connectome

连接体
  • 文章类型: Journal Article
    背景:尽管白质高强度(WMH)与认知能力下降密切相关,这种关系的确切神经生物学机制尚未完全阐明.连接体研究已经确定了功能性大脑网络中的主要到跨模态的梯度,该梯度支持从感觉到认知的频谱。然而,连接体梯度结构是否随着WMH的进展而改变,以及这种改变与WMH相关的认知功能减退的相关性尚不清楚.
    方法:共有758名WMH个体完成了认知评估和静息状态功能MRI(rs-fMRI)。通过使用梯度分解框架,基于rs-fMRI重建功能连接体梯度。WMH的空间分布之间的相互关系,功能梯度测量,并探索了特定的认知领域。
    结果:随着WMH量的增加,执行功能(r=-0.135,p=0.001)和信息处理速度(r=-0.224,p=0.001)变得更差,梯度范围(r=-0.099,p=0.006),和方差(r=-0.121,p<0.001)的主要到跨模态梯度降低。较窄的梯度范围(r=0.131,p=0.001)和较小的梯度方差(r=0.136,p=0.001)对应于较差的执行功能。特别是,额叶/枕叶WMH与执行功能之间的关系部分由主要至跨模态梯度的梯度范围/方差介导.
    结论:这些发现表明WMH体积,初级到跨模态的梯度,和认知是相互关联的。额叶/枕骨WMH对执行功能的不利影响部分是由主要区域和跨模态区域之间的连接模式差异降低所介导的。
    BACKGROUND: Although white matter hyperintensity (WMH) is closely associated with cognitive decline, the precise neurobiological mechanisms underlying this relationship are not fully elucidated. Connectome studies have identified a primary-to-transmodal gradient in functional brain networks that support the spectrum from sensation to cognition. However, whether connectome gradient structure is altered as WMH progresses and how this alteration is associated with WMH-related cognitive decline remain unknown.
    METHODS: A total of 758 WMH individuals completed cognitive assessment and resting-state functional MRI (rs-fMRI). The functional connectome gradient was reconstructed based on rs-fMRI by using a gradient decomposition framework. Interrelations among the spatial distribution of WMH, functional gradient measures, and specific cognitive domains were explored.
    RESULTS: As the WMH volume increased, the executive function (r = -0.135, p = 0.001) and information-processing speed (r = -0.224, p = 0.001) became poorer, the gradient range (r = -0.099, p = 0.006), and variance (r = -0.121, p < 0.001) of the primary-to-transmodal gradient reduced. A narrower gradient range (r = 0.131, p = 0.001) and a smaller gradient variance (r = 0.136, p = 0.001) corresponded to a poorer executive function. In particular, the relationship between the frontal/occipital WMH and executive function was partly mediated by gradient range/variance of the primary-to-transmodal gradient.
    CONCLUSIONS: These findings indicated that WMH volume, the primary-to-transmodal gradient, and cognition were interrelated. The detrimental effect of the frontal/occipital WMH on executive function was partly mediated by the decreased differentiation of the connectivity pattern between the primary and transmodal areas.
