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On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs

PURPOSE: To quantitatively evaluate the inter-annotator variability of clinicians tracing the contours of anatomical layers of the iridocorneal angle on digital gonio photographs, thus providing a baseline for the validation of automated analysis algorithms. METHODS: Using a software annotation tool...

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Autores principales: Peroni, Andrea, Paviotti, Anna, Campigotto, Mauro, Abegão Pinto, Luis, Cutolo, Carlo Alberto, Shi, Yue, Cobb, Caroline, Gong, Jacintha, Patel, Sirjhun, Gillan, Stewart, Tatham, Andrew, Trucco, Emanuele
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Association for Research in Vision and Ophthalmology 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8419881/
https://www.ncbi.nlm.nih.gov/pubmed/34468695
http://dx.doi.org/10.1167/tvst.10.11.1
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author Peroni, Andrea
Paviotti, Anna
Campigotto, Mauro
Abegão Pinto, Luis
Cutolo, Carlo Alberto
Shi, Yue
Cobb, Caroline
Gong, Jacintha
Patel, Sirjhun
Gillan, Stewart
Tatham, Andrew
Trucco, Emanuele
author_facet Peroni, Andrea
Paviotti, Anna
Campigotto, Mauro
Abegão Pinto, Luis
Cutolo, Carlo Alberto
Shi, Yue
Cobb, Caroline
Gong, Jacintha
Patel, Sirjhun
Gillan, Stewart
Tatham, Andrew
Trucco, Emanuele
author_sort Peroni, Andrea
collection PubMed
description PURPOSE: To quantitatively evaluate the inter-annotator variability of clinicians tracing the contours of anatomical layers of the iridocorneal angle on digital gonio photographs, thus providing a baseline for the validation of automated analysis algorithms. METHODS: Using a software annotation tool on a common set of 20 images, five experienced ophthalmologists highlighted the contours of five anatomical layers of interest: iris root (IR), ciliary body band (CBB), scleral spur (SS), trabecular meshwork (TM), and cornea (C). Inter-annotator variability was assessed by (1) comparing the number of times ophthalmologists delineated each layer in the dataset; (2) quantifying how the consensus area for each layer (i.e., the intersection area of observers’ delineations) varied with the consensus threshold; and (3) calculating agreement among annotators using average per-layer precision, sensitivity, and Dice score. RESULTS: The SS showed the largest difference in annotation frequency (31%) and the minimum overall agreement in terms of consensus size (∼28% of the labeled pixels). The average annotator's per-layer statistics showed consistent patterns, with lower agreement on the CBB and SS (average Dice score ranges of 0.61–0.7 and 0.73–0.78, respectively) and better agreement on the IR, TM, and C (average Dice score ranges of 0.97–0.98, 0.84–0.9, and 0.93–0.96, respectively). CONCLUSIONS: There was considerable inter-annotator variation in identifying contours of some anatomical layers in digital gonio photographs. Our pilot indicates that agreement was best on IR, TM, and C but poorer for CBB and SS. TRANSLATIONAL RELEVANCE: This study provides a comprehensive description of inter-annotator agreement on digital gonio photographs segmentation as a baseline for validating deep learning models for automated gonioscopy.
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spelling pubmed-84198812021-09-22 On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs Peroni, Andrea Paviotti, Anna Campigotto, Mauro Abegão Pinto, Luis Cutolo, Carlo Alberto Shi, Yue Cobb, Caroline Gong, Jacintha Patel, Sirjhun Gillan, Stewart Tatham, Andrew Trucco, Emanuele Transl Vis Sci Technol Article PURPOSE: To quantitatively evaluate the inter-annotator variability of clinicians tracing the contours of anatomical layers of the iridocorneal angle on digital gonio photographs, thus providing a baseline for the validation of automated analysis algorithms. METHODS: Using a software annotation tool on a common set of 20 images, five experienced ophthalmologists highlighted the contours of five anatomical layers of interest: iris root (IR), ciliary body band (CBB), scleral spur (SS), trabecular meshwork (TM), and cornea (C). Inter-annotator variability was assessed by (1) comparing the number of times ophthalmologists delineated each layer in the dataset; (2) quantifying how the consensus area for each layer (i.e., the intersection area of observers’ delineations) varied with the consensus threshold; and (3) calculating agreement among annotators using average per-layer precision, sensitivity, and Dice score. RESULTS: The SS showed the largest difference in annotation frequency (31%) and the minimum overall agreement in terms of consensus size (∼28% of the labeled pixels). The average annotator's per-layer statistics showed consistent patterns, with lower agreement on the CBB and SS (average Dice score ranges of 0.61–0.7 and 0.73–0.78, respectively) and better agreement on the IR, TM, and C (average Dice score ranges of 0.97–0.98, 0.84–0.9, and 0.93–0.96, respectively). CONCLUSIONS: There was considerable inter-annotator variation in identifying contours of some anatomical layers in digital gonio photographs. Our pilot indicates that agreement was best on IR, TM, and C but poorer for CBB and SS. TRANSLATIONAL RELEVANCE: This study provides a comprehensive description of inter-annotator agreement on digital gonio photographs segmentation as a baseline for validating deep learning models for automated gonioscopy. The Association for Research in Vision and Ophthalmology 2021-09-01 /pmc/articles/PMC8419881/ /pubmed/34468695 http://dx.doi.org/10.1167/tvst.10.11.1 Text en Copyright 2021 The Authors https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License.
spellingShingle Article
Peroni, Andrea
Paviotti, Anna
Campigotto, Mauro
Abegão Pinto, Luis
Cutolo, Carlo Alberto
Shi, Yue
Cobb, Caroline
Gong, Jacintha
Patel, Sirjhun
Gillan, Stewart
Tatham, Andrew
Trucco, Emanuele
On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs
title On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs
title_full On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs
title_fullStr On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs
title_full_unstemmed On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs
title_short On Clinical Agreement on the Visibility and Extent of Anatomical Layers in Digital Gonio Photographs
title_sort on clinical agreement on the visibility and extent of anatomical layers in digital gonio photographs
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8419881/
https://www.ncbi.nlm.nih.gov/pubmed/34468695
http://dx.doi.org/10.1167/tvst.10.11.1
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