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Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease

PURPOSE: Deep learning (DL) is a technique explored within ophthalmology that requires large datasets to distinguish feature representations with high diagnostic performance. There is a need for developing DL approaches to predict therapeutic response, but completed clinical trial datasets are limit...

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Autores principales: Dong, Vincent, Sevgi, Duriye Damla, Kar, Sudeshna Sil, Srivastava, Sunil K., Ehlers, Justis P., Madabhushi, Anant
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9894083/
https://www.ncbi.nlm.nih.gov/pubmed/36744216
http://dx.doi.org/10.3389/fopht.2022.852107
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author Dong, Vincent
Sevgi, Duriye Damla
Kar, Sudeshna Sil
Srivastava, Sunil K.
Ehlers, Justis P.
Madabhushi, Anant
author_facet Dong, Vincent
Sevgi, Duriye Damla
Kar, Sudeshna Sil
Srivastava, Sunil K.
Ehlers, Justis P.
Madabhushi, Anant
author_sort Dong, Vincent
collection PubMed
description PURPOSE: Deep learning (DL) is a technique explored within ophthalmology that requires large datasets to distinguish feature representations with high diagnostic performance. There is a need for developing DL approaches to predict therapeutic response, but completed clinical trial datasets are limited in size. Predicting treatment response is more complex than disease diagnosis, where hallmarks of treatment response are subtle. This study seeks to understand the utility of DL for clinical problems in ophthalmology such as predicting treatment response and where large sample sizes for model training are not available. MATERIALS AND METHODS: Four DL architectures were trained using cross-validated transfer learning to classify ultra-widefield angiograms (UWFA) and fluid-compartmentalized optical coherence tomography (OCT) images from a completed clinical trial (PERMEATE) dataset (n=29) as tolerating or requiring extended interval Anti-VEGF dosing. UWFA images (n=217) from the Anti-VEGF study were divided into five increasingly larger subsets to evaluate the influence of dataset size on performance. Class activation maps (CAMs) were generated to identify regions of model attention. RESULTS: The best performing DL model had a mean AUC of 0.507 ± 0.042 on UWFA images, and highest observed AUC of 0.503 for fluid-compartmentalized OCT images. DL had a best performing AUC of 0.634 when dataset size was incrementally increased. Resulting CAMs show inconsistent regions of interest. CONCLUSIONS: This study demonstrated the limitations of DL for predicting therapeutic response when large datasets were not available for model training. Our findings suggest the need for hand-crafted approaches for complex and data scarce prediction problems in ophthalmology.
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spelling pubmed-98940832023-02-02 Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease Dong, Vincent Sevgi, Duriye Damla Kar, Sudeshna Sil Srivastava, Sunil K. Ehlers, Justis P. Madabhushi, Anant Front Ophthalmol (Lausanne) Article PURPOSE: Deep learning (DL) is a technique explored within ophthalmology that requires large datasets to distinguish feature representations with high diagnostic performance. There is a need for developing DL approaches to predict therapeutic response, but completed clinical trial datasets are limited in size. Predicting treatment response is more complex than disease diagnosis, where hallmarks of treatment response are subtle. This study seeks to understand the utility of DL for clinical problems in ophthalmology such as predicting treatment response and where large sample sizes for model training are not available. MATERIALS AND METHODS: Four DL architectures were trained using cross-validated transfer learning to classify ultra-widefield angiograms (UWFA) and fluid-compartmentalized optical coherence tomography (OCT) images from a completed clinical trial (PERMEATE) dataset (n=29) as tolerating or requiring extended interval Anti-VEGF dosing. UWFA images (n=217) from the Anti-VEGF study were divided into five increasingly larger subsets to evaluate the influence of dataset size on performance. Class activation maps (CAMs) were generated to identify regions of model attention. RESULTS: The best performing DL model had a mean AUC of 0.507 ± 0.042 on UWFA images, and highest observed AUC of 0.503 for fluid-compartmentalized OCT images. DL had a best performing AUC of 0.634 when dataset size was incrementally increased. Resulting CAMs show inconsistent regions of interest. CONCLUSIONS: This study demonstrated the limitations of DL for predicting therapeutic response when large datasets were not available for model training. Our findings suggest the need for hand-crafted approaches for complex and data scarce prediction problems in ophthalmology. 2022 2022-08-12 /pmc/articles/PMC9894083/ /pubmed/36744216 http://dx.doi.org/10.3389/fopht.2022.852107 Text en https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Article
Dong, Vincent
Sevgi, Duriye Damla
Kar, Sudeshna Sil
Srivastava, Sunil K.
Ehlers, Justis P.
Madabhushi, Anant
Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease
title Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease
title_full Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease
title_fullStr Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease
title_full_unstemmed Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease
title_short Evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease
title_sort evaluating the utility of deep learning for predicting therapeutic response in diabetic eye disease
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9894083/
https://www.ncbi.nlm.nih.gov/pubmed/36744216
http://dx.doi.org/10.3389/fopht.2022.852107
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