Department of Neurology, Massachusetts General Hospital, Boston, MA, USA; University of Twente, Enschede, the Netherlands.
Department of Neurology, Massachusetts General Hospital, Boston, MA, USA.
Clin Neurophysiol. 2019 Jan;130(1):77-84. doi: 10.1016/j.clinph.2018.10.012. Epub 2018 Nov 17.
Electroencephalography (EEG) is a central part of the medical evaluation for patients with neurological disorders. Training an algorithm to label the EEG normal vs abnormal seems challenging, because of EEG heterogeneity and dependence of contextual factors, including age and sleep stage. Our objectives were to validate prior work on an independent data set suggesting that deep learning methods can discriminate between normal vs abnormal EEGs, to understand whether age and sleep stage information can improve discrimination, and to understand what factors lead to errors.
We train a deep convolutional neural network on a heterogeneous set of 8522 routine EEGs from the Massachusetts General Hospital. We explore several strategies for optimizing model performance, including accounting for age and sleep stage.
The area under the receiver operating characteristic curve (AUC) on an independent test set (n = 851) is 0.917 marginally improved by including age (AUC = 0.924), and both age and sleep stages (AUC = 0.925), though not statistically significant.
The model architecture generalizes well to an independent dataset. Adding age and sleep stage to the model does not significantly improve performance.
Insights learned from misclassified examples, and minimal improvement by adding sleep stage and age suggest fruitful directions for further research.
脑电图(EEG)是神经障碍患者医学评估的核心部分。由于脑电图的异质性和上下文因素(包括年龄和睡眠阶段)的依赖性,训练算法来标记脑电图正常与异常似乎具有挑战性。我们的目标是验证先前关于深度学习方法可以区分正常与异常脑电图的独立数据集上的工作,了解年龄和睡眠阶段信息是否可以提高区分能力,以及了解导致错误的因素。
我们在马萨诸塞州综合医院的 8522 例常规脑电图的异构集合上训练深度卷积神经网络。我们探索了几种优化模型性能的策略,包括考虑年龄和睡眠阶段。
在独立测试集(n=851)上,接收器操作特征曲线(AUC)的曲线下面积(AUC)通过包含年龄(AUC=0.924)和年龄和睡眠阶段(AUC=0.925)略有提高,但无统计学意义。
模型架构很好地推广到了独立数据集。向模型中添加年龄和睡眠阶段并不能显著提高性能。
从错误分类的示例中获得的见解以及通过添加睡眠阶段和年龄所获得的微小改进,为进一步的研究提供了有价值的方向。