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Explore the Hierarchical Auditory Information Processing Via Deep Convolutional Autoencoder

机译:通过深度卷积自动编码器探索分级听觉信息处理

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Combined with neural encoding models, hierarchical feature representation of sensory information via deep neural network (DNN) has been used to explore the hierarchical organization of sensory cortices. With those advancements, previous studies have revealed a representational gradient in the superior temporal gyrus (STG) in auditory information processing, where hierarchical feature representation of auditory stimuli used in fMRI experiments is derived in a supervised manner, that is, the DNN models are trained to classify auditory stimuli. However, feature representation is biased towards discriminative ones in such a supervised DNN and consequently may contaminate brain encoding models. In this study, we propose to derive hierarchical features of auditory stimuli via unsupervised DNN, namely, deep convolutional auto-encoder (DCAE), and develop an encoding model based on LASSO algorithm to explore the relationship between features in multilayers and fMRI brain responses. The results show that auditory cortex is more sensitive to low-level features represented in shallower layers whereas the visual cortex and insula are more sensitive to high-level features represented in deeper layers. These results may provide novel evidence to understand the hierarchical auditory information processing in the human brain.
机译:结合神经编码模型,通过深度神经网络(DNN)进行的感觉信息的分层特征表示已被用于探索感觉皮质的分层组织。有了这些进展,以前的研究已经揭示了听觉信息处理中的上颞回(STG)的表示梯度,其中以有监督的方式派生了fMRI实验中使用的听觉刺激的分层特征表示,即训练了DNN模型对听觉刺激进行分类。但是,在这种监督的DNN中,特征表示偏向于区分性表示,因此可能会污染大脑编码模型。在这项研究中,我们建议通过无监督DNN导出听觉刺激的分层特征,即深度卷积自动编码器(DCAE),并开发基于LASSO算法的编码模型,以探索多层特征与功能磁共振成像大脑反应之间的关系。结果表明,听觉皮层对较浅层表示的低层特征更敏感,而视觉皮层和绝缘层对较深层表示的高层特征更敏感。这些结果可能为理解人脑中的分级听觉信息处理提供新颖的证据。

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