Machine learning predicting myopic regression after corneal refractive surgery using preoperative data and fundus photography.

Juntae Kim, Ik Hee Ryu, Jin Kuk Kim, In Sik Lee, Hong Kyu Kim, Eoksoo Han, Tae Keun Yoo
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引用次数: 8

Abstract

Purpose: Myopic regression after surgery is the most common long-term complication of refractive surgery, but it is difficult to identify myopic regression without long-term observation. This study aimed to develop machine learning models to identify high-risk patients for refractive regression based on preoperative data and fundus photography.

Methods: This retrospective study assigned subjects to the training (n = 1606 eyes) and validation (n = 403 eyes) datasets with chronological data splitting. Machine learning models with ResNet50 (for image analysis) and XGBoost (for integration of all variables and fundus photography) were developed based on subjects who underwent corneal refractive surgery. The primary outcome was the predictive performance for the presence of myopic regression at 4 years of follow-up examination postoperatively.

Results: By integrating all factors and fundus photography, the final combined machine learning model showed good performance to predict myopic regression of more than 0.5 D (area under the receiver operating characteristic curve [ROC-AUC], 0.753; 95% confidence interval [CI], 0.710-0.793). The performance of the final model was better than the single ResNet50 model only using fundus photography (ROC-AUC, 0.673; 95% CI, 0.627-0.716). The top-five most important input features were fundus photography, preoperative anterior chamber depth, planned ablation thickness, age, and preoperative central corneal thickness.

Conclusion: Our machine learning algorithm provides an efficient strategy to identify high-risk patients with myopic regression without additional labor, cost, and time. Surgeons might benefit from preoperative risk assessment of myopic regression, patient counseling before surgery, and surgical option decisions.

利用术前数据和眼底摄影预测角膜屈光手术后近视消退的机器学习。
目的:术后近视退行是屈光手术最常见的远期并发症,但不经长期观察难以鉴别是否存在近视退行。本研究旨在开发基于术前数据和眼底摄影的机器学习模型来识别屈光退化的高危患者。方法:本回顾性研究将受试者分配到训练(n = 1606眼)和验证(n = 403眼)数据集,按时间顺序拆分数据。使用ResNet50(用于图像分析)和XGBoost(用于整合所有变量和眼底摄影)开发机器学习模型,以接受角膜屈光手术的受试者为基础。主要结果是术后4年随访检查中近视消退的预测表现。结果:综合各因素和眼底摄影,最终的联合机器学习模型对0.5 D(受试者工作特征曲线下面积[ROC-AUC], 0.753;95%置信区间[CI], 0.710-0.793)。最终模型的性能优于仅使用眼底摄影的单一ResNet50模型(ROC-AUC, 0.673;95% ci, 0.627-0.716)。前五个最重要的输入特征是眼底摄影、术前前房深度、计划消融厚度、年龄和术前角膜中央厚度。结论:我们的机器学习算法提供了一种有效的策略来识别近视消退的高危患者,而不需要额外的人工、成本和时间。外科医生可能受益于术前近视消退风险评估、术前患者咨询和手术选择决策。
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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