Magnetoencephalography

脑磁图
  • 文章类型: Journal Article
    背景:尽管平行研究表明淀粉样蛋白-β积累,皮质神经生理信号的改变,和阿尔茨海默病(AD)中的多系统神经递质破坏,这些现象之间的关系仍然不清楚。
    方法:使用脑磁图,正电子发射断层扫描,和19种神经递质的地图集,我们研究了神经生理学改变之间的排列,淀粉样β沉积,和皮质的神经化学梯度。
    结果:在轻度认知障碍和AD患者中,皮质节律的变化在地形学上与胆碱能,血清素能,和多巴胺能系统。这些排列与临床损伤的严重程度相关。此外,皮质淀粉样蛋白-β斑块优先沿神经化学边界沉积,影响神经生理学改变与毒蕈碱乙酰胆碱受体的关系。大多数淀粉样蛋白-β-神经化学和α-带神经生理化学比对在无症状淀粉样蛋白-β积累的个体的独立数据集中复制。
    结论:我们的研究结果表明,AD病理与化学神经调质系统的皮质分布在地形图上一致,并随临床严重程度而变化。对潜在的药物治疗途径有影响。
    结论:阿尔茨海默病患者皮质节律的变化是沿着神经化学边界组织的。这些排列的强度与临床症状严重程度有关。淀粉样蛋白-β(Aβ)的沉积与类似的神经递质系统一致。Aβ沉积介导β节律与胆碱能系统的排列。大多数比对在具有临床前阿尔茨海默病病理学的参与者中复制。
    BACKGROUND: Despite parallel research indicating amyloid-β accumulation, alterations in cortical neurophysiological signaling, and multi-system neurotransmitter disruptions in Alzheimer\'s disease (AD), the relationships between these phenomena remains unclear.
    METHODS: Using magnetoencephalography, positron emission tomography, and an atlas of 19 neurotransmitters, we studied the alignment between neurophysiological alterations, amyloid-β deposition, and the neurochemical gradients of the cortex.
    RESULTS: In patients with mild cognitive impairment and AD, changes in cortical rhythms were topographically aligned with cholinergic, serotonergic, and dopaminergic systems. These alignments correlated with the severity of clinical impairments. Additionally, cortical amyloid-β plaques were preferentially deposited along neurochemical boundaries, influencing how neurophysiological alterations align with muscarinic acetylcholine receptors. Most of the amyloid-β-neurochemical and alpha-band neuro-physio-chemical alignments replicated in an independent dataset of individuals with asymptomatic amyloid-β accumulation.
    CONCLUSIONS: Our findings demonstrate that AD pathology aligns topographically with the cortical distribution of chemical neuromodulator systems and scales with clinical severity, with implications for potential pharmacotherapeutic pathways.
    CONCLUSIONS: Changes in cortical rhythms in Alzheimer\'s are organized along neurochemical boundaries. The strength of these alignments is related to clinical symptom severity. Deposition of amyloid-β (Aβ) is aligned with similar neurotransmitter systems. Aβ deposition mediates the alignment of beta rhythms with cholinergic systems. Most alignments replicate in participants with pre-clinical Alzheimer\'s pathology.
