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The TUH EEG CORPUS: A big data resource for automated EEG interpretation

机译:TUH EEG CORPUS:用于自动脑电图解释的大数据资源

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The Neural Engineering Data Consortium (NEDC) is releasing its first major big data corpus - the Temple University Hospital EEG Corpus. This corpus consists of over 25,000 EEG studies, and includes a neurologist's interpretation of the test, a brief patient medical history and demographic information about the patient such as gender and age. For the first time, there is a sufficient amount of data to support the application of state of the art machine learning algorithms. In this paper, we present pilot results of experiments on the prediction of some basic attributes of an EEG from the raw EEG signal data using a 3,762 session subset of the corpus. Standard machine learning approaches are shown to be capable of predicting commonly occurring events from simple features with high accuracy on closed-loop testing, and can deliver error rates below 50% on a 6-way open set classification problem. This is very promising performance since commercial technology fails on this data.
机译:神经工程数据协会(NEDC)发布了其第一个主要的大数据语料库-天普大学医院EEG语料库。该语料库包含25,000多个EEG研究,包括神经科医生对测试的解释,简短的患者病史和有关患者的人口统计学信息(例如性别和年龄)。第一次,有足够的数据量来支持最新的机器学习算法的应用。在本文中,我们介绍了实验的实验结果,这些实验使用3,762个语料库子集从原始EEG信号数据预测EEG的一些基本属性。事实证明,标准的机器学习方法能够在闭环测试中通过简单的功能以高精度预测常见事件,并且在6向开放集分类问题上可以提供低于50%的错误率。这是非常有前途的性能,因为商业技术无法对此数据进行处理。

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