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Evaluating the Effect of Topical Atropine Use for Myopia Control on Intraocular Pressure by Using Machine Learning

机译:通过机器学习评估局部阿托品用于近视控制对眼压的影响

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摘要

Atropine is a common treatment used in children with myopia. However, it probably affects intraocular pressure (IOP) under some conditions. Our research aims to analyze clinical data by using machine learning models to evaluate the effect of 19 important factors on intraocular pressure (IOP) in children with myopia treated with topical atropine. The data is collected on 1545 eyes with spherical equivalent (SE) less than −10.0 diopters (D) treated with atropine for myopia control. Four machine learning models, namely multivariate adaptive regression splines (MARS), classification and regression tree (CART), random forest (RF), and eXtreme gradient boosting (XGBoost), were used. Linear regression (LR) was used for benchmarking. The 10-fold cross-validation method was used to estimate the performance of the five methods. The main outcome measure is that the 19 important factors associated with atropine use that may affect IOP are evaluated using machine learning models. Endpoint IOP at the last visit was set as the target variable. The results show that the top five significant variables, including baseline IOP, recruitment duration, age, total duration and previous cumulative dosage, were identified as most significant for evaluating the effect of atropine use for treating myopia on IOP. We can conclude that the use of machine learning methods to evaluate factors that affect IOP in children with myopia treated with topical atropine is promising. XGBoost is the best predictive model, and baseline IOP is the most accurate predictive factor for endpoint IOP among all machine learning approaches.
机译:阿托品是近视儿童使用的常见治疗方法。然而,它可能在某些条件下影响眼压(IOP)。我们的研究旨在通过使用机器学习模型来分析临床数据,以评估具有局部阿托品治疗近视儿童人工压力(IOP)对近视的患者的重要因素的影响。数据在1545只眼睛上收集,具有小于-10.0屈光度(D)的球形等同物(SE),用于近视控制。四种机器学习模型,即多变量自适应回归花键(火星),分类和回归树(推车),随机森林(RF)和极端梯度升压(XGBoost)。线性回归(LR)用于基准测试。 10倍交叉验证方法用于估计五种方法的性能。主要结果措施是,使用机器学习模型评估与可能影响IOP的阿托品使用相关的19个重要因素。最后一次访问的端点IOP被设置为目标变量。结果表明,鉴定出最重要的五个显着变量,包括基线IOP,招募持续时间,年龄,总持续时间和先前的累积剂量,用于评估阿托品用于治疗IOP对近视的近视的影响。我们可以得出结论,利用机器学习方法评估影响用局部阿托品治疗的近视儿童免疫因素的因素是有前途的。 XGBoost是最佳的预测模型,基线IOP是所有机器学习方法中端点IOP最准确的预测因素。

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