Jang Hojin, Plis Sergey M, Calhoun Vince D, Lee Jong-Hwan
Department of Brain and Cognitive Engineering, Korea University, Seoul, Republic of Korea.
The Mind Research Network & LBERI, Albuquerque, NM, USA.
Neuroimage. 2017 Jan 15;145(Pt B):314-328. doi: 10.1016/j.neuroimage.2016.04.003. Epub 2016 Apr 11.
Feedforward deep neural networks (DNNs), artificial neural networks with multiple hidden layers, have recently demonstrated a record-breaking performance in multiple areas of applications in computer vision and speech processing. Following the success, DNNs have been applied to neuroimaging modalities including functional/structural magnetic resonance imaging (MRI) and positron-emission tomography data. However, no study has explicitly applied DNNs to 3D whole-brain fMRI volumes and thereby extracted hidden volumetric representations of fMRI that are discriminative for a task performed as the fMRI volume was acquired. Our study applied fully connected feedforward DNN to fMRI volumes collected in four sensorimotor tasks (i.e., left-hand clenching, right-hand clenching, auditory attention, and visual stimulus) undertaken by 12 healthy participants. Using a leave-one-subject-out cross-validation scheme, a restricted Boltzmann machine-based deep belief network was pretrained and used to initialize weights of the DNN. The pretrained DNN was fine-tuned while systematically controlling weight-sparsity levels across hidden layers. Optimal weight-sparsity levels were determined from a minimum validation error rate of fMRI volume classification. Minimum error rates (mean±standard deviation; %) of 6.9 (±3.8) were obtained from the three-layer DNN with the sparsest condition of weights across the three hidden layers. These error rates were even lower than the error rates from the single-layer network (9.4±4.6) and the two-layer network (7.4±4.1). The estimated DNN weights showed spatial patterns that are remarkably task-specific, particularly in the higher layers. The output values of the third hidden layer represented distinct patterns/codes of the 3D whole-brain fMRI volume and encoded the information of the tasks as evaluated from representational similarity analysis. Our reported findings show the ability of the DNN to classify a single fMRI volume based on the extraction of hidden representations of fMRI volumes associated with tasks across multiple hidden layers. Our study may be beneficial to the automatic classification/diagnosis of neuropsychiatric and neurological diseases and prediction of disease severity and recovery in (pre-) clinical settings using fMRI volumes without requiring an estimation of activation patterns or ad hoc statistical evaluation.
前馈深度神经网络(DNN),即具有多个隐藏层的人工神经网络,最近在计算机视觉和语音处理的多个应用领域展现出了破纪录的性能。继取得成功之后,DNN已被应用于神经成像模态,包括功能/结构磁共振成像(MRI)和正电子发射断层扫描数据。然而,尚无研究明确将DNN应用于三维全脑功能磁共振成像容积,从而提取功能磁共振成像隐藏的容积表征,这些表征对于在采集功能磁共振成像容积时执行的任务具有判别性。我们的研究将全连接前馈DNN应用于12名健康参与者在四项感觉运动任务(即左手握拳、右手握拳、听觉注意力和视觉刺激)中收集的功能磁共振成像容积。采用留一法交叉验证方案,对基于受限玻尔兹曼机的深度信念网络进行预训练,并用于初始化DNN的权重。在系统控制各隐藏层权重稀疏度水平的同时,对预训练的DNN进行微调。根据功能磁共振成像容积分类的最小验证错误率确定最佳权重稀疏度水平。在三个隐藏层权重最稀疏的条件下,三层DNN获得的最小错误率(平均值±标准差;%)为6.9(±3.8)。这些错误率甚至低于单层网络(9.4±4.6)和两层网络(7.4±4.1)的错误率。估计的DNN权重显示出明显的任务特异性空间模式,尤其是在较高层。第三隐藏层的输出值代表三维全脑功能磁共振成像容积独特的模式/编码,并通过表征相似性分析编码任务信息。我们报告的研究结果表明,DNN能够基于对与跨多个隐藏层任务相关的功能磁共振成像容积隐藏表征的提取,对单个功能磁共振成像容积进行分类。我们的研究可能有助于在(预)临床环境中使用功能磁共振成像容积对神经精神疾病和神经疾病进行自动分类/诊断,以及预测疾病严重程度和恢复情况,而无需估计激活模式或进行特殊的统计评估。