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在人类连接组学中,结构可以预测个体水平的功能吗?

Can structure predict function at individual level in the human connectome?

机构信息

Eindhoven University of Technology , Department of Mathematics and Computer Science, PO Box 513, Eindhoven, 5600 MB, Netherlands.

Elisabeth-TweeSteden Hospital, Department of Neurosurgery, Hilvarenbeekseweg 60, Tilburg, 5022 GC, The Netherlands.

出版信息

Brain Struct Funct. 2024 Jun;229(5):1209-1223. doi: 10.1007/s00429-024-02796-2. Epub 2024 Apr 24.

Abstract

Several studies predicting Functional Connectivity (FC) from Structural Connectivity (SC) at individual level have been published in recent years, each promising increased performance and utility. We investigated three of these studies, analyzing whether the results truly represent a meaningful individual-level mapping from SC to FC. Using data from the Human Connectome Project shared accross the three studies, we constructed a predictor by averaging FC of training data and analyzed its performance in the same way. In each case, we found that group average FC is an equivalent or better predictor of individual FC than the predictive models in terms of raw prediction performance. Furthermore, we showed that additional analyses performed by the authors of the three studies, in which they attempt to show that their predicted FC has value beyond raw prediction performance, could also be reproduced using the group average FC predictor. This makes it unclear whether any of the three methods represent a meaningful individual-level predictive model. We conclude that either the methods are not appropriate for the data, that the sample size is too small, or that the data does not contain sufficient information to learn a mapping from SC to FC. We advise future individual-level studies to explicitly report results in comparison to the performance of the group average, and carefully demonstrate that their predictions contain meaningful individual-level information. Finally, we believe that investigating alternatives for the construction of SC and FC may improve the chances of developing a meaningful individual-level mapping from SC to FC.

摘要

近年来,已经有几项预测个体水平结构连接(SC)与功能连接(FC)之间关系的研究发表,每项研究都承诺提高性能和实用性。我们研究了其中的三项研究,分析了这些研究结果是否真的代表了 SC 到 FC 的有意义的个体水平映射。我们使用了这三项研究中共享的人类连接组计划数据,通过平均训练数据的 FC 构建了一个预测器,并以相同的方式分析了其性能。在每种情况下,我们发现组平均 FC 是比预测模型更好的个体 FC 预测器,无论是在原始预测性能方面还是在其他方面。此外,我们还表明,这三项研究的作者进行的其他分析,即试图表明他们预测的 FC 具有超出原始预测性能的价值,也可以使用组平均 FC 预测器进行复制。这使得无法确定这三种方法中的任何一种是否代表了一种有意义的个体水平预测模型。我们得出的结论是,要么这些方法不适合数据,要么样本量太小,要么数据没有足够的信息来学习从 SC 到 FC 的映射。我们建议未来的个体水平研究明确报告与组平均性能相比的结果,并仔细证明他们的预测包含有意义的个体水平信息。最后,我们认为,研究 SC 和 FC 的替代构建方法可能会提高从 SC 到 FC 开发有意义的个体水平映射的机会。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e6f6/11147846/da28f60d831e/429_2024_2796_Fig1_HTML.jpg

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