Cargando…
Learning to Discover Explainable Clinical Features With Minimum Supervision
PURPOSE: To compare supervised transfer learning to semisupervised learning for their ability to learn in-depth knowledge with limited data in the optical coherence tomography (OCT) domain. METHODS: Transfer learning with EfficientNet-B4 and semisupervised learning with SimCLR are used in this work....
Autores principales: | , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
The Association for Research in Vision and Ophthalmology
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8762682/ https://www.ncbi.nlm.nih.gov/pubmed/35015061 http://dx.doi.org/10.1167/tvst.11.1.11 |
_version_ | 1784633813849079808 |
---|---|
author | Al Turk, Lutfiah Georgieva, Darina Alsawadi, Hassan Wang, Su Krause, Paul Alsawadi, Hend Alshamrani, Abdulrahman Zaid Saleh, George M. Tang, Hongying Lilian |
author_facet | Al Turk, Lutfiah Georgieva, Darina Alsawadi, Hassan Wang, Su Krause, Paul Alsawadi, Hend Alshamrani, Abdulrahman Zaid Saleh, George M. Tang, Hongying Lilian |
author_sort | Al Turk, Lutfiah |
collection | PubMed |
description | PURPOSE: To compare supervised transfer learning to semisupervised learning for their ability to learn in-depth knowledge with limited data in the optical coherence tomography (OCT) domain. METHODS: Transfer learning with EfficientNet-B4 and semisupervised learning with SimCLR are used in this work. The largest public OCT dataset, consisting of 108,312 images and four categories (choroidal neovascularization, diabetic macular edema, drusen, and normal) is used. In addition, two smaller datasets are constructed, containing 31,200 images for the limited version and 4000 for the mini version of the dataset. To illustrate the effectiveness of the developed models, local interpretable model-agnostic explanations and class activation maps are used as explainability techniques. RESULTS: The proposed transfer learning approach using the EfficientNet-B4 model trained on the limited dataset achieves an accuracy of 0.976 (95% confidence interval [CI], 0.963, 0.983), sensitivity of 0.973 and specificity of 0.991. The semisupervised based solution with SimCLR using 10% labeled data and the limited dataset performs with an accuracy of 0.946 (95% CI, 0.932, 0.960), sensitivity of 0.941, and specificity of 0.983. CONCLUSIONS: Semisupervised learning has a huge potential for datasets that contain both labeled and unlabeled inputs, generally, with a significantly smaller number of labeled samples. The semisupervised based solution provided with merely 10% labeled data achieves very similar performance to the supervised transfer learning that uses 100% labeled samples. TRANSLATIONAL RELEVANCE: Semisupervised learning enables building performant models while requiring less expertise effort and time by using to good advantage the abundant amount of available unlabeled data along with the labeled samples. |
format | Online Article Text |
id | pubmed-8762682 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | The Association for Research in Vision and Ophthalmology |
record_format | MEDLINE/PubMed |
spelling | pubmed-87626822022-01-26 Learning to Discover Explainable Clinical Features With Minimum Supervision Al Turk, Lutfiah Georgieva, Darina Alsawadi, Hassan Wang, Su Krause, Paul Alsawadi, Hend Alshamrani, Abdulrahman Zaid Saleh, George M. Tang, Hongying Lilian Transl Vis Sci Technol Article PURPOSE: To compare supervised transfer learning to semisupervised learning for their ability to learn in-depth knowledge with limited data in the optical coherence tomography (OCT) domain. METHODS: Transfer learning with EfficientNet-B4 and semisupervised learning with SimCLR are used in this work. The largest public OCT dataset, consisting of 108,312 images and four categories (choroidal neovascularization, diabetic macular edema, drusen, and normal) is used. In addition, two smaller datasets are constructed, containing 31,200 images for the limited version and 4000 for the mini version of the dataset. To illustrate the effectiveness of the developed models, local interpretable model-agnostic explanations and class activation maps are used as explainability techniques. RESULTS: The proposed transfer learning approach using the EfficientNet-B4 model trained on the limited dataset achieves an accuracy of 0.976 (95% confidence interval [CI], 0.963, 0.983), sensitivity of 0.973 and specificity of 0.991. The semisupervised based solution with SimCLR using 10% labeled data and the limited dataset performs with an accuracy of 0.946 (95% CI, 0.932, 0.960), sensitivity of 0.941, and specificity of 0.983. CONCLUSIONS: Semisupervised learning has a huge potential for datasets that contain both labeled and unlabeled inputs, generally, with a significantly smaller number of labeled samples. The semisupervised based solution provided with merely 10% labeled data achieves very similar performance to the supervised transfer learning that uses 100% labeled samples. TRANSLATIONAL RELEVANCE: Semisupervised learning enables building performant models while requiring less expertise effort and time by using to good advantage the abundant amount of available unlabeled data along with the labeled samples. The Association for Research in Vision and Ophthalmology 2022-01-11 /pmc/articles/PMC8762682/ /pubmed/35015061 http://dx.doi.org/10.1167/tvst.11.1.11 Text en Copyright 2022 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License. |
spellingShingle | Article Al Turk, Lutfiah Georgieva, Darina Alsawadi, Hassan Wang, Su Krause, Paul Alsawadi, Hend Alshamrani, Abdulrahman Zaid Saleh, George M. Tang, Hongying Lilian Learning to Discover Explainable Clinical Features With Minimum Supervision |
title | Learning to Discover Explainable Clinical Features With Minimum Supervision |
title_full | Learning to Discover Explainable Clinical Features With Minimum Supervision |
title_fullStr | Learning to Discover Explainable Clinical Features With Minimum Supervision |
title_full_unstemmed | Learning to Discover Explainable Clinical Features With Minimum Supervision |
title_short | Learning to Discover Explainable Clinical Features With Minimum Supervision |
title_sort | learning to discover explainable clinical features with minimum supervision |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8762682/ https://www.ncbi.nlm.nih.gov/pubmed/35015061 http://dx.doi.org/10.1167/tvst.11.1.11 |
work_keys_str_mv | AT alturklutfiah learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT georgievadarina learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT alsawadihassan learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT wangsu learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT krausepaul learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT alsawadihend learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT alshamraniabdulrahmanzaid learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT salehgeorgem learningtodiscoverexplainableclinicalfeatureswithminimumsupervision AT tanghongyinglilian learningtodiscoverexplainableclinicalfeatureswithminimumsupervision |