...
首页> 外文期刊>Magma: Magnetic resonance materials in physics, biology, and medicine >A method for evaluating dynamic functional network connectivity and task-modulation: Application to schizophrenia
【24h】

A method for evaluating dynamic functional network connectivity and task-modulation: Application to schizophrenia

机译:一种评估动态功能网络连接性和任务调制的方法:在精神分裂症中的应用

获取原文
获取原文并翻译 | 示例
           

摘要

Objective: In this paper, we develop a dynamic functional network connectivity (FNC) analysis approach using correlations between windowed time-courses of different brain networks (components) estimated via spatial independent component analysis (sICA). We apply the developed method to fMRI data to evaluate it and to study task-modulation of functional connections. Materials and methods: We study the theoretical basis of the approach, perform a simulation analysis and apply it to fMRI data from schizophrenia patients (SP) and healthy controls (HC). Analyses on the fMRI data include: (a) group sICA to determine regions of significant task-related activity, (b) static and dynamic FNC analysis among these networks by using maximal lagged-correlation and time-frequency analysis, and (c) HC-SP group differences in functional network connections and in task-modulation of these connections. Results: This new approach enables an assessment of task-modulation of connectivity and identifies meaningful inter-component linkages and differences between the two study groups during performance of an auditory oddball task (AOT). The static FNC results revealed that connectivities involving medial visual-frontal, medial temporal-medial visual, parietal-medial temporal, parietal-medial visual and medial temporal-anterior temporal were significantly greater in HC, whereas only the right lateral fronto-parietal (RLFP)-orbitofrontal connection was significantly greater in SP. The dynamic FNC revealed that task-modulation of motor-frontal, RLFP-medial temporal and posterior default mode (pDM)-parietal connections were significantly greater in SP, and task modulation of orbitofrontal-pDM and medial temporal-frontal connections were significantly greater in HC (all P < 0.05). Conclusion: The task-modulation of dynamic FNC provided findings and differences between the two groups that are consistent with the existing hypothesis that schizophrenia patients show less segregated motor, sensory, cognitive functions and less segregated default mode network activity when engaged with a task. Dynamic FNC, based on sICA, provided additional results which are different than, but complementary to, those of static FNC. For example, it revealed dynamic changes in default mode network connectivities with other regions which were significantly different in schizophrenia in terms of task-modulation, findings which were not possible to discover by static FNC.
机译:目的:在本文中,我们开发了一种动态功能网络连通性(FNC)分析方法,该方法利用了通过空间独立成分分析(sICA)估算的不同大脑网络(成分)的开窗时间过程之间的相关性。我们将开发的方法应用于功能磁共振成像数据以对其进行评估并研究功能连接的任务调制。材料和方法:我们研究该方法的理论基础,进行模拟分析,并将其应用于来自精神分裂症患者(SP)和健康对照(HC)的fMRI数据。对fMRI数据的分析包括:(a)sICA组以确定与任务相关的重要活动的区域;(b)通过使用最大滞后相关和时频分析在这些网络之间进行静态和动态FNC分析;以及(c)HC -SP在功能性网络连接以及这些连接的任务调制方面进行分组。结果:这种新方法可以评估连接的任务调制,并确定有意义的组件间链接以及两个研究组在执行听觉奇怪任务(AOT)期间的差异。静态FNC结果显示,HC中涉及内侧视觉额叶,内侧颞内侧视​​觉,顶内侧颞叶,顶内侧视觉和内侧颞前颞叶的连接显着增加,而仅右侧额顶叶(RLFP) )-眶额连接在SP中明显更大。动态FNC显示,在SP中,运动额叶,RLFP内侧颞叶和后默认模式(pDM)-顶叶连接的任务调制明显更大,而眶额pDM和内侧颞叶连接的任务调制显着更大。 HC(所有P <0.05)。结论:动态FNC的任务调节提供了两组之间的发现和差异,这与现有的假设一致,即精神分裂症患者在执行任务时表现出较少的运动,感觉,认知功能分离和较少的默认模式网络活动分离。基于sICA的动态FNC提供了与静态FNC不同但又互补的其他结果。例如,它揭示了默认模式网络与其他区域的连接性的动态变化,这些变化在精神分裂症方面在任务调制方面存在显着差异,而静态FNC无法发现这一发现。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号