Structural magnetic resonance imaging

结构磁共振成像
  • 文章类型: Journal Article
    目的:准确识别主观认知功能减退(SCD)的个体对于神经退行性疾病的早期干预和预防至关重要。分形维数(FD)已经成为一种稳健和可复制的度量,超越传统的几何度量,在表征大脑结构的复杂分形几何特性中。然而,FD在确定SCD个体方面的有效性尚不清楚.可以建议使用3D区域FD方法来表征和量化精确灰质的空间复杂性,提供认知老化的见解,并帮助自动识别患有SCD的个体。
    方法:本研究引入了一种新颖的基于整数比率的3D盒计数分形分析(IRBCFA),以量化结构磁共振成像(MRI)数据中的区域分形维数(FD)。该创新方法通过适应任意的盒子尺寸,克服了传统的盒子计数技术的局限性,从而提高小FD估计的精度,然而在神经上意义重大,大脑区域。
    结果:将IRBCFA应用于两个公开可用的数据集,OASIS-3和ADNI,由520和180个科目组成,分别。该方法确定了主要在边缘系统内的区分性感兴趣区域(ROI),额顶区,枕上-颞区,和基底神经节-丘脑区。这些ROI与认知功能表现出显著的相关性,包括执行功能,记忆,社会认知,和感官知觉,提示它们作为SCD神经影像学标志物的潜力。在这些ROI上训练的识别模型表现出卓越的性能,在发现数据集上实现超过93%的准确率,在独立测试数据集上超过87%。此外,数据集之间的交换实验揭示了判别ROI的大量重叠,突出了我们方法在不同人群中的稳健性。
    结论:我们的研究结果表明,IRBCFA可以作为量化灰质空间复杂性的有价值的工具,提供认知老化的见解,并帮助自动识别患有SCD的个体。该方法证明的通用性和鲁棒性使其成为神经退行性疾病研究的有前途的工具,并为临床应用提供了潜力。
    OBJECTIVE: Accurate identification of individuals with subjective cognitive decline (SCD) is crucial for early intervention and prevention of neurodegenerative diseases. Fractal dimensionality (FD) has emerged as a robust and replicable measure, surpassing traditional geometric metrics, in characterizing the intricate fractal geometrical properties of brain structure. Nevertheless, the effectiveness of FD in identifying individuals with SCD remains largely unclear. A 3D regional FD method can be suggested to characterize and quantify the spatial complexity of the precise gray matter, providing insights into cognitive aging and aiding in the automated identification of individuals with SCD.
    METHODS: This study introduces a novel integer ratio based 3D box-counting fractal analysis (IRBCFA) to quantify regional fractal dimensions (FDs) in structural magnetic resonance imaging (MRI) data. The innovative method overcomes limitations of conventional box-counting techniques by accommodating arbitrary box sizes, thereby enhancing the precision of FD estimation in small, yet neurologically significant, brain regions.
    RESULTS: The application of IRBCFA to two publicly available datasets, OASIS-3 and ADNI, consisting of 520 and 180 subjects, respectively. The method identified discriminative regions of interest (ROIs) predominantly within the limbic system, fronto-parietal region, occipito-temporal region, and basal ganglia-thalamus region. These ROIs exhibited significant correlations with cognitive functions, including executive functioning, memory, social cognition, and sensory perception, suggesting their potential as neuroimaging markers for SCD. The identification model trained on these ROIs demonstrated exceptional performance achieving over 93 % accuracy on the discovery dataset and exceeding 87 % on the independent testing dataset. Furthermore, an exchange experiment between datasets revealed a substantial overlap in discriminative ROIs, highlighting the robustness of our method across diverse populations.
    CONCLUSIONS: Our findings indicate that IRBCFA can serve as a valuable tool for quantifying the spatial complexity of gray matter, providing insights into cognitive aging and aiding in the automated identification of individuals with SCD. The demonstrated generalizability and robustness of this method position it as a promising tool for neurodegenerative disease research and offer potential for clinical applications.
