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Characterization of schizophrenia by linear kernel canonical correlation analysis of resting-state functional MRI and structural MRI

机译:休息状态函数MRI和结构MRI线性核心典型相关分析精神分裂症的特征

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In almost every mental disorder, there are deficiencies in both structure and function of the brain. So the need for analyzing complementary modalities that project all aspects of the brain is rising. The most severe kind of these disorders is schizophrenia. The main cause of schizophrenia is still unknown. Therefore, analyzing resting-state fMRI (rs-fMRI) and structural MRI (sMRI) to investigate the differences between schizophrenia and healthy control subjects is going to be helpful. For this aim, we used linear kernel canonical correlation analysis (L-kCCA). We extracted gray matter volume and amplitude of low frequency fluctuation (ALFF) as features for sMRI and rs-fMRI respectively. In this method we applied CCA to much lower dimension data compared to real one. In other words, we applied CCA to similarity matrices which were representative of the correlation of voxel values between subjects. So, the time and the need for memory are reduced. In addition to inter-subject variations, this method allows us to extract the regions which are associated to the subjects' variation in the two modalities. The method was applied to the images of 11 schizophrenia and 11 matched healthy control subjects which were acquired in Imam Khomeini hospital, Tehran, Iran. Based on the results, we can observe gray matter volume reduction in schizophrenia in precuneus, temporal and frontal regions. In frontal, temporal and occipital regions the ALFF is higher in healthy control subjects than schizophrenia and in precentral and right and left insula regions brain activity at rest is lower than patients.
机译:在几乎所有精神障碍中,大脑的结构和功能都存在缺陷。因此,需要分析项目所有面部方面的互补模式正在上升。最严重的这些疾病是精神分裂症。精神分裂症的主要原因仍然是未知的。因此,分析休息状态FMRI(RS-FMRI)和结构MRI(SMRI)来研究精神分裂症和健康对照科目之间的差异将有所帮助。为此目的,我们使用了线性核心规范相关分析(L-KCCA)。我们分别提取了SMRI和RS-FMRI的特征的灰度体积和低频波动(ALFF)的幅度体积和幅度。在此方法中,我们将CCA应用于与真实的尺寸数据更低。换句话说,我们将CCA应用于代表受试者之间的体素值相关的相似性矩阵。因此,减少了对存储器的时间和需求。除了互相帧间的变型之外,该方法允许我们提取与两个模态中的受试者变化相关联的区域。该方法应用于11种精神分裂症和11种匹配的健康对照组,伊朗德黑兰·德黑兰·霍梅尼医院获得。基于结果,我们可以在前寿,时间和正面区域观察精神分裂症的灰质体积减少。在正面,时间和枕部地区的临时和枕部区域的健康对照受试者高于精神分裂症,并且在前列和右侧和左侧肠道脑活动休息的脑活动低于患者。

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