Zhao Zihe, Meng Hongbei, Li Shangru, Wang Shengbo, Wang Jiaqi, Gao Shuo
School of Instrumentation and Optoelectronic Engineering, Beihang University, Beijing 100191, China.
Biosensors (Basel). 2025 Feb 14;15(2):110. doi: 10.3390/bios15020110.
An effective and highly accurate strabismus screening method is expected to identify potential patients and provide timely treatment to prevent further deterioration, such as amblyopia and even permanent vision loss. To satisfy this need, this work showcases a novel strabismus screening method based on a wearable eye-tracking device combined with an artificial intelligence (AI) algorithm. To identify the minor and occasional inconsistencies in strabismus patients during the binocular coordination process, which are usually seen in early-stage patients and rarely recognized in current studies, the system captures temporally and spatially continuous high-definition infrared images of the eye during wide-angle continuous motion, and is effective in inducing intermittent strabismus. Based on the collected eye motion information, 16 features of the oculomotor process with strong physiological interpretations, which help biomedical staff understand and evaluate results generated later, are calculated through the introduction of pupil-canthus vectors. These features can be normalized, and reflect individual differences. After these features are processed by the random forest (RF) algorithm, this method experimentally yields 97.1% accuracy in strabismus detection in 70 people under diverse indoor testing conditions, validating the high accuracy and robustness of the method, and implying that the method has strong potential to support widespread and highly accurate strabismus screening.
一种有效且高度准确的斜视筛查方法有望识别潜在患者并提供及时治疗,以防止病情进一步恶化,如弱视甚至永久性视力丧失。为满足这一需求,本文展示了一种基于可穿戴眼动追踪设备与人工智能(AI)算法相结合的新型斜视筛查方法。为了识别斜视患者在双眼协调过程中细微且偶尔出现的不一致情况,这种情况通常在早期患者中出现且在当前研究中很少被识别,该系统在广角连续运动期间捕获眼睛在时间和空间上连续的高清红外图像,并能有效诱发间歇性斜视。基于收集到的眼动信息,通过引入瞳孔 - 眼角向量计算出16个具有强烈生理学解释的眼动过程特征,这有助于生物医学工作人员理解和评估后续生成的结果。这些特征可以进行归一化处理,并反映个体差异。在通过随机森林(RF)算法对这些特征进行处理后,该方法在不同室内测试条件下对70人进行斜视检测时,实验准确率达到97.1%,验证了该方法的高精度和鲁棒性,这意味着该方法具有强大的潜力来支持广泛且高度准确的斜视筛查。