Analysis of human visual field information using machine learning methods and assessment of their accuracy
- URL: http://arxiv.org/abs/2503.14562v1
- Date: Tue, 18 Mar 2025 07:39:41 GMT
- Title: Analysis of human visual field information using machine learning methods and assessment of their accuracy
- Authors: A. I. Medvedeva, V. V. Bakutkin,
- Abstract summary: The aim of this research is to consider various machine learning methods that can classify glaucoma.<n>The average age of the examined patients ranged from 30 to 85 years.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Subject of research: is the study of methods for analyzing perimetric images for the diagnosis and control of glaucoma diseases. Objects of research: is a dataset collected on the ophthalmological perimeter with the results of various patient pathologies, since the ophthalmological community is acutely aware of the issue of disease control and import substitution. [5]. Purpose of research: is to consider various machine learning methods that can classify glaucoma. This is possible thanks to the classifier built after labeling the dataset. It is able to determine from the image whether the visual fields depicted on it are the results of the impact of glaucoma on the eyes or other visual diseases. Earlier in the work [3], a dataset was described that was collected on the Tomey perimeter. The average age of the examined patients ranged from 30 to 85 years. Methods of research: machine learning methods for classifying image results (stochastic gradient descent, logistic regression, random forest, naive Bayes). Main results of research: the result of the study is computer modeling that can determine from the image whether the result is glaucoma or another disease (binary classification).
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