Automatic detection of glaucoma via fundus imaging and artificial
intelligence: A review
- URL: http://arxiv.org/abs/2204.05591v1
- Date: Tue, 12 Apr 2022 07:47:13 GMT
- Title: Automatic detection of glaucoma via fundus imaging and artificial
intelligence: A review
- Authors: Lauren Coan, Bryan Williams, Krishna Adithya Venkatesh, Swati
Upadhyaya, Silvester Czanner, Rengaraj Venkatesh, Colin E. Willoughby,
Srinivasan Kavitha, Gabriela Czanner
- Abstract summary: Glaucoma is a leading cause of irreversible vision impairment globally.
Fundus imaging is non-invasive and low-cost.
Can artificial intelligence automatically find the boundaries of the optic cup and disc.
- Score: 0.4215938932388722
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Glaucoma is a leading cause of irreversible vision impairment globally and
cases are continuously rising worldwide. Early detection is crucial, allowing
timely intervention which can prevent further visual field loss. To detect
glaucoma, examination of the optic nerve head via fundus imaging can be
performed, at the centre of which is the assessment of the optic cup and disc
boundaries. Fundus imaging is non-invasive and low-cost; however, the image
examination relies on subjective, time-consuming, and costly expert
assessments. A timely question to ask is can artificial intelligence mimic
glaucoma assessments made by experts. Namely, can artificial intelligence
automatically find the boundaries of the optic cup and disc (providing a
so-called segmented fundus image) and then use the segmented image to identify
glaucoma with high accuracy. We conducted a comprehensive review on artificial
intelligence-enabled glaucoma detection frameworks that produce and use
segmented fundus images. We found 28 papers and identified two main approaches:
1) logical rule-based frameworks, based on a set of simplistic decision rules;
and 2) machine learning/statistical modelling based frameworks. We summarise
the state-of-art of the two approaches and highlight the key hurdles to
overcome for artificial intelligence-enabled glaucoma detection frameworks to
be translated into clinical practice.
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