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  • 文章类型: Journal Article
    由于EEG/MEG对浅表区域和皮质下结构的空间配置的更高灵敏度,来自深层发生器的癫痫活动的电/磁脑图(EEG/MEG)源成像(EMSI)通常具有挑战性。我们先前证明了均值上的相干最大熵(cMEM)方法精确定位浅层皮层发生器及其空间范围的能力。这里,我们提出了一种深度加权自适应的cMEM,以更准确地定位深度生成器。使用癫痫活动的真实MEG/高密度EEG(HD-EEG)模拟和局灶性癫痫患者的实际MEG/HD-EEG记录来评估这些方法。我们在MEM框架中加入了深度加权,以补偿其对表面生成器的偏好。我们还包括了两个海马的网格,作为源模型中的附加深层结构。我们为MEG和HD-EEG生成了5400次发作间癫痫放电的真实模拟,涉及广泛的空间范围和信噪比(SNR)水平,在研究EMSI对16例患者的临床HD-EEG和14例患者的MEG之前。通过目视检查标记临床发作间癫痫放电。我们应用了三种EMSI方法:cMEM,深度加权cMEM和深度加权最小范数估计(MNE)。地面实况被定义为真实的模拟发生器或基于患者可用的临床信息的绘制区域。对于深层来源,与cMEM和深度加权MNE相比,深度加权cMEM改进了定位,而深度加权cMEM不会降低浅表区域的定位精度。对于患者数据,我们观察到深度源的本地化有所改善,尤其是内侧颞叶癫痫患者,cMEM未能重建海马中的初始发生器。深度加权对于MEG(梯度计)比HD-EEG更为重要。当考虑MEM的小波扩展的深度加权时,发现了类似的发现。总之,深度加权cMEM改善了深层源的定位,而不会或最小程度地降低了浅层源的定位。对于癫痫患者,使用MEG和HD-EEG以及临床MEG和HD-EEG进行的广泛模拟证明了这一点。
    Electro/Magneto-EncephaloGraphy (EEG/MEG) source imaging (EMSI) of epileptic activity from deep generators is often challenging due to the higher sensitivity of EEG/MEG to superficial regions and to the spatial configuration of subcortical structures. We previously demonstrated the ability of the coherent Maximum Entropy on the Mean (cMEM) method to accurately localize the superficial cortical generators and their spatial extent. Here, we propose a depth-weighted adaptation of cMEM to localize deep generators more accurately. These methods were evaluated using realistic MEG/high-density EEG (HD-EEG) simulations of epileptic activity and actual MEG/HD-EEG recordings from patients with focal epilepsy. We incorporated depth-weighting within the MEM framework to compensate for its preference for superficial generators. We also included a mesh of both hippocampi, as an additional deep structure in the source model. We generated 5400 realistic simulations of interictal epileptic discharges for MEG and HD-EEG involving a wide range of spatial extents and signal-to-noise ratio (SNR) levels, before investigating EMSI on clinical HD-EEG in 16 patients and MEG in 14 patients. Clinical interictal epileptic discharges were marked by visual inspection. We applied three EMSI methods: cMEM, depth-weighted cMEM and depth-weighted minimum norm estimate (MNE). The ground truth was defined as the true simulated generator or as a drawn region based on clinical information available for patients. For deep sources, depth-weighted cMEM improved the localization when compared to cMEM and depth-weighted MNE, whereas depth-weighted cMEM did not deteriorate localization accuracy for superficial regions. For patients\' data, we observed improvement in localization for deep sources, especially for the patients with mesial temporal epilepsy, for which cMEM failed to reconstruct the initial generator in the hippocampus. Depth weighting was more crucial for MEG (gradiometers) than for HD-EEG. Similar findings were found when considering depth weighting for the wavelet extension of MEM. In conclusion, depth-weighted cMEM improved the localization of deep sources without or with minimal deterioration of the localization of the superficial sources. This was demonstrated using extensive simulations with MEG and HD-EEG and clinical MEG and HD-EEG for epilepsy patients.
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  • 文章类型: Journal Article
    这项研究评估了在基于电导的规范微电路模型下,脑磁图(MEG)的静息状态动态因果模型(DCM)的可靠性,在后验参数估计和模型证据方面。我们使用来自两个会话的静息状态MEG数据,相隔两周,来自一个由阿尔茨海默病引起的受试者间高差异的队列。我们的重点不是疾病的影响,但在方法的可靠性(如主体内会话协议)上,这对未来的疾病进展和药物干预研究至关重要。为了评估一级DCM的可靠性,我们比较与受试者特定自由能之间的协方差相关的模型证据(即,模型的“质量”)与没有类间相关性的对比。然后,我们使用参数经验贝叶斯(PEB)来研究受试者之间推断的DCM参数概率分布之间的差异。具体来说,我们检查了支持或反对参数差异的证据(I)受试者内部,会内,和纪元之间;(Ii)受试者内部会话之间;和(Iii)受试者之间的现场内,适应参数估计之间的条件依赖性。我们表明,对于时间接近的数据,在类似的情况下,超过95%的推断DCM参数不太可能不同,在会话中谈到相互的可预测性。使用PEB,我们显示了“可靠性”的常规定义与推断模型参数之间的条件依赖性之间的相互关系。我们的分析证实了基于电导的DCM对静息状态神经生理数据的可靠性和可重复性。在这方面,内隐生成模型适用于神经和精神疾病的介入和纵向研究。
