基于机器学习方法的三维眼球震眼动信号有效和无效节拍的分类

M. Juhola, H. Aalto, H. Joutsijoki, T. Hirvonen
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引用次数: 5

摘要

眼球震颤的记录经常包括眨眼、噪音或其他损坏的片段,除了噪音,不能通过过滤来抑制。我们测量了107名耳神经系统患者的自发性眼球震颤,为基于机器学习的分类器形成训练集,以评估和分离有效的眼球震颤节拍和伪影。视频眼动术记录三维眼球震颤信号。首先,根据眼球震颤变量的极限,实现了接受或拒绝眼球震颤节拍的程序。其次,专家手动细读所有眼球震颤节拍。第三,将机器和人工结果统一起来,形成基于机器学习的分类训练集的第三个变体。这提高了分类的准确性;获得了高达89%的高精度值。
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The Classification of Valid and Invalid Beats of Three-Dimensional Nystagmus Eye Movement Signals Using Machine Learning Methods
Nystagmus recordings frequently include eye blinks, noise, or other corrupted segments that, with the exception of noise, cannot be dampened by filtering. Wemeasured the spontaneous nystagmus of 107 otoneurological patients to forma training set for machine learning-based classifiers to assess and separate valid nystagmus beats from artefacts. Video-oculography was used to record threedimensional nystagmus signals. Firstly, a procedure was implemented to accept or reject nystagmus beats according to the limits for nystagmus variables. Secondly, an expert perused all nystagmus beats manually. Thirdly, both the machine and the manual results were united to form the third variation of the training set for the machine learning-based classification. This improved accuracy results in classification; high accuracy values of up to 89% were obtained.
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