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MMM: classification of schizophrenia using multi-modality multi-atlas feature representation and multi-kernel learning

机译:MMM:使用多模式多图集特征表示和多内核学习对精神分裂症进行分类

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摘要

Schizophrenia (SZ) is a complex neuropsychiatric disorder that seriously affects the daily life of patients. Therefore, accurate diagnosis of SZ is essential for patient care. Several T1-weighted magnetic resonance imaging (MRI) and diffusion tensor imaging (DTI) markers (e.g., cortical thickness (CT), mean diffusivity (MD)) for SZ have been identified by using some existing brain atlases, and have been used successfully to discriminate patients with SZ from healthy controls (HCs). Currently, these markers have mainly been used separately. Thus, the full potential of T1-weighted MRI images and DTI images for SZ diagnosis might not yet have been used comprehensively. Furthermore, the extraction of these markers based on single brain atlas might not yet be able to use the full potential of these images. Therefore, in this study, we propose a multi-modality multi-atlas feature representation and a multi-kernel learning method (MMM) to perform SZ/HC classification. Firstly, we extract 8 feature sets from T1-weighted MRI images and DTI images via 4 existing brain atlases and 4 markers. Then, a two-step feature selection method is proposed to select the most discriminative features of each feature set for SZ/HC classification. Finally, a multiple feature sets based multi-kernel SVM learning method (MFMK-SVM) is proposed to combine all feature sets for SZ/HC classification. Experimental results show that our proposed method achieves an accuracy of 91.28 % , a sensitivity of 90.85 % , a specificity of 92.17 % and an AUC of 0.9485 for SZ/HC classification. Experimental results illustrate that our proposed classification method is efficient and promising for clinical diagnosis of SZ.
机译:精神分裂症(SZ)是一种复杂的神经精神疾病,严重影响患者的日常生活。因此,准确诊断SZ对于患者护理至关重要。通过使用一些现有的脑图谱,已经确定了几种S1加权T1磁共振成像(MRI)和扩散张量成像(DTI)标记(例如,皮层厚度(CT),平均扩散率(MD)),并已成功使用区分SZ患者与健康对照(HCs)。当前,这些标记主要被单独使用。因此,可能尚未全面利用T1加权MRI图像和DTI图像进行SZ诊断的全部潜力。此外,基于单脑图谱提取这些标志物可能还无法充分利用这些图像的潜力。因此,在这项研究中,我们提出了一种多模式多图集特征表示和一种多核学习方法(MMM)以执行SZ / HC分类。首先,我们通过4个现有脑图谱和4个标记从T1加权MRI图像和DTI图像中提取8个特征集。然后,提出了一种两步特征选择方法来为SZ / HC分类选择每个特征集中最具区别性的特征。最后,提出了一种基于多特征集的多核SVM学习方法(MFMK-SVM),以结合所有特征集进行SZ / HC分类。实验结果表明,我们提出的方法对SZ / HC分类的准确度为91.28%,灵敏度为90.85%,特异性为92.17%,AUC为0.9485。实验结果表明,我们提出的分类方法对SZ的临床诊断是有效和有前途的。

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