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跨受试者队列和预测模型架构的脑年龄差距分析。

Analysis of Brain Age Gap across Subject Cohorts and Prediction Model Architectures.

作者信息

Dular Lara, Špiclin Žiga

机构信息

University of Ljubljana, Faculty of Electrical Engineering, Tržaška cesta 25, 1000 Ljubljana, Slovenia.

出版信息

Biomedicines. 2024 Sep 20;12(9):2139. doi: 10.3390/biomedicines12092139.

Abstract

Brain age prediction from brain MRI scans and the resulting brain age gap (BAG)-the difference between predicted brain age and chronological age-is a general biomarker for a variety of neurological, psychiatric, and other diseases or disorders. This study examined the differences in BAG values derived from T1-weighted scans using five state-of-the-art deep learning model architectures previously used in the brain age literature: 2D/3D VGG, RelationNet, ResNet, and SFCN. The models were evaluated on healthy controls and cohorts with sleep apnea, diabetes, multiple sclerosis, Parkinson's disease, mild cognitive impairment, and Alzheimer's disease, employing rigorous statistical analysis, including repeated model training and linear mixed-effects models. All five models consistently identified a statistically significant positive BAG for diabetes (ranging from 0.79 years with RelationNet to 2.13 years with SFCN), multiple sclerosis (2.67 years with 3D VGG to 4.24 years with 2D VGG), mild cognitive impairment (2.13 years with 2D VGG to 2.59 years with 3D VGG), and Alzheimer's dementia (5.54 years with ResNet to 6.48 years with SFCN). For Parkinson's disease, a statistically significant BAG increase was observed in all models except ResNet (1.30 years with 2D VGG to 2.59 years with 3D VGG). For sleep apnea, a statistically significant BAG increase was only detected with the SFCN model (1.59 years). Additionally, we observed a trend of decreasing BAG with increasing chronological age, which was more pronounced in diseased cohorts, particularly those with the largest BAG, such as multiple sclerosis (-0.34 to -0.2), mild cognitive impairment (-0.37 to -0.26), and Alzheimer's dementia (-0.66 to -0.47), compared to healthy controls (-0.18 to -0.1). Consistent with previous research, Alzheimer's dementia and multiple sclerosis exhibited the largest BAG across all models, with SFCN predicting the highest BAG overall. The negative BAG trend suggests a complex interplay of survival bias, disease progression, adaptation, and therapy that influences brain age prediction across the age spectrum.

摘要

通过脑部磁共振成像(MRI)扫描进行脑龄预测以及由此产生的脑龄差距(BAG)——预测脑龄与实际年龄之间的差异——是多种神经、精神及其他疾病或病症的通用生物标志物。本研究使用了先前在脑龄文献中使用的五种最先进的深度学习模型架构,检验了从T1加权扫描得出的BAG值的差异:2D/3D VGG、关系网络(RelationNet)、残差网络(ResNet)和空间特征编码网络(SFCN)。这些模型在健康对照以及患有睡眠呼吸暂停、糖尿病、多发性硬化症、帕金森病、轻度认知障碍和阿尔茨海默病的队列中进行了评估,采用了严格的统计分析,包括重复模型训练和线性混合效应模型。所有五个模型均一致确定糖尿病存在统计学显著的正BAG(从关系网络的0.79岁到SFCN的2.13岁)、多发性硬化症(3D VGG为2.67岁到2D VGG为4.24岁)、轻度认知障碍(2D VGG为2.13岁到3D VGG为2.59岁)以及阿尔茨海默病痴呆(残差网络为5.54岁到SFCN为6.48岁)。对于帕金森病,除残差网络外,所有模型均观察到统计学显著的BAG增加(2D VGG为1.30岁到3D VGG为2.59岁)。对于睡眠呼吸暂停,仅在SFCN模型中检测到统计学显著的BAG增加(1.59岁)。此外,我们观察到随着实际年龄增加BAG有下降趋势,这在患病队列中更为明显,尤其是那些BAG最大的队列,如多发性硬化症(-0.34至-0.2)、轻度认知障碍(-0.37至-0.26)和阿尔茨海默病痴呆(-0.66至-0.47),相比之下健康对照为(-0.18至-0.1)。与先前研究一致,阿尔茨海默病痴呆和多发性硬化症在所有模型中表现出最大的BAG,SFCN总体上预测的BAG最高。负BAG趋势表明生存偏差、疾病进展、适应和治疗之间存在复杂的相互作用,影响着整个年龄谱的脑龄预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6194/11428686/e3b855eb74c4/biomedicines-12-02139-g001.jpg

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