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面部感知网络中有效连接性的重测信度。

Test-retest reliability of effective connectivity in the face perception network.

作者信息

Frässle Stefan, Paulus Frieder Michel, Krach Sören, Jansen Andreas

机构信息

Laboratory for Multimodal Neuroimaging (LMN), Department of Psychiatry, University of Marburg, Marburg, 35039, Germany.

Department of Child and Adolescent Psychiatry, University of Marburg, Marburg, 35039, Germany.

出版信息

Hum Brain Mapp. 2016 Feb;37(2):730-44. doi: 10.1002/hbm.23061. Epub 2015 Nov 27.

Abstract

Computational approaches have great potential for moving neuroscience toward mechanistic models of the functional integration among brain regions. Dynamic causal modeling (DCM) offers a promising framework for inferring the effective connectivity among brain regions and thus unraveling the neural mechanisms of both normal cognitive function and psychiatric disorders. While the benefit of such approaches depends heavily on their reliability, systematic analyses of the within-subject stability are rare. Here, we present a thorough investigation of the test-retest reliability of an fMRI paradigm for DCM analysis dedicated to unraveling intra- and interhemispheric integration among the core regions of the face perception network. First, we examined the reliability of face-specific BOLD activity in 25 healthy volunteers, who performed a face perception paradigm in two separate sessions. We found good to excellent reliability of BOLD activity within the DCM-relevant regions. Second, we assessed the stability of effective connectivity among these regions by analyzing the reliability of Bayesian model selection and model parameter estimation in DCM. Reliability was excellent for the negative free energy and good for model parameter estimation, when restricting the analysis to parameters with substantial effect sizes. Third, even when the experiment was shortened, reliability of BOLD activity and DCM results dropped only slightly as a function of the length of the experiment. This suggests that the face perception paradigm presented here provides reliable estimates for both conventional activation and effective connectivity measures. We conclude this paper with an outlook on potential clinical applications of the paradigm for studying psychiatric disorders. Hum Brain Mapp 37:730-744, 2016. © 2015 Wiley Periodicals, Inc.

摘要

计算方法在推动神经科学朝着脑区功能整合的机制模型发展方面具有巨大潜力。动态因果模型(DCM)为推断脑区之间的有效连接性提供了一个有前景的框架,从而揭示正常认知功能和精神疾病的神经机制。虽然这些方法的益处很大程度上取决于其可靠性,但对个体内稳定性的系统分析却很少见。在这里,我们对一种用于DCM分析的功能磁共振成像(fMRI)范式的重测可靠性进行了全面研究,该范式旨在揭示面部感知网络核心区域内和半球间的整合。首先,我们在25名健康志愿者中检查了面部特异性血氧水平依赖(BOLD)活动的可靠性,这些志愿者在两个不同的时间段内进行了面部感知范式实验。我们发现在与DCM相关的区域内,BOLD活动具有良好到优异的可靠性。其次,我们通过分析DCM中贝叶斯模型选择和模型参数估计的可靠性,评估了这些区域之间有效连接性的稳定性。当将分析限制在具有显著效应大小的参数时,负自由能的可靠性极佳,模型参数估计的可靠性良好。第三,即使实验缩短,BOLD活动和DCM结果的可靠性仅随实验长度略有下降。这表明本文提出的面部感知范式为传统激活和有效连接性测量提供了可靠的估计。我们在本文结尾展望了该范式在研究精神疾病方面的潜在临床应用。《人类大脑图谱》37:730 - 744,2016年。© 2015威利期刊公司。

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