Kim Junghoe, Calhoun Vince D, Shim Eunsoo, Lee Jong-Hwan
Department of Brain and Cognitive Engineering, Korea University, Seoul, Republic of Korea.
Department of Electrical and Computer Engineering, University of New Mexico, NM, USA; The Mind Research Network & LBERI, NM, USA.
Neuroimage. 2016 Jan 1;124(Pt A):127-146. doi: 10.1016/j.neuroimage.2015.05.018. Epub 2015 May 15.
Functional connectivity (FC) patterns obtained from resting-state functional magnetic resonance imaging data are commonly employed to study neuropsychiatric conditions by using pattern classifiers such as the support vector machine (SVM). Meanwhile, a deep neural network (DNN) with multiple hidden layers has shown its ability to systematically extract lower-to-higher level information of image and speech data from lower-to-higher hidden layers, markedly enhancing classification accuracy. The objective of this study was to adopt the DNN for whole-brain resting-state FC pattern classification of schizophrenia (SZ) patients vs. healthy controls (HCs) and identification of aberrant FC patterns associated with SZ. We hypothesized that the lower-to-higher level features learned via the DNN would significantly enhance the classification accuracy, and proposed an adaptive learning algorithm to explicitly control the weight sparsity in each hidden layer via L1-norm regularization. Furthermore, the weights were initialized via stacked autoencoder based pre-training to further improve the classification performance. Classification accuracy was systematically evaluated as a function of (1) the number of hidden layers/nodes, (2) the use of L1-norm regularization, (3) the use of the pre-training, (4) the use of framewise displacement (FD) removal, and (5) the use of anatomical/functional parcellation. Using FC patterns from anatomically parcellated regions without FD removal, an error rate of 14.2% was achieved by employing three hidden layers and 50 hidden nodes with both L1-norm regularization and pre-training, which was substantially lower than the error rate from the SVM (22.3%). Moreover, the trained DNN weights (i.e., the learned features) were found to represent the hierarchical organization of aberrant FC patterns in SZ compared with HC. Specifically, pairs of nodes extracted from the lower hidden layer represented sparse FC patterns implicated in SZ, which was quantified by using kurtosis/modularity measures and features from the higher hidden layer showed holistic/global FC patterns differentiating SZ from HC. Our proposed schemes and reported findings attained by using the DNN classifier and whole-brain FC data suggest that such approaches show improved ability to learn hidden patterns in brain imaging data, which may be useful for developing diagnostic tools for SZ and other neuropsychiatric disorders and identifying associated aberrant FC patterns.
从静息态功能磁共振成像数据中获得的功能连接(FC)模式通常用于通过使用诸如支持向量机(SVM)等模式分类器来研究神经精神疾病。同时,具有多个隐藏层的深度神经网络(DNN)已显示出能够从较低到较高的隐藏层系统地提取图像和语音数据的低到高级信息的能力,显著提高了分类准确率。本研究的目的是采用DNN对精神分裂症(SZ)患者与健康对照(HC)进行全脑静息态FC模式分类,并识别与SZ相关的异常FC模式。我们假设通过DNN学习的低到高级特征将显著提高分类准确率,并提出了一种自适应学习算法,通过L1范数正则化明确控制每个隐藏层中的权重稀疏性。此外,通过基于堆叠自动编码器的预训练初始化权重,以进一步提高分类性能。系统地评估了分类准确率与以下因素的函数关系:(1)隐藏层/节点的数量,(2)L1范数正则化的使用,(3)预训练的使用,(4)帧位移(FD)去除的使用,以及(5)解剖学/功能分区的使用。使用来自解剖学分区区域且未去除FD的FC模式,通过采用三个隐藏层和50个隐藏节点并结合L1范数正则化和预训练,实现了14.2%的错误率,这显著低于SVM的错误率(22.3%)。此外,发现训练后的DNN权重(即学习到的特征)与HC相比,代表了SZ中异常FC模式的层次组织。具体而言,从较低隐藏层提取的节点对表示与SZ相关的稀疏FC模式,这通过使用峰度/模块化度量进行量化,而来自较高隐藏层的特征显示出区分SZ与HC的整体/全局FC模式。我们提出的方案以及使用DNN分类器和全脑FC数据报告的结果表明,这些方法显示出在脑成像数据中学习隐藏模式的能力有所提高,这可能有助于开发用于SZ和其他神经精神疾病的诊断工具,并识别相关的异常FC模式。