Explorations of using a convolutional neural network to understand brain activations during movie watching.

Psychoradiology Pub Date : 2024-11-04 eCollection Date: 2024-01-01 DOI:10.1093/psyrad/kkae021
Wonbum Sohn, Xin Di, Zhen Liang, Zhiguo Zhang, Bharat B Biswal
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Abstract

Background: Naturalistic stimuli, such as videos, can elicit complex brain activations. However, the intricate nature of these stimuli makes it challenging to attribute specific brain functions to the resulting activations, particularly for higher-level processes such as social interactions.

Objective: We hypothesized that activations in different layers of a convolutional neural network (VGG-16) would correspond to varying levels of brain activation, reflecting the brain's visual processing hierarchy. Additionally, we aimed to explore which brain regions would be linked to the deeper layers of the network.

Methods: This study analyzed functional MRI data from participants watching a cartoon video. Using a pre-trained VGG-16 convolutional neural network, we mapped hierarchical features of the video to different levels of brain activation. Activation maps from various kernels and layers were extracted from video frames, and the time series of average activation patterns for each kernel were used in a voxel-wise model to examine brain responses.

Results: Lower layers of the network were primarily associated with activations in lower visual regions, although some kernels also unexpectedly showed associations with the posterior cingulate cortex. Deeper layers were linked to more anterior and lateral regions of the visual cortex, as well as the supramarginal gyrus.

Conclusions: This analysis demonstrated both the potential and limitations of using convolutional neural networks to connect video content with brain functions, providing valuable insights into how different brain regions respond to varying levels of visual processing.

探索使用卷积神经网络了解观影过程中的大脑激活。
背景:视频等自然刺激可引起复杂的大脑激活。然而,由于这些刺激的复杂性,很难将所产生的激活归因于特定的大脑功能,特别是对于社会交往等高层次过程:我们假设卷积神经网络(VGG-16)不同层的激活将对应不同程度的大脑激活,从而反映大脑的视觉处理层次。此外,我们还旨在探索哪些脑区与网络的深层有关联:本研究分析了观看卡通视频的参与者的功能磁共振成像数据。我们使用预先训练好的 VGG-16 卷积神经网络,将视频的分层特征映射到大脑激活的不同层次。我们从视频帧中提取了不同内核和层的激活图,并将每个内核的平均激活模式的时间序列用于体素模型,以研究大脑的反应:网络的较低层主要与较低视觉区域的激活有关,但一些核也意外地显示出与后扣带回皮层的关联。深层则与视觉皮层的前部和外侧区域以及边缘上回有关:这项分析展示了使用卷积神经网络将视频内容与大脑功能联系起来的潜力和局限性,为了解不同大脑区域如何对不同程度的视觉处理做出反应提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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