Predicting an individual's functional connectivity from their structural connectome: Evaluation of evidence, recommendations, and future prospects.

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Network Neuroscience Pub Date : 2024-12-10 eCollection Date: 2024-01-01 DOI:10.1162/netn_a_00400
Andrew Zalesky, Tabinda Sarwar, Ye Tian, Yuanzhe Liu, B T Thomas Yeo, Kotagiri Ramamohanarao
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引用次数: 0

Abstract

Several recent studies have optimized deep neural networks to learn high-dimensional relationships linking structural and functional connectivity across the human connectome. However, the extent to which these models recapitulate individual-specific characteristics of resting-state functional brain networks remains unclear. A core concern relates to whether current individual predictions outperform simple benchmarks such as group averages and null conditions. Here, we consider two measures to statistically evaluate whether functional connectivity predictions capture individual effects. We revisit our previously published functional connectivity predictions for 1,000 healthy adults and provide multiple lines of evidence supporting that our predictions successfully capture subtle individual-specific variation in connectivity. While predicted individual effects are statistically significant and outperform several benchmarks, we find that effect sizes are small (i.e., 8%-11% improvement relative to group-average benchmarks). As such, initial expectations about individual prediction performance expressed by us and others may require moderation. We conclude that individual predictions can significantly outperform appropriate benchmark conditions and we provide several recommendations for future studies in this area. Future studies should statistically assess the individual prediction performance of their models using one of the measures and benchmarks provided here.

从结构连接体预测个体的功能连通性:证据、建议和未来前景的评估。
最近有几项研究对深度神经网络进行了优化,以学习连接整个人类连接组的结构和功能连接的高维关系。然而,这些模型在多大程度上再现了静息态大脑功能网络的个体特异性特征仍不清楚。一个核心问题是目前的个体预测是否优于简单的基准,如群体平均值和空条件。在此,我们考虑了两种方法来统计评估功能连接预测是否捕捉到了个体效应。我们重新审视了之前发表的针对 1000 名健康成年人的功能连通性预测,并提供了多条证据,证明我们的预测成功捕捉到了连通性中微妙的个体特异性变化。虽然预测的个体效应具有统计学意义,并优于几个基准,但我们发现效应大小很小(即相对于群体平均基准改善 8%-11%)。因此,我们和其他人对个人预测效果的最初预期可能需要调整。我们的结论是,个体预测的性能可以明显优于适当的基准条件,并为这一领域的未来研究提出了若干建议。未来的研究应该使用本文提供的衡量标准和基准之一对其模型的个体预测性能进行统计评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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