Ranran Chen, Jinming Lei, Yujie Liao, Yiping Jin, Xue Wang, Hong Li, Yanlong Bi, Haohao Zhu
Department of Ophthalmology, Shanghai Fifth People's Hospital, Fudan University, Shanghai, China.
Center of Community-Based Health Research, Fudan University, Shanghai, China.
Med Sci Monit. 2024 Dec 3;30:e945483. doi: 10.12659/MSM.945483.
BACKGROUND Predicting 24-hour intraocular pressure (IOP) fluctuations is crucial for enhancing glaucoma management. Traditional methods of measuring 24-hour IOP fluctuations are complex and present certain limitations. The present study leverages machine learning techniques to forecast 24-hour IOP fluctuations based on daytime IOP measurements. MATERIAL AND METHODS A binary method was used to classify 24-hour IOP fluctuations as either >8 mmHg or £8 mmHg. Data were collected from 24-hour IOP monitoring, including 22 different features. Feature selection involved the chi-square test and point-biserial correlation, leading to the establishment of 4 subsets with significance levels of P<1, P<0.1, P<0.05, and P<0.025. Five binary classification machine learning algorithms were used to construct the model. Model performance was assessed by comparing accuracy, specificity, 10-fold cross-validation, precision, sensitivity, F1 score, area under the curve (AUC), and Area Under the Precision-Recall Curve (AUCPR). The model with the highest performance was selected, and feature importance was assessed using Shapley additive explanations. RESULTS In the subset of features where P<0.05, all models performed better than those in the other subsets, with XGBoost standing out the most. The XGBoost algorithm achieved an accuracy of 0.886, a specificity of 0.972, a 10-fold cross-validation of 0.872, a precision of 0.857, a sensitivity of 0.585, and an F1 score of 0.696. Additionally, it obtained an AUC of 0.890 and an AUCPR of 0.794. CONCLUSIONS Our study illustrates the predictive capabilities of machine learning algorithms in forecasting 24-hour IOP fluctuations. The exceptional performance of the XGBoost algorithm in predicting IOP fluctuations underscores its significance for future research and clinical applications.
预测24小时眼压(IOP)波动对于改善青光眼治疗至关重要。传统测量24小时IOP波动的方法复杂且存在一定局限性。本研究利用机器学习技术,基于日间IOP测量来预测24小时IOP波动。
采用二元法将24小时IOP波动分类为>8 mmHg或≤8 mmHg。从24小时IOP监测中收集数据,包括22个不同特征。特征选择涉及卡方检验和点二列相关,从而建立了显著性水平为P<1、P<0.1、P<0.05和P<0.025的4个子集。使用五种二元分类机器学习算法构建模型。通过比较准确率、特异性、十折交叉验证、精确率、灵敏度、F1分数、曲线下面积(AUC)和精确率-召回率曲线下面积(AUCPR)来评估模型性能。选择性能最高的模型,并使用Shapley加法解释评估特征重要性。
在P<0.05的特征子集中,所有模型的表现均优于其他子集,其中XGBoost最为突出。XGBoost算法的准确率为0.886,特异性为0.972,十折交叉验证为0.872,精确率为0.857,灵敏度为0.585,F1分数为0.696。此外,它的AUC为0.890,AUCPR为0.794。
我们的研究说明了机器学习算法在预测24小时IOP波动方面的预测能力。XGBoost算法在预测IOP波动方面的卓越性能凸显了其在未来研究和临床应用中的重要性。