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Distributed functional connectivity impairment in schizophrenia: A multi-site study

机译:精神分裂症分布功能连通性损伤:多网站研究

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Schizophrenia has been considered as a dysconneciton syndrome, which means the disintegration, or over interaction between brain regions may underlie the pathophysiology of this disease. Noninvasive techniques like functional magnetic resonance imaging (fMRI) were utilized to test this hypothesis. However, there is no consensus on which brain areas and which functional network is related with it, mostly due to the small sample size of previous studies. Supervised machine learning techniques are able to examine fMRI connectivity data in a multivariate manner and extract features predictive of group membership. This technique requires large sample sizes and results from small sample study may not generalize well. By applying a multi-task classification framework to large size multi-site schizophrenia resting functional MRI (rsMRI) dataset, we were able to find consistent and robust features. We observed that schizophrenia patients had widespread deficits in the brain. The most informative and robustly selected functional connectivity (FC) features were between and within functional networks such as the default mode network (DMN), the fronto-parietal control network (FPN), the subcortical network, and the cingulo-opercular task control network (CON). Our finding validated the dysconnection hypothesis of schizophrenia and shed light on the details of the impaired functional connectivity.
机译:精神分裂症被认为是脱核核综合征,这意味着崩解,或者脑区之间的相互作用可能是这种疾病的病理生理学。使用像功能性磁共振成像(FMRI)这样的非侵入性技术来测试该假设。但是,没有达成共识,其中大脑区域和哪个功能网络与其相关,主要是由于先前研究的样本量小。监督机器学习技术能够以多变量的方式检查FMRI连接数据,提取群体成员资格的提取特征。该技术需要大的样本尺寸,并且来自小型样本研究的结果可能不完全概括。通过将多任务分类框架应用于大尺寸的多站点精神分裂症休息功能MRI(RSMRI)数据集,我们能够找到一致和强大的功能。我们观察到精神分裂症患者在大脑中具有广泛的缺陷。最具信息丰富和强大的功能连接(FC)功能在功能网络中,诸如默认模式网络(DMN),前景控制网络(FPN),下视网波动网和CINGULO-OCORMURATION控制网络之间的功能(con)。我们的发现验证了精神分裂症的脱节假设,并在功能性连接有受损的细节上进行了脱光。

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