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  • 文章类型: Journal Article
    人类皮质下在认知中起着关键作用,并广泛涉及许多精神疾病的病理生理学。然而,基于皮质下-皮质功能连接的功能梯度的遗传力仍然难以捉摸。这里,利用来自人类连接体项目(n=1023)和青少年大脑认知发育研究(n=936)数据集的双功能MRI(fMRI)数据,我们构建了大规模的皮质下功能梯度,并描绘了从单峰感觉/运动网络到跨模态关联网络的增加的主要功能梯度模式.我们观察到这个主要的功能梯度是可遗传的,对于年轻人和儿童,遗传力的强度沿皮层下的分层单峰-跨模态轴表现出异质模式。此外,采用机器学习框架,我们表明,皮质下主要功能梯度的这种异质性模式可以准确地辨别单卵双胞胎对和二卵双胞胎对之间的关系,准确率为76.2%(P<0.001)。功能梯度的遗传度与皮质下MRI衍生的T1加权/T2加权(T1w/T2w)比率映射所产生的解剖学髓鞘有关。这项研究通过揭示皮质下功能梯度的结构和遗传特性,为皮质下功能层次的生物学基础提供了新的见解。
    The human subcortex plays a pivotal role in cognition and is widely implicated in the pathophysiology of many psychiatric disorders. However, the heritability of functional gradients based on subcortico-cortical functional connectivity remains elusive. Here, leveraging twin functional MRI (fMRI) data from both the Human Connectome Project (n = 1023) and the Adolescent Brain Cognitive Development study (n = 936) datasets, we construct large-scale subcortical functional gradients and delineate an increased principal functional gradient pattern from unimodal sensory/motor networks to transmodal association networks. We observed that this principal functional gradient is heritable, and the strength of heritability exhibits a heterogeneous pattern along a hierarchical unimodal-transmodal axis in subcortex for both young adults and children. Furthermore, employing a machine learning framework, we show that this heterogeneous pattern of the principal functional gradient in subcortex can accurately discern the relationship between monozygotic twin pairs and dizygotic twin pairs with an accuracy of 76.2% (P < 0.001). The heritability of functional gradients is associated with the anatomical myelin proxied by MRI-derived T1-weighted/T2-weighted (T1w/T2w) ratio mapping in subcortex. This study provides new insights into the biological basis of subcortical functional hierarchy by revealing the structural and genetic properties of the subcortical functional gradients.
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  • 文章类型: Journal Article
    宏观连接体是物理网络,大脑区域之间的白质束。连接通常是加权的,它们的值被解释为通信效率的度量。在大多数应用中,基于成像特征(例如,扩散参数)来分配权重,或者使用统计模型来推断权重。在现实中,地面真相的重量是未知的,推动对替代边缘加权方案的探索。这里,我们探索多模态,基于回归的模型,赋予重建的纤维束有向权重和有符号权重。我们发现该模型很好地拟合了观测数据,性能优于一组空模型。估计的权重是特定于主题的,并且高度可靠,即使使用相对较少的训练样本进行拟合,和网络保持许多理想的特征。总之,我们提供了一个简单的框架来加权连接体数据,展示了其易于实施的同时,对其用于典型的连接体分析的实用性进行了基准测试,包括图论建模和大脑行为关联。
    The macroscale connectome is the network of physical, white-matter tracts between brain areas. The connections are generally weighted and their values interpreted as measures of communication efficacy. In most applications, weights are either assigned based on imaging features-e.g. diffusion parameters-or inferred using statistical models. In reality, the ground-truth weights are unknown, motivating the exploration of alternative edge weighting schemes. Here, we explore a multi-modal, regression-based model that endows reconstructed fiber tracts with directed and signed weights. We find that the model fits observed data well, outperforming a suite of null models. The estimated weights are subject-specific and highly reliable, even when fit using relatively few training samples, and the networks maintain a number of desirable features. In summary, we offer a simple framework for weighting connectome data, demonstrating both its ease of implementation while benchmarking its utility for typical connectome analyses, including graph theoretic modeling and brain-behavior associations.
