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用于角膜塑形镜验配和眼轴长度预测的机器学习模型。

Machine learning models for orthokeratology lens fitting and axial length prediction.

作者信息

Xu Shuai, Yang Xiaoyan, Zhang Shuxian, Zheng Xuan, Zheng Fang, Liu Yin, Zhang Hanyu, Ye Qing, Li Lihua

机构信息

Key Laboratory of Weak-Light Nonlinear Photonics, Ministry of Education, School of Physics and TEDA Applied Physics, Nankai University, Tianjin, China.

Tianjin Eye Hospital Optometric Center, Tianjin, China.

出版信息

Ophthalmic Physiol Opt. 2023 Nov;43(6):1462-1468. doi: 10.1111/opo.13212. Epub 2023 Aug 13.

Abstract

PURPOSE

In order to improve the efficiency of orthokeratology (OK) lens fitting and predict the axial length after 1 year of OK lens wear, machine learning models were proposed.

METHODS

Clinical data from 1302 myopic subjects were collected retrospectively, and two machine learning models were implemented. Demographic and corneal topographic data were collected as input variables. The output variables were the parameters of the OK lens and the axial length after 1 year. Eighty percent of input variables was used as the training set and the remaining 20% was used as the validation set. The first alignment curve (AC1) of the OK lenses, deduced using machine learning models and formula calculation, were compared. Multiple regression models (support vector machine, Gaussian process, decision tree and random forest) were used to predict the axial length after 1 year. In addition, we classified data based on lens brand, and carried out more detailed parameter fitting and analysis for spherical and toric OK lenses.

RESULTS

The OK lens fitting model showed higher (R  = 0.93) and lower errors (mean absolute error [MAE] = 0.19, mean square error [MSE] = 0.09) when predicting AC1, compared with the formula calculation (R  = 0.66, MAE = 0.44, MSE = 0.25). The machine learning model still had high R values ranging from 0.91 to 0.96 when considering the brand and design of the OK lenses. Further, the R value for the axial length prediction model was 0.94, which indicated that the machine learning model had high accuracy and good robustness.

CONCLUSION

The OK lens fitting model and the axial length prediction model played an important role in guiding OK lens fitting, with high accuracy and robustness in prediction performance.

摘要

目的

为提高角膜塑形术(OK)镜片验配效率并预测佩戴OK镜片1年后的眼轴长度,提出了机器学习模型。

方法

回顾性收集1302例近视患者的临床数据,并实施两种机器学习模型。收集人口统计学和角膜地形图数据作为输入变量。输出变量为OK镜片参数及佩戴1年后的眼轴长度。80%的输入变量用作训练集,其余20%用作验证集。比较了使用机器学习模型和公式计算推导的OK镜片第一拟合曲线(AC1)。使用多元回归模型(支持向量机、高斯过程、决策树和随机森林)预测佩戴1年后的眼轴长度。此外,我们根据镜片品牌对数据进行分类,并对球面和环曲面OK镜片进行更详细的参数拟合和分析。

结果

与公式计算(R = 0.66,平均绝对误差[MAE]=0.44,均方误差[MSE]=0.25)相比,OK镜片验配模型在预测AC1时显示出更高的R值(R = 0.93)和更低的误差(MAE = 0.19,MSE = 0.09)。考虑OK镜片的品牌和设计时,机器学习模型的R值仍高达0.91至0.96。此外,眼轴长度预测模型的R值为0.94,表明机器学习模型具有较高的准确性和良好的稳健性。

结论

OK镜片验配模型和眼轴长度预测模型在指导OK镜片验配中发挥了重要作用,预测性能具有较高的准确性和稳健性。

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