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Revisiting Abnormalities in Brain Network Architecture Underlying Autism Using Topology-Inspired Statistical Inference

机译:使用拓扑启发式统计推断重新审视自闭症背后的脑网络架构异常

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摘要

A large body of evidence relates autism with abnormal structural and functional brain connectivity. Structural covariance MRI (scMRI) is a technique that maps brain regions with covarying gray matter density across subjects. It provides a way to probe the anatomical structures underlying intrinsic connectivity networks (ICNs) through the analysis of the gray matter signal covariance. In this paper, we apply topological data analysis in conjunction with scMRI to explore network-specific differences in the gray matter structure in subjects with autism versus age-, gender- and IQ-matched controls. Specifically, we investigate topological differences in gray matter structures captured by structural covariance networks (SCNs) derived from three ICNs strongly implicated in autism, namely, the salience network (SN), the default mode network (DMN) and the executive control network (ECN). By combining topological data analysis with statistical inference, our results provide evidence of statistically significant network-specific structural abnormalities in autism, from SCNs derived from SN and ECN. These differences in brain architecture are consistent with direct structural analysis using scMRI (Zielinski et al. 2012).
机译:大量证据表明自闭症与大脑的结构和功能异常连接。结构协方差MRI(scMRI)是一种在受试者之间绘制具有变化的灰质密度的大脑区域的技术。它提供了一种通过对灰质信号协方差进行分析来探查固有连接网络(ICN)底层解剖结构的方法。在本文中,我们将拓扑数据分析与scMRI结合使用,以探索自闭症患者与年龄,性别和智商匹配的对照者在灰质结构中网络特定的差异。具体而言,我们调查由结构协方差网络(SCN)捕获的灰质结构的拓扑差异,该结构协方差网络源自与自闭症密切相关的三个ICN,即显着性网络(SN),默认模式网络(DMN)和执行控制网络(ECN) )。通过将拓扑数据分析与统计推论相结合,我们的结果提供了自SN和ECN衍生的SCN的自闭症具有统计学意义的网络特定结构异常的证据。脑结构的这些差异与使用scMRI进行直接结构分析一致(Zielinski等人,2012)。

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