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  • 文章类型: Journal Article
    心理理论(ToM)是理解他人的思想。移情是对他人情绪和感受的洞察。患有多发性硬化症(pwMS)的人可能会经历ToM和同理心受损。要调查ToM,同理心,以及它们与神经影像学的关系,神经心理学,和神经精神病学数据。使用RMET对ToM评估了41pwMS和41HC,EQ,BICAMS,HADS.使用Freesurfer从3TMRI扫描计算皮质和皮质下灰质体积。pwMS显示较低的EQ评分(44.82±11.9vs51.29±9.18,p=0.02)和较差的RMET表现(22.37±4.09vs24,47±2.93,p=0.011)。pwMS患者焦虑和抑郁较高。EQ与皮质下(杏仁核)和皮质(前扣带)体积相关。RMET与皮质体积相关(后扣带,语言)。在回归分析中,杏仁核体积是共情表现的单一预测因子(p=0.041)。社会认知测验与一般认知之间没有显着相关性。EQ与焦虑水平之间存在弱负相关(r=-0.342,p=0.038)。本研究表明,pwMS对ToM和移情有损害。MS中ToM和移情的表现与社会认知中涉及的关键大脑区域的体积有关。
    Theory of Mind (ToM) is understanding others\' minds. Empathy is an insight into emotions and feelings of others. Persons with multiple sclerosis (pwMS) may experience impairment in ToM and empathy. To investigate ToM, empathy, and their relationship with neuroimaging, neuropsychological, and neuropsychiatric data. 41 pwMS and 41 HC were assessed using RMET for ToM, EQ, BICAMS, HADS. Cortical and subcortical gray matter volumes were calculated with Freesurfer from 3T MRI scans. pwMS showed lower EQ scores (44.82 ± 11.9 vs 51.29 ± 9.18, p = 0.02) and worse RMET performance (22.37 ± 4.09 vs 24,47 ± 2.93, p = 0.011). Anxiety and depression were higher in pwMS. EQ correlated with subcortical (amygdala) and cortical (anterior cingulate) volumes. RMET correlated with cortical volumes (posterior cingulate, lingual). In regression analysis, amygdala volume was the single predictor of empathy performance (p = 0.041). There were no significant correlations between social cognitive tests and general cognition. A weak negative correlation was found between EQ and the level of anxiety (r = -0.342, p = 0.038) The present study indicates that pwMS have impairment on ToM and empathy. The performance of ToM and empathy in MS is linked to the volumes of critical brain areas involved in social cognition.
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  • 文章类型: Journal Article
    目的:脊髓性肌萎缩症(SMA)是最常见的单基因神经肌肉疾病之一,和发病机制,特别是大脑网络拓扑特性,仍然未知。本研究旨在使用个体水平的形态学脑网络分析来探索SMA中的脑神经网络机制。
    方法:通过使用基于Kullback-Leibler散度的相似性(KLDs)和基于Jesen-Shannon散度的相似性(JSDs)测量来估计GM体积分布的区域间相似性来构建个体水平灰质(GM)网络。基于自动解剖标记116和Hammersmith83地图集,对38个SMA2型和3型与健康和性别(38个通过图论方法分析了拓扑特性,并通过非参数置换检验在组之间进行了比较。此外,相关分析用于评估改变的拓扑指标与临床特征之间的关联.
    结果:与HC相比,尽管全局网络拓扑仍然保留在具有SMA的个体中,结节性质改变的大脑区域主要涉及右嗅觉回,右岛,双侧海马旁回,右杏仁核,右丘脑,左颞上回,左小脑小叶IV-V,双侧小脑小叶VI,右小脑小叶VII,和VermisVII和IX。进一步的相关分析显示右侧小脑小叶VII的结节程度与病程呈正相关,右侧杏仁核与Hammersmith功能运动量表(HFMSE)评分呈负相关。
    结论:我们的研究结果表明,拓扑重组可能优先考虑全局属性而不是节点属性,SMA中皮质-边缘-小脑回路的拓扑特性中断可能有助于进一步了解SMA背后的网络发病机制。
    OBJECTIVE: Spinal muscular atrophy (SMA) is one of the most common monogenic neuromuscular diseases, and the pathogenesis mechanisms, especially the brain network topological properties, remain unknown. This study aimed to use individual-level morphological brain network analysis to explore the brain neural network mechanisms in SMA.
