利用基于st的多分辨率VEP分解对选定的视觉异常进行分析

V. Vijean, M. Hariharan, M. N. Mansor
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引用次数: 2

摘要

视觉异常会干扰正常视力,因此会引起不适。眼科医生将视力异常描述为任何一种视力丧失,无论是部分或全部视力丧失。视力丧失的原因可以追溯到遗传条件、不适当的生活方式、医疗条件和意外原因。视觉诱发电位(VEP)通常用于医学专家可能难以确定问题原因的情况。VEP在文献中经常被报道为一种检测视觉异常的可靠方法。通过分析记录的大脑对视觉刺激的反应,眼科医生可以做出适当的估计。由于医学专家对VEP的分析仍然是主观的,因此需要更全面的分析方法。研究人员现在正试图探索VEP的光谱信息,以便于诊断。在这方面,本工作探讨了使用斯托克韦尔变换(ST)来分析VEP信号。通过基于st的多分辨率信号分解,得到时频信息矩阵(st矩阵)。利用最小二乘支持向量机(LSSVM)和概率神经网络(PNN)对st矩阵提取的统计特征进行分类。研究结果表明,LSSVM分类器对所选视觉异常的预测准确率为96.07%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing selected visual anomaly through ST-based multi-resolution VEP decomposition
Visual anomaly interferes with the normal sight, and therefore can cause discomfort. Ophthalmologist describes a vision anomaly as any kind of vision loss, be it partial or total vision loss. The cause of vision loss can be traced back to genetic conditions, improper lifestyle, medical conditions and accidental causes. Visually evoked potentials (VEP) are often used in cases where the medical experts might have difficulties in determining the cause of the problem. VEP has often been reported in the literature as a reliable method for detecting visual abnormalities. By analyzing the recorded brain responses toward a visual stimulus, it is possible for the ophthalmologist to make an appropriate estimation. Since the analysis of VEP by the medical experts is still subjective, there is a need for a more comprehensive analysis method. Researchers are now trying to explore the spectral information of the VEP for easier diagnosis. In this regard, this work explores the use of Stockwell transform (ST) for the analysis of VEP signals. Via ST-based multi-resolution decomposition of the signals, the time-frequency information matrix (ST-matrix) is obtained. Statistical features extracted from ST-matrix were classified using least square support vector machine (LSSVM) and probabilistic neural network (PNN). The investigation results suggest that the LSSVM classifier was able to provide 96.07% of accurate prediction for selected visual anomaly investigated.
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