4.5 Article

Merging Information From Infrared and Autofluorescence Fundus Images for Monitoring of Chorioretinal Atrophic Lesions Giovanni

Journal

Publisher

ASSOC RESEARCH VISION OPHTHALMOLOGY INC
DOI: 10.1167/tvst.9.9.38

Keywords

segmentation; multimodal; autofluorescence; infrared; uveitis

Categories

Funding

  1. Wellcome Trust [200141/Z/15/Z]
  2. Department of Health's NIHR Biomedical Research Centre for Ophthalmology at Moorfields Eye Hospital
  3. UCL Institute of Ophthalmology
  4. Health Data Research UK, London, UK
  5. Wellcome Trust, through a Health Improvement Challenge grant
  6. MRC [MC_PC_19005] Funding Source: UKRI
  7. UKRI [MR/T019050/1] Funding Source: UKRI

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Purpose: To develop a method for automated detection and progression analysis of chorioretinal atrophic lesions using the combined information of standard infrared (IR) and autofluorescence (AF) fundus images. Methods: Eighteen eyes (from 16 subjects) with punctate inner choroidopathy were analyzed. Macular IR and blue AF images were acquired in all eyes with a Spectralis HRA+OCT device (Heidelberg Engineering, Heidelberg, Germany). Two clinical experts manually segmented chorioretinal lesions on the AF image. AF images were aligned to the corresponding IR. Two randomforestmodelswere trained to classify pixels of lesions, one based on the AF image only, the other based on the aligned IR-AF. The models were validated using a leave-one-out cross-validation and were tested against the manual segmentation to compare their performance. A time series from one eye was identified and used to evaluate the method based on the IR-AF in a case study. Results: Themethod based on theAF images correctly classified95% of the pixels (i.e., in vs. out of the lesion) with a Dice's coefficient of 0.80. Themethod based on the combined IR-AF correctly classified 96% of the pixels with a Dice's coefficient of 0.84. Conclusions: The automated segmentation of chorioretinal lesions using IR and AF shows closer alignment to manual segmentation than the same method based on AF only. Merging information frommultimodal images improves the automatic and objective segmentation of chorioretinal lesions even when based on a small dataset. Translational Relevance: Merged information from multimodal images improves segmentation performance of chorioretinal lesions.

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