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  • 文章类型: Journal Article
    脑肿瘤切除前的术前计划对于术后神经功能的保留至关重要。神经外科医生越来越多地在术前和术中使用先进的大脑绘图技术来描绘“雄辩”的大脑区域,这些区域在切除过程中应幸免。功能磁共振成像(fMRI)已成为一种常用的非侵入性方式,用于对患者的关键皮质区域进行个体映射,例如运动,语言,和视觉皮层。要映射运动功能,患者在执行各种运动任务时使用功能磁共振成像进行扫描,以识别对运动表现至关重要的大脑网络,但由于预先存在的缺陷,一些患者可能难以在扫描仪中执行任务。Connectome指纹识别(CF)是一种机器学习方法,可以学习大脑区域的静息状态功能网络与该区域针对特定任务的激活之间的关联;一旦构建了CF模型,可以从静息状态数据生成任务激活的个性化预测。在这里,我们利用CF对来自人类连接体项目(HCP)中208名受试者的高质量数据进行模型训练,并使用静息状态fMRI(rs-fMRI)数据预测我们的健康对照受试者(n=15)和术前患者(n=16)队列中的任务激活。通过健康对照和患者的任务fMRI数据验证了预测质量。我们发现,运动区域的任务预测与大多数健康受试者的实际任务激活相当(模型准确性约为任务稳定性的90%-100%),并且一些患者建议CF模型可以可靠地替换,其中任务数据不可能收集或受试者难以执行。在没有与任务相关的激活引起的情况下,我们还能够做出可靠的预测。研究结果表明,CF方法可用于预测样本外受试者的激活,跨站点和扫描仪,在患者人群中。这项工作支持CF模型应用于术前规划的可行性,同时也揭示了未来发展中需要应对的挑战。实践要点:使用连接体指纹进行精确的运动网络预测。精心训练的模型性能受任务功能磁共振成像数据稳定性的限制。成功的跨扫描仪预测和肿瘤患者的运动网络映射。
    Presurgical planning prior to brain tumor resection is critical for the preservation of neurologic function post-operatively. Neurosurgeons increasingly use advanced brain mapping techniques pre- and intra-operatively to delineate brain regions which are \"eloquent\" and should be spared during resection. Functional MRI (fMRI) has emerged as a commonly used non-invasive modality for individual patient mapping of critical cortical regions such as motor, language, and visual cortices. To map motor function, patients are scanned using fMRI while they perform various motor tasks to identify brain networks critical for motor performance, but it may be difficult for some patients to perform tasks in the scanner due to pre-existing deficits. Connectome fingerprinting (CF) is a machine-learning approach that learns associations between resting-state functional networks of a brain region and the activations in the region for specific tasks; once a CF model is constructed, individualized predictions of task activation can be generated from resting-state data. Here we utilized CF to train models on high-quality data from 208 subjects in the Human Connectome Project (HCP) and used this to predict task activations in our cohort of healthy control subjects (n = 15) and presurgical patients (n = 16) using resting-state fMRI (rs-fMRI) data. The prediction quality was validated with task fMRI data in the healthy controls and patients. We found that the task predictions for motor areas are on par with actual task activations in most healthy subjects (model accuracy around 90%-100% of task stability) and some patients suggesting the CF models can be reliably substituted where task data is either not possible to collect or hard for subjects to perform. We were also able to make robust predictions in cases in which there were no task-related activations elicited. The findings demonstrate the utility of the CF approach for predicting activations in out-of-sample subjects, across sites and scanners, and in patient populations. This work supports the feasibility of the application of CF models to presurgical planning, while also revealing challenges to be addressed in future developments. PRACTITIONER POINTS: Precision motor network prediction using connectome fingerprinting. Carefully trained models\' performance limited by stability of task-fMRI data. Successful cross-scanner predictions and motor network mapping in patients with tumor.
