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Predicting sex from brain rhythms with deep learning

机译:通过深度学习从大脑节律预测性别

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We have excellent skills to extract sex from visual assessment of human faces, but assessing sex from human brain rhythms seems impossible. Using deep convolutional neural networks, with unique potential to find subtle differences in apparent similar patterns, we explore if brain rhythms from either sex contain sex specific information. Here we show, in a ground truth scenario, that a deep neural net can predict sex from scalp electroencephalograms with an accuracy of 80% (p 10?5), revealing that brain rhythms are sex specific. Further, we extracted sex-specific features from the deep net filter layers, showing that fast beta activity (20–25?Hz) and its spatial distribution is a main distinctive attribute. This demonstrates the ability of deep nets to detect features in spatiotemporal data unnoticed by visual assessment, and to assist in knowledge discovery. We anticipate that this approach may also be successfully applied to other specialties where spatiotemporal data is abundant, including neurology, cardiology and neuropsychology.
机译:我们具有从人脸的视觉评估中提取性别的出色技能,但是从人的大脑节奏中评估性别似乎是不可能的。我们使用深层卷积神经网络,具有发现明显相似模式细微差异的独特潜力,探讨了来自任何性别的大脑节律是否包含特定性别的信息。在这里,我们证明了,在一个真实的场景中,一个深层的神经网络可以从头皮脑电图预测性别,准确率> 80%(p <10?5),这表明脑节律是性别特异性的。此外,我们从深层净过滤层中提取了特定于性别的特征,表明快速的beta活动(20–25?Hz)及其空间分布是主要的独特属性。这证明了深层网络能够检测视觉评估未注意到的时空数据中的特征,并有助于知识发现。我们预计这种方法也可能成功应用于时空数据丰富的其他专业,包括神经病学,心脏病学和神经心理学。

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