不同MRI模式得出的脑年龄与不同的生物学表型相关

Andrei Claudiu Roibu, S. Adaszewski, Torsten Schindler, Stephen M. Smith, Ana I. L. Namburete, F. Lange
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摘要

脑老化是一个高度可变的、空间和时间异质性的过程,以许多结构和功能变化为特征。根据神经成像数据推断,这可能导致个体的实际年龄与大脑的表观年龄之间存在差异。机器学习模型,尤其是卷积神经网络(cnn),已经被证明擅长捕捉与大脑衰老引起的变化有关的模式。预测年龄和实际年龄之间的差异,被称为脑年龄三角洲,已经成为探索那些促进加速衰老或恢复能力的因素(如病理或生活方式因素)的有用生物标志物。然而,先前的研究仅依赖于结构神经成像进行预测,忽略了潜在的信息功能和微观结构变化。在这里,我们展示了来自不同MRI模式的多重对比可以预测大脑年龄,每个编码定制的大脑老化信息。通过使用3D cnn和UK Biobank数据,我们发现来自结构、敏感性加权、扩散和功能MRI的57个对比可以成功预测大脑年龄。对于每个对比,发现了与非影像学表型的不同关联模式,总共产生了191种独特的、具有统计学意义的关联。此外,我们发现来自多个对比的集成数据既具有更高的预测精度,又与非成像测量具有更强的相关性。我们的研究结果表明,其他3D对比和模式,迄今为止尚未被认为是大脑年龄预测的任务,编码了关于衰老大脑的不同信息。我们设想我们的工作将成为未来研究观察到的脑年龄delta和非成像测量关联的因果关系的起点。例如,考虑到某些药物与大脑加速衰老有关,药物效果可以被监测。此外,脑年龄模型的持续发展可以促进它们在招募和监测的临床试验以及医院诊断和筛查任务中的部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain Ages Derived from Different MRI Modalities are Associated with Distinct Biological Phenotypes
Brain ageing is a highly variable, spatially and temporally heterogeneous process, marked by numerous structural and functional changes. These can cause discrepancies between individuals’ chronological age and the apparent age of their brain, as inferred from neuroimaging data. Machine learning models, and particularly Convolutional Neural Networks (CNNs), have proven adept in capturing patterns relating to ageing induced changes in the brain. The differences between the predicted and chronological ages, referred to as brain age deltas, have emerged as useful biomarkers for exploring those factors which promote accelerated ageing or resilience, such as pathologies or lifestyle factors. However, previous studies rely only on structural neuroimaging for predictions, overlooking potentially informative functional and microstructural changes. Here we show that multiple contrasts derived from different MRI modalities can predict brain age, each encoding bespoke brain ageing information. By using 3D CNNs and UK Biobank data, we found that 57 contrasts derived from structural, susceptibilityweighted, diffusion, and functional MRI can successfully predict brain age. For each contrast, different patterns of association with non-imaging phenotypes were found, resulting in a total of 191 unique, statistically significant associations. Furthermore, we found that ensembling data from multiple contrasts results in both higher prediction accuracies and stronger correlations to non-imaging measurements. Our results demonstrate that other 3D contrasts and modalities, which have not been considered so far for the task of brain age prediction, encode different information about the ageing brain. We envision our work as being the starting point for future investigations into the causal links underpinning the observed brain age deltas and nonimaging measurement associations. For instance, drug effects can be monitored, given that certain medications correlated with accelerated brain ageing. Furthermore, continued development of brain age models could facilitate their deployment in clinical trials for recruitment and monitoring, and hospitals for diagnostic and screening tasks.
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