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Deep Transfer Learning for Whole-Brain FMRI Analyses

机译:全脑FMRI分析的深度转移学习

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The application of deep learning (DL) models to the decoding of cognitive states from whole-brain functional Magnetic Resonance Imaging (fMRI) data is often hindered by the small sample size and high dimensionality of these datasets. Especially, in clinical settings, where patient data are scarce. In this work, we demonstrate that transfer learning represents a solution to this problem. Particularly, we show that a DL model, which has been previously trained on a large openly available fMRI dataset of the Human Connectome Project, outperforms a model variant with the same architecture, but which is trained from scratch, when both are applied to the data of a new, unrelated fMRI task. The pre-trained DL model variant is able to correctly decode 67.51% of the cognitive states from a test dataset with 100 individuals, when fine-tuned on a dataset of the size of only three subjects.
机译:深度学习(DL)模型在全脑功能磁共振成像(fMRI)数据的认知状态解码中的应用通常由于这些数据集的小样本量和高维度而受到阻碍。特别是在缺乏患者数据的临床环境中。在这项工作中,我们证明了转移学习代表了该问题的解决方案。特别是,我们表明,先前已在Human Connectome Project的大型公开可用fMRI数据集上进行过训练的DL模型优于具有相同架构的模型变体,但是当将两者应用于数据时均从头开始进行训练一项无关的新功能磁共振成像任务。经过预训练的DL模型变体在只有三个对象的大小的数据集上进行微调时,能够从具有100个个体的测试数据集中正确解码67.51%的认知状态。

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