Computational method for aid in the diagnosis of sixth optic nerve palsy through digital videos

https://doi.org/10.1016/j.compbiomed.2022.106098Get rights and content
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Highlights

  • We proposed an innovative automatic method for diagnosing the sixth nerve palsy.

  • We defined a video acquisition protocol for the sixth nerve palsy diagnosis in videos.

  • Our approach uses convolutional neural networks and image processing techniques.

  • The method showed that paretic eyes move at least 19.65% slower than a healthy one.

  • The method reached 92.64% accuracy with a Kappa index of 0.925.

Abstract

The sixth cranial nerve, also known as the abducens nerve, is responsible for controlling the movements of the lateral rectus muscle. Palsies on the sixth nerve prevent some muscles that control eye movements from proper functioning, causing headaches, migraines, blurred vision, vertigo, and double vision. Hence, such palsy should be diagnosed in the early stages to treat it without leaving any sequela. The usual methods for diagnosing the sixth nerve palsy are invasive or depend on expensive equipment, and computer-based methods designed specifically to diagnose the aforementioned palsy were not found until the publication of this work. Therefore, a low-cost, non-invasive method can support or guide the ophthalmologist’s diagnosis. In this context, this work presents a computational methodology to aid in diagnosing the sixth nerve palsy using videos to assist ophthalmologists in the diagnostic process, serving as a second opinion. The proposed method uses convolutional neural networks and image processing techniques to track both eyes’ movement trajectory during the video. With this trajectory, it is possible to calculate the average velocity (AV) in which each eye moves. Since it is known that paretic eyes move slower than healthy eyes, comparing the AV of both eyes can determine if the eye is healthy or paretic. The results obtained with the proposed method showed that paretic eyes move at least 19.65% slower than healthy ones. This threshold, along with the AV of the movement of the eyes, can help ophthalmologists in their analysis. The proposed method reached 92.64% accuracy in diagnosing the sixth optic nerve palsy (SONP), with a Kappa index of 0.925, which highlights the reliability of the results and gives favorable perspectives for further clinical application.

Keywords

Sixth nerve palsy
Convolutional neural networks
Image processing
Digital videos

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