融合多尺度特征表示与集成学习的精神分裂症诊断

Manna Xiao, Hulin Kuang, Jin Liu, Yan Zhang, Yizhen Xiang, Jianxin Wang
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摘要

静息状态功能磁共振成像(rs-fMRI)图像已被广泛用于精神分裂症的诊断。现有的精神分裂症诊断方法大多从区域神经活动改变、功能连通性异常和脑网络功能障碍三个尺度来揭示精神分裂症的功能异常。然而,许多精神分裂症的诊断方法并没有考虑三个量表特征的融合。在这项研究中,我们提出了一种基于多尺度特征表示和集成学习的精神分裂症诊断方法。首先,利用脑网络图谱提取rs-fMRI图像的三个尺度(区域、连通性和网络)特征;对于每个尺度,应用特征选择,即最小绝对收缩和选择算子,通过网格搜索识别与精神分裂症分类相关的有效子特征。然后将每个尺度所选择的子特征输入到具有线性核的支持向量机中,分别对精神分裂症患者和健康对照组进行分类。为了进一步提高精神分裂症的诊断性能,提出了一种集成学习框架E-RCN,对决策层面各尺度分类器得到的概率进行平均。通过对生物医学研究卓越数据集中心(COBRE)的留一交叉验证,我们提出的方法取得了令人鼓舞的诊断性能,优于几种最先进的方法。此外,根据各脑区在留一交叉验证实验中的出现频率排序,发现了一些与精神分裂症相关的脑区,如丘脑和颞中回,以及重要的复杂亚区,如th_l_8_8、MTG_L_4_4和MTG_R_4_4。
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Integrating Multi-scale Feature Representation and Ensemble Learning for Schizophrenia Diagnosis
Resting-state functional magnetic resonance imaging (rs-fMRI) images have been widely used for diagnosis of schizophrenia. With rs-fMRI, most existing schizophrenia diagnostic methods have revealed schizophrenia’s functional abnormalities from the following three scales, i.e., regional neural activity alterations, functional connectivity abnormalities and brain network dysfunctions. However, many schizophrenia diagnosis methods do not consider the fusion of features from the three scales. In this study, we propose a schizophrenia diagnostic method based on multi-scale feature representation and ensemble learning. Firstly, features including the three scales (region, connectivity and network) are extracted from rs-fMRI images using the brainnetome atlas. For each scale, feature selection, i.e., least absolute shrinkage and selection operator, is applied to identify effective sub-features related to schizophrenia classification by a grid search. Then the selected sub-features of each scale are input to support vector machine with linear kernel to classify schizophrenia patients and healthy controls respectively. To further improve the schizophrenia diagnostic performance, an ensemble learning framework named E-RCN is proposed to average the probabilities obtained by the classifiers of each scale in decision level. By leave-one-out cross-validation on the center for biomedical research excellence dataset (COBRE), our proposed method achieves encouraging diagnosis performance, outperforming several state-of-the-art methods. In addition, ranked by the occurence frequency of each brain region within the leave-one-out cross-validation experiments, some brain regions related to schizophrenia, i.e., thalamus and middle temporal gyrus, and important elaborate subregions, i.e., Tha_L_8_8, MTG_L_4_4 and MTG_R_4_4, are found.
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