Predicting Pattern Standard Deviation in Glaucoma: A Machine Learning Approach Leveraging Clinical Data.

IF 1.8 Q2 Medicine
Raheem Remtulla, Patrik Abdelnour, Daniel R Chow, Andres C Ramos, Guillermo Rocha, Paul Harasymowycz
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Abstract

Visual field (VF) testing is crucial for the management of glaucoma. However, the process is often hindered by technician shortages and reliability issues. In this study, we leveraged machine learning to predict pattern standard deviation (PSD) using clinical inputs. This machine learning retrospective study used publicly accessible data from 743 eyes (541 glaucoma and 202 non-glaucoma controls). An automated neural network (ANN) model was trained using seven clinical input features: mean retinal nerve fiber layer (RNFL), IOP, patient age, CCT, glaucoma diagnosis, study protocol, and laterality. The ANN demonstrated efficient training across 1000 epochs, with consistent error reduction in training and test sets. Mean RMSEs were 1.67 ± 0.05 for training, and 2.27 ± 0.27 for testing. The r was 0.89 ± 0.01 for training, and 0.81 ± 0.04 for testing, indicating strong predictive accuracy with minimal overfitting. The LOFO analysis revealed that the primary contributors to PSD prediction were RNFL, CCT, IOP, glaucoma status, study protocol, and age, listed in order of significance. Our neural network successfully predicted PSD from RNFL and clinical data with strong performance metrics, in addition to demonstrating construct validity. This work demonstrates that neural networks hold the potential to predict or even generate VF estimations based solely on RNFL and clinical inputs.

Abstract Image

Abstract Image

Abstract Image

青光眼预测模式标准差:利用临床数据的机器学习方法。
视野(VF)检查对青光眼的治疗至关重要。然而,这一过程经常受到技术人员短缺和可靠性问题的阻碍。在这项研究中,我们利用机器学习来预测临床输入的模式标准差(PSD)。这项机器学习回顾性研究使用了743只眼睛(541只青光眼和202只非青光眼对照)的公开数据。自动神经网络(ANN)模型使用七个临床输入特征进行训练:平均视网膜神经纤维层(RNFL)、IOP、患者年龄、CCT、青光眼诊断、研究方案和侧边。该人工神经网络证明了在1000个epoch上的有效训练,在训练集和测试集上具有一致的误差减少。训练组均方根误差为1.67±0.05,测试组均方根误差为2.27±0.27。训练的r为0.89±0.01,测试的r为0.81±0.04,表明预测精度高,过拟合最小。LOFO分析显示,影响PSD预测的主要因素依次为RNFL、CCT、IOP、青光眼状态、研究方案和年龄。我们的神经网络成功地从RNFL和临床数据中预测PSD,并具有强大的性能指标,此外还证明了结构的有效性。这项工作表明,神经网络具有预测甚至仅基于RNFL和临床输入生成VF估计的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Vision (Switzerland)
Vision (Switzerland) Health Professions-Optometry
CiteScore
2.30
自引率
0.00%
发文量
62
审稿时长
11 weeks
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