Abstract
Purpose
This study aimed to predict future visual field tests using a bidirectional gated recurrent unit (Bi-GRU) and assess its performance based on the number of input visual field tests and the prediction time interval.
Materials and methods
This study included patients who underwent visual field tests at least four times at five university hospitals between June 2004 and April 2022. All data were accessed in October 2022 for research purposes. In total, 23,517 eyes with 185,858 visual field tests were used as the training dataset, and 1,053 eyes with 9,459 visual field tests were used as the test dataset. The Bi-GRU architecture was designed to take a variable number of visual field tests, ranging from 3 to 80, as input and predict visual field tests at the desired arbitrary time point. It generated the mean deviation (MD), pattern standard deviation (PSD), Visual Field Index (VFI), and total deviation value (TDV) for 54 test points. To analyze the model performance, the mean absolute error between the actual and predicted values was calculated and analyzed for glaucoma severity, number of input visual field tests, and prediction time interval.
Results
The prediction errors of the Bi-GRU model for MD, PSD, VFI, and TDV ranged from 1.20 to 1.68 dB, 0.95 to 1.16 dB, 3.64 to 4.51%, and 2.13 to 2.60 dB, respectively, depending on the number of input visual field tests. Prediction errors tended to increase as the prediction time interval increased; however, the difference was not statistically significant. As the severity of glaucoma worsened, the prediction errors significantly increased.
Conclusion
In clinical practice, the Bi-GRU model can predict future visual field tests at the desired time points using three or more previous visual field tests.
Funder
Pusan National University Hospital
National Research Foundation of Korea
Ministry of Health & Welfare, Republic of Korea
Publisher
Public Library of Science (PLoS)
Reference20 articles.
1. Glaucoma: The ‘Black hole’ of irreversible blindness;JKS Parihar;Medical Journal Armed Forces India,2016
2. Structure-function relationship’ in glaucoma: past thinking and current concepts: Structure-function in glaucoma;R Malik;Clinical & Experimental Ophthalmology,2012
3. Detecting Visual Field Progression;AA Aref;Ophthalmology,2017
4. Glaucoma treatment trends: a review;R Conlon;Canadian Journal of Ophthalmology,2017
5. The neural networks behind Google Voice transcription. 11 Aug 2015 [cited 15 Aug 2023]. Available: https://ai.googleblog.com/2015/08/the-neural-networks-behind-google-voice.html