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The Multiple Correspondence Analysis Method and Brain Functional Connectivity: Its Application to the Study of the Non-linear Relationships of Motor Cortex and Basal Ganglia

机译:多元对应分析方法与脑功能连通性:在运动皮层与基底神经节非线性关系研究中的应用

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The complexity of basal ganglia (BG) interactions is often condensed into simple models mainly based on animal data and that present BG in closed-loop cortico-subcortical circuits of excitatory/inhibitory pathways which analyze the incoming cortical data and return the processed information to the cortex. This study was aimed at identifying functional relationships in the BG motor-loop of 24 healthy-subjects who provided written, informed consent and whose BOLD-activity was recorded by MRI methods. The analysis of the functional interaction between these centers by correlation techniques and multiple linear regression showed non-linear relationships which cannot be suitably addressed with these methods. The multiple correspondence analysis (MCA), an unsupervised multivariable procedure which can identify non-linear interactions, was used to study the functional connectivity of BG when subjects were at rest. Linear methods showed different functional interactions expected according to current BG models. MCA showed additional functional interactions which were not evident when using lineal methods. Seven functional configurations of BG were identified with MCA, two involving the primary motor and somatosensory cortex, one involving the deepest BG (external-internal globus pallidum, subthalamic nucleus and substantia nigral), one with the input-output BG centers (putamen and motor thalamus), two linking the input-output centers with other BG (external pallidum and subthalamic nucleus), and one linking the external pallidum and the substantia nigral. The results provide evidence that the non-linear MCA and linear methods are complementary and should be best used in conjunction to more fully understand the nature of functional connectivity of brain centers.
机译:基底神经节(BG)相互作用的复杂性通常主要基于动物数据而浓缩为简单的模型,并且将BG呈现在兴奋性/抑制性途径的闭环皮质-皮层下回路中,该回路分析传入的皮质数据并将处理后的信息返回给皮层。这项研究旨在确定24名健康受试者的BG运动回路中的功能关系,这些受试者提供了书面知情同意书,并且其BOLD活性通过MRI方法记录。通过相关技术和多元线性回归分析对这些中心之间的功能相互作用进行分析,发现非线性关系无法用这些方法适当解决。多重对应分析(MCA)是一种可以识别非线性相互作用的无监督多变量方法,用于研究受试者静止时BG的功能连接性。线性方法显示了根据当前BG模型预期的不同功能相互作用。 MCA显示出其他功能相互作用,使用线性方法时不明显。 MCA鉴定了BG的七种功能配置,其中两种涉及初级运动和体感皮层,一种涉及最深的BG(外-内苍白球,丘脑下核和黑质),一种具有输入-输出BG中心(乳突和运动)丘脑),两个将输入-输出中心与其他BG(外部苍白球和丘脑下核)相连,一个将外部苍白球和黑质相连。结果提供了证据,即非线性MCA和线性方法是相辅相成的,最好结合使用以更充分地了解脑部功能连接的性质。

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