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Cluster-based spike detection algorithm adapts to interpatient and intrapatient variation in spike morphology

机译:基于簇的峰值检测算法可适应患者之间和患者体内峰值形态的变化

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摘要

Visual quantification of interictal epileptiform activity is time consuming and requires a high level of expert's vigilance. This is especially true for overnight recordings of patient suffering from epileptic encephalopathy with continuous spike and waves during slow-wave sleep (CSWS) as they can show tens of thousands of spikes. Automatic spike detection would be attractive for this condition, but available algorithms have methodological limitations related to variation in spike morphology both between patients and within a single recording. We propose a fully automated method of interictal spike detection that adapts to interpatient and intrapatient variation in spike morphology. The algorithm works in five steps. (1) Spikes are detected using parameters suitable for highly sensitive detection. (2) Detected spikes are separated into clusters. (3) The number of clusters is automatically adjusted. (4) Centroids are used as templates for more specific spike detections, therefore adapting to the types of spike morphology. (5) Detected spikes are summed. The algorithm was evaluated on EEG samples from 20 children suffering from epilepsy with CSWS. When compared to the manual scoring of 3 EEG experts (3 records), the algorithm demonstrated similar performance since sensitivity and selectivity were 0.3% higher and 0.4% lower, respectively. The algorithm showed little difference compared to the manual scoring of another expert for the spike-and-wave index evaluation in 17 additional records (the mean absolute difference was 3.8%). This algorithm is therefore efficient for the count of interictal spikes and determination of a spike-and-wave index.
机译:眼部癫痫样活动的视觉量化非常耗时,需要专家的高度警惕。对于患有癫痫性脑病且在慢波睡眠(CSWS)期间连续出现峰值和波动的患者的夜间记录尤其如此,因为它们可能会显示成千上万的峰值。自动峰值检测在这种情况下会很有吸引力,但是可用的算法具有与患者之间以及单个记录内峰值形态变化相关的方法学限制。我们提出了一种全自动的发作间期峰值检测方法,该方法可适应患者间和患者内峰值形态的变化。该算法分为五个步骤。 (1)使用适合于高灵敏度检测的参数检测尖峰。 (2)将检测到的尖峰分为几类。 (3)簇数自动调整。 (4)将质心用作更具体的峰值检测的模板,因此适应于峰值形态的类型。 (5)将检测到的尖峰相加。对来自20名CSWS癫痫患儿的EEG样本进行了算法评估。与3名EEG专家的人工评分(3条记录)相比,该算法表现出相似的性能,因为灵敏度和选择性分别降低了0.3%和0.4%。与另一位专家对17条额外记录中的波峰指数评估的手动评分相比,该算法显示的差异很小(平均绝对差为3.8%)。因此,该算法对于间隔尖峰的计数和尖峰波指数的确定是有效的。

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