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一种用于绘制大脑网络和推断小鼠神经活动的多元功能连接方法。

A Multivariate Functional Connectivity Approach to Mapping Brain Networks and Imputing Neural Activity in Mice.

机构信息

Department of Radiology, Washington University School of Medicine, St. Louis, MO 63110, USA.

Department of Bioengineering, University of Illinois, Urbana-Champaign, IL 61801, USA.

出版信息

Cereb Cortex. 2022 Apr 5;32(8):1593-1607. doi: 10.1093/cercor/bhab282.

Abstract

Temporal correlation analysis of spontaneous brain activity (e.g., Pearson "functional connectivity," FC) has provided insights into the functional organization of the human brain. However, bivariate analysis techniques such as this are often susceptible to confounding physiological processes (e.g., sleep, Mayer-waves, breathing, motion), which makes it difficult to accurately map connectivity in health and disease as these physiological processes affect FC. In contrast, a multivariate approach to imputing individual neural networks from spontaneous neuroimaging data could be influential to our conceptual understanding of FC and provide performance advantages. Therefore, we analyzed neural calcium imaging data from Thy1-GCaMP6f mice while either awake, asleep, anesthetized, during low and high bouts of motion, or before and after photothrombotic stroke. A linear support vector regression approach was used to determine the optimal weights for integrating the signals from the remaining pixels to accurately predict neural activity in a region of interest (ROI). The resultant weight maps for each ROI were interpreted as multivariate functional connectivity (MFC), resembled anatomical connectivity, and demonstrated a sparser set of strong focused positive connections than traditional FC. While global variations in data have large effects on standard correlation FC analysis, the MFC mapping methods were mostly impervious. Lastly, MFC analysis provided a more powerful connectivity deficit detection following stroke compared to traditional FC.

摘要

自发脑活动的时相关分析(例如 Pearson“功能连接”,FC)为理解人类大脑的功能组织提供了线索。然而,这种二元分析技术往往容易受到混淆生理过程(例如睡眠、迈尔波、呼吸、运动)的影响,这使得在健康和疾病中准确映射连接变得困难,因为这些生理过程会影响 FC。相比之下,从自发神经影像学数据中推断个体神经网络的多元方法可能对我们对 FC 的概念理解产生影响,并提供性能优势。因此,我们分析了 Thy1-GCaMP6f 小鼠的神经钙成像数据,这些小鼠在清醒、睡眠、麻醉、低运动和高运动期间,或在光血栓性中风前后。使用线性支持向量回归方法来确定整合来自其余像素的信号的最佳权重,以准确预测感兴趣区域(ROI)中的神经活动。每个 ROI 的结果权重图被解释为多元功能连接(MFC),与解剖连接相似,并显示出比传统 FC 更稀疏的一组强聚焦正连接。虽然数据中的全局变化对标准相关 FC 分析有很大影响,但 MFC 映射方法大多不受影响。最后,与传统 FC 相比,MFC 分析在中风后提供了更强大的连接缺陷检测能力。

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