一种用于估计近视儿童眼轴长度生理伸长的机器学习算法。

Eye and vision (London, England) Pub Date : 2020-10-22 eCollection Date: 2020-01-01 DOI:10.1186/s40662-020-00214-2
Tao Tang, Zekuan Yu, Qiong Xu, Zisu Peng, Yuzhuo Fan, Kai Wang, Qiushi Ren, Jia Qu, Mingwei Zhao
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引用次数: 24

摘要

背景:轴型近视是最常见的近视类型。然而,由于我国儿童近视的高发,对不引起近视进展且不同于非生理性眼轴长度(AL)的生理性眼轴长度(AL)进行评估的研究较少。我们的研究目的是建立一个基于机器学习(ML)的模型来估计中国学龄近视儿童AL的生理伸长。方法:共有1011名6 ~ 18岁近视儿童参与本研究。使用横截面数据集来优化ML算法。输入变量包括年龄、性别、角膜中央厚度(CCT)、球面等效屈光不正(SER)、平均K读数(K-mean)和白到白角膜直径(WTW)。输出变量为AL。采用5重交叉验证方案,将所有数据随机分为5组,其中4组作为训练数据,1组作为验证数据。在我们的模型中实现了六种ML算法。采用最优算法预测AL,并基于SER值随年龄增长不变的AL预测年龄曲线的偏导数得到AL的生理伸长估计。结果:在6种算法中,稳健线性回归模型是预测AL的最佳模型,r2值为0.87,预测AL与真实AL之间的平均误差相对较小。基于AL预测年龄曲线的偏导数,男性受试者的预估AL生理伸长在0.010 ~ 0.116 mm/年之间,女性受试者的预估AL生理伸长在0.003 ~ 0.110 mm/年之间,并受年龄、SER和K-mean的影响。根据该模型,AL的生理伸长随年龄的增加而线性下降,与SER和k -均值呈负相关。结论:在中国临床资料中很少有AL生理伸长的记录。在无法获得临床数据的情况下,ML算法可以为从业者提供一个合理的模型,用于估计人工晶状体的生理伸长,这在监测角膜塑形镜配戴者的近视进展时特别有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A machine learning-based algorithm used to estimate the physiological elongation of ocular axial length in myopic children.

A machine learning-based algorithm used to estimate the physiological elongation of ocular axial length in myopic children.

A machine learning-based algorithm used to estimate the physiological elongation of ocular axial length in myopic children.

A machine learning-based algorithm used to estimate the physiological elongation of ocular axial length in myopic children.

Background: Axial myopia is the most common type of myopia. However, due to the high incidence of myopia in Chinese children, few studies estimating the physiological elongation of the ocular axial length (AL), which does not cause myopia progression and differs from the non-physiological elongation of AL, have been conducted. The purpose of our study was to construct a machine learning (ML)-based model for estimating the physiological elongation of AL in a sample of Chinese school-aged myopic children.

Methods: In total, 1011 myopic children aged 6 to 18 years participated in this study. Cross-sectional datasets were used to optimize the ML algorithms. The input variables included age, sex, central corneal thickness (CCT), spherical equivalent refractive error (SER), mean K reading (K-mean), and white-to-white corneal diameter (WTW). The output variable was AL. A 5-fold cross-validation scheme was used to randomly divide all data into 5 groups, including 4 groups used as training data and one group used as validation data. Six types of ML algorithms were implemented in our models. The best-performing algorithm was applied to predict AL, and estimates of the physiological elongation of AL were obtained as the partial derivatives of AL predicted -age curves based on an unchanged SER value with increasing age.

Results: Among the six algorithms, the robust linear regression model was the best model for predicting AL, with a R 2 value of 0.87 and relatively minimal averaged errors between the predicted AL and true AL. Based on the partial derivatives of the AL predicted -age curves, the estimated physiological AL elongation varied from 0.010 to 0.116 mm/year in male subjects and 0.003 to 0.110 mm/year in female subjects and was influenced by age, SER and K-mean. According to the model, the physiological elongation of AL linearly decreased with increasing age and was negatively correlated with the SER and the K-mean.

Conclusions: The physiological elongation of the AL is rarely recorded in clinical data in China. In cases of unavailable clinical data, an ML algorithm could provide practitioners a reasonable model that can be used to estimate the physiological elongation of AL, which is especially useful when monitoring myopia progression in orthokeratology lens wearers.

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