Department of Biostatistics and Data Science, Wake Forest University School of Medicine, Medical Center Blvd., Winston-Salem, NC, USA.
National Institute of Health, Baltimore, MD, USA.
Geroscience. 2024 Aug;46(4):3861-3873. doi: 10.1007/s11357-024-01112-4. Epub 2024 Mar 4.
Machine learning models are increasingly being used to estimate "brain age" from neuroimaging data. The gap between chronological age and the estimated brain age gap (BAG) is potentially a measure of accelerated and resilient brain aging. Brain age calculated in this fashion has been shown to be associated with mortality, measures of physical function, health, and disease. Here, we estimate the BAG using a voxel-based elastic net regression approach, and then, we investigate its associations with mortality, cognitive status, and measures of health and disease in participants from Atherosclerosis Risk in Communities (ARIC) study who had a brain MRI at visit 5 of the study. Finally, we used the SOMAscan assay containing 4877 proteins to examine the proteomic associations with the MRI-defined BAG. Among N = 1849 participants (age, 76.4 (SD 5.6)), we found that increased values of BAG were strongly associated with increased mortality and increased severity of the cognitive status. Strong associations with mortality persisted when the analyses were performed in cognitively normal participants. In addition, it was strongly associated with BMI, diabetes, measures of physical function, hypertension, prevalent heart disease, and stroke. Finally, we found 33 proteins associated with BAG after a correction for multiple comparisons. The top proteins with positive associations to brain age were growth/differentiation factor 15 (GDF-15), Sushi, von Willebrand factor type A, EGF, and pentraxin domain-containing protein 1 (SEVP 1), matrilysin (MMP7), ADAMTS-like protein 2 (ADAMTS), and heat shock 70 kDa protein 1B (HSPA1B) while EGF-receptor (EGFR), mast/stem-cell-growth-factor-receptor (KIT), coagulation-factor-VII, and cGMP-dependent-protein-kinase-1 (PRKG1) were negatively associated to brain age. Several of these proteins were previously associated with dementia in ARIC. These results suggest that circulating proteins implicated in biological aging, cellular senescence, angiogenesis, and coagulation are associated with a neuroimaging measure of brain aging.
机器学习模型越来越多地被用于从神经影像学数据中估计“大脑年龄”。实际年龄与估计的大脑年龄差距(BAG)之间的差距可能是衡量大脑加速衰老和弹性的指标。以这种方式计算的大脑年龄已被证明与死亡率、身体机能、健康和疾病的衡量标准有关。在这里,我们使用基于体素的弹性网络回归方法来估计 BAG,然后研究其与死亡率、认知状态以及研究参与者的健康和疾病衡量标准的关联,这些参与者在研究的第 5 次访问时进行了脑部 MRI。最后,我们使用包含 4877 种蛋白质的 SOMAscan 测定法来检查与 MRI 定义的 BAG 的蛋白质组学关联。在 N=1849 名参与者(年龄,76.4(SD 5.6))中,我们发现 BAG 值的增加与死亡率的增加和认知状态的严重程度增加密切相关。在对认知正常的参与者进行分析时,这种与死亡率的强烈关联仍然存在。此外,它与 BMI、糖尿病、身体机能测量、高血压、已患心脏病和中风强烈相关。最后,我们在进行多次比较校正后发现了与 BAG 相关的 33 种蛋白质。与大脑年龄呈正相关的顶级蛋白质有生长/分化因子 15(GDF-15)、Sushi、血管性血友病因子 A、EGF 和五聚素域蛋白 1(SEVP 1)、基质金属蛋白酶 7(MMP7)、ADAMTS 样蛋白 2(ADAMTS)和热休克 70 kDa 蛋白 1B(HSPA1B),而 EGF 受体(EGFR)、mast/stem-cell-growth-factor-receptor(KIT)、凝血因子-VII 和 cGMP 依赖性蛋白激酶 1(PRKG1)与大脑年龄呈负相关。这些蛋白质中的一些先前与 ARIC 中的痴呆症有关。这些结果表明,与生物衰老、细胞衰老、血管生成和凝血相关的循环蛋白与大脑衰老的神经影像学测量有关。