MRI-based whole-brain elastography and volumetric measurements to predict brain age.

IF 2.5 Q3 BIOCHEMICAL RESEARCH METHODS
Biology Methods and Protocols Pub Date : 2024-11-20 eCollection Date: 2025-01-01 DOI:10.1093/biomethods/bpae086
Claudio Cesar Claros-Olivares, Rebecca G Clements, Grace McIlvain, Curtis L Johnson, Austin J Brockmeier
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Abstract

Brain age, as a correlate of an individual's chronological age obtained from structural and functional neuroimaging data, enables assessing developmental or neurodegenerative pathology relative to the overall population. Accurately inferring brain age from brain magnetic resonance imaging (MRI) data requires imaging methods sensitive to tissue health and sophisticated statistical models to identify the underlying age-related brain changes. Magnetic resonance elastography (MRE) is a specialized MRI technique which has emerged as a reliable, non-invasive method to measure the brain's mechanical properties, such as the viscoelastic shear stiffness and damping ratio. These mechanical properties have been shown to change across the life span, reflect neurodegenerative diseases, and are associated with individual differences in cognitive function. Here, we aim to develop a machine learning framework to accurately predict a healthy individual's chronological age from maps of brain mechanical properties. This framework can later be applied to understand neurostructural deviations from normal in individuals with neurodevelopmental or neurodegenerative conditions. Using 3D convolutional networks as deep learning models and more traditional statistical models, we relate chronological age as a function of multiple modalities of whole-brain measurements: stiffness, damping ratio, and volume. Evaluations on held-out subjects show that combining stiffness and volume in a multimodal approach achieves the most accurate predictions. Interpretation of the different models highlights important regions that are distinct between the modalities. The results demonstrate the complementary value of MRE measurements in brain age models, which, in future studies, could improve model sensitivity to brain integrity differences in individuals with neuropathology.

基于核磁共振成像的全脑弹性成像和体积测量预测脑年龄。
脑年龄,作为从结构和功能神经影像学数据中获得的个体实足年龄的相关性,可以评估相对于总体人群的发育或神经退行性病理。从脑磁共振成像(MRI)数据中准确推断脑年龄需要对组织健康敏感的成像方法和复杂的统计模型来识别潜在的与年龄相关的大脑变化。磁共振弹性成像(MRE)是一种专门的磁共振成像技术,它已经成为一种可靠的、非侵入性的方法来测量大脑的力学特性,如粘弹性剪切刚度和阻尼比。这些机械特性已被证明在整个生命周期中会发生变化,反映神经退行性疾病,并与认知功能的个体差异有关。在这里,我们的目标是开发一个机器学习框架,从大脑力学特性的地图中准确预测健康个体的实足年龄。这个框架以后可以应用于理解神经发育或神经退行性疾病个体的神经结构偏离正常。使用3D卷积网络作为深度学习模型和更传统的统计模型,我们将实足年龄作为全脑测量的多种模式的函数:刚度、阻尼比和体积。对伸出主体的评估表明,在多模态方法中结合刚度和体积可以获得最准确的预测。对不同模式的解释突出了不同模式之间的重要区域。结果表明,MRE测量在脑年龄模型中的补充价值,在未来的研究中,可以提高模型对神经病理学个体脑完整性差异的敏感性。
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
Biology Methods and Protocols
Biology Methods and Protocols Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
3.80
自引率
2.80%
发文量
28
审稿时长
19 weeks
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