论文标题

使用胚胎间检测方法识别新生儿脑电图中的痕量替代活动

Identifying trace alternant activity in neonatal EEG using an inter-burst detection approach

论文作者

Raurale, Sumit A., Boylan, Geraldine B., Lightbody, Gordon, O'Toole, John M.

论文摘要

脑电图(EEG)是审查重症监护新生儿睡眠循环的重要临床工具。痕量交替(TA) - 在静静睡眠期间,在术语新生儿中的EEG活动的特征模式,由短持续时间,高压活性(爆发)的交替时期定义,该活动被低压活性(爆发)分隔(爆发)。这项研究提出了一种新的方法,用于通过首先检测爆炸间,然后处理爆发和爆发间的时间图来检测TA活性。使用来自72个健康期限新生儿的脑电记录来发展和评估1)一种爆发检测方法,然后用于2)检测TA活性。首先,使用支撑矢量机(SVM)合并了多个振幅和光谱特征,以对TA活动中的胚胎间爆发进行分类,从而在工作特性曲线(AUC)下的中位面积为0.95(95%置信区间,CI:CI:0.93至0.98)。其次,使用连续SVM输出的后处理,即置信评分,用于产生TA包膜。该包膜用于检测连续EEG内的TA活性,中位AUC为0.84(95%CI:0.80至0.88)。这些结果证明了如何使用胚胎间检测方法与后加工的结合来对TA活性进行分类。检测TA的存在或不存在将有助于量化临床上重要的睡眠效果周期的破坏。

Electroencephalography (EEG) is an important clinical tool for reviewing sleep-wake cycling in neonates in intensive care. Trace alternant (TA)-a characteristic pattern of EEG activity during quiet sleep in term neonates-is defined by alternating periods of short-duration, high-voltage activity (bursts) separated by lower-voltage activity (inter-bursts). This study presents a novel approach for detecting TA activity by first detecting the inter-bursts and then processing the temporal map of the bursts and inter-bursts. EEG recordings from 72 healthy term neonates were used to develop and evaluate performance of 1) an inter-burst detection method which is then used for 2) detection of TA activity. First, multiple amplitude and spectral features were combined using a support vector machine (SVM) to classify bursts from inter-bursts within TA activity, resulting in a median area under the operating characteristic curve (AUC) of 0.95 (95% confidence interval, CI: 0.93 to 0.98). Second, post-processing of the continuous SVM output, the confidence score, was used to produce a TA envelope. This envelope was used to detect TA activity within the continuous EEG with a median AUC of 0.84 (95% CI: 0.80 to 0.88). These results validate how an inter-burst detection approach combined with post processing can be used to classify TA activity. Detecting the presence or absence of TA will help quantify disruption of the clinically important sleep-wake cycle.

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