Department of Biomedical Engineering, Yonsei University, Wonju, 26493, Republic of Korea.
Department of Precision Medicine, Yonsei University Wonju College of Medicine, Wonju, 26426, Republic of Korea.
Sci Rep. 2023 Jul 24;13(1):11975. doi: 10.1038/s41598-023-39104-7.
Benign paroxysmal positional vertigo (BPPV), the most common vestibular disorder, is diagnosed by an examiner changing the posture of the examinee and inducing nystagmus. Among the diagnostic methods used to observe nystagmus, video-nystagmography has been widely used recently because it is non-invasive. A specialist with professional knowledge and training in vertigo diagnosis is needed to diagnose BPPV accurately, but the ratio of vertigo patients to specialists is too high, thus necessitating the need for automated diagnosis of BPPV. In this paper, a convolutional neural network-based nystagmus extraction system, ANyEye, optimized for video-nystagmography data is proposed. A pupil was segmented to track the exact pupil trajectory from real-world data obtained during field inspection. A deep convolutional neural network model was trained with the new video-nystagmography dataset for the pupil segmentation task, and a compensation algorithm was designed to correct pupil position. In addition, a slippage detection algorithm based on moving averages was designed to eliminate the motion artifacts induced by goggle slippage. ANyEye outperformed other eye-tracking methods including learning and non-learning-based algorithms with five-pixel error detection rate of 91.26%.
良性阵发性位置性眩晕(BPPV)是最常见的前庭疾病,通过检查者改变受检者的姿势并诱发眼球震颤来诊断。在用于观察眼球震颤的诊断方法中,视频眼震图最近被广泛应用,因为它是非侵入性的。准确诊断 BPPV 需要具备眩晕诊断专业知识和培训的专家,但眩晕患者与专家的比例过高,因此需要 BPPV 的自动诊断。本文提出了一种基于卷积神经网络的针对视频眼震图数据的眼球震颤提取系统 ANyEye。通过从现场检查中获得的真实数据,分割瞳孔以跟踪准确的瞳孔轨迹。使用新的视频眼震图数据集对瞳孔分割任务进行了深度卷积神经网络模型的训练,并设计了补偿算法来校正瞳孔位置。此外,还设计了基于移动平均值的滑动检测算法,以消除由眼镜滑动引起的运动伪影。ANyEye 的表现优于其他眼动跟踪方法,包括基于学习和非学习的算法,其五像素误差检测率为 91.26%。