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Multimodal Discrimination of Schizophrenia Using Hybrid Weighted Feature Concatenation of Brain Functional Connectivity and Anatomical Features with an Extreme Learning Machine

机译:使用极端学习机使用脑功能连通性和解剖学特征的混合加权特征级联对精神分裂症进行多模态识别

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Multimodal features of structural and functional magnetic resonance imaging (MRI) of the human brain can assist in the diagnosis of schizophrenia. We performed a classification study on age, sex, and handedness-matched subjects. The dataset we used is publicly available from the Center for Biomedical Research Excellence (COBRE) and it consists of two groups: patients with schizophrenia and healthy controls. We performed an independent component analysis and calculated global averaged functional connectivity-based features from the resting-state functional MRI data for all the cortical and subcortical anatomical parcellation. Cortical thickness along with standard deviation, surface area, volume, curvature, white matter volume, and intensity measures from the cortical parcellation, as well as volume and intensity from sub-cortical parcellation and overall volume of cortex features were extracted from the structural MRI data. A novel hybrid weighted feature concatenation method was used to acquire maximal 99.29% (P < 0.0001) accuracy which preserves high discriminatory power through the weight of the individual feature type. The classification was performed by an extreme learning machine, and its efficiency was compared to linear and non-linear (radial basis function) support vector machines, linear discriminant analysis, and random forest bagged tree ensemble algorithms. This article reports the predictive accuracy of both unimodal and multimodal features after 10-by-10-fold nested cross-validation. A permutation test followed the classification experiment to assess the statistical significance of the classification results. It was concluded that, from a clinical perspective, this feature concatenation approach may assist the clinicians in schizophrenia diagnosis.
机译:人脑的结构和功能磁共振成像(MRI)的多峰特征可以帮助诊断精神分裂症。我们对年龄,性别和与手性相匹配的受试者进行了分类研究。我们使用的数据集可从卓越生物医学研究中心(COBRE)公开获得,它包括两组:精神分裂症患者和健康对照组。我们进行了独立的成分分析,并从静止状态的功能性MRI数据中为所有皮质和皮质下解剖区分开了基于全局平均功能连接性的特征。从结构MRI数据中提取皮层厚度以及皮层分离的标准偏差,表面积,体积,曲率,白质体积和强度测量值,以及亚皮层分离的体积和强度以及皮质特征的总体积。一种新颖的混合加权特征级联方法用于获得最大99.29%(P <0.0001)的精度,该精度通过单个特征类型的权重保留了较高的区分能力。该分类由一台极限学习机执行,并将其效率与线性和非线性(径向基函数)支持向量机,线性判别分析和随机森林袋装树集成算法进行了比较。本文报告了10乘10倍嵌套交叉验证后的单峰和多峰特征的预测准确性。分类实验之后进行了排列检验,以评估分类结果的统计显着性。结论是,从临床角度来看,这种特征级联方法可以帮助临床医生诊断精神分裂症。

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