4.5 Article

Open-Source Automatic Biomarker Measurement on Slit-Lamp Photography to Estimate Visual Acuity in Microbial Keratitis

期刊

出版社

ASSOC RESEARCH VISION OPHTHALMOLOGY INC
DOI: 10.1167/tvst.10.12.2

关键词

cornea; microbial keratitis; slit-lamp photography; deep learning; machine learning

资金

  1. National Institutes of Health [R01 EY031033-01, P30 EY005722]
  2. Research to Prevent Blindness Career Advancement Award
  3. Research to Prevent Blindness
  4. Michigan Institute for Clinical & Health Research Pilot Grant [UL1TR002240]

向作者/读者索取更多资源

Automatic image analysis for microbial keratitis showed similar accuracy to manual segmentation, with high correlations between measurements and visual acuity. The study highlights the potential for developing fully automatic strategies to aid ophthalmologists in clinical assessment.
Purpose: To assess clinical applicability of automatic image analysis in microbial keratitis (MK) by evaluating the relationship between biomarker measurements on slit-lamp photography (SLP) and best-corrected visual acuity (BCVA). Methods: Seventy-six patients with MK with SLP images and same-day logarithm of the minimum angle of resolution (logMAR) BCVA were evaluated. MK biomarkers (stromal infiltrate, white blood cell infiltration, corneal edema, hypopyon, epithelial defect) were segmented manually by ophthalmologists and automatically by a novel, open source, deep learning-based segmentation algorithm. Five measurements (presence, maximum width, total area, proportion of the corneal limbus area affected, centrality) were calculated. Correlations between the measurements and BCVA were calculated. An automatic regression model estimated BCVA from the measurements. Differences in performance between using manual and automatic measurements were evaluated using William's test (for correlation) and the paired-sample t-test (for absolute error). Results: Measurements had high correlations of 0.86 (manual) and 0.84 (automatic) with true BCVA. Estimated BCVA had average (mean +/- SD) absolute errors of 0.39 +/- 0.27 logMAR (manual, median: 0.30) and 0.35 +/- 0.28 logMAR (automatic, median: 0.30) and high correlations of 0.76 (manual) and 0.80 (automatic) with true BCVA. Differences between using manual and automatic measurements were not statistically significant for correlations of measurements with true BCVA (P = .66), absolute errors of estimated BCVA (P = .15), or correlations of estimated BCVA with true BCVA (P = .60). Conclusions: The proposed algorithm measured MK biomarkers as accurately as ophthalmologists. Measurements were highly correlated with and estimative of visual acuity. Translational Relevance: This study demonstrates the potential of developing fully automatic objective and standardized strategies to aid ophthalmologists in the clinical assessment of MK.

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