Hakim Sabzevari University, Sabzevar 397, Iran.
Inka Intelligente Katheter, Otto-Von-Guericke-University, Magdeburg 39106, Germany.
Seizure. 2019 Mar;66:4-11. doi: 10.1016/j.seizure.2019.02.001. Epub 2019 Feb 4.
The automatic detection of epileptic seizures in EEG data from extended recordings can make an important contribution to the diagnosis of epilepsy as it can efficiently reduce the workload of medical staff.
This paper describes how features based on cross-bispectrum can help with the detection of epileptic seizure activity in EEG data. Features were extracted from multi-channel intracranial EEG (iEEG) data from the Freiburg iEEG recordings of 21 patients with focal epilepsy. These features were used as a support vector machine classifier input to discriminate ictal from inter-ictal states. A post-processing method was applied to the classifier output in order to improve classification accuracy.
A sensitivity of 95.8%, specificity of 96.7%, and accuracy of 96.8% were achieved. The false detection rate (FDR) was zero for 10 patients and very low for the rest.
The results show that the proposed method distinguishes better between ictal and inter-ictal iEEG epochs than other seizure detection methods. The proposed method has a higher accuracy index than achievable with a number of previously described approaches. Also, the method is rapid and easy and may be helpful in online epileptic seizure detection and prediction systems.
从扩展记录的 EEG 数据中自动检测癫痫发作可以为癫痫诊断做出重要贡献,因为它可以有效地减少医务人员的工作量。
本文描述了如何使用基于交叉双谱的特征来帮助检测 EEG 数据中的癫痫发作活动。从 21 名局灶性癫痫患者的弗莱堡 iEEG 记录中的多通道颅内 EEG(iEEG)数据中提取特征。这些特征被用作支持向量机分类器的输入,以区分发作期和发作间期状态。应用后处理方法对分类器输出进行处理,以提高分类准确性。
实现了 95.8%的敏感性、96.7%的特异性和 96.8%的准确性。对于 10 名患者,假阳性率(FDR)为零,其余患者的假阳性率非常低。
结果表明,与其他癫痫发作检测方法相比,所提出的方法可以更好地区分发作期和发作间期 iEEG 期。所提出的方法的准确性指标高于以前描述的一些方法的准确性指标。此外,该方法快速简便,可能有助于在线癫痫发作检测和预测系统。