Retinal Nerve Fiber Layer Thickness Measurement Repeatability for Cirrus HD-OCT Retinal Tracking System During Eye Movement.
Summary
Cirrus HD-OCT retinal tracking system may enhance RNFL thickness measurement repeatability under certain, but not all, eye movement conditions.
Abstract
PURPOSE
To investigate the repeatability of peripapillary retinal nerve fiber layer (RNFL) thickness measurements obtained using Cirrus high-definition optical coherence tomographic (Cirrus HD-OCT) retinal tracking system during various types of eye movements.
MATERIALS AND METHODS
We included 20 healthy eyes, 40 glaucomatous eyes of elderly patients, and 17 eyes with pathologic nystagmus. For healthy eyes, RNFL thickness measurements were obtained under 3 conditions: (1) without eye movement, fixated on the device's internal target, (2) with horizontal eye movement, and (3) with vertical eye movement during scan acquisition. Each session was performed 3 times with and without the use of the retinal tracking system. The repeatability of RNFL thickness measurements obtained with and without the retinal tracking was compared within each session and among the sessions.
RESULTS
In healthy eyes, measurements obtained without the use of a retinal tracking system showed lower repeatability when measurements were obtained with eye movements than without (P0.05) and higher than that obtained without the use of a retinal tracking system (P0.05). In eyes with pathologic nystagmus, the tracking system did not follow eye movement and scan acquisition was not processed.
CONCLUSIONS
Cirrus HD-OCT retinal tracking system may enhance RNFL thickness measurement repeatability under certain, but not all, eye movement conditions.
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