比较和缩放fMRI特征脑行为预测。

Imaging neuroscience (Cambridge, Mass.) Pub Date : 2025-09-12 eCollection Date: 2025-01-01 DOI:10.1162/IMAG.a.141
Mikkel Schöttner Sieler, Thomas A W Bolton, Jagruti Patel, Patric Hagmann
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引用次数: 0

摘要

通过核磁共振成像(MRI)等神经成像方式预测行为变量,有可能开发出精神和神经疾病的神经成像生物标志物。实现这一目标的关键处理步骤是提取合适的特征。这些方法的不同之处可能在于它们对感兴趣目标的预测程度,以及这种预测如何随样本大小和扫描时间而变化。在这里,我们比较了从静息状态功能MRI记录中提取的九种特征亚型,用于行为预测,范围从功能活动的区域测量到功能连接(FC)和通过图信号处理(GSP)得出的指标,这是一种提取结构信息功能特征的原则方法。我们研究了979名来自人类连接组项目年轻人数据集的受试者,预测了心理健康、认知、处理速度、物质使用以及年龄和性别的综合得分。研究了不同样本量和扫描时间组合下特征的缩放特性。FC被认为是预测认知、年龄和性别的最佳特征。图功率谱密度在预测认知和年龄方面是第二好的,而在性别方面,基于变异性的特征也显示出潜力。当预测性别时,低通图滤波耦合FC略优于简单FC变体。其他目标的预测都不显著。缩放结果指向为性能更好的特性提供更高的性能储备。他们还指出,在为预测研究获取数据时,平衡样本量和扫描时间是很重要的。结果证实了FC作为行为预测的鲁棒特征,但也显示了GSP和基于变异性的测量的潜力。我们讨论了在获取策略和样本组成方面对未来预测研究的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing and scaling fMRI features for brain-behavior prediction.

Predicting behavioral variables from neuroimaging modalities such as magnetic resonance imaging (MRI) has the potential to allow the development of neuroimaging biomarkers of mental and neurological disorders. A crucial processing step to this aim is the extraction of suitable features. These can differ in how well they predict the target of interest, and how this prediction scales with sample size and scan time. Here, we compare nine feature subtypes extracted from resting-state functional MRI recordings for behavior prediction, ranging from regional measures of functional activity to functional connectivity (FC) and metrics derived with graph signal processing (GSP), a principled approach for the extraction of structure-informed functional features. We study 979 subjects from the Human Connectome Project Young Adult dataset, predicting summary scores for mental health, cognition, processing speed, and substance use, as well as age and sex. The scaling properties of the features are investigated for different combinations of sample size and scan time. FC comes out as the best feature for predicting cognition, age, and sex. Graph power spectral density is the second best for predicting cognition and age, while for sex, variability-based features show potential as well. When predicting sex, the low-pass graph-filtered coupled FC slightly outperforms the simple FC variant. None of the other targets were predicted significantly. The scaling results point to higher performance reserves for the better-performing features. They also indicate that it is important to balance sample size and scan time when acquiring data for prediction studies. The results confirm FC as a robust feature for behavior prediction, but also show the potential of GSP and variability-based measures. We discuss the implications for future prediction studies in terms of strategies for acquisition and sample composition.

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