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Related Concept Videos

Vision01:24

Vision

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Vision is the result of light being detected and transduced into neural signals by the retina of the eye. This information is then further analyzed and interpreted by the brain. First, light enters the front of the eye and is focused by the cornea and lens onto the retina—a thin sheet of neural tissue lining the back of the eye. Because of refraction through the convex lens of the eye, images are projected onto the retina upside-down and reversed.
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Glaucoma: Overview01:25

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Glaucoma is an eye condition characterized by increased intraocular pressure that damages the retina and optic nerve, leading to irreversible blindness if left untreated. The human eye has various components, including the cornea, iris, pupil, lens, and optic nerve. Aqueous humor is secreted by the epithelium of the ciliary body in the posterior chamber and flows through the trabecular meshwork and canal of Schlemm, maintaining normal intraocular pressure. The trabecular meshwork and the canal...
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Optimizing deep learning models for glaucoma screening with vision transformers for resource efficiency and the pie

Sirikorn Sangchocanonta1, Pakinee Pooprasert1, Nichapa Lerthirunvibul1

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Summary
This summary is machine-generated.

This study introduces a novel approach using Data-efficient image Transformers (DeiT) for faster glaucoma screening. Enhanced with the "pie method" and polar transformation, it achieves performance comparable to CNNs, improving early detection of vision impairment.

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Area of Science:

  • Ophthalmology and Artificial Intelligence
  • Medical Imaging Analysis
  • Computer Vision in Healthcare

Background:

  • Glaucoma is a leading cause of irreversible vision loss, necessitating early detection.
  • Current AI-based glaucoma screening primarily uses Convolutional Neural Networks (CNNs) on fundus images.
  • CNNs face challenges related to computational resources and processing time in large-scale screening.

Purpose of the Study:

  • To evaluate Data-efficient image Transformers (DeiT) for glaucoma screening, aiming to reduce computational demands.
  • To enhance DeiT performance through novel augmentation techniques for improved accuracy and efficiency.
  • To compare the efficacy of the proposed DeiT-based method against traditional CNN models.

Main Methods:

  • Utilized the GlauCUTU-DATA dataset, annotated by ophthalmologists with unanimous (3/3) and majority (2/3) agreement.
  • Implemented Data-efficient image Transformers (DeiT) with a preprocessing time reduction of 10x compared to CNNs.
  • Introduced the 'pie method' augmentation aligned with the ISNT rule and polar transformation to enhance cup visibility.

Main Results:

  • DeiT with enhancements achieved classification performance comparable to CNN models.
  • Sensitivity for glaucoma suspects increased by 40.18% (to 88.24%) using 3/3 data, excluding specific regions.
  • Area Under the Curve (AUC) values approached CNN performance, with the 3/3 dataset yielding AUCs around 92.63% ± 4.39% for glaucoma.

Conclusions:

  • The proposed DeiT-based approach offers a computationally efficient alternative for glaucoma screening.
  • The 'pie method' and polar transformation significantly improve DeiT's diagnostic accuracy.
  • DeiT's attention maps aid in localizing critical features like disc rim and notching, enhancing screening effectiveness.