    This study assesses the reliability of resting-state dynamic causal modelling (DCM) of magnetoencephalography (MEG) under conductance-based canonical microcircuit models, in terms of both posterior parameter estimates and model evidence. We use resting-state MEG data from two sessions, acquired 2 weeks apart, from a cohort with high between-subject variance arising from Alzheimer\'s disease. Our focus is not on the effect of disease, but on the reliability of the methods (as within-subject between-session agreement), which is crucial for future studies of disease progression and drug intervention. To assess the reliability of first-level DCMs, we compare model evidence associated with the covariance among subject-specific free energies (i.e., the \'quality\' of the models) with versus without interclass correlations. We then used parametric empirical Bayes (PEB) to investigate the differences between the inferred DCM parameter probability distributions at the between subject level. Specifically, we examined the evidence for or against parameter differences (i) within-subject, within-session, and between-epochs; (ii) within-subject between-session; and (iii) within-site between-subjects, accommodating the conditional dependency among parameter estimates. We show that for data acquired close in time, and under similar circumstances, more than 95% of inferred DCM parameters are unlikely to differ, speaking to mutual predictability over sessions. Using PEB, we show a reciprocal relationship between a conventional definition of \'reliability\' and the conditional dependency among inferred model parameters. Our analyses confirm the reliability and reproducibility of the conductance-based DCMs for resting-state neurophysiological data. In this respect, the implicit generative modelling is suitable for interventional and longitudinal studies of neurological and psychiatric disorders.
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  • 文章类型: Journal Article
    脑磁图(MEG)是一种非侵入性神经成像技术,可评估神经生理学,通过检测神经电流产生的磁场。这样,它对大脑活动敏感,无论是在单个区域还是在整个大脑的网络中。传统的MEG系统采用必须低温冷却至低温的传感器阵列。在一个刚性的一刀切的头盔。系统通常被设计成适合成年人,并且因此用于儿科测量是具有挑战性的。尽管如此,MEG已成功用于研究神经发育障碍,以及临床上用于小儿癫痫的术前计划。这里,我们回顾了MEG在儿童中的应用,特别关注自闭症谱系障碍(ASD)和注意力缺陷多动障碍(ADHD)。我们的评论证明了MEG在进一步理解这些神经发育障碍方面的重要性。同时也强调了当前仪器的局限性。我们还考虑了儿科MEG的未来,重点是基于光泵浦磁力计(OPM-MEG)的新开发仪器。我们简要概述了OPM-MEG系统的发展,以及这项新技术如何能够研究非常年幼的儿童和婴儿的大脑功能。
    Magnetoencephalography (MEG) is a non-invasive neuroimaging technique that assesses neurophysiology, through detection of the magnetic fields generated by neural currents. In this way, it is sensitive to brain activity, both in individual regions and brain-wide networks. Conventional MEG systems employ an array of sensors that must be cryogenically cooled to low temperature, in a rigid one-size-fits-all helmet. Systems are typically designed to fit adults and are therefore challenging to use for paediatric measurements. Despite this, MEG has been employed successfully in research to investigate neurodevelopmental disorders, and clinically for presurgical planning for paediatric epilepsy. Here, we review the applications of MEG in children, specifically focussing on autism spectrum disorder (ASD) and attention deficit hyperactivity disorder (ADHD). Our review demonstrates the significance of MEG in furthering our understanding of these neurodevelopmental disorders, whilst also highlighting the limitations of current instrumentation. We also consider the future of paediatric MEG, with a focus on newly developed instrumentation based on optically pumped magnetometers (OPM-MEG). We provide a brief overview of the development of OPM-MEG systems, and how this new technology might enable investigation of brain function in very young children and infants.