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  • 文章类型: Journal Article
    小脑与社交能力和自闭症有关。鉴于小脑通过小脑-丘脑-皮质环连接到皮质,参与社交互动的小脑和皮质区域之间的连通性,也就是说,右颞顶叶交界处(rTPJ)已在自闭症患者中进行了研究,他们遭受社交能力的典型缺陷。然而,现有的分类小样本研究,由于自闭症的固有异质性,病例对照比较产生了不一致的结果,这表明调查临床维度与小脑-rTPJ功能连接的关系可能更相关。因此,我们的目的是研究小脑和rTPJ之间的功能连接,在诊断样本中,从维度角度关注其与社交能力的关联。我们分析了结构磁共振成像(MRI)和功能磁共振成像(fMRI)扫描在自然电影观看过程中从一个大的诊断数据集,健康大脑网络(HBN)并检查了小脑-rTPJ功能连接与社会反应性量表(SRS)测量的社交能力之间的关联。我们进行了单变量种子-体素分析,多元典型相关分析(CCA),和预测支持向量回归(SVR)。我们在结构分析中包括1404名受试者(年龄:10.516±3.034,范围:5.822-21.820,506名女性)和414名受试者(年龄:11.260±3.318岁,范围:6.020-21.820,161名女性)。我们的CCA模型揭示了小脑-rTPJ功能连接之间的显著关联,全面智商(FSIQ)和SRS评分。然而,这种效应主要由SVR和单变量种子-体素分析所提示的FSIQ驱动.我们还证明了rTPJ的特异性以及结构解剖学在此关联中的影响。我们的结果表明,小脑-rTPJ连通性之间存在复杂的关系,社会绩效和智商。这种关系特定于小脑-rTPJ连通性,很大程度上与这两个区域的结构解剖有关。实践要点:我们分析了儿科诊断样本中的小脑-右颞顶交界(rTPJ)连接。我们发现小脑和rTPJ连通性之间存在复杂的关系,社会绩效和智商。小脑和rTPJ功能连接与这两个区域的结构解剖有关。
    The cerebellum has been involved in social abilities and autism. Given that the cerebellum is connected to the cortex via the cerebello-thalamo-cortical loop, the connectivity between the cerebellum and cortical regions involved in social interactions, that is, the right temporo-parietal junction (rTPJ) has been studied in individuals with autism, who suffer from prototypical deficits in social abilities. However, existing studies with small samples of categorical, case-control comparisons have yielded inconsistent results due to the inherent heterogeneity of autism, suggesting that investigating how clinical dimensions are related to cerebellar-rTPJ functional connectivity might be more relevant. Therefore, our objective was to study the functional connectivity between the cerebellum and rTPJ, focusing on its association with social abilities from a dimensional perspective in a transdiagnostic sample. We analyzed structural magnetic resonance imaging (MRI) and functional MRI (fMRI) scans obtained during naturalistic films watching from a large transdiagnostic dataset, the Healthy Brain Network (HBN), and examined the association between cerebellum-rTPJ functional connectivity and social abilities measured with the social responsiveness scale (SRS). We conducted univariate seed-to-voxel analysis, multivariate canonical correlation analysis (CCA), and predictive support vector regression (SVR). We included 1404 subjects in the structural analysis (age: 10.516 ± 3.034, range: 5.822-21.820, 506 females) and 414 subjects in the functional analysis (age: 11.260 ± 3.318 years, range: 6.020-21.820, 161 females). Our CCA model revealed a significant association between cerebellum-rTPJ functional connectivity, full-scale IQ (FSIQ) and SRS scores. However, this effect was primarily driven by FSIQ as suggested by SVR and univariate seed-to-voxel analysis. We also demonstrated the specificity of the rTPJ and the influence of structural anatomy in this association. Our results suggest that there is a complex relationship between cerebellum-rTPJ connectivity, social performance and IQ. This relationship is specific to the cerebellum-rTPJ connectivity, and is largely related to structural anatomy in these two regions. PRACTITIONER POINTS: We analyzed cerebellum-right temporoparietal junction (rTPJ) connectivity in a pediatric transdiagnostic sample. We found a complex relationship between cerebellum and rTPJ connectivity, social performance and IQ. Cerebellum and rTPJ functional connectivity is related to structural anatomy in these two regions.
