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精细化功能连接组学度量,提高可识别性和预测能力。

Refined measure of functional connectomes for improved identifiability and prediction.

机构信息

Biomedical Engineering Department, Tulane University, New Orleans, Louisiana.

School of Electronics and Control Engineering, Chang'an University, Xi'an, Shaanxi, China.

出版信息

Hum Brain Mapp. 2019 Nov 1;40(16):4843-4858. doi: 10.1002/hbm.24741. Epub 2019 Jul 29.

Abstract

Brain functional connectome analysis is commonly based on population-wise inference. However, in this way precious information provided at the individual subject level may be overlooked. Recently, several studies have shown that individual differences contribute strongly to the functional connectivity patterns. In particular, functional connectomes have been proven to offer a fingerprint measure, which can reliably identify a given individual from a pool of participants. In this work, we propose to refine the standard measure of individual functional connectomes using dictionary learning. More specifically, we rely on the assumption that each functional connectivity is dominated by stable group and individual factors. By subtracting population-wise contributions from connectivity patterns facilitated by dictionary representation, intersubject variability should be increased within the group. We validate our approach using several types of analyses. For example, we observe that refined connectivity profiles significantly increase subject-specific identifiability across functional magnetic resonance imaging (fMRI) session combinations. Besides, refined connectomes can also improve the prediction power for cognitive behaviors. In accordance with results from the literature, we find that individual distinctiveness is closely linked with differences in neurocognitive activity within the brain. In summary, our results indicate that individual connectivity analysis benefits from the group-wise inferences and refined connectomes are indeed desirable for brain mapping.

摘要

脑功能连接组学分析通常基于群体推断。然而,这样可能会忽略个体水平提供的宝贵信息。最近,有几项研究表明,个体差异对功能连接模式有很大的影响。特别是,功能连接组已经被证明提供了一种指纹测量方法,可以可靠地从参与者群体中识别出特定的个体。在这项工作中,我们提出使用字典学习来改进个体功能连接组的标准测量。更具体地说,我们假设每个功能连接都由稳定的群体和个体因素主导。通过从字典表示促进的连接模式中减去群体贡献,可以增加组内的个体间变异性。我们使用多种类型的分析来验证我们的方法。例如,我们观察到,经过改进的连接图谱显著提高了功能磁共振成像(fMRI)会话组合中特定于个体的可识别性。此外,改进的连接组还可以提高对认知行为的预测能力。与文献中的结果一致,我们发现个体独特性与大脑内神经认知活动的差异密切相关。总之,我们的结果表明,个体连接分析受益于群体推断,并且改进的连接组对于大脑映射确实是可取的。

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