Disease detection in the eye with machine learning techniques
With AI becoming more prevalent in the healthcare industry, this project explores the integration of machine learning and deep learning techniques in the field of ophthalmology. There is a need for accurate and efficient diagnosis as the traditional approaches often require lengthy consultatio...
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2024
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sg-ntu-dr.10356-1771332024-05-31T15:43:27Z Disease detection in the eye with machine learning techniques Vibin Mathiparambil Vinod Ng Beng Koon School of Electrical and Electronic Engineering EBKNg@ntu.edu.sg Computer and Information Science Engineering Machine learning Disease detection Glaucoma Deep learning Segmentation With AI becoming more prevalent in the healthcare industry, this project explores the integration of machine learning and deep learning techniques in the field of ophthalmology. There is a need for accurate and efficient diagnosis as the traditional approaches often require lengthy consultations and screenings. This project attempted papilledema detection through fundus images using an anomaly detection approach with an auto-encoder network. However, the results were sub-par due to small differences between normal and diseased fundus images. The study then moved on to glaucoma detection, where a 2-part Coarse optic disc (OD) to Fine OD/OC segmentation was employed with U-Net. This approach outperformed the direct OD/OC segmentation model. Several experiments were conducted for glaucoma classification models including augmentations, addition of external datasets, using cropped optic nerve head region images and model ensemble techniques. The best performing ensemble model outperformed the 2nd place team in the REFUGE2 Challenge for glaucoma detection, showing the capability of the model. These deep learning models were then modified with Grad-CAM to provide visual explanations on the classification decisions made. These visualisations indicated that the region outside optic disc plays an important role in the decision-making process. To tie the whole project up, the models were deployed in a web application, where users could easily upload fundus images and receive valuable insights. Bachelor's degree 2024-05-27T05:18:45Z 2024-05-27T05:18:45Z 2024 Final Year Project (FYP) Vibin Mathiparambil Vinod (2024). Disease detection in the eye with machine learning techniques. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/177133 https://hdl.handle.net/10356/177133 en A2152-231 application/pdf Nanyang Technological University |
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Computer and Information Science Engineering Machine learning Disease detection Glaucoma Deep learning Segmentation Vibin Mathiparambil Vinod Disease detection in the eye with machine learning techniques |
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With AI becoming more prevalent in the healthcare industry, this project explores the
integration of machine learning and deep learning techniques in the field of ophthalmology.
There is a need for accurate and efficient diagnosis as the traditional approaches often require
lengthy consultations and screenings.
This project attempted papilledema detection through fundus images using an anomaly
detection approach with an auto-encoder network. However, the results were sub-par due to
small differences between normal and diseased fundus images. The study then moved on to
glaucoma detection, where a 2-part Coarse optic disc (OD) to Fine OD/OC segmentation was
employed with U-Net. This approach outperformed the direct OD/OC segmentation model.
Several experiments were conducted for glaucoma classification models including
augmentations, addition of external datasets, using cropped optic nerve head region images and
model ensemble techniques. The best performing ensemble model outperformed the 2nd place
team in the REFUGE2 Challenge for glaucoma detection, showing the capability of the model.
These deep learning models were then modified with Grad-CAM to provide visual
explanations on the classification decisions made. These visualisations indicated that the region
outside optic disc plays an important role in the decision-making process. To tie the whole
project up, the models were deployed in a web application, where users could easily upload
fundus images and receive valuable insights. |
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Ng Beng Koon |
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Ng Beng Koon Vibin Mathiparambil Vinod |
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Final Year Project |
author |
Vibin Mathiparambil Vinod |
author_sort |
Vibin Mathiparambil Vinod |
title |
Disease detection in the eye with machine learning techniques |
title_short |
Disease detection in the eye with machine learning techniques |
title_full |
Disease detection in the eye with machine learning techniques |
title_fullStr |
Disease detection in the eye with machine learning techniques |
title_full_unstemmed |
Disease detection in the eye with machine learning techniques |
title_sort |
disease detection in the eye with machine learning techniques |
publisher |
Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/177133 |
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1800916271796060160 |