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  • 文章类型: Journal Article
    从脑电图(EEG)或脑磁图(MEG)记录重建潜在的皮层和皮层下电活动的过程称为电生理源成像(ESI)。考虑到EEG和MEG在测量径向和切向皮质来源时的互补性,组合EEG/MEG被认为有利于提高ESI算法的重建性能。传统算法主要强调结合预先设计的神经生理学先验来解决ESI问题。深度学习框架旨在以数据驱动的方式直接学习从头皮EEG/MEG测量到潜在脑源活动的映射。与传统方法相比,表现出卓越的性能。然而,大多数现有的ESI问题的深度学习方法都是在单一模式的EEG或MEG上执行的,这意味着这两种模式的互补性没有得到充分利用。如何在深度学习范式下以更有原则的方式融合EEG和MEG仍然是一个具有挑战性的问题。本研究使用注意力神经网络(ANN)开发了一种多模态深度融合(MMDF)框架,以充分利用EEG和MEG之间的互补信息来解决ESI反问题。它被称为MMDF-ANN。具体来说,我们提出的脑源成像方法包括四个阶段,包括特征提取,重量生成,深层特征融合,和源映射。我们在合成数据集和真实数据集上的实验结果表明,与使用单模态的EEG或MEG相比,使用EEG和MEG的融合可以显着提高源定位精度。与基准算法相比,MMDF-ANN在重建具有扩展激活区域的源以及具有低信噪比的EEG/MEG测量情况时表现出良好的稳定性。
    The process of reconstructing underlying cortical and subcortical electrical activities from Electroencephalography (EEG) or Magnetoencephalography (MEG) recordings is called Electrophysiological Source Imaging (ESI). Given the complementarity between EEG and MEG in measuring radial and tangential cortical sources, combined EEG/MEG is considered beneficial in improving the reconstruction performance of ESI algorithms. Traditional algorithms mainly emphasize incorporating predesigned neurophysiological priors to solve the ESI problem. Deep learning frameworks aim to directly learn the mapping from scalp EEG/MEG measurements to the underlying brain source activities in a data-driven manner, demonstrating superior performance compared to traditional methods. However, most of the existing deep learning approaches for the ESI problem are performed on a single modality of EEG or MEG, meaning the complementarity of these two modalities has not been fully utilized. How to fuse the EEG and MEG in a more principled manner under the deep learning paradigm remains a challenging question. This study develops a Multi-Modal Deep Fusion (MMDF) framework using Attention Neural Networks (ANN) to fully leverage the complementary information between EEG and MEG for solving the ESI inverse problem, which is termed as MMDF-ANN. Specifically, our proposed brain source imaging approach consists of four phases, including feature extraction, weight generation, deep feature fusion, and source mapping. Our experimental results on both synthetic dataset and real dataset demonstrated that using a fusion of EEG and MEG can significantly improve the source localization accuracy compared to using a single-modality of EEG or MEG. Compared to the benchmark algorithms, MMDF-ANN demonstrated good stability when reconstructing sources with extended activation areas and situations of EEG/MEG measurements with a low signal-to-noise ratio.
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  • 文章类型: Journal Article
    视觉夹带是一种强大且广泛使用的研究工具,用于研究大脑中的视觉信息处理。虽然许多夹带研究都集中在14-16Hz的频率上,人们对理解更高频率的视觉夹带有了新的兴趣(例如,伽马带夹带)。值得注意的是,最近的开创性研究表明,在40Hz的伽玛带视觉夹带可能通过刺激特定的神经集合在阿尔茨海默病(AD)的背景下具有治疗作用,利用GABA能信号。尽管有如此有希望的发现,很少有研究研究了伽马带视觉夹带的最佳参数。在这里,我们使用高密度脑磁图(MEG)检查了32,40或48Hz的视觉刺激是否产生最佳视觉夹带反应.我们的结果表明,在每种情况下,强烈的夹带反应都位于初级视觉皮层。32和40Hz的夹带反应相对于48Hz更强,表明在这些较低的伽马带频率下神经集合的更强大的同步。此外,32和40Hz夹带反应显示了整个试验的典型习惯模式,但这种效应在48Hz时不存在。最后,相对于32和48Hz的夹带,视觉皮层与顶叶和前额叶皮层之间的连通性在40时趋于最强。这些结果表明,视觉皮层中的神经集合可能在32和40Hz左右共振,因此在这些频率下更容易产生光刺激。新兴的AD疗法,迄今为止专注于40赫兹夹带,可能在较低的相对较高的伽马频率下更有效,尽管需要在临床人群中开展额外的工作来证实这些发现.实践要点:伽玛带视觉夹带已成为消除阿尔茨海默病中淀粉样蛋白的治疗方法,但其最优参数未知。我们发现32和40Hz的夹带比48Hz更强,这表明神经集合更喜欢在这些相对较低的伽马带频率周围共振。这些发现可能为创新AD疗法的开发和完善以及GABA能视觉皮层功能的研究提供信息。
