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Searching arousals: A fuzzy logic approach

机译:搜索唤醒:一种模糊逻辑方法

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This paper presents a computational approach to detect spontaneous, chin tension and limb movement-related arousals by estimating neuronal and muscular activity. Features extraction is carried out by Time Varying Autoregressive Moving Average (TVARMA) models and recursive particle filtering. Classification is performed by a fuzzy inference system with rule-based decision scheme based upon the AASM scoring rules. Our approach yielded two metrics: arousal density and arousal index to comply with standardised clinical benchmarking. The obtained statistics achieved error deviation around ±1.5 to ±30. These results showed that our system can differentiate amongst 3 different types of arousals, subject to inter-subject variability and up-to-date scoring references.
机译:本文提出了一种通过估算神经元和肌肉活动来检测自发性,下巴张力和四肢运动相关唤醒的计算方法。特征提取是通过时变自回归移动平均(TVARMA)模型和递归粒子过滤来进行的。通过基于AASM评分规则的基于规则的决策方案的模糊推理系统执行分类。我们的方法得出两个指标:唤醒密度和唤醒指数,以符合标准化的临床基准。所获得的统计数据实现了±1.5至±30左右的误差偏差。这些结果表明,我们的系统可以区分3种不同类型的唤醒,这取决于对象间的差异性和最新的评分参考。

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