Drira Ines, Louja Ayoub, Sliman Layth, Soler Vincent, Noor Maha, Jamali Abdellah, Fournie Pierre
Department of Ophthalmology, Centre Hospitalier Universitaire de Toulouse, Toulouse, France.
Department of Ophthalmology, Centre Hospitalier Intercommunal de Créteil, Créteil, France.
Transl Vis Sci Technol. 2024 Dec 2;13(12):16. doi: 10.1167/tvst.13.12.16.
Eye rubbing is considered to play a significant role in the progression of keratoconus and of corneal ectasia following refractive surgery. To our knowledge, no tool performs an objective quantitative evaluation of eye rubbing using a device that is familiar to typical patients. We introduce here an innovative solution for objectively quantifying and preventing eye rubbing. It consists of an application that uses a deep-learning artificial intelligence (AI) algorithm deployed on a smartwatch.
A Samsung Galaxy Watch 4 smartwatch collected motion data from eye rubbing and everyday activities, including readings from the gyroscope, accelerometer, and linear acceleration sensors. The training of the model was carried out using two deep-learning algorithms, long short-term memory (LSTM) and gated recurrent unit (GRU), as well as four machine learning algorithms: random forest, K-nearest neighbors (KNN), support vector machine (SVM), and XGBoost.
The model achieved an accuracy of 94%. The developed application could recognize, count, and display the number of eye rubbings carried out. The GRU model and XGBoost algorithm also showed promising performance.
Automated detection of eye rubbing by deep-learning AI has been proven to be feasible. This approach could radically improve the management of patients with keratoconus and those undergoing refractive surgery. It could detect and quantify eye rubbing and help to reduce it by sending alerts directly to the patient.
This proof of concept could confirm one of the most prominent paradigms in keratoconus management, the role of abnormal eye rubbing, while providing the means to challenge or even negate it by offering the first automated and objective tool for detecting eye rubbing.
揉眼被认为在圆锥角膜以及屈光手术后角膜扩张的进展中起重要作用。据我们所知,尚无工具能使用典型患者熟悉的设备对揉眼进行客观定量评估。我们在此介绍一种用于客观量化和预防揉眼的创新解决方案。它由一款应用程序组成,该程序使用部署在智能手表上的深度学习人工智能(AI)算法。
三星Galaxy Watch 4智能手表收集揉眼和日常活动的运动数据,包括来自陀螺仪、加速度计和线性加速度传感器的读数。使用两种深度学习算法,即长短期记忆(LSTM)和门控循环单元(GRU),以及四种机器学习算法:随机森林、K近邻(KNN)、支持向量机(SVM)和XGBoost对模型进行训练。
该模型的准确率达到94%。所开发的应用程序能够识别、计数并显示揉眼的次数。GRU模型和XGBoost算法也显示出良好的性能。
深度学习人工智能自动检测揉眼已被证明是可行的。这种方法可以从根本上改善圆锥角膜患者和屈光手术患者的管理。它可以检测并量化揉眼情况,并通过直接向患者发送警报来帮助减少揉眼。
这一概念验证可以证实圆锥角膜管理中最突出的范例之一,即异常揉眼的作用,同时通过提供首个用于检测揉眼的自动化客观工具,提供挑战甚至否定这一作用的手段。