    Visual entrainment is a powerful and widely used research tool to study visual information processing in the brain. While many entrainment studies have focused on frequencies around 14-16 Hz, there is renewed interest in understanding visual entrainment at higher frequencies (e.g., gamma-band entrainment). Notably, recent groundbreaking studies have demonstrated that gamma-band visual entrainment at 40 Hz may have therapeutic effects in the context of Alzheimer\'s disease (AD) by stimulating specific neural ensembles, which utilize GABAergic signaling. Despite such promising findings, few studies have investigated the optimal parameters for gamma-band visual entrainment. Herein, we examined whether visual stimulation at 32, 40, or 48 Hz produces optimal visual entrainment responses using high-density magnetoencephalography (MEG). Our results indicated strong entrainment responses localizing to the primary visual cortex in each condition. Entrainment responses were stronger for 32 and 40 Hz relative to 48 Hz, indicating more robust synchronization of neural ensembles at these lower gamma-band frequencies. In addition, 32 and 40 Hz entrainment responses showed typical patterns of habituation across trials, but this effect was absent for 48 Hz. Finally, connectivity between visual cortex and parietal and prefrontal cortices tended to be strongest for 40 relative to 32 and 48 Hz entrainment. These results suggest that neural ensembles in the visual cortex may resonate at around 32 and 40 Hz and thus entrain more readily to photic stimulation at these frequencies. Emerging AD therapies, which have focused on 40 Hz entrainment to date, may be more effective at lower relative to higher gamma frequencies, although additional work in clinical populations is needed to confirm these findings. PRACTITIONER POINTS: Gamma-band visual entrainment has emerged as a therapeutic approach for eliminating amyloid in Alzheimer\'s disease, but its optimal parameters are unknown. We found stronger entrainment at 32 and 40 Hz compared to 48 Hz, suggesting neural ensembles prefer to resonate around these relatively lower gamma-band frequencies. These findings may inform the development and refinement of innovative AD therapies and the study of GABAergic visual cortical functions.
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  • 文章类型: Journal Article
    人类可以快速阅读和理解文本,暗示读者可能会处理每个固定的多个单词。然而,在何种程度上,半心词被预览和整合到不断发展的句子上下文仍然存在争议。我们通过使用MEG和眼动仪记录大脑活动和眼球运动,研究了自然阅读过程中的旁凹处理,而参与者则默默地阅读一行句子。句子包含一个不可预测的目标单词,该单词与句子上下文一致或不一致。为了测量半凹加工,我们以60Hz闪烁目标单词,并测量由此产生的大脑反应(即快速隐形频率标记,RIFT)在对预目标单词的注视期间。我们的结果表明,与相同的目标单词相比,与先前上下文不一致的目标单词的标记响应显着较弱,甚至在100ms内固定的单词紧前面的目标。还发现RIFT反应的这种降低可以预测个体的阅读速度。我们得出的结论是,语义信息不仅可以从parafovea中提取,而且可以在固定单词之前与先前的上下文集成。这种早期和广泛的半凹处理支持自然阅读所需的快速文字处理。我们的研究表明,自然阅读的理论框架应纳入深的副凹加工的概念。
    Humans can read and comprehend text rapidly, implying that readers might process multiple words per fixation. However, the extent to which parafoveal words are previewed and integrated into the evolving sentence context remains disputed. We investigated parafoveal processing during natural reading by recording brain activity and eye movements using MEG and an eye tracker while participants silently read one-line sentences. The sentences contained an unpredictable target word that was either congruent or incongruent with the sentence context. To measure parafoveal processing, we flickered the target words at 60 Hz and measured the resulting brain responses (i.e. Rapid Invisible Frequency Tagging, RIFT) during fixations on the pre-target words. Our results revealed a significantly weaker tagging response for target words that were incongruent with the previous context compared to congruent ones, even within 100ms of fixating the word immediately preceding the target. This reduction in the RIFT response was also found to be predictive of individual reading speed. We conclude that semantic information is not only extracted from the parafovea but can also be integrated with the previous context before the word is fixated. This early and extensive parafoveal processing supports the rapid word processing required for natural reading. Our study suggests that theoretical frameworks of natural reading should incorporate the concept of deep parafoveal processing.
