使用渗透中心性和集体影响算法跟踪β -淀粉样斑块的进展和影响:一项使用PET图像的研究。

IF 1.8 Q4 NEUROSCIENCES
Gautam Kumar Baboo, Raghav Prasad, Pranav Mahajan, Veeky Baths
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引用次数: 0

摘要

背景:由于网络理论,对大脑网络的研究,特别是疾病传播的研究变得更加容易。阿尔茨海默病中β -淀粉样蛋白斑块和tau蛋白缠结的异常积累会导致大脑网络的破坏。提供临床诊断的评估分数,如简易精神状态检查(MMSE)和神经精神量表问卷,都受到这种积累的影响。目的:β -淀粉样蛋白/tau蛋白缠结的渗透及其对认知测试的影响仍未明确。方法:渗透中心性可用于研究β -淀粉样蛋白迁移作为正电子发射断层扫描(PET)图像网络的特征。基于pet图像的网络是利用公共数据库建立的,该数据库包含由阿尔茨海默病神经成像倡议组织发布的551张扫描图。Julich地图集中的每张图像都有121个感兴趣的区域,这些区域是网络节点。此外,使用集体影响算法计算每次扫描的影响节点。结果:对于5个节点指标,方差分析(ANOVA;P < 0.05)显示匹兹堡化合物B (PiB)示踪剂型在灰质(GM) Broca区感兴趣区域(ROI)。在使用florbetapir (AV45)的情况下,GM海马区域在三个节点指标上是显著的。临床组的两两方差分析显示AV45和PiB分别有5 - 12个具有统计学意义的roi,可以区分成对的临床情况。基于多元线性回归的MMSE是一种值得信赖的评价工具。结论:渗透值表明,与其他广泛使用的节点指标相比,大约50%的记忆、视觉空间技能和语言roi对大脑网络中β -淀粉样蛋白的渗透至关重要。根据集体影响算法,随着疾病的进展,解剖区域的排名越高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Tracking the Progression and Influence of Beta-Amyloid Plaques Using Percolation Centrality and Collective Influence Algorithm: A Study Using PET Images.

Tracking the Progression and Influence of Beta-Amyloid Plaques Using Percolation Centrality and Collective Influence Algorithm: A Study Using PET Images.

Tracking the Progression and Influence of Beta-Amyloid Plaques Using Percolation Centrality and Collective Influence Algorithm: A Study Using PET Images.

Tracking the Progression and Influence of Beta-Amyloid Plaques Using Percolation Centrality and Collective Influence Algorithm: A Study Using PET Images.

Background: The study of brain networks, particularly the spread of disease, is made easier thanks to the network theory. The aberrant accumulation of beta-amyloid plaques and tau protein tangles in Alzheimer's disease causes disruption in brain networks. The evaluation scores, such as the mini-mental state examination (MMSE) and neuropsychiatric inventory questionnaire, which provide a clinical diagnosis, are affected by this build-up.

Purpose: The percolation of beta-amyloid/tau tangles and their impact on cognitive tests are still unspecified.

Methods: Percolation centrality could be used to investigate beta-amyloid migration as a characteristic of positron emission tomography (PET)-image-based networks. The PET-image-based network was built utilizing a public database containing 551 scans published by the Alzheimer's Disease Neuroimaging Initiative. Each image in the Julich atlas has 121 zones of interest, which are network nodes. Furthermore, the influential nodes for each scan are computed using the collective influence algorithm.

Results: For five nodal metrics, analysis of variance (ANOVA; P < .05) reveals the region of interest (ROI) in gray matter (GM) Broca's area for Pittsburgh compound B (PiB) tracer type. The GM hippocampus area is significant for three nodal metrics in the case of florbetapir (AV45). Pairwise variance analysis of the clinical groups reveals five to twelve statistically significant ROIs for AV45 and PiB, respectively, that can distinguish between pairs of clinical situations. Based on multivariate linear regression, the MMSE is a trustworthy evaluation tool.

Conclusion: Percolation values suggest that around 50 of the memory, visual-spatial skills, and language ROIs are critical to the percolation of beta-amyloids within the brain network when compared to the other extensively used nodal metrics. The anatomical areas rank higher with the advancement of the disease, according to the collective influence algorithm.

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来源期刊
Annals of Neurosciences
Annals of Neurosciences NEUROSCIENCES-
CiteScore
2.40
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