    METHODS: Individual-level gray matter (GM) networks were constructed by estimating the interregional similarity of GM volume distribution using both Kullback-Leibler divergence-based similarity (KLDs) and Jesen-Shannon divergence-based similarity (JSDs) measurements based on Automated Anatomical Labeling 116 and Hammersmith 83 atlases for 38 individuals with SMA types 2 and 3 and 38 age- and sex-matched healthy controls (HCs). The topological properties were analyzed by the graph theory approach and compared between groups by a nonparametric permutation test. Additionally, correlation analysis was used to assess the associations between altered topological metrics and clinical characteristics.
    RESULTS: Compared with HCs, although global network topology remained preserved in individuals with SMA, brain regions with altered nodal properties mainly involved the right olfactory gyrus, right insula, bilateral parahippocampal gyrus, right amygdala, right thalamus, left superior temporal gyrus, left cerebellar lobule IV-V, bilateral cerebellar lobule VI, right cerebellar lobule VII, and vermis VII and IX. Further correlation analysis showed that the nodal degree of the right cerebellar lobule VII was positively correlated with the disease duration, and the right amygdala was negatively correlated with the Hammersmith Functional Motor Scale Expanded (HFMSE) scores.
    CONCLUSIONS: Our findings demonstrated that topological reorganization may prioritize global properties over nodal properties, and disrupted topological properties in the cortical-limbic-cerebellum circuit in SMA may help to further understand the network pathogenesis underlying SMA.
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  • 文章类型: Journal Article
    背景:心房颤动(AF)与认知障碍和痴呆的风险升高相关。了解与房颤相关的认知后遗症和大脑结构变化对于解决随之而来的医疗保健需求至关重要。
    结果:我们使用神经心理学评估和多模式神经影像学检查了1335名房颤患者和2683名匹配对照者。分析显示,房颤患者表现出执行功能缺陷,处理速度,和推理,伴随着皮质厚度的减少,细胞外游离水含量升高,广泛的白质异常,指示小血管病理。值得注意的是,脑结构差异在统计学上介导了AF与认知表现之间的关系。
    结论:将全面的分析方法与广泛的临床和磁共振成像数据相结合,我们的研究强调小血管病理学是房颤之间可能的统一联系,认知能力下降,大脑结构异常.这些见解可以为诊断方法提供信息,并激励有效治疗策略的持续实施。我们调查了1335名房颤(AF)患者和2683名匹配对照的神经心理学和多模式神经影像学数据。我们的分析揭示了与AF相关的认知注意领域的缺陷,执行功能,处理速度,和推理。房颤组的认知障碍伴随着结构性脑改变,包括皮质厚度和灰质体积减少。细胞外自由水含量增加以及白质完整性的广泛差异。大脑结构变化在统计学上介导了房颤和认知表现之间的联系,强调结构成像标志物作为房颤相关认知功能减退的诊断工具的潜力。
    BACKGROUND: Atrial fibrillation (AF) is associated with an elevated risk of cognitive impairment and dementia. Understanding the cognitive sequelae and brain structural changes associated with AF is vital for addressing ensuing health care needs.
    RESULTS: We examined 1335 stroke-free individuals with AF and 2683 matched controls using neuropsychological assessments and multimodal neuroimaging. The analysis revealed that individuals with AF exhibited deficits in executive function, processing speed, and reasoning, accompanied by reduced cortical thickness, elevated extracellular free-water content, and widespread white matter abnormalities, indicative of small vessel pathology. Notably, brain structural differences statistically mediated the relationship between AF and cognitive performance.
