Stout Jacques, Anderson Robert J, Mahzarnia Ali, Han Zay Yar, Beck Kate, Browndyke Jeffrey, Johnson Kim, O'Brien Richard J, Badea Alexandra
Brain Imaging and Analysis Center, Duke University School of Medicine, Durham, NC, 27710, USA.
Department of Radiology, Duke University School of Medicine, Durham, NC, 27710, USA.
Brain Struct Funct. 2025 Mar 19;230(3):45. doi: 10.1007/s00429-025-02905-9.
Alzheimer's disease currently has no cure and is usually detected too late for interventions to be effective. In this study we have focused on cognitively normal subjects to study the impact of risk factors on their long-range brain connections. To detect vulnerable connections, we devised a multiscale, hierarchical method for spatial clustering of the whole brain tractogram and examined the impact of age and APOE allelic variation on cognitive abilities and bundle properties including texture e.g., mean fractional anisotropy, variability, and geometric properties including streamline length, volume, shape, as well as asymmetry. We found that the third level subdivision in the bundle hierarchy provided the most sensitive ability to detect age and genotype differences associated with risk factors. Our results indicate that frontal bundles were a major age predictor, while the occipital cortex and cerebellar connections were important risk predictors that were heavily genotype dependent, and showed accelerated decline in fractional anisotropy, shape similarity, and increased asymmetry. Cognitive metrics related to olfactory memory were mapped to bundles, providing possible early markers of neurodegeneration. In addition, physiological metrics associated with cardiovascular disease risk were associated with changes in white matter tracts. Our novel method for a data driven analysis of sensitive changes in tractography may differentiate populations at risk for AD and isolate specific vulnerable networks.
阿尔茨海默病目前无法治愈,通常在发现时已为时过晚,干预措施难以奏效。在本研究中,我们聚焦于认知正常的受试者,以研究风险因素对其大脑长程连接的影响。为了检测易损连接,我们设计了一种多尺度、分层的方法对全脑纤维束成像进行空间聚类,并研究了年龄和载脂蛋白E(APOE)等位基因变异对认知能力以及纤维束特性(包括纹理,如平均分数各向异性、变异性,以及几何特性,如流线长度、体积、形状和不对称性)的影响。我们发现,纤维束层次结构中的第三级细分在检测与风险因素相关的年龄和基因型差异方面具有最灵敏的能力。我们的结果表明,额叶纤维束是年龄的主要预测指标,而枕叶皮质和小脑连接是重要的风险预测指标,且严重依赖基因型,表现为分数各向异性、形状相似性加速下降以及不对称性增加。与嗅觉记忆相关的认知指标被映射到纤维束上,为神经退行性变提供了可能的早期标志物。此外,与心血管疾病风险相关的生理指标与白质束的变化有关。我们这种基于数据驱动分析纤维束成像敏感变化的新方法,可能会区分出有患阿尔茨海默病风险的人群,并分离出特定的易损网络。