Brain network fingerprints of Alzheimer's disease risk factors in mouse models with humanized APOE alleles

IF 2.1 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Steven Winter , Ali Mahzarnia , Robert J. Anderson , Zay Yar Han , Jessica Tremblay , Jacques A. Stout , Hae Sol Moon , Daniel Marcellino , David B. Dunson , Alexandra Badea
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引用次数: 0

Abstract

Alzheimer's disease (AD) presents complex challenges due to its multifactorial nature, poorly understood etiology, and late detection. The mechanisms through which genetic and modifiable risk factors influence disease susceptibility are under intense investigation, with APOE being the major genetic risk factor for late onset AD. Yet the impact of unique risk factors on brain networks is difficult to disentangle, and their interactions remain unclear.
To model multiple risk factors, including APOE genotype, age, sex, diet, and immunity we used a cross sectional design, leveraging mice expressing human APOE and NOS2 genes, conferring a reduced immune response compared to mouse Nos2. We used network topological and GraphClass analyses of brain connectomes derived from accelerated diffusion-weighted MRI to assess the global and local impact of risk factors, in the absence of AD pathology.
Aging and a high-fat diet impacted extensive networks comprising AD-vulnerable regions, including the temporal association cortex, amygdala, and the periaqueductal gray, involved in stress responses. Sex impacted networks including sexually dimorphic regions (thalamus, insula, hypothalamus) and key memory-processing areas (fimbria, septum). APOE genotypes modulated connectivity in memory, sensory, and motor regions, while diet and immunity both impacted the insula and hypothalamus. Notably, these risk factors converged on a circuit comprising 63 of 54,946 total connections (0.11% of the connectome), highlighting shared vulnerability amongst multiple AD risk factors in regions essential for sensory integration, emotional regulation, decision making, motor coordination, memory, homeostasis, and interoception. APOE genotype specific immune signatures support the design of interventions tailored to risk profiles. Sparse Canonical Correlation Analysis (CCA) including spatial memory as a risk factor resulted in a network comprising 80 edges, showing significant overlap with risk-associated networks from GraphClass. The largest overlaps were observed with networks impacted by diet (47 edges), immunity (39 edges), APOE3 vs 4 (26 edges), sex (23 edges), and age (19 edges), the resulting networks supporting the use of sensory cues in spatial memory retrieval.
These network-based biomarkers hold translational value for distinguishing high-risk versus low-risk participants at preclinical AD stages, suggest circuits as potential therapeutic targets, and advance our understanding of network fingerprints associated with AD risk.
人源化 APOE 等位基因小鼠模型中阿尔茨海默病风险因素的大脑网络指纹。
阿尔茨海默病(AD)因其多因素性质、病因不清和发现较晚而带来复杂的挑战。遗传和可改变的风险因素对疾病易感性的影响机制正在接受深入研究,其中 APOE 是晚发性阿尔茨海默病的主要遗传风险因素。然而,独特的风险因素对大脑网络的影响难以厘清,它们之间的相互作用也仍不明确。为了模拟包括 APOE 基因型、年龄、性别、饮食和免疫力在内的多种风险因素,我们采用了横断面设计,利用表达人类 APOE 和 NOS2 基因的小鼠,与小鼠 Nos2 相比,人类 APOE 和 NOS2 基因会降低免疫反应。我们利用加速扩散加权核磁共振成像得出的大脑连接组的网络拓扑和图谱分析来评估风险因素在没有出现注意力缺失症病理的情况下对整体和局部的影响。衰老和高脂饮食影响了包括AD易感区在内的广泛网络,其中包括颞联想皮层、杏仁核和丘脑周围灰质,它们参与压力反应。性别影响的网络包括性双态区域(丘脑、脑岛、下丘脑)和关键记忆处理区域(边缘、隔膜)。APOE 基因型调节了记忆、感觉和运动区域的连通性,而饮食和免疫力都会影响脑岛和下丘脑。值得注意的是,这些风险因素汇聚在一个回路中,该回路由54,946个总连接中的63个组成(占连接组的0.11%),这突显了在感觉整合、情绪调节、决策制定、运动协调、记忆、稳态和互感所必需的区域中,多种注意力缺失症风险因素具有共同的脆弱性。APOE 基因型特异性免疫特征有助于设计针对风险特征的干预措施。稀疏典型相关分析(CCA)将空间记忆作为一个风险因素,得出了一个由 80 个边缘组成的网络,与 GraphClass 中的风险相关网络有显著重叠。受饮食(47 条边线)、免疫(39 条边线)、APOE3 vs 4(26 条边线)、性别(23 条边线)和年龄(19 条边线)影响的网络重叠最多,由此产生的网络支持在空间记忆检索中使用感觉线索。这些基于网络的生物标记物具有转化价值,可用于区分临床前注意力缺失症阶段的高风险和低风险参与者,建议将电路作为潜在的治疗目标,并促进我们对与注意力缺失症风险相关的网络指纹的了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Magnetic resonance imaging
Magnetic resonance imaging 医学-核医学
CiteScore
4.70
自引率
4.00%
发文量
194
审稿时长
83 days
期刊介绍: Magnetic Resonance Imaging (MRI) is the first international multidisciplinary journal encompassing physical, life, and clinical science investigations as they relate to the development and use of magnetic resonance imaging. MRI is dedicated to both basic research, technological innovation and applications, providing a single forum for communication among radiologists, physicists, chemists, biochemists, biologists, engineers, internists, pathologists, physiologists, computer scientists, and mathematicians.
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