    CONCLUSIONS: Integrating a comprehensive analysis approach with extensive clinical and magnetic resonance imaging data, our study highlights small vessel pathology as a possible unifying link among AF, cognitive decline, and abnormal brain structure. These insights can inform diagnostic approaches and motivate the ongoing implementation of effective therapeutic strategies. Highlights We investigated neuropsychological and multimodal neuroimaging data of 1335 individuals with atrial fibrillation (AF) and 2683 matched controls. Our analysis revealed AF-associated deficits in cognitive domains of attention, executive function, processing speed, and reasoning. Cognitive deficits in the AF group were accompanied by structural brain alterations including reduced cortical thickness and gray matter volume, alongside increased extracellular free-water content as well as widespread differences of white matter integrity. Structural brain changes statistically mediated the link between AF and cognitive performance, emphasizing the potential of structural imaging markers as a diagnostic tool in AF-related cognitive decline.
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  • 文章类型: Journal Article
    本研究旨在评估阿尔茨海默病(AD)对区域性脑萎缩的易感性及其生物学机制。我们进行了数据驱动的荟萃分析,将来自三个数据集的3,118张结构磁共振图像进行组合,以获得稳健的萎缩模式。然后,我们引入了一组放射基因组分析,以研究AD萎缩模式的生物学基础。我们的结果表明海马体和杏仁核表现出最严重的萎缩,其次是时间,额叶,轻度认知障碍(MCI)和AD的枕叶。MCI的萎缩程度不如AD严重。与谷氨酸信号通路相关的一系列生物学过程,细胞应激反应,并通过基因集富集分析研究了突触的结构和功能。我们的研究有助于了解萎缩的表现,并更深入地了解导致萎缩的病理生理过程,为AD的进一步临床研究提供新的见解。
    The current study aimed to evaluate the susceptibility to regional brain atrophy and its biological mechanism in Alzheimer\'s disease (AD). We conducted data-driven meta-analyses to combine 3,118 structural magnetic resonance images from three datasets to obtain robust atrophy patterns. Then we introduced a set of radiogenomic analyses to investigate the biological basis of the atrophy patterns in AD. Our results showed that the hippocampus and amygdala exhibit the most severe atrophy, followed by the temporal, frontal, and occipital lobes in mild cognitive impairment (MCI) and AD. The extent of atrophy in MCI was less severe than that in AD. A series of biological processes related to the glutamate signaling pathway, cellular stress response, and synapse structure and function were investigated through gene set enrichment analysis. Our study contributes to understanding the manifestations of atrophy and a deeper understanding of the pathophysiological processes that contribute to atrophy, providing new insight for further clinical research on AD.
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  • 文章类型: Journal Article
    背景:丘脑在特发性宫颈肌张力障碍(iCD)的病理生理学中起着核心作用;然而,在此结构中发生的改变的性质在很大程度上仍然难以捉摸。使用结构磁共振成像(MRI)方法,我们检查了iCD患者的丘脑亚区/核区异常是否存在差异.
    方法:收集了37例iCD患者和37例健康对照(HC)的结构MRI数据。基于FreeSurfer程序对每个半球中的25个丘脑核进行自动分割。分析了iCD患者组间丘脑核体积的差异及其与临床信息的关系。
    结果:与HC相比,主要在中央内侧的丘脑核体积显着减少,中心,外侧膝状,内侧膝状,内侧腹侧,paracentral,旁肌,半生,在iCD患者中发现了腹内侧核(P<0.05,错误发现率得到纠正)。然而,iCD组丘脑核体积改变与临床特征无统计学意义的相关性.
    结论:本研究强调了iCD与丘脑体积变化相关的神经生物学机制。
    BACKGROUND: The thalamus has a central role in the pathophysiology of idiopathic cervical dystonia (iCD); however, the nature of alterations occurring within this structure remain largely elusive. Using a structural magnetic resonance imaging (MRI) approach, we examined whether abnormalities differ across thalamic subregions/nuclei in patients with iCD.
