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Residual Neural Networks to Distinguish Craving Smokers, Non-craving Smokers and Non-smokers by their EEG signals

机译:残留神经网络通过脑电信号区分渴望吸烟者,渴望吸烟者和不吸烟者

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We investigate the differences in brain signals of craving smokers, non-craving smokers, and non-smokers. To this end, we use data from resting-state EEG measurements to train predictive models to distinguish these three groups. We improve the neural network models applied earlier in two ways: firstly by adding channel-wise convolutional layers, secondly by adding residual connections to the network. We further extend the validation to make it similar to a real world scenario, in which a prediction is based on all data available for this measurement. Finally, we analyze the prediction quality for each measurement individually. Our results demonstrate significant improvements.
机译:我们调查了渴望吸烟者,不渴望吸烟者和不吸烟者的大脑信号差异。为此,我们使用来自静止状态脑电图测量的数据来训练预测模型以区分这三组。我们以两种方式改进了先前应用的神经网络模型:首先通过添加通道级卷积层,其次通过向网络添加残差连接。我们进一步扩展了验证,使其类似于现实情况,在这种情况下,预测是基于可用于此度量的所有数据进行的。最后,我们分别分析每种测量的预测质量。我们的结果证明了重大改进。

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