首页> 外文会议>IEEE Signal Processing in Medicine and Biology Symposium >Deep learning with convolutional neural networks for decoding and visualization of EEG pathology
【24h】

Deep learning with convolutional neural networks for decoding and visualization of EEG pathology

机译:使用卷积神经网络进行深度学习以解码和可视化EEG病理

获取原文

摘要

We apply convolutional neural networks (ConvNets) to the task of distinguishing pathological from normal EEG recordings in the Temple University Hospital EEG Abnormal Corpus. We use two basic, shallow and deep ConvNet architectures recently shown to decode task-related information from EEG at least as well as established algorithms designed for this purpose. In decoding EEG pathology, both ConvNets reached substantially better accuracies (about 6% better, ≈85% vs. ≈79%) than the only published result for this dataset, and were still better when using only 1 minute of each recording for training and only six seconds of each recording for testing. We used automated methods to optimize architectural hyperparameters and found intriguingly different ConvNet architectures, e.g., with max pooling as the only nonlinearity. Visualizations of the ConvNet decoding behavior showed that they used spectral power changes in the delta (0-4 Hz) and theta (4-8 Hz) frequency range, possibly alongside other features, consistent with expectations derived from spectral analysis of the EEG data and from the textual medical reports. Analysis of the textual medical reports also highlighted the potential for accuracy increases by integrating contextual information, such as the age of subjects. In summary, the ConvNets and visualization techniques used in this study constitute a next step towards clinically useful automated EEG diagnosis and establish a new baseline for future work on this topic.
机译:我们将卷积神经网络(ConvNets)用于区分天普大学医院脑电图异常语料库中病理与正常脑电图记录的区别。我们使用了最近展示的两种基本的,浅层的和深层的ConvNet体系结构,以至少解码来自EEG的任务相关信息以及为此目的而设计的既定算法。在解码脑电图病理学方面,两个ConvNets都比该数据集的唯一公布结果达到了更好的准确度(大约高6%,≈85%,而≈79%),并且在每次记录仅使用1分钟时仍然更好进行培训,每次录制仅需六秒钟进行测试。我们使用自动化方法来优化架构超参数,并发现了有趣的不同ConvNet架构,例如,最大池化是唯一的非线性。 ConvNet解码行为的可视化结果表明,他们使用的频谱功率变化在delta(0-4 Hz)和theta(4-8 Hz)频率范围内,可能还有其他特征,与从EEG数据和从文本医疗报告中。对文本医疗报告的分析还强调了通过整合上下文信息(例如受试者的年龄)来提高准确性的潜力。总而言之,本研究中使用的ConvNets和可视化技术构成了临床上有用的自动脑电图诊断的下一步,并为该主题的未来工作建立了新的基线。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号