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  • 文章类型: Journal Article
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  • 文章类型: Journal Article
    妄想是精神分裂症的一个重要特征,这可能源于认知偏见。工作记忆是认知的核心基础,与妄想密切相关。然而,关于精神分裂症中WM与妄想之间关系的神经机制的知识研究甚少。招募了230名精神分裂症患者(数据集1:n=130;数据集2:n=100),并扫描了N-backWM任务。我们构建了WM相关的全脑功能连接体,并进行了基于连接体的预测模型(CPM)来检测妄想相关网络,并在数据集1中建立了相关模型。已识别的网络和妄想严重程度之间的相关性进行了单独的测试,数据集2的异质性样本,主要包括早发性精神分裂症。已识别的与妄想相关的网络与数据集1中SAPS的NO.20项测量的妄想严重程度具有很强的相关性(r=0.433,p=2.7×10-7,排列-p=0.035),并且可以通过使用另一个妄想测量在同一数据集中进行验证,也就是说,PANSS的P1项(r=0.362,p=0.0005)。它可以在另一个独立的数据集2(SAPS的NO.20项,r=0.31,p=0.0024,PANSS的P1项,r=0.27,p=0.0074)中进行验证。与错觉相关的网络包括默认模式网络(DMN)之间的连接,环带-可操作网络(CON),显著性网络(SN),皮质下,感觉-躯体运动网络(SMN),和视觉网络。我们成功建立了基于WM相关功能连接组的个体化妄想的相关模型,并显示了妄想严重程度与DMN内的连接之间的强相关性,CON,SMN,和皮层下网络。
    Delusion is an important feature of schizophrenia, which may stem from cognitive biases. Working memory (WM) is the core foundation of cognition, closely related to delusion. However, the knowledge of neural mechanisms underlying the relationship between WM and delusion in schizophrenia is poorly investigated. Two hundred and thirty patients with schizophrenia (dataset 1: n = 130; dataset 2: n = 100) were enrolled and scanned for an N-back WM task. We constructed the WM-related whole-brain functional connectome and conducted Connectome-based Predictive Modelling (CPM) to detect the delusion-related networks and built the correlation model in dataset 1. The correlation between identified networks and delusion severity was tested in a separate, heterogeneous sample of dataset 2 that mainly includes early-onset schizophrenia. The identified delusion-related network has a strong correlation with delusion severity measured by the NO.20 item of SAPS in dataset 1 (r = 0.433, p = 2.7 × 10-7, permutation-p = 0.035), and can be validated in the same dataset by using another delusion measurement, that is, the P1 item of PANSS (r = 0.362, p = 0.0005). It can be validated in another independent dataset 2 (NO.20 item of SAPS for r = 0.31, p = 0.0024, P1 item of PANSS for r = 0.27, p = 0.0074). The delusion-related network comprises the connections between the default mode network (DMN), cingulo-opercular network (CON), salience network (SN), subcortical, sensory-somatomotor network (SMN), and visual networks. We successfully established correlation models of individualized delusion based on the WM-related functional connectome and showed a strong correlation between delusion severity and connections within the DMN, CON, SMN, and subcortical network.
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  • 文章类型: Journal Article
    大脑活动随着时间的推移不断波动,即使大脑处于受控状态(例如,实验诱导的)状态。近年来,人们对理解这些时间变化的复杂性越来越感兴趣,例如,关于脑功能的发育变化或健康人群和临床人群的人与人之间的差异。然而,大脑信号变异性和复杂性测量的心理测量可靠性-这是强大的个体差异以及纵向研究的重要前提-尚未得到充分研究。我们检查了无任务(静息状态)BOLDfMRI的可靠性(半相关性)和重测相关性,以及来自HumanConnectome项目的七个功能任务数据集的半相关性,以评估其可靠性。我们观察到从休息和任务fMRI激活时间序列得出的时间变异性度量的良好到极好的分裂半可靠性(标准偏差,平均绝对连续差,均方连续差),在休息条件下,相同变异性度量的中度测试-重测相关性。脑信号复杂性估计(几个熵和维数度量)显示出中等到良好的可靠性,休息和任务激活条件。我们还为时间分辨(动态)功能连通性时间序列计算了相同的度量,并观察到变异性度量的中等到良好的可靠性,但从功能连通性时间序列得出的复杂性度量的可靠性较差。全球(即,皮质区域的平均值)测量倾向于显示出比特定区域的变异性或复杂性估计更高的可靠性。较大的皮质下区域表现出与皮质区域相似的可靠性,但是小区域的可靠性较低,尤其是复杂性措施。最后,我们还表明,可靠性评分仅在微小程度上依赖于扫描长度的差异,并在不同的分割和去噪策略中复制我们的结果.这些结果表明,BOLD激活时间序列的变异性和复杂性是非常适合个体差异研究的稳健措施。随着时间的推移,全球功能连通性的时间变异性提供了一种重要的新颖方法来稳健地量化脑功能的动力学。实践要点:BOLD激活的变异性和复杂性度量显示出良好的半分裂可靠性和中等的重测可靠性。全球功能连通性随时间变化的测量可以稳健地量化神经动力学。功能磁共振成像数据的长度对可靠性只有很小的影响。
