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“静中有动”?自闭症谱系障碍中的大脑熵。

"Unrest while Resting"? Brain entropy in autism spectrum disorder.

机构信息

Department of Psychiatry & Behavioral Neurobiology, University of Alabama at Birmingham, United States.

Department of Educational Studies in Psychology, Research Methodology, & Counseling, University of Alabama, United States.

出版信息

Brain Res. 2021 Jul 1;1762:147435. doi: 10.1016/j.brainres.2021.147435. Epub 2021 Mar 19.

Abstract

Biological systems typically exhibit complex behavior with nonlinear dynamic properties. Nonlinear signal processing techniques such as sample entropy is a novel approach to characterize the temporal dynamics of brain connectivity. Estimating entropy is especially important in clinical populations such as autism spectrum disorder (ASD) as differences in entropy may signal functional alterations in the brain. Considering the models of disrupted brain network connectivity in ASD, sample entropy would provide a novel direction to understand brain organization. Resting state fMRI data from 45 high-functioning children with ASD and 45 age-and-IQ-matched typically developing (TD) children were obtained from the Autism Brain Imaging Data Exchange (ABIDE-II) database. Data were preprocessed using the CONN toolbox. Sample entropy was then calculated using the complexity toolbox, in a whole-brain voxelwise manner as well as in regions of interests (ROIs) based methods. ASD participants demonstrated significantly increased entropy in left angular gyrus, superior parietal lobule, and right inferior temporal gyrus; and reduced sample entropy in superior frontal gyrus compared to TD participants. Positive correlations of average entropy in clusters of significant group differences scores across all subjects were found. Finally, ROI analysis revealed a main effect of lobes. Differences in entropy between the ASD and TD groups suggests that entropy may provide another important index of brain dysfunction in clinical populations like ASD. Further, the relationship between increased entropy and ASD symptoms in our study underscores the role of optimal brain synchronization in cognitive and behavioral functions.

摘要

生物系统通常表现出具有非线性动态特性的复杂行为。非线性信号处理技术,如样本熵,是一种用于描述脑连接的时间动态特性的新方法。在自闭症谱系障碍(ASD)等临床人群中,估计熵尤为重要,因为熵的差异可能表明大脑功能发生了改变。考虑到 ASD 中大脑网络连接中断的模型,样本熵将为理解大脑组织提供一个新的方向。从自闭症大脑成像数据交换(ABIDE-II)数据库中获得了 45 名高功能 ASD 儿童和 45 名年龄和智商匹配的正常发育(TD)儿童的静息态 fMRI 数据。使用 CONN 工具箱对数据进行预处理。然后使用复杂性工具箱以全脑体素方式以及基于感兴趣区域(ROI)的方法计算样本熵。与 TD 参与者相比,ASD 参与者在左侧角回、上顶叶和右侧颞下回表现出显著增加的熵,而在额上回表现出降低的样本熵。在所有受试者的显著组间差异评分的聚类中,平均熵的相关性呈阳性。最后,ROI 分析显示了叶的主要效应。ASD 和 TD 组之间的熵差异表明,熵可能为 ASD 等临床人群中的大脑功能障碍提供另一个重要指标。此外,我们研究中增加的熵与 ASD 症状之间的关系强调了最佳大脑同步在认知和行为功能中的作用。

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