4.6 Article

Retinal Nerve Fiber Layer Features Identified by Unsupervised Machine Learning on Optical Coherence Tomography Scans Predict Glaucoma Progression

Journal

INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE
Volume 59, Issue 7, Pages 2748-2756

Publisher

ASSOC RESEARCH VISION OPHTHALMOLOGY INC
DOI: 10.1167/iovs.17-23387

Keywords

machine learning; glaucoma progression; retinal nerve fiber layer

Categories

Funding

  1. National Eye Institutes [EY11008, P30 EY022589, EY026590, EY022039, EY021818, T32 EY026590]
  2. Genentech, Inc.
  3. Unrestricted grant from Research to Prevent Blindness (New York, NY, USA)

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PURPOSE. To apply computational techniques to wide-angle swept-source optical coherence tomography (55-OCT) images to identify novel, glaucoma-related structural features and improve detection of glaucoma and prediction of future glaucomatous progression. METHODS. Wide-angle SS-OCT, OCT circumpapillary retinal nerve fiber layer (cpRNFL) circle scans spectral-domain (SD)-OCT, standard automated perimetry (SAP), and frequency doubling technology (FDT) visual field tests were completed every 3 months for 2 years from a cohort of 28 healthy participants (56 eyes) and 93 glaucoma participants (179 eyes). RNFL thickness maps were extracted from segmented SS-OCT images and an unsupervised machine learning approach based on principal component analysis (PCA) was used to identify novel structural features. Area under the receiver operating characteristic curve (AUC) was used to assess diagnostic accuracy of RNFL PCA for detecting glaucoma and progression compared to SAP, FDT, and cpRNFL measures. RESULTS. The RNFL PCA features were significantly associated with mean deviation (MD) in both SAP (R-2 = 0.49, P < 0.0001) and FDT visual field testing (R-2 = 0.48, P < 0.0001), and with mean circumpapillary RNFL thickness (cpRNFLt) from SD-OCT (R-2 = 0.58, P < 0.0001). The identified features outperformed each of these measures in detecting glaucoma with an AUC of 0.95 for RNFL PCA compared to an 0.90 for mean cpRNFLt (P = 0.09), 0.86 for SAP MD (P = 0.034), and 0.83 for FDT MD (P = 0.021). Accuracy in predicting progression was also significantly higher for RNFI. PCA compared to SAP MD, FDT MD, and mean cpRNFLt (P = 0.046, P = 0.007, and P = 0.044, respectively). CONCLUSIONS. A computational approach can identify structural features that improve glaucoma detection and progression prediction.

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