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  • 文章类型: Journal Article
    癫痫手术是耐药癫痫患者的首选治疗方法,但高达50%的患者在切除一年后仍有癫痫发作.为了帮助进行术前计划并逐个患者地预测术后结果,我们开发了一个个性化计算模型框架,该框架将流行病传播与患者特异性连通性和癫痫基因图相结合:流行病传播癫痫发作和癫痫手术框架(ESSES).在一项回顾性研究(N=15)中拟合了ESSES参数,以重现侵入性脑电图(iEEG)记录的癫痫发作。ESSES再现了iEEG记录的癫痫发作,并且对于良好的患者(无癫痫发作,SF)比不良(无癫痫发作,NSF)结果。我们在这里通过模拟术前条件的盲目设置(切除策略和手术结果)的假前瞻性研究(N=34)来说明ESSES的临床适用性。通过在回顾性研究中设置模型参数,ESSES也可以应用于没有iEEG数据的患者。ESSES可以通过找到基于患者特定模型的最佳切除策略来预测任何切除后良好结果的机会。我们发现SF比NSF患者小,提示NSF患者的网络组织或术前评估结果存在内在差异。实际的手术计划与基于模型的最佳切除重叠更多,在减少模型癫痫传播方面有更大的影响,SF患者比NSF患者。总的来说,ESSES可以正确预测75%的NSF和80.8%的SF病例。我们的结果表明,个性化的计算模型可以通过建议替代切除并提供有关建议切除后良好结果的可能性的信息来告知手术计划。这是第一次使用完全独立的队列并且不需要iEEG记录来验证这种模型。
    癫痫手术的个性化计算模型捕获了癫痫发作传播和切除手术的一些关键方面。要确定是否可以在患者的术前评估期间整合该信息,以改善手术计划和良好手术结果的机会。在这里,我们通过一项伪前瞻性研究来解决这个问题,该研究在模仿术前条件的伪前瞻性研究中应用了癫痫发作传播和癫痫手术的计算框架-ESSES框架。我们发现在这个伪前瞻性的背景下,ESSES可以正确预测75%的NSF和80.8%的SF病例。这一发现表明,个性化的计算模型有可能通过建议替代切除并提供有关建议切除后良好结果的可能性的信息来告知手术计划。
    Epilepsy surgery is the treatment of choice for drug-resistant epilepsy patients, but up to 50% of patients continue to have seizures one year after the resection. In order to aid presurgical planning and predict postsurgical outcome on a patient-by-patient basis, we developed a framework of individualized computational models that combines epidemic spreading with patient-specific connectivity and epileptogeneity maps: the Epidemic Spreading Seizure and Epilepsy Surgery framework (ESSES). ESSES parameters were fitted in a retrospective study (N = 15) to reproduce invasive electroencephalography (iEEG)-recorded seizures. ESSES reproduced the iEEG-recorded seizures, and significantly better so for patients with good (seizure-free, SF) than bad (nonseizure-free, NSF) outcome. We illustrate here the clinical applicability of ESSES with a pseudo-prospective study (N = 34) with a blind setting (to the resection strategy and surgical outcome) that emulated presurgical conditions. By setting the model parameters in the retrospective study, ESSES could be applied also to patients without iEEG data. ESSES could predict the chances of good outcome after any resection by finding patient-specific model-based optimal resection strategies, which we found to be smaller for SF than NSF patients, suggesting an intrinsic difference in the network organization or presurgical evaluation results of NSF patients. The actual surgical plan overlapped more with the model-based optimal resection, and had a larger effect in decreasing modeled seizure propagation, for SF patients than for NSF patients. Overall, ESSES could correctly predict 75% of NSF and 80.8% of SF cases pseudo-prospectively. Our results show that individualised computational models may inform surgical planning by suggesting alternative resections and providing information on the likelihood of a good outcome after a proposed resection. This is the first time that such a model is validated with a fully independent cohort and without the need for iEEG recordings.
    Individualized computational models of epilepsy surgery capture some of the key aspects of seizure propagation and the resective surgery. It is to be established whether this information can be integrated during the presurgical evaluation of the patient to improve surgical planning and the chances of a good surgical outcome. Here we address this question with a pseudo-prospective study that applies a computational framework of seizure propagation and epilepsy surgery—the ESSES framework—in a pseudo-prospective study mimicking the presurgical conditions. We found that within this pseudo-prospective setting, ESSES could correctly predict 75% of NSF and 80.8% of SF cases. This finding suggests the potential of individualised computational models to inform surgical planning by suggesting alternative resections and providing information on the likelihood of a good outcome after a proposed resection.
