Gotman J, Flanagan D, Zhang J, Rosenblatt B
Montreal Neurological Institute and Hospital, Canada.
Electroencephalogr Clin Neurophysiol. 1997 Sep;103(3):356-62. doi: 10.1016/s0013-4694(97)00003-9.
Seizures are most common in the newborn period, but at that age seizures can be very difficult to identify by clinical observation. Therefore the EEG plays an even greater role in newborns than in older children and adults. The electrographic features of seizures and EEG background in the newborn are, however, very different to those found in adults. We present a set of methods for the automatic detection of seizures in the newborn. The methods are aimed at detecting a wide range of patterns, including rhythmic paroxysmal discharges at a wide range of frequencies, as well as repetitive spike patterns, even when they are not very rhythmic. The methods were developed using EEGs obtained from 55 newborns, recorded at 3 hospitals that used differing monitoring protocols. A total of 281 h of recordings containing 679 seizures were analyzed. An initial evaluation indicated that 71% of the seizures and 78% of seizure clusters (group of seizures separated by less than 90 s) were detected, with a false detection rate of 1.7/h. The methods were developed so that they can be implemented to operate in real time.
癫痫发作在新生儿期最为常见,但在那个年龄段,通过临床观察很难识别癫痫发作。因此,脑电图在新生儿中的作用比在大龄儿童和成年人中更为重要。然而,新生儿癫痫发作的脑电图特征和脑电图背景与成年人有很大不同。我们提出了一套用于自动检测新生儿癫痫发作的方法。这些方法旨在检测广泛的模式,包括各种频率的节律性阵发性放电,以及重复性尖波模式,即使它们的节律性不强。这些方法是使用从55名新生儿获得的脑电图开发的,这些脑电图记录于3家采用不同监测方案的医院。总共分析了281小时的记录,其中包含679次癫痫发作。初步评估表明,检测到了71%的癫痫发作和78%的癫痫发作簇(间隔少于90秒的一组癫痫发作),误检率为每小时1.7次。开发这些方法以便能够实时实施。