Ge Tingting, Qi Yu, Wang Yueming, Chen Weidong, Zheng Xiaoxiang
Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:6309-12. doi: 10.1109/EMBC.2013.6610996.
Seizure detection from electroencephalogram (EEG) plays an important role for epilepsy therapy. Due to the diversity of seizure EEG patterns between different individuals, multiple features are necessary for high accuracy since a single feature could hardly encode all types of epileptiform discharges. However, a large feature set inevitably causes the increase of the computational cost. This paper proposes a boosted cascade chain to obtain both high detection performance and high computational efficiency. Sixteen features that are widely used in seizure detection are implemented. Considering the sequential characteristics of EEG signals, the features are extracted on each 1-second segment and its former three segments. Thus, a total of 64 features are used to construct a feature pool. Based on the feature pool, Real AdaBoost is used to select a group of effective features, on which weak classifiers are learned to assemble a strong classifier. The strong classifier is transformed to a cascade classifier by reordering the weak classifiers and learning a threshold for each weak classifier. The cascade classifier still has the similar classification strength to the original strong classifier. More importantly, it is able to reject easy non-seizure samples by the first a few weak classifiers in the cascade, thus high computational efficiency can be obtained. To evaluate our method, 90.6-hour EEG signals from four patients are tested. The experimental results show that our method can achieve an average accuracy of 95.31% and an average detection rate of 91.29% with the false positive rate of 4.68%. On average, only about 4 features are used. Compared with support vector machine (SVM), our method is much more efficient with the similar detection performance.
从脑电图(EEG)中检测癫痫发作对癫痫治疗具有重要作用。由于不同个体癫痫发作脑电图模式的多样性,单一特征很难编码所有类型的癫痫样放电,因此需要多个特征来实现高精度检测。然而,大量的特征集不可避免地会导致计算成本的增加。本文提出了一种增强级联链,以获得高检测性能和高计算效率。实现了癫痫发作检测中广泛使用的16个特征。考虑到EEG信号的顺序特征,在每1秒的片段及其前三个片段上提取特征。因此,总共使用64个特征来构建一个特征池。基于该特征池,使用真实AdaBoost选择一组有效特征,在这些特征上学习弱分类器以组装一个强分类器。通过对弱分类器进行重新排序并为每个弱分类器学习一个阈值,将强分类器转换为级联分类器。级联分类器仍然具有与原始强分类器相似的分类强度。更重要的是,它能够通过级联中的前几个弱分类器拒绝容易识别的非癫痫发作样本,从而获得高计算效率。为了评估我们的方法,对来自四名患者的90.6小时EEG信号进行了测试。实验结果表明,我们的方法平均准确率可达95.31%,平均检测率为91.29%,误报率为4.68%。平均而言,仅使用约4个特征。与支持向量机(SVM)相比,我们的方法在具有相似检测性能的情况下效率更高。