Jin Xiao-Lu, Liu Yu-Fei, He Bing-Bing, Fan Yi-Fei, Zhou Ling-Yun
Ocular Motility Disorder Treatment and Rehabilitation Center, Department of Acupuncture, Harbin Medical University, Harbin, Heilongjiang Province, China.
Ocular Motility Disorder Treatment and Rehabilitation Center, The First Affiliated Hospital of Harbin Medical University, Harbin, Heilongjiang Province, China.
Front Neurol. 2025 Jul 2;16:1522894. doi: 10.3389/fneur.2025.1522894. eCollection 2025.
This study proposes a deep learning-based image analysis method for automated scoring of the severity of horizontal ocular movement disorders and evaluates its performance against traditional manual scoring methods.
A total of 2,565 ocular images were prospectively collected from 164 patients with ocular movement disorders and 121 healthy subjects. These images were labeled and used as the training set for the RetinaEye automatic scoring model. Additionally, 184 binocular gaze images (left and right turns) were collected from 92 patients with limited horizontal ocular movement, serving as the test set. Manual and automatic scoring were performed on the test set using ImageJ and RetinaEye, respectively. Furthermore, the consistency and correlation between the two scoring methods were assessed.
RetinaEye successfully identified the centers of both pupils, as well as the positions of the medial and lateral canthi. It also automatically calculated the horizontal ocular movement scores based on the pixel coordinates of these key points. The model demonstrated high accuracy in identifying key points, particularly the lateral canthi. In the test group, manual and automated scoring results showed a high level of consistency and positive correlation among all affected oculi ( = 0.860, < 0.001; = 0.897, < 0.001).
The automatic scoring method based on RetinaEye demonstrated high consistency with manual scoring results. This new method objectively assesses the severity of horizontal ocular movement disorders and holds great potential for diagnosis and treatment selection.
本研究提出一种基于深度学习的图像分析方法,用于自动评估水平眼球运动障碍的严重程度,并将其性能与传统手动评分方法进行比较。
前瞻性收集了164例眼球运动障碍患者和121名健康受试者的2565张眼部图像。这些图像被标记后用作RetinaEye自动评分模型的训练集。此外,从92例水平眼球运动受限的患者中收集了184张双眼注视图像(左右转动),作为测试集。分别使用ImageJ和RetinaEye对测试集进行手动和自动评分。此外,评估了两种评分方法之间的一致性和相关性。
RetinaEye成功识别出两个瞳孔的中心以及内眦和外眦的位置。它还根据这些关键点的像素坐标自动计算水平眼球运动得分。该模型在识别关键点,特别是外眦方面表现出很高的准确性。在测试组中,所有受影响眼的手动和自动评分结果显示出高度一致性和正相关性(=0.860,<0.001;=0.897,<0.001)。
基于RetinaEye的自动评分方法与手动评分结果显示出高度一致性。这种新方法客观地评估了水平眼球运动障碍的严重程度,在诊断和治疗选择方面具有巨大潜力。