Transfer learning to decode brain states reflecting the relationship between cognitive tasks

Youzhi Qu, Xinyao Jian, Wenxin Che, Penghui Du, K. Fu, Quanying Liu
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引用次数: 3

Abstract

Transfer learning improves the performance of the target task by leveraging the data of a specific source task: the closer the relationship between the source and the target tasks, the greater the performance improvement by transfer learning. In neuroscience, the relationship between cognitive tasks is usually represented by similarity of activated brain regions or neural representation. However, no study has linked transfer learning and neuroscience to reveal the relationship between cognitive tasks. In this study, we propose a transfer learning framework to reflect the relationship between cognitive tasks, and compare the task relations reflected by transfer learning and by the overlaps of brain regions ( e.g. , neurosynth). Our results of transfer learning create cognitive taskonomy to reflect the relationship between cognitive tasks which is well in line with the task relations derived from neurosynth. Transfer learning performs better in task decoding with fMRI data if the source and target cognitive tasks activate similar brain regions. Our study uncovers the relationship of multiple cognitive tasks and provides guidance for source task selection in transfer learning for neural decoding based on small-sample data.
迁移学习解码大脑状态反映认知任务之间的关系
迁移学习通过利用特定源任务的数据来提高目标任务的性能,源任务与目标任务的关系越密切,迁移学习对目标任务性能的提高越大。在神经科学中,认知任务之间的关系通常用激活脑区或神经表征的相似性来表示。然而,没有研究将迁移学习和神经科学联系起来,揭示认知任务之间的关系。在本研究中,我们提出了一个迁移学习框架来反映认知任务之间的关系,并比较了迁移学习所反映的任务关系和大脑区域重叠(如神经合成)所反映的任务关系。我们的迁移学习结果创建了反映认知任务之间关系的认知任务onomy,这与神经合成的任务关系是一致的。如果源认知任务和目标认知任务激活相似的脑区,迁移学习在fMRI数据任务解码中表现更好。我们的研究揭示了多个认知任务之间的关系,为基于小样本数据的神经解码迁移学习中的源任务选择提供了指导。
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