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首页> 外文期刊>Psychiatry Research. Neuroimaging >Verbal working memory and functional large-scale networks in schizophrenia
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Verbal working memory and functional large-scale networks in schizophrenia

机译:精神分裂症中的口头工作记忆和功能大规模网络

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摘要

Abstract The aim of this study was to test whether bilinear and nonlinear effective connectivity (EC) measures of working memory fMRI data can differentiate between patients with schizophrenia (SZ) and healthy controls (HC). We applied bilinear and nonlinear Dynamic Causal Modeling (DCM) for the analysis of verbal working memory in 16 SZ and 21 HC. The connection strengths with nonlinear modulation between the dorsolateral prefrontal cortex (DLPFC) and the ventral tegmental area/substantia nigra (VTA/SN) were evaluated. We used Bayesian Model Selection at the group and family levels to compare the optimal bilinear and nonlinear models. Bayesian Model Averaging was used to assess the connection strengths with nonlinear modulation. The DCM analyses revealed that SZ and HC used different bilinear networks despite comparable behavioral performance. In addition, the connection strengths with nonlinear modulation between the DLPFC and the VTA/SN area showed differences between SZ and HC. The adoption of different functional networks in SZ and HC indicated neurobiological alterations underlying working memory performance, including different connection strengths with nonlinear modulation between the DLPFC and the VTA/SN area. These novel findings may increase our understanding of connectivity in working memory in schizophrenia. Highlights ? Patients with schizophrenia and healthy controls utilized different networks. ? Different networks indicates neurobiological alterations underlying working memory. ? These novel findings increase our understanding of working memory in schizophrenia.
机译:摘要本研究的目的是测试工作记忆FMRI数据的双线性和非线性有效连接(EC)测量是否可以区分精神分裂症(SZ)和健康对照(HC)之间的患者。我们应用了双线性和非线性动态因果模型(DCM)以分析16个SZ和21 HC的口头工作记忆。评估背面层前额外皮质皮质(DLPFC)与腹侧腹部面积/基质NIGRA(VTA / Sn)之间的非线性调节的连接强度。我们在组和家庭水平上使用了贝叶斯模型选择,以比较最佳的双线性和非线性模型。贝叶斯型号的平均用于评估非线性调制的连接强度。 DCM分析显示,尽管行为性能相当,但SZ和HC使用了不同的双线性网络。另外,DLPFC和VTA / SN区域之间的非线性调制的连接强度显示SZ和HC之间的差异。通过SZ和HC中的不同功能网络的采用表明了神经生物学改变,包括工作记忆性能的基础,包括DLPFC和VTA / SN区域之间的非线性调制的不同连接强度。这些新发现可能会增加精神分裂症中的工作记忆中的连通性的理解。强调 ?精神分裂症和健康控制患者使用不同的网络。还不同的网络表明工作记忆下面的神经生物学改变。还这些新颖的研究结果增加了我们对精神分裂症中的工作记忆的理解。

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