherence / methods
  • Vitrectomy / methods