De Lucia Marzia, Fritschy Juan, Dayan Peter, Holder David S
Medical Physics and Clinical Neurophysiology, University College London, London, UK.
Med Biol Eng Comput. 2008 Mar;46(3):263-72. doi: 10.1007/s11517-007-0289-4. Epub 2007 Dec 11.
Diagnosis of several neurological disorders is based on the detection of typical pathological patterns in the electroencephalogram (EEG). This is a time-consuming task requiring significant training and experience. Automatic detection of these EEG patterns would greatly assist in quantitative analysis and interpretation. We present a method, which allows automatic detection of epileptiform events and discrimination of them from eye blinks, and is based on features derived using a novel application of independent component analysis. The algorithm was trained and cross validated using seven EEGs with epileptiform activity. For epileptiform events with compensation for eyeblinks, the sensitivity was 65 +/- 22% at a specificity of 86 +/- 7% (mean +/- SD). With feature extraction by PCA or classification of raw data, specificity reduced to 76 and 74%, respectively, for the same sensitivity. On exactly the same data, the commercially available software Reveal had a maximum sensitivity of 30% and concurrent specificity of 77%. Our algorithm performed well at detecting epileptiform events in this preliminary test and offers a flexible tool that is intended to be generalized to the simultaneous classification of many waveforms in the EEG.
几种神经系统疾病的诊断基于脑电图(EEG)中典型病理模式的检测。这是一项耗时的任务,需要大量的培训和经验。自动检测这些EEG模式将极大地有助于定量分析和解读。我们提出了一种方法,该方法基于使用独立成分分析的新颖应用得出的特征,能够自动检测癫痫样事件并将其与眨眼区分开来。该算法使用七个具有癫痫样活动的脑电图进行训练和交叉验证。对于对眨眼进行补偿的癫痫样事件,在特异性为86±7%(平均值±标准差)时,灵敏度为65±22%。通过主成分分析(PCA)进行特征提取或对原始数据进行分类时,在相同灵敏度下,特异性分别降至76%和74%。在完全相同的数据上,市售软件Reveal的最大灵敏度为30%,同时特异性为77%。在这项初步测试中,我们的算法在检测癫痫样事件方面表现良好,并提供了一种灵活的工具,旨在推广到对脑电图中多种波形的同时分类。