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  • 文章类型: Journal Article
    睾酮水平在从童年到青春期的过渡过程中急剧上升,这些变化已知与人脑结构的变化有关。在这个相同的发展窗口,在为言语工作记忆处理服务的神经振荡动力学中也有强大的变化。令人惊讶的是,尽管许多研究已经调查了时间年龄对支持言语工作记忆的神经振荡的影响,没有人在这个发育期探索内源性睾酮水平的影响。使用89名6-14岁青年的样本,我们在改良的Sternberg言语工作记忆任务中收集唾液睾酮样本并记录脑磁图.使用波束形成方法识别并成像了显着的振荡反应,并对所得的图进行了全脑ANCOVA检查,检查了睾丸激素和性别的影响,控制年龄,在口头工作记忆编码和维护期间。我们的主要结果表明,theta(4-7Hz)和alpha(8-14Hz)振荡活动中的睾酮相关效应很强,控制年龄。在编码期间,女性在右小脑皮层中表现出比男性弱的theta振荡,而在左颞叶皮层中表现出较强的alpha振荡。在维护期间,睾丸激素较高的年轻人在右侧海马旁和小脑皮质中表现出较弱的α振荡,以及整个左翼语言网络的区域。这些结果通过显示睾丸激素的区域和性别特异性作用,扩展了有关言语工作记忆处理发展的现有文献。并且是将内源性睾丸激素水平与提供言语工作记忆的神经振荡活动联系起来的第一个结果,超越了实际年龄的影响。
    Testosterone levels sharply rise during the transition from childhood to adolescence and these changes are known to be associated with changes in human brain structure. During this same developmental window, there are also robust changes in the neural oscillatory dynamics serving verbal working memory processing. Surprisingly, whereas many studies have investigated the effects of chronological age on the neural oscillations supporting verbal working memory, none have probed the impact of endogenous testosterone levels during this developmental period. Using a sample of 89 youth aged 6-14 years-old, we collected salivary testosterone samples and recorded magnetoencephalography during a modified Sternberg verbal working memory task. Significant oscillatory responses were identified and imaged using a beamforming approach and the resulting maps were subjected to whole-brain ANCOVAs examining the effects of testosterone and sex, controlling for age, during verbal working memory encoding and maintenance. Our primary results indicated robust testosterone-related effects in theta (4-7 Hz) and alpha (8-14 Hz) oscillatory activity, controlling for age. During encoding, females exhibited weaker theta oscillations than males in right cerebellar cortices and stronger alpha oscillations in left temporal cortices. During maintenance, youth with greater testosterone exhibited weaker alpha oscillations in right parahippocampal and cerebellar cortices, as well as regions across the left-lateralized language network. These results extend the existing literature on the development of verbal working memory processing by showing region and sex-specific effects of testosterone, and are the first results to link endogenous testosterone levels to the neural oscillatory activity serving verbal working memory, above and beyond the effects of chronological age.
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  • 文章类型: Journal Article
    失神癫痫通常与行为停滞和短暂的意识缺陷有关,然而,在损害的严重程度上存在很大的差异。尽管对该主题进行了数十年的研究,失神发作的病理生理学和行为损害的潜在机制仍不清楚.已经提出了几种理由,包括广泛的皮质失活,减少对外界刺激的感知,和默认模式网络的瞬时暂停,在其他人中。这篇综述旨在总结目前有关失神癫痫发作时意识受损的神经相关知识。我们回顾了使用失神癫痫动物模型的研究证据,脑电图,功能磁共振成像,脑磁图,正电子发射断层扫描,和单光子发射计算机断层扫描。
    Absence seizures are classically associated with behavioral arrest and transient deficits in consciousness, yet substantial variability exists in the severity of the impairment. Despite several decades of research on the topic, the pathophysiology of absence seizures and the mechanisms underlying behavioral impairment remain unclear. Several rationales have been proposed including widespread cortical deactivation, reduced perception of external stimuli, and transient suspension of the default mode network, among others. This review aims to summarize the current knowledge on the neural correlates of impaired consciousness in absence seizures. We review evidence from studies using animal models of absence epilepsy, electroencephalography, functional magnetic resonance imaging, magnetoencephalography, positron emission tomography, and single photon emission computed tomography.
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