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Transfer Learning-Based Behavioural Task Decoding from Brain Activity

机译:从大脑活动转移基于学习的行为任务解码

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Brain decoding bears a high potential for future applications in medical sciences and healthcare industries. It can predict individual brain differences and diagnose from neuroimaging data, offering new paths for treatment and prevention. Recent advances in functional magnetic resonance imaging (fMRI) techniques have shown that it is possible to decode visual information from measurable brain activities. However, these studies typically focus on the decoding of image and video stimulus within the subject. To overcome these limitations, we proposed a cross-subject decoding approach based on deep transfer learning to decode the brain state from task-based fMRI. In detail, we designed a pipeline for brain decoding. One can use parts of the state-of-the-art networks pre-trained on ImageNet data set connect to our defined layers to complete the target decoding tasks. The experiments in this study are implemented on the Human Connectome Project (HCP) data set. The results show that we obtained a higher accuracy of cross-subject decoding compared to previous academic studies. We further demonstrate that fully trained convolution neural network (CNN) and pre-trained CNN with fine-tuning outperformed existing methods on the same database.
机译:脑解码为医学科学和医疗行业的未来应用有很大的潜力。它可以预测神经影像数据数据的单独脑差异,诊断,提供用于治疗和预防的新路径。功能磁共振成像(FMRI)技术的最新进展已经表明,可以从可测量的大脑活动中解码视觉信息。然而,这些研究通常集中在对象内的图像和视频刺激的解码。为了克服这些限制,我们提出了一种基于深度转移学习的交叉对解码方法来解码基于任务的FMRI的大脑状态。详细地,我们设计了一个用于脑解码的管道。可以使用在Imagenet数据集上预先培训的最先进网络的部分连接到我们定义的图层以完成目标解码任务。本研究中的实验在人类连接项目(HCP)数据集上实施。结果表明,与以前的学术研究相比,我们获得了跨对象解码的更高准确性。我们进一步证明了完全训练的卷积神经网络(CNN)和预先训练的CNN,具有微调在同一数据库上的现有方法。

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