Literature DB >> 34217854

Self-Supervised Feature Learning and Phenotyping for Assessing Age-Related Macular Degeneration Using Retinal Fundus Images.

Baladitya Yellapragada1, Sascha Hornauer2, Kiersten Snyder3, Stella Yu4, Glenn Yiu5.   

Abstract

OBJECTIVE: Diseases such as age-related macular degeneration (AMD) are classified based on human rubrics that are prone to bias. Supervised neural networks trained using human-generated labels require labor-intensive annotations and are restricted to specific trained tasks. Here, we trained a self-supervised deep learning network using unlabeled fundus images, enabling data-driven feature classification of AMD severity and discovery of ocular phenotypes.
DESIGN: Development of a self-supervised training pipeline to evaluate fundus photographs from the Age-Related Eye Disease Study (AREDS). PARTICIPANTS: One hundred thousand eight hundred forty-eight human-graded fundus images from 4757 AREDS participants between 55 and 80 years of age.
METHODS: We trained a deep neural network with self-supervised Non-Parametric Instance Discrimination (NPID) using AREDS fundus images without labels then evaluated its performance in grading AMD severity using 2-step, 4-step, and 9-step classification schemes using a supervised classifier. We compared balanced and unbalanced accuracies of NPID against supervised-trained networks and ophthalmologists, explored network behavior using hierarchical learning of image subsets and spherical k-means clustering of feature vectors, then searched for ocular features that can be identified without labels. MAIN OUTCOME MEASURES: Accuracy and kappa statistics.
RESULTS: NPID demonstrated versatility across different AMD classification schemes without re-training and achieved balanced accuracies comparable with those of supervised-trained networks or human ophthalmologists in classifying advanced AMD (82% vs. 81-92% or 89%), referable AMD (87% vs. 90-92% or 96%), or on the 4-step AMD severity scale (65% vs. 63-75% or 67%), despite never directly using these labels during self-supervised feature learning. Drusen area drove network predictions on the 4-step scale, while depigmentation and geographic atrophy (GA) areas correlated with advanced AMD classes. Self-supervised learning revealed grader-mislabeled images and susceptibility of some classes within more granular AMD scales to misclassification by both ophthalmologists and neural networks. Importantly, self-supervised learning enabled data-driven discovery of AMD features such as GA and other ocular phenotypes of the choroid (e.g., tessellated or blonde fundi), vitreous (e.g., asteroid hyalosis), and lens (e.g., nuclear cataracts) that were not predefined by human labels.
CONCLUSIONS: Self-supervised learning enables AMD severity grading comparable with that of ophthalmologists and supervised networks, reveals biases of human-defined AMD classification systems, and allows unbiased, data-driven discovery of AMD and non-AMD ocular phenotypes.
Copyright © 2021 American Academy of Ophthalmology. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  AMD; Age-related macular degeneration; Artificial intelligence; Deep learning; Machine learning

Mesh:

Year:  2021        PMID: 34217854      PMCID: PMC9482819          DOI: 10.1016/j.oret.2021.06.010

Source DB:  PubMed          Journal:  Ophthalmol Retina        ISSN: 2468-6530


  24 in total

1.  Statistics of natural image categories.

Authors:  Antonio Torralba; Aude Oliva
Journal:  Network       Date:  2003-08       Impact factor: 1.273

2.  Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs.

Authors:  Varun Gulshan; Lily Peng; Marc Coram; Martin C Stumpe; Derek Wu; Arunachalam Narayanaswamy; Subhashini Venugopalan; Kasumi Widner; Tom Madams; Jorge Cuadros; Ramasamy Kim; Rajiv Raman; Philip C Nelson; Jessica L Mega; Dale R Webster
Journal:  JAMA       Date:  2016-12-13       Impact factor: 56.272

3.  Using a Deep Learning Algorithm and Integrated Gradients Explanation to Assist Grading for Diabetic Retinopathy.

Authors:  Rory Sayres; Ankur Taly; Ehsan Rahimy; Katy Blumer; David Coz; Naama Hammel; Jonathan Krause; Arunachalam Narayanaswamy; Zahra Rastegar; Derek Wu; Shawn Xu; Scott Barb; Anthony Joseph; Michael Shumski; Jesse Smith; Arjun B Sood; Greg S Corrado; Lily Peng; Dale R Webster
Journal:  Ophthalmology       Date:  2018-12-13       Impact factor: 12.079

4.  Development and Validation of Deep Learning Models for Screening Multiple Abnormal Findings in Retinal Fundus Images.

Authors:  Jaemin Son; Joo Young Shin; Hoon Dong Kim; Kyu-Hwan Jung; Kyu Hyung Park; Sang Jun Park
Journal:  Ophthalmology       Date:  2019-05-31       Impact factor: 12.079

5.  Development and Validation of a Deep Learning System for Diabetic Retinopathy and Related Eye Diseases Using Retinal Images From Multiethnic Populations With Diabetes.

Authors:  Daniel Shu Wei Ting; Carol Yim-Lui Cheung; Gilbert Lim; Gavin Siew Wei Tan; Nguyen D Quang; Alfred Gan; Haslina Hamzah; Renata Garcia-Franco; Ian Yew San Yeo; Shu Yen Lee; Edmund Yick Mun Wong; Charumathi Sabanayagam; Mani Baskaran; Farah Ibrahim; Ngiap Chuan Tan; Eric A Finkelstein; Ecosse L Lamoureux; Ian Y Wong; Neil M Bressler; Sobha Sivaprasad; Rohit Varma; Jost B Jonas; Ming Guang He; Ching-Yu Cheng; Gemmy Chui Ming Cheung; Tin Aung; Wynne Hsu; Mong Li Lee; Tien Yin Wong
Journal:  JAMA       Date:  2017-12-12       Impact factor: 56.272

6.  DeepSeeNet: A Deep Learning Model for Automated Classification of Patient-based Age-related Macular Degeneration Severity from Color Fundus Photographs.

Authors:  Yifan Peng; Shazia Dharssi; Qingyu Chen; Tiarnan D Keenan; Elvira Agrón; Wai T Wong; Emily Y Chew; Zhiyong Lu
Journal:  Ophthalmology       Date:  2018-11-22       Impact factor: 12.079

7.  Comparing humans and deep learning performance for grading AMD: A study in using universal deep features and transfer learning for automated AMD analysis.

Authors:  Philippe Burlina; Katia D Pacheco; Neil Joshi; David E Freund; Neil M Bressler
Journal:  Comput Biol Med       Date:  2017-01-27       Impact factor: 4.589

8.  Automated Identification of Diabetic Retinopathy Using Deep Learning.

Authors:  Rishab Gargeya; Theodore Leng
Journal:  Ophthalmology       Date:  2017-03-27       Impact factor: 12.079

9.  Grader Variability and the Importance of Reference Standards for Evaluating Machine Learning Models for Diabetic Retinopathy.

Authors:  Jonathan Krause; Varun Gulshan; Ehsan Rahimy; Peter Karth; Kasumi Widner; Greg S Corrado; Lily Peng; Dale R Webster
Journal:  Ophthalmology       Date:  2018-03-13       Impact factor: 12.079

10.  Prediction of cardiovascular risk factors from retinal fundus photographs via deep learning.

Authors:  Ryan Poplin; Avinash V Varadarajan; Katy Blumer; Yun Liu; Michael V McConnell; Greg S Corrado; Lily Peng; Dale R Webster
Journal:  Nat Biomed Eng       Date:  2018-02-19       Impact factor: 25.671

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