    Brain activity continuously fluctuates over time, even if the brain is in controlled (e.g., experimentally induced) states. Recent years have seen an increasing interest in understanding the complexity of these temporal variations, for example with respect to developmental changes in brain function or between-person differences in healthy and clinical populations. However, the psychometric reliability of brain signal variability and complexity measures-which is an important precondition for robust individual differences as well as longitudinal research-is not yet sufficiently studied. We examined reliability (split-half correlations) and test-retest correlations for task-free (resting-state) BOLD fMRI as well as split-half correlations for seven functional task data sets from the Human Connectome Project to evaluate their reliability. We observed good to excellent split-half reliability for temporal variability measures derived from rest and task fMRI activation time series (standard deviation, mean absolute successive difference, mean squared successive difference), and moderate test-retest correlations for the same variability measures under rest conditions. Brain signal complexity estimates (several entropy and dimensionality measures) showed moderate to good reliabilities under both, rest and task activation conditions. We calculated the same measures also for time-resolved (dynamic) functional connectivity time series and observed moderate to good reliabilities for variability measures, but poor reliabilities for complexity measures derived from functional connectivity time series. Global (i.e., mean across cortical regions) measures tended to show higher reliability than region-specific variability or complexity estimates. Larger subcortical regions showed similar reliability as cortical regions, but small regions showed lower reliability, especially for complexity measures. Lastly, we also show that reliability scores are only minorly dependent on differences in scan length and replicate our results across different parcellation and denoising strategies. These results suggest that the variability and complexity of BOLD activation time series are robust measures well-suited for individual differences research. Temporal variability of global functional connectivity over time provides an important novel approach to robustly quantifying the dynamics of brain function. PRACTITIONER POINTS: Variability and complexity measures of BOLD activation show good split-half reliability and moderate test-retest reliability. Measures of variability of global functional connectivity over time can robustly quantify neural dynamics. Length of fMRI data has only a minor effect on reliability.
