Department of Neuroimaging, Institute of Psychiatry, Psychology & Neuroscience, King's College London, London, UK; Centre for Medical Image Computing, Department of Computer Science, University College London, London, UK; Dementia Research Centre, Institute of Neurology, University College London, London, UK.
Neurobiol Aging. 2020 Aug;92:34-42. doi: 10.1016/j.neurobiolaging.2020.03.014. Epub 2020 Apr 8.
The brain-age paradigm is proving increasingly useful for exploring aging-related disease and can predict important future health outcomes. Most brain-age research uses structural neuroimaging to index brain volume. However, aging affects multiple aspects of brain structure and function, which can be examined using multimodality neuroimaging. Using UK Biobank, brain-age was modeled in n = 2205 healthy people with T1-weighted MRI, T2-FLAIR, T2∗, diffusion-MRI, task fMRI, and resting-state fMRI. In a held-out healthy validation set (n = 520), chronological age was accurately predicted (r = 0.78, mean absolute error = 3.55 years) using LASSO regression, higher than using any modality separately. Thirty-four neuroimaging phenotypes were deemed informative by the regression (after bootstrapping); predominantly gray-matter volume and white-matter microstructure measures. When applied to new individuals from UK Biobank (n = 14,701), significant associations with multimodality brain-predicted age difference (brain-PAD) were found for stroke history, diabetes diagnosis, smoking, alcohol intake and some, but not all, cognitive measures (corrected p < 0.05). Multimodality neuroimaging can improve brain-age prediction, and derived brain-PAD values are sensitive to biomedical and lifestyle factors that negatively impact brain and cognitive health.
脑龄范式在探索与衰老相关的疾病方面越来越有用,并且可以预测重要的未来健康结果。大多数脑龄研究使用结构神经影像学来标记脑容量。然而,衰老会影响大脑结构和功能的多个方面,这些方面可以使用多模态神经影像学来检查。使用英国生物银行(UK Biobank)的数据,对 2205 名健康人进行了 T1 加权 MRI、T2-FLAIR、T2*、弥散 MRI、任务 fMRI 和静息状态 fMRI 研究,建立了脑龄模型。在一个独立的健康验证集(n=520)中,使用 LASSO 回归准确地预测了年龄(r=0.78,平均绝对误差=3.55 岁),这比单独使用任何模态都要高。通过回归(经过自举法)认为 34 种神经影像学表型是有信息的;主要是灰质体积和白质微观结构的测量值。当将其应用于来自英国生物银行的新个体(n=14701)时,发现与多模态脑预测年龄差异(brain-PAD)有显著关联的因素有中风史、糖尿病诊断、吸烟、饮酒以及一些但不是全部的认知测量指标(校正后的 p < 0.05)。多模态神经影像学可以提高脑龄预测的准确性,并且衍生的 brain-PAD 值对影响大脑和认知健康的生物医学和生活方式因素敏感。