Department of Bioengineering, University of Pennsylvania, Philadelphia, PA, USA.
J Neural Eng. 2011 Jun;8(3):036015. doi: 10.1088/1741-2560/8/3/036015. Epub 2011 Apr 28.
Clinical electroencephalography (EEG) records vast amounts of human complex data yet is still reviewed primarily by human readers. Deep belief nets (DBNs) are a relatively new type of multi-layer neural network commonly tested on two-dimensional image data but are rarely applied to times-series data such as EEG. We apply DBNs in a semi-supervised paradigm to model EEG waveforms for classification and anomaly detection. DBN performance was comparable to standard classifiers on our EEG dataset, and classification time was found to be 1.7-103.7 times faster than the other high-performing classifiers. We demonstrate how the unsupervised step of DBN learning produces an autoencoder that can naturally be used in anomaly measurement. We compare the use of raw, unprocessed data--a rarity in automated physiological waveform analysis--with hand-chosen features and find that raw data produce comparable classification and better anomaly measurement performance. These results indicate that DBNs and raw data inputs may be more effective for online automated EEG waveform recognition than other common techniques.
临床脑电图 (EEG) 记录了大量人类复杂的数据,但主要还是由人工读者进行审查。深度置信网络 (DBN) 是一种相对较新的多层神经网络,常用于二维图像数据,但很少应用于 EEG 等时间序列数据。我们在半监督范例中应用 DBN 对 EEG 波形进行建模,以进行分类和异常检测。DBN 的性能在我们的 EEG 数据集上与标准分类器相当,并且发现分类时间比其他高性能分类器快 1.7-103.7 倍。我们展示了 DBN 学习的无监督步骤如何产生自动编码器,该自动编码器可自然用于异常测量。我们比较了原始、未处理数据的使用情况——这在自动化生理波形分析中很少见——与手工选择的特征,并发现原始数据在分类和异常测量性能方面具有可比性。这些结果表明,与其他常见技术相比,DBN 和原始数据输入可能更适合在线自动 EEG 波形识别。