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  • 文章类型: Journal Article
    了解神经精神症状(NPSs)和相关大脑异常的异质性对于有效管理和治疗痴呆症至关重要。
    确定与神经精神亚综合征相关的具有不同功能连接的痴呆亚型。
    使用开放获取系列成像研究-3(OASIS-3;招募始于2005年)和阿尔茨海默病神经成像计划(ADNI;招募始于2004年)数据库中的数据,这项横断面研究分析了静息状态功能磁共振成像(fMRI)扫描,临床评估,和42至95岁参与者的神经心理学测量。功能磁共振成像数据从2022年7月至2024年2月进行处理,从2022年8月至2024年3月进行二次分析。招募没有医疗条件或MRI医学禁忌症的参与者。
    进行了多变量稀疏典型相关分析,以识别功能连接信息的NPS子综合征,包括行为和焦虑子综合征。随后,对获得的潜在连接谱进行聚类分析,以揭示神经生理亚型,并检查了亚型之间异常连接和表型特征的差异。
    在OASIS-3的1098名参与者中,包括177名基线时具有fMRI和至少1NPS的个体(78名女性[44.1%];中位[IQR]年龄,72[67-78]年)作为发现数据集。确定了2种神经精神亚综合征:行为(r=0.22;P=.002;P为排列=.007)和焦虑(r=0.19;P=.01;P为排列=.006)来自连通性NPS相关潜在特征的亚综合征。行为子综合征的特征是主要涉及默认模式(网络内贡献,相关系数=54)和躯体运动(网络内贡献=58)网络以及涉及夜间行为障碍的NPS(R=-0.29;P<.001),搅动(R=-0.28;P=.001),和冷漠(R=-0.23;P=0.007)。焦虑子综合征主要包括涉及视觉网络的连接(网络内贡献=53)和焦虑相关的NPS(R=0.36;P<.001)。通过沿着这两个亚综合征相关的连通性潜在特征聚类个体,发现3个亚型(亚型1:45名参与者;亚型2:43名参与者;亚型3:66名参与者)。3型痴呆症患者表现出与健康个体相似的大脑连通性和认知行为模式。然而,与健康个体相比,1亚型和2亚型痴呆患者在额叶控制网络(FPC)和躯体运动网络方面的功能失调性连接谱不同(对于1亚型,SMN和FPC的z值总和差异为230,对于2亚型,SMN和视觉网络的z值总和差异为173).这些功能失调的连接模式与基线痴呆严重程度的差异相关(例如,3型NPS总分的中位数[IQR]为2[2-7],1型为6[3-8];2型P=.04和5.5[3-11];P=.03)和认知障碍和行为功能障碍的纵向进展(例如,时间和亚型与方向之间的总体相互作用关联为F=4.88;P=.008;使用时间×亚型3相互作用项作为参考水平:β=0.05;时间×亚型2的t=2.6;P=.01)。使用193名参与者的复制数据集(127名女性[65.8%];中位[IQR]年龄,74[69-77]年),由OASIS-3的154名新发布参与者和ADNI的39名参与者组成。
    这些发现可能提供一个新的框架来解开痴呆的神经精神和脑功能异质性,提供了一个有希望的途径,以改善临床管理,并促进及时开发针对痴呆症患者的有针对性的干预措施。
    UNASSIGNED: Understanding the heterogeneity of neuropsychiatric symptoms (NPSs) and associated brain abnormalities is essential for effective management and treatment of dementia.
    UNASSIGNED: To identify dementia subtypes with distinct functional connectivity associated with neuropsychiatric subsyndromes.
    UNASSIGNED: Using data from the Open Access Series of Imaging Studies-3 (OASIS-3; recruitment began in 2005) and Alzheimer Disease Neuroimaging Initiative (ADNI; recruitment began in 2004) databases, this cross-sectional study analyzed resting-state functional magnetic resonance imaging (fMRI) scans, clinical assessments, and neuropsychological measures of participants aged 42 to 95 years. The fMRI data were processed from July 2022 to February 2024, with secondary analysis conducted from August 2022 to March 2024. Participants without medical conditions or medical contraindications for MRI were recruited.
    UNASSIGNED: A multivariate sparse canonical correlation analysis was conducted to identify functional connectivity-informed NPS subsyndromes, including behavioral and anxiety subsyndromes. Subsequently, a clustering analysis was performed on obtained latent connectivity profiles to reveal neurophysiological subtypes, and differences in abnormal connectivity and phenotypic profiles between subtypes were examined.
