Feucht M, Hoffmann K, Steinberger K, Witte H, Benninger F, Arnold M, Doering A
Universitätsklinik für Neuropsychiatrie des Kindes- und Jugendalters, Universität Wien, Austria.
Neuroreport. 1997 Jul 7;8(9-10):2193-7. doi: 10.1097/00001756-199707070-00021.
In this study, an algorithm is introduced for the automatic detection and simultaneous topographic classification of interictal regional spike activity in pediatric surface EEG records. The algorithm is based on the classification of the topographic distribution of instantaneous power by means of a 'group' trained classifier. The results of automatic spike analysis were compared with the decisions of two experienced electroencephalographers. Four routine EEG records exhibiting (multi)regional spikes were examined. The mean selectivity for the automatic spike detector was 84.6% (mean sensitivity 88.1%, mean specificity 89.3%) and for the electroencephalographers 85.3%. All spikes detected by the algorithm were simultaneously classified according to their topographic characteristics. The results of automatic spike classification (lateralization/localization) corresponded to the results of visual analysis.
在本研究中,引入了一种算法,用于自动检测小儿头皮脑电图记录中的发作间期局部尖峰活动并同时进行地形分类。该算法基于通过“分组”训练的分类器对瞬时功率的地形分布进行分类。将自动尖峰分析的结果与两位经验丰富的脑电图专家的判断进行了比较。检查了四份显示(多)区域尖峰的常规脑电图记录。自动尖峰检测器的平均选择性为84.6%(平均敏感性88.1%,平均特异性89.3%),脑电图专家的平均选择性为85.3%。该算法检测到的所有尖峰均根据其地形特征同时进行分类。自动尖峰分类(侧化/定位)的结果与视觉分析的结果一致。