从健康老龄化到阿尔茨海默病的海马纹理纵向变化。

Brain Communications Pub Date : 2023-07-05 eCollection Date: 2023-01-01 DOI:10.1093/braincomms/fcad195
Alfie Wearn, Lars Lau Raket, D Louis Collins, R Nathan Spreng
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引用次数: 0

摘要

早期发现阿尔茨海默病对于制定预防性治疗策略至关重要。可检测到的脑容量变化在疾病的致病过程中出现得相对较晚,但早期神经病变引起的微观结构变化可能会导致磁共振信号发生微妙变化,可通过纹理分析进行量化。纹理分析可量化图像中的空间模式,如平滑度、随机性和异质性。我们研究了作为阿尔茨海默病早期病变部位的海马体的磁共振成像纹理是否对认知障碍发生前大脑微观结构的变化敏感。我们还探究了海马纹理在阿尔茨海默氏症持续期的纵向轨迹与海马体积和其他生物标志物的关系。最后,我们还评估了纹理预测未来认知能力衰退的能力,以及海马体积的预测能力。数据来源于阿尔茨海默病神经影像学倡议(Alzheimer's Disease Neuroimaging Initiative)。通过 3T T1 加权磁共振成像扫描计算双侧海马的纹理。293 个纹理特征被归纳为五个主成分,它们描述了认知功能未受损参与者中 88% 的总变异。我们评估了这些纹理成分和海马体积在四个诊断组之间的横断面差异:认知功能未受损的淀粉样蛋白-β-(n = 406);认知功能未受损的淀粉样蛋白-β+(n = 213);轻度认知功能受损的淀粉样蛋白-β+(n = 347);阿尔茨海默病痴呆的淀粉样蛋白-β+(n = 202)。为了评估阿尔茨海默氏症的纵向纹理变化,我们使用了一个多变量混合效应曲线模型,根据淀粉样蛋白 PET 和认知评分计算出所有时间点的 "疾病时间"。以此为标准来比较生物标志物的轨迹,包括海马体的体积和纹理。这些轨迹在数据子集中进行了建模:认知功能未受损的淀粉样蛋白-β-(n = 345);认知功能未受损的淀粉样蛋白-β+(n = 173);轻度认知障碍淀粉样蛋白-β+(n = 301);以及阿尔茨海默病痴呆淀粉样蛋白-β+(n = 161)。我们发现,在阿尔茨海默病的最早阶段,认知功能未受损的淀粉样蛋白-β-老年人与认知功能未受损的淀粉样蛋白-β+老年人之间的纹理成分 4 存在差异(Cohen's d = 0.23,Padj = 0.014)。在疾病的后期,随着认知障碍的出现,纹理的其他成分和海马体积也出现了差异(d = 0.30-1.22,Padj < 0.002)。纹理轨迹的纵向建模显示,虽然纹理的大多数元素都是在疾病过程中形成的,但噪声降低了跟踪个体纹理随时间变化的敏感性。但关键的是,纹理提供了比体积单独提供的更多信息,能更准确地预测未来的认知变化(d = 0.32-0.63, Padj < 0.0001)。我们的研究结果支持将纹理作为衡量大脑健康状况的指标,它对阿尔茨海默病的病理变化非常敏感,而此时进行治疗干预可能最为有效。
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Longitudinal changes in hippocampal texture from healthy aging to Alzheimer's disease.

Early detection of Alzheimer's disease is essential to develop preventive treatment strategies. Detectible change in brain volume emerges relatively late in the pathogenic progression of disease, but microstructural changes caused by early neuropathology may cause subtle changes in the MR signal, quantifiable using texture analysis. Texture analysis quantifies spatial patterns in an image, such as smoothness, randomness and heterogeneity. We investigated whether the MRI texture of the hippocampus, an early site of Alzheimer's disease pathology, is sensitive to changes in brain microstructure before the onset of cognitive impairment. We also explored the longitudinal trajectories of hippocampal texture across the Alzheimer's continuum in relation to hippocampal volume and other biomarkers. Finally, we assessed the ability of texture to predict future cognitive decline, over and above hippocampal volume. Data were acquired from the Alzheimer's Disease Neuroimaging Initiative. Texture was calculated for bilateral hippocampi on 3T T1-weighted MRI scans. Two hundred and ninety-three texture features were reduced to five principal components that described 88% of total variance within cognitively unimpaired participants. We assessed cross-sectional differences in these texture components and hippocampal volume between four diagnostic groups: cognitively unimpaired amyloid-β- (n = 406); cognitively unimpaired amyloid-β+ (n = 213); mild cognitive impairment amyloid-β+ (n = 347); and Alzheimer's disease dementia amyloid-β+ (n = 202). To assess longitudinal texture change across the Alzheimer's continuum, we used a multivariate mixed-effects spline model to calculate a 'disease time' for all timepoints based on amyloid PET and cognitive scores. This was used as a scale on which to compare the trajectories of biomarkers, including volume and texture of the hippocampus. The trajectories were modelled in a subset of the data: cognitively unimpaired amyloid-β- (n = 345); cognitively unimpaired amyloid-β+ (n = 173); mild cognitive impairment amyloid-β+ (n = 301); and Alzheimer's disease dementia amyloid-β+ (n = 161). We identified a difference in texture component 4 at the earliest stage of Alzheimer's disease, between cognitively unimpaired amyloid-β- and cognitively unimpaired amyloid-β+ older adults (Cohen's d = 0.23, Padj = 0.014). Differences in additional texture components and hippocampal volume emerged later in the disease continuum alongside the onset of cognitive impairment (d = 0.30-1.22, Padj < 0.002). Longitudinal modelling of the texture trajectories revealed that, while most elements of texture developed over the course of the disease, noise reduced sensitivity for tracking individual textural change over time. Critically, however, texture provided additional information than was provided by volume alone to more accurately predict future cognitive change (d = 0.32-0.63, Padj < 0.0001). Our results support the use of texture as a measure of brain health, sensitive to Alzheimer's disease pathology, at a time when therapeutic intervention may be most effective.

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