Vidith Phillips, Pouya B Bastani, Hector Rieiro, David E Hale, Jorge Otero-Millan, David S Zee, David E Newman-Toker, Ali Saber Tehrani
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引用次数: 0
Abstract
Introduction: Detecting positional nystagmus is essential for diagnosing benign paroxysmal positional vertigo (BPPV). Therefore, developing methods to streamline this diagnosis can improve timely patient management and help prevent unnecessary emergency department visits. We aimed to evaluate the accuracy of a smartphone eye-tracking application in quantifying eye movements during positional testing to detect positional nystagmus.
Methods: We recruited patients with positional dizziness suspected of having BPPV from the vestibular rehabilitation clinic and the consult service for dizzy patients (Tele-Dizzy) at Johns Hopkins Hospital. Using an in-house smartphone app (EyePhone), we recorded eye movements during the Dix-Hallpike and supine roll tests. Two expert clinicians reviewed the videos, and a third one adjudicated the disagreements. Eye position data obtained from the EyePhone app were analyzed with an embedded algorithm to identify positional nystagmus. Using the adjudicated expert review as the reference standard, we evaluated EyePhone's accuracy in detecting positional nystagmus by calculating the sensitivity, specificity, and predictive values.
Results: We recruited ten participants, 60% women, with an average age of 61.8 years. We reviewed 23 positional eye movement videos of participants while undergoing positional testing. The final adjudicated expert review identified positional nystagmus in 3 (13%) videos. The phone application traces indicated nystagmus in all 3 of these videos (sensitivity = 100% [95% CI = 44-100%]) and correctly ruled it out in 20 traces (specificity = 100% [95% CI = 84-100%]). The app demonstrated a positive predictive value of 100% (95% CI = 43-100%) and a negative predictive value of 100% (95% CI = 84-100%).
Conclusions: This small pilot study shows proof-of-concept that a smartphone eye-tracking app without special phone attachments can detect positional nystagmus.
诊断良性阵发性位置性眩晕(BPPV)时,检测体位性眼球震颤是必要的。因此,制定简化诊断的方法可以提高患者的及时管理,并有助于防止不必要的急诊科就诊。我们的目的是评估智能手机眼动追踪应用程序在定位测试中量化眼球运动的准确性,以检测定位性眼球震颤。方法:我们从约翰霍普金斯医院前庭康复门诊和眩晕患者咨询处(Tele-Dizzy)招募疑似BPPV的体位头晕患者。使用内部智能手机应用程序(EyePhone),我们记录了Dix-Hallpike和仰卧滚动测试期间的眼球运动。两位专家临床医生审查了视频,第三位专家对分歧进行了裁决。从EyePhone应用程序获得的眼位数据使用嵌入式算法进行分析,以识别位置性眼球震颤。以专家评审作为参考标准,我们通过计算灵敏度、特异性和预测值来评估EyePhone检测位置性眼球震颤的准确性。结果:我们招募了10名参与者,其中60%为女性,平均年龄为61.8岁。我们回顾了23个参与者在进行位置测试时的位置眼动视频。最终评审的专家在3个(13%)视频中发现了位置性眼球震颤。在这3个视频中,手机应用痕迹都显示眼球震颤(灵敏度= 100% [95% CI = 44-100%]),在20个痕迹中正确排除眼球震颤(特异性= 100% [95% CI = 84-100%])。该应用程序的阳性预测值为100% (95% CI = 43-100%),阴性预测值为100% (95% CI = 84-100%)。结论:这个小型的试点研究证明了一个智能手机眼球追踪应用程序可以检测位置性眼球震颤,而不需要特殊的手机附件。