    UNASSIGNED: Among 1098 participants in OASIS-3, 177 individuals who had fMRI and at least 1 NPS at baseline were included (78 female [44.1%]; median [IQR] age, 72 [67-78] years) as a discovery dataset. There were 2 neuropsychiatric subsyndromes identified: behavioral (r = 0.22; P = .002; P for permutation = .007) and anxiety (r = 0.19; P = .01; P for permutation = .006) subsyndromes from connectivity NPS-associated latent features. The behavioral subsyndrome was characterized by connections predominantly involving the default mode (within-network contribution by summed correlation coefficients = 54) and somatomotor (within-network contribution = 58) networks and NPSs involving nighttime behavior disturbance (R = -0.29; P < .001), agitation (R = -0.28; P = .001), and apathy (R = -0.23; P = .007). The anxiety subsyndrome mainly consisted of connections involving the visual network (within-network contribution = 53) and anxiety-related NPSs (R = 0.36; P < .001). By clustering individuals along these 2 subsyndrome-associated connectivity latent features, 3 subtypes were found (subtype 1: 45 participants; subtype 2: 43 participants; subtype 3: 66 participants). Patients with dementia of subtype 3 exhibited similar brain connectivity and cognitive behavior patterns to those of healthy individuals. However, patients with dementia of subtypes 1 and 2 had different dysfunctional connectivity profiles involving the frontoparietal control network (FPC) and somatomotor network (the difference by summed z values was 230 within the SMN and 173 between the SMN and FPC for subtype 1 and 473 between the SMN and visual network for subtype 2) compared with those of healthy individuals. These dysfunctional connectivity patterns were associated with differences in baseline dementia severity (eg, the median [IQR] of the total score of NPSs was 2 [2-7] for subtype 3 vs 6 [3-8] for subtype 1; P = .04 and 5.5 [3-11] for subtype 2; P = .03) and longitudinal progression of cognitive impairment and behavioral dysfunction (eg, the overall interaction association between time and subtypes to orientation was F = 4.88; P = .008; using the time × subtype 3 interaction item as the reference level: β = 0.05; t = 2.6 for time × subtype 2; P = .01). These findings were further validated using a replication dataset of 193 participants (127 female [65.8%]; median [IQR] age, 74 [69-77] years) consisting of 154 newly released participants from OASIS-3 and 39 participants from ADNI.
    UNASSIGNED: These findings may provide a novel framework to disentangle the neuropsychiatric and brain functional heterogeneity of dementia, offering a promising avenue to improve clinical management and facilitate the timely development of targeted interventions for patients with dementia.
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  • 文章类型: Journal Article
    节肢动物蘑菇体作为代表嗅觉刺激并将其与偶然事件联系起来的扩展层得到了充分研究。然而,果蝇中8%的蘑菇体Kenyon细胞主要接受视觉输入,其功能尚不清楚。这里,我们使用FlyWire成人全脑连接体识别视觉Kenyon细胞的输入。半球和连接体之间的输入库相似,某些输入被高度高估。Kenyon细胞突触前的许多视觉神经元具有较大的感受野,而中间神经元输入接收空间受限的信号,这些信号可以被调谐到特定的视觉特征。个体视觉Kenyon细胞从视觉通道的组合中随机采样稀疏输入,包括多个视叶神经痛。这些连接模式表明蘑菇体内的视觉编码,比如嗅觉编码,是稀疏的,分布式,和组合。然而,对较小的视觉Kenyon细胞群体的特定输入库表明视觉刺激的编码受限。
    The arthropod mushroom body is well-studied as an expansion layer representing olfactory stimuli and linking them to contingent events. However, 8% of mushroom body Kenyon cells in Drosophila melanogaster receive predominantly visual input, and their function remains unclear. Here, we identify inputs to visual Kenyon cells using the FlyWire adult whole-brain connectome. Input repertoires are similar across hemispheres and connectomes with certain inputs highly overrepresented. Many visual neurons presynaptic to Kenyon cells have large receptive fields, while interneuron inputs receive spatially restricted signals that may be tuned to specific visual features. Individual visual Kenyon cells randomly sample sparse inputs from combinations of visual channels, including multiple optic lobe neuropils. These connectivity patterns suggest that visual coding in the mushroom body, like olfactory coding, is sparse, distributed, and combinatorial. However, the specific input repertoire to the smaller population of visual Kenyon cells suggests a constrained encoding of visual stimuli.
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