    METHODS: Structural MRI data were collected from 37 patients with iCD and 37 healthy controls (HCs). Automatic parcellation of 25 thalamic nuclei in each hemisphere was performed based on the FreeSurfer program. Differences in thalamic nuclei volumes between groups and their relationships with clinical information were analysed in patients with iCD.
    RESULTS: Compared to HCs, a significant reduction in thalamic nuclei volume primarily in central medial, centromedian, lateral geniculate, medial geniculate, medial ventral, paracentral, parafascicular, paratenial, and ventromedial nuclei was found in patients with iCD (P < 0.05, false discovery rate corrected). However, no statistically significant correlations were observed between altered thalamic nuclei volumes and clinical characteristics in iCD group.
    CONCLUSIONS: This study highlights the neurobiological mechanisms of iCD related to thalamic volume changes.
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  • 文章类型: Journal Article
    背景:原发性震颤(ET)和肌张力震颤(DT)是两种最常见的震颤疾病,由于类似的震颤症状,误诊非常常见。在这项研究中,我们使用脑灰质(GM)形态网络探索ET和DT的结构网络机制,并将其与机器学习模型相结合。
    方法:75例ET患者的3D-T1结构图像,71例DT患者,获得79名健康对照(HCs)。我们使用基于体素的形态计量学来获得GM图像,并基于基于Kullback-Leibler散度的相似性(KLS)方法构建了GM形态网络。我们用了转基因卷,形态关系,GM-KLS形态网络的全局拓扑特性作为输入特征。我们使用了三个分类器来执行分类任务。此外,我们对鉴别特征和临床特征进行了相关分析.
    结果:确定了16个形态关系特征和1个全局拓扑度量为判别特征,主要累及小脑-丘脑-皮层回路和基底节区。随机森林(RF)分类器在三分类任务中取得了最好的分类性能,达到78.7%的平均准确度(mACC),并随后用于二元分类任务。具体来说,RF分类器在区分ET与ET方面表现出强大的分类性能HC,ETvs.DT,和DTvs.HC,MCCs为83.0%,95.2%,和89.3%,分别。相关分析表明,4个鉴别特征与临床特征显著相关。
    结论:这项研究为ET和DT的结构网络机制提供了新的见解。它证明了将GM-KLS形态网络与机器学习模型相结合来区分ET的有效性,DT,和HCs。
    BACKGROUND: Essential tremor (ET) and dystonic tremor (DT) are the two most common tremor disorders, and misdiagnoses are very common due to similar tremor symptoms. In this study, we explore the structural network mechanisms of ET and DT using brain grey matter (GM) morphological networks and combine those with machine learning models.
    METHODS: 3D-T1 structural images of 75 ET patients, 71 DT patients, and 79 healthy controls (HCs) were acquired. We used voxel-based morphometry to obtain GM images and constructed GM morphological networks based on the Kullback-Leibler divergence-based similarity (KLS) method. We used the GM volumes, morphological relations, and global topological properties of GM-KLS morphological networks as input features. We employed three classifiers to perform the classification tasks. Moreover, we conducted correlation analysis between discriminative features and clinical characteristics.
    RESULTS: 16 morphological relations features and 1 global topological metric were identified as the discriminative features, and mainly involved the cerebello-thalamo-cortical circuits and the basal ganglia area. The Random Forest (RF) classifier achieved the best classification performance in the three-classification task, achieving a mean accuracy (mACC) of 78.7%, and was subsequently used for binary classification tasks. Specifically, the RF classifier demonstrated strong classification performance in distinguishing ET vs. HCs, ET vs. DT, and DT vs. HCs, with mACCs of 83.0 %, 95.2 %, and 89.3 %, respectively. Correlation analysis demonstrated that four discriminative features were significantly associated with the clinical characteristics.
