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Expert and crowd-sourced validation of an individualized sleep spindle detection method employing complex demodulation and individualized normalization

机译:使用复杂解调和个性化归一化的个性化睡眠纺锤体检测方法的专家和众包验证

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A spindle detection method was developed that: (1) extracts the signal of interest (i.e., spindle-related phasic changes in sigma) relative to ongoing “background” sigma activity using complex demodulation, (2) accounts for variations of spindle characteristics across the night, scalp derivations and between individuals, and (3) employs a minimum number of sometimes arbitrary, user-defined parameters. Complex demodulation was used to extract instantaneous power in the spindle band. To account for intra- and inter-individual differences, the signal was z-score transformed using a 60 s sliding window, per channel, over the course of the recording. Spindle events were detected with a z-score threshold corresponding to a low probability (e.g., 99th percentile). Spindle characteristics, such as amplitude, duration and oscillatory frequency, were derived for each individual spindle following detection, which permits spindles to be subsequently and flexibly categorized as slow or fast spindles from a single detection pass. Spindles were automatically detected in 15 young healthy subjects. Two experts manually identified spindles from C3 during Stage 2 sleep, from each recording; one employing conventional guidelines, and the other, identifying spindles with the aid of a sigma (11–16 Hz) filtered channel. These spindles were then compared between raters and to the automated detection to identify the presence of true positives, true negatives, false positives and false negatives. This method of automated spindle detection resolves or avoids many of the limitations that complicate automated spindle detection, and performs well compared to a group of non-experts, and importantly, has good external validity with respect to the extant literature in terms of the characteristics of automatically detected spindles.
机译:开发了一种主轴检测方法,该方法:(1)使用复杂的解调相对于进行中的“背景” sigma活动提取感兴趣的信号(即,与主轴相关的相变),(2)说明整个主轴特性的变化。晚上,头皮的推导以及个人之间的关系,以及(3)使用最少数量的,有时是任意的,用户定义的参数。复合解调用于提取主轴带中的瞬时功率。为了解决个体内和个体间的差异,在录制过程中,每个通道使用60 s滑动窗口对信号进行z分数转换。使用对应于低概率(例如,第99个百分位数)的z分数阈值检测到主轴事件。检测后为每个单独的主轴导出了主轴特性(例如振幅,持续时间和振荡频率),从而可以通过一次检测将主轴随后灵活地分为慢速主轴或快速主轴。在15位年轻的健康受试者中自动检测到主轴。两位专家在每次记录的第二阶段睡眠期间从C3手动识别了主轴;一个使用常规准则,另一个使用sigma(11-16 Hz)滤波通道识别主轴。然后将这些纺锤在评估者之间进行比较,并与自动检测进行比较,以识别真阳性,真阴性,假阳性和假阴性的存在。这种自动主轴检测的方法解决或避免了许多使自动主轴检测复杂化的局限性,并且与一组非专家小组相比,其性能很好,并且重要的是,就现有文献而言,具有良好的外部有效性。自动检测到的主轴。

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