Ansari A H, Matic V, De Vos M, Naulaers G, Cherian P J, Van Huffel S
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:5859-62. doi: 10.1109/EMBC.2015.7319724.
Visual recognition of neonatal seizures during continuous EEG monitoring in neonatal intensive care units (NICUs) is labor-intensive, has low inter-rater agreement and requires special expertise that is not available around the clock. Development of an accurate automated seizure detection system with a low false alarm rate will support clinical decision making and alleviate significantly the workload. However, this is an ongoing difficult challenge for engineers as the neonatal EEG signal is non-stationary and often includes complex patterns of seizures and artifacts. In this study, we show an improvement of our previously developed neonatal seizure detector (developed using heuristic if-then rules). In order to improve the detection accuracy, mean phase coherence as a new feature is used to characterize artifacts and also support vector machine is applied to perform the post-processing step to remove false detections. As a result, the false alarm rate drops 42% (from 2.6 h(-1) to 1.5 h(-1)), whereas the good detection rate reduces only by 4%.
在新生儿重症监护病房(NICU)进行连续脑电图监测时,对新生儿癫痫发作进行视觉识别需要耗费大量人力,评分者间一致性较低,且需要具备随时无法获取的专业知识。开发一种具有低误报率的准确自动癫痫检测系统将有助于临床决策,并显著减轻工作量。然而,这对工程师来说仍是一个持续的难题,因为新生儿脑电图信号是非平稳的,并且常常包含癫痫发作和伪迹的复杂模式。在本研究中,我们展示了对我们之前开发的新生儿癫痫检测器(使用启发式的“如果-那么”规则开发)的改进。为了提高检测准确性,使用平均相位相干作为新特征来表征伪迹,并应用支持向量机执行后处理步骤以去除误检测。结果,误报率下降了42%(从2.6次/小时降至1.5次/小时),而良好检测率仅降低了4%。