    CONCLUSIONS: This study offers new insights into the structural network mechanisms of ET and DT. It demonstrates the effectiveness of combining GM-KLS morphological networks with machine learning models in distinguishing between ET, DT, and HCs.
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  • 文章类型: Journal Article
    大脑的形态在整个衰老过程中都会发生变化,利用大脑形态特征准确预测一个人的大脑年龄和性别可以帮助检测非典型的大脑模式。基于神经成像的大脑年龄估计通常用于评估个体相对于典型衰老轨迹的大脑健康,虽然从神经影像学数据中准确地分类性别可以为男性和女性之间内在的神经系统差异提供有价值的见解。在这项研究中,我们的目的是比较经典机器学习模型和量子机器学习方法变分量子电路在估计大脑年龄和基于结构磁共振成像数据预测性别方面的功效。我们使用组合和子数据集评估了六个经典机器学习模型以及量子机器学习模型。其中包括来自内部收集和公共来源的数据。参与者总数为1157人,年龄从14岁到89岁不等,性别分布为607名男性和550名女性。使用训练集和测试集在每个数据集内进行性能评估。与使用组合数据集时的经典机器学习算法相比,变分量子电路模型通常在估计大脑年龄和性别分类方面表现出优越的性能。此外,在基准子数据集中,与以前使用相同数据集进行脑年龄预测的研究相比,我们的方法表现出更好的性能.因此,我们的结果表明,变分量子算法在大脑年龄和性别预测方面都表现出与经典机器学习算法相当的有效性,潜在地提供减少的误差和提高的准确性。
    The morphology of the brain undergoes changes throughout the aging process, and accurately predicting a person\'s brain age and gender using brain morphology features can aid in detecting atypical brain patterns. Neuroimaging-based estimation of brain age is commonly used to assess an individual\'s brain health relative to a typical aging trajectory, while accurately classifying gender from neuroimaging data offers valuable insights into the inherent neurological differences between males and females. In this study, we aimed to compare the efficacy of classical machine learning models with that of a quantum machine learning method called a variational quantum circuit in estimating brain age and predicting gender based on structural magnetic resonance imaging data. We evaluated six classical machine learning models alongside a quantum machine learning model using both combined and sub-datasets, which included data from both in-house collections and public sources. The total number of participants was 1157, ranging from ages 14 to 89, with a gender distribution of 607 males and 550 females. Performance evaluation was conducted within each dataset using training and testing sets. The variational quantum circuit model generally demonstrated superior performance in estimating brain age and gender classification compared to classical machine learning algorithms when using the combined dataset. Additionally, in benchmark sub-datasets, our approach exhibited better performance compared to previous studies that utilized the same dataset for brain age prediction. Thus, our results suggest that variational quantum algorithms demonstrate comparable effectiveness to classical machine learning algorithms for both brain age and gender prediction, potentially offering reduced error and improved accuracy.
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  • 文章类型: Journal Article
    酒精使用障碍(AUD)是一个世界性的问题,也是最常见的物质使用障碍。长期饮酒可能会对身体产生负面影响,头脑,家庭,甚至社会。随着当前神经影像学方法的进步,越来越多的成像技术被用来客观地检测酒精中毒引起的脑损伤,并在诊断中起着至关重要的作用,预后,和AUD的治疗评估。本文对酒精依赖的主要非侵入性神经影像学方法的研究进行了整理和分析,结构磁共振成像,功能磁共振成像,和脑电图,以及最常见的非侵入性脑刺激-经颅磁刺激,并将文章与联合组内和组间研究穿插在一起,对未来的研究方向进行了展望。
    Alcohol use disorder (AUD) is a worldwide problem and the most common substance use disorder. Chronic alcohol consumption may have negative effects on the body, the mind, the family, and even society. With the progress of current neuroimaging methods, an increasing number of imaging techniques are being used to objectively detect brain impairment induced by alcoholism and serve a vital role in the diagnosis, prognosis, and treatment assessment of AUD. This article organizes and analyzes the research on alcohol dependence concerning the main noninvasive neuroimaging methods, structural magnetic resonance imaging, functional magnetic resonance imaging, and electroencephalography, as well as the most common noninvasive brain stimulation - transcranial magnetic stimulation, and intersperses the article with joint intra- and intergroup studies, providing an outlook on future research directions.
