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神经信号的归一化空间复杂度分析。

Normalized spatial complexity analysis of neural signals.

机构信息

Key Laboratory of Child Development and Learning Science (Ministry of Education), Research Center for Learning Science, School of Biological Sciences & Medical Engineering, Southeast University, Nanjing, Jiangsu, China.

College of Preschool Education, Nanjing Xiaozhuang University, Nanjing, Jiangsu, China.

出版信息

Sci Rep. 2018 May 21;8(1):7912. doi: 10.1038/s41598-018-26329-0.

Abstract

The spatial complexity of neural signals, which was traditionally quantified by omega complexity, varies inversely with the global functional connectivity level across distinct region-of-interests, thus provides a novel approach in functional connectivity analysis. However, the measures in omega complexity are sensitive to the number of neural time-series. Here, normalized spatial complexity was suggested to overcome the above limitation, and was verified by the functional near-infrared spectroscopy (fNIRS) data from a previous published autism spectrum disorder (ASD) research. By this new method, several conclusions consistent with traditional approaches on the pathological mechanisms of ASD were found, i.e., the prefrontal cortex made a major contribution to the hypo-connectivity of young children with ASD. Moreover, some novel findings were also detected (e.g., significantly higher normalized regional spatial complexities of bilateral prefrontal cortices and the variability of normalized local complexity differential of right temporal lobe, and the regional differences of measures in normalized regional spatial complexity), which could not be successfully detected via traditional approaches. These results confirmed the value of this novel approach, and extended the methodology system of functional connectivity. This novel technique could be applied to the neural signal of other neuroimaging techniques and other neurological and cognitive conditions.

摘要

神经信号的空间复杂性传统上通过欧米茄复杂性来量化,其与不同感兴趣区域之间的全局功能连接水平成反比,因此为功能连接分析提供了一种新方法。然而,欧米茄复杂性中的度量对神经时间序列的数量很敏感。在这里,建议使用归一化空间复杂性来克服上述限制,并通过先前发表的自闭症谱系障碍 (ASD) 研究的功能性近红外光谱 (fNIRS) 数据进行了验证。通过这种新方法,发现了一些与 ASD 病理机制的传统方法一致的结论,即前额叶皮层对 ASD 幼儿的连接不足做出了主要贡献。此外,还检测到了一些新的发现(例如,双侧前额叶皮质的归一化区域空间复杂性和右侧颞叶的归一化局部复杂度差的变异性显著更高,以及归一化区域空间复杂性测量的区域差异),这些发现无法通过传统方法成功检测到。这些结果证实了这种新方法的价值,并扩展了功能连接的方法系统。这种新技术可以应用于其他神经影像学技术以及其他神经和认知状况的神经信号。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/31f3/5962588/b9d1cb36e493/41598_2018_26329_Fig1_HTML.jpg

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