Athinoula A. Martinos Center for Biomedical Imaging, Department of Radiology, Massachusetts General Hospital, Harvard Medical School, Charlestown, MA, USA.
Department of Biomedical Engineering, School of Medicine, Tsinghua University, Beijing, China.
Nat Commun. 2020 Oct 7;11(1):5046. doi: 10.1038/s41467-020-18823-9.
Signal loss in blood oxygen level-dependent (BOLD) functional neuroimaging is common and can lead to misinterpretation of findings. Here, we reconstructed compromised fMRI signal using deep machine learning. We trained a model to learn principles governing BOLD activity in one dataset and reconstruct artificially compromised regions in an independent dataset, frame by frame. Intriguingly, BOLD time series extracted from reconstructed frames are correlated with the original time series, even though the frames do not independently carry any temporal information. Moreover, reconstructed functional connectivity maps exhibit good correspondence with the original connectivity maps, indicating that the model recovers functional relationships among brain regions. We replicated this result in two healthy datasets and in patients whose scans suffered signal loss due to intracortical electrodes. Critically, the reconstructions capture individual-specific information. Deep machine learning thus presents a unique opportunity to reconstruct compromised BOLD signal while capturing features of an individual's own functional brain organization.
血氧水平依赖 (BOLD) 功能神经影像学中的信号丢失很常见,可能导致对研究结果的错误解读。在此,我们使用深度机器学习对受影响的 fMRI 信号进行了重建。我们在一个数据集上训练了一个模型,学习控制 BOLD 活动的原理,然后逐帧重建独立数据集中人为受损的区域。有趣的是,即使这些帧本身并不包含任何时间信息,但从重建帧中提取的 BOLD 时间序列与原始时间序列相关,这表明模型恢复了大脑区域之间的功能关系。我们在两个健康数据集和因皮质内电极导致信号丢失的患者扫描中复制了这一结果。关键的是,重建能够捕捉到个体特异性的信息。因此,深度机器学习为重建受影响的 BOLD 信号提供了一个独特的机会,同时捕捉到个体自身功能大脑组织的特征。