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  • 文章类型: Journal Article
    背景:阿尔茨海默病的特征是特定模式下的大规模结构变化。最近的研究开发了由结构特征相似的大脑区域构建的形态相似性网络,以表示大脑的结构组织。然而,很少有研究使用局部形态学特征来探索阿尔茨海默病的区域间结构相似性。
    方法:这里,我们从阿尔茨海默病神经影像学计划数据库中获取了342例认知正常参与者和276例阿尔茨海默病患者的T1加权MRI图像.定义了相邻体素之间的灰质强度关系,并将其转换为结构模式指数。我们进行了基于信息的相似性方法来评估大脑区域之间结构模式组织的结构相似性。此外,我们检查了大脑区域的结构随机性。最后,通过逐步回归法评估阿尔茨海默病患者的结构随机性与认知表现之间的关系。
    结果:与认知正常参与者相比,患有阿尔茨海默病的个体在双侧后扣带回表现出显著的结构模式改变,海马体,和嗅觉皮层。此外,患有阿尔茨海默病的个体显示,双侧脑岛与额叶区域的区域间结构相似性降低,而双侧海马与颞区和皮质下区域的区域间结构相似性增加。对于结构随机性,我们发现颞部和皮质下区域显著减少,枕部和额部区域显著增加.回归分析显示,5个脑区的结构随机性与阿尔茨海默病患者的简易精神状态量表评分相关。
    结论:我们的研究表明,患有阿尔茨海默病的个体改变了与脑岛和海马的微观结构模式和形态相似性。阿尔茨海默病个体的结构随机性随时间变化,额叶,和枕骨大脑区域。形态学上的相似性和随机性为阿尔茨海默病的大脑结构组织提供了有价值的见解。
    Alzheimer\'s disease is characterized by large-scale structural changes in a specific pattern. Recent studies developed morphological similarity networks constructed by brain regions similar in structural features to represent brain structural organization. However, few studies have used local morphological properties to explore inter-regional structural similarity in Alzheimer\'s disease.
    Here, we sourced T1-weighted MRI images of 342 cognitively normal participants and 276 individuals with Alzheimer\'s disease from the Alzheimer\'s Disease Neuroimaging Initiative database. The relationships of grey matter intensity between adjacent voxels were defined and converted to the structural pattern indices. We conducted the information-based similarity method to evaluate the structural similarity of structural pattern organization between brain regions. Besides, we examined the structural randomness on brain regions. Finally, the relationship between the structural randomness and cognitive performance of individuals with Alzheimer\'s disease was assessed by stepwise regression.
    Compared to cognitively normal participants, individuals with Alzheimer\'s disease showed significant structural pattern changes in the bilateral posterior cingulate gyrus, hippocampus, and olfactory cortex. Additionally, individuals with Alzheimer\'s disease showed that the bilateral insula had decreased inter-regional structural similarity with frontal regions, while the bilateral hippocampus had increased inter-regional structural similarity with temporal and subcortical regions. For the structural randomness, we found significant decreases in the temporal and subcortical areas and significant increases in the occipital and frontal regions. The regression analysis showed that the structural randomness of five brain regions was correlated with the Mini-Mental State Examination scores of individuals with Alzheimer\'s disease.
    Our study suggested that individuals with Alzheimer\'s disease alter micro-structural patterns and morphological similarity with the insula and hippocampus. Structural randomness of individuals with Alzheimer\'s disease changed in temporal, frontal, and occipital brain regions. Morphological similarity and randomness provide valuable insight into brain structural organization in Alzheimer\'s disease.
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