Department of Ophthalmology, Pusan National University College of Medicine, Busan, Korea.
Biomedical Research Institute, Pusan National University Hospital, Busan, Korea.
Sci Rep. 2023 Jul 10;13(1):11154. doi: 10.1038/s41598-023-37360-1.
Although deep learning architecture has been used to process sequential data, only a few studies have explored the usefulness of deep learning algorithms to detect glaucoma progression. Here, we proposed a bidirectional gated recurrent unit (Bi-GRU) algorithm to predict visual field loss. In total, 5413 eyes from 3321 patients were included in the training set, whereas 1272 eyes from 1272 patients were included in the test set. Data from five consecutive visual field examinations were used as input; the sixth visual field examinations were compared with predictions by the Bi-GRU. The performance of Bi-GRU was compared with the performances of conventional linear regression (LR) and long short-term memory (LSTM) algorithms. Overall prediction error was significantly lower for Bi-GRU than for LR and LSTM algorithms. In pointwise prediction, Bi-GRU showed the lowest prediction error among the three models in most test locations. Furthermore, Bi-GRU was the least affected model in terms of worsening reliability indices and glaucoma severity. Accurate prediction of visual field loss using the Bi-GRU algorithm may facilitate decision-making regarding the treatment of patients with glaucoma.
尽管深度学习架构已被用于处理序列数据,但仅有少数研究探索了深度学习算法在检测青光眼进展方面的有效性。在这里,我们提出了一种双向门控循环单元(Bi-GRU)算法来预测视野损失。共有 3321 名患者的 5413 只眼被纳入训练集,而 1272 名患者的 1272 只眼被纳入测试集。将连续五次视野检查的数据作为输入;将第六次视野检查与 Bi-GRU 的预测进行比较。将 Bi-GRU 的性能与传统的线性回归(LR)和长短期记忆(LSTM)算法的性能进行比较。总体而言,Bi-GRU 的预测误差明显低于 LR 和 LSTM 算法。在逐点预测中,Bi-GRU 在大多数测试位置的三个模型中表现出最低的预测误差。此外,Bi-GRU 在恶化可靠性指标和青光眼严重程度方面的影响最小。使用 Bi-GRU 算法准确预测视野损失可能有助于做出治疗青光眼患者的决策。