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Automatic Detection of Single Slow Eye Movements and Analysis of their Changes at Sleep Onset

机译:自动检测单速慢眼动散,并在睡眠状态下的变化分析

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An algorithm that can automatically identify slow eye movements from the electro-oculogram is presented. The automatic procedure is trained using the visual classification of an expert scorer. The algorithm makes use of both the spectral and morphological signal information to detect single slow eye movements. On the basis of this detection some parameters that characterize the slow eye movements (amplitude, duration, velocity and number) are extracted. A few possible applications of the algorithm are shown by means of a preliminary study: the average patterns of slow eye movements parameters at sleep onset are evaluated for healthy volunteers and for patients affected by obstructive sleep apnea syndrome. Finally, general considerations are drawn regarding the clinical interest of the study.
机译:呈现了一种可以自动识别来自电镜图的慢眼部运动的算法。使用专家评分器的可视分类培训自动过程。该算法利用频谱和形态信号信息来检测单个慢入眼球运动。在该检测的基础上,提取一些表征慢眼部运动(幅度,持续时间,速度和数量)的参数。算法的一些可能的应用是通过初步研究显示的:对健康志愿者的睡眠发作时的慢眼运动参数的平均模式进行评估,并为受阻睡眠呼吸暂停综合征影响的患者进行评估。最后,提出了关于研究的临床兴趣的一般考虑因素。

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