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Robust Containerization of the High Angular Resolution Functional Imaging (HARFI) Pipeline. 高角分辨率功能成像(HARFI)管道的鲁棒容器化。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-09 DOI: 10.1007/s12021-026-09769-2
Zhiyuan Li, Kurt G Schilling, Bennett A Landman
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引用次数: 0
Enhancing fMRI Decoded Neurofeedback with Co-adaptive Training: Simulation and Proof-of-principle Evidence. 增强fMRI解码神经反馈与共同适应训练:模拟和证明的原则证据。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-02-05 DOI: 10.1007/s12021-026-09768-3
Najmeddine Abdennour, Pedro Margolles, David Soto

A significant challenge for neurofeedback training research and related clinical applications, is participants' difficulty in learning to induce specific brain patterns during training. Here, we address this issue in the context of fMRI-based decoded neurofeedback (DecNef). Arguably, discrepancies between the data used to construct the decoder and the data used for neurofeedback training, such as differences in data distributions and experimental contexts, neural and non-neural noise, are likely the cause of the difficulties of the aforementioned participants. Here, we developed a co-adaptation procedure using standard machine learning algorithms. The procedure involves an adaptive decoder algorithm that is updated in real time based on its predictions across neurofeedback trials. First, we tested the procedure via simulations using a previous DecNef dataset and showed that decoder co-adaptation can improve performance during neurofeedback training. Importantly, a drift analysis demonstrated the stability of the co-adapted decoder throughout the neurofeedback training sessions. We then collected real time fMRI data in a DecNef training procedure to provide proof of concept evidence that co-adaptation enhances participant's ability to induce the target state during training. Thus, personalized decoders through co-adaptation can improve the precision and reliability of DecNef training protocols to target specific brain representations, with ramifications in translational research. The tools are made openly available to the scientific community.

神经反馈训练研究和相关临床应用面临的一个重大挑战是参与者在训练过程中难以学习诱导特定的大脑模式。在这里,我们在基于fmri的解码神经反馈(DecNef)的背景下解决这个问题。可以说,用于构建解码器的数据与用于神经反馈训练的数据之间的差异,例如数据分布和实验背景,神经和非神经噪声的差异,可能是导致上述参与者困难的原因。在这里,我们开发了一个使用标准机器学习算法的共同适应程序。该过程包括一个自适应解码器算法,该算法根据其在神经反馈试验中的预测实时更新。首先,我们使用先前的DecNef数据集通过模拟测试了该过程,并表明解码器共同适应可以提高神经反馈训练中的性能。重要的是,漂移分析证明了共适应解码器在整个神经反馈训练过程中的稳定性。然后,我们在DecNef训练过程中收集了实时fMRI数据,以提供概念证据,证明共同适应增强了参与者在训练过程中诱导目标状态的能力。因此,通过共同适应的个性化解码器可以提高针对特定大脑表征的DecNef训练协议的精度和可靠性,并在翻译研究中产生影响。这些工具对科学界是公开的。
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引用次数: 0
A Validated Transcriptomic NMJ Remodeling Score Reveals Synaptic Dysfunction Independent of Muscle Atrophy after Immobilization in a Microgravity Analog. 经过验证的转录组NMJ重塑评分揭示了在微重力模拟物中固定后独立于肌肉萎缩的突触功能障碍。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-24 DOI: 10.1007/s12021-026-09767-4
Rahul Kumar, Andrew Bouras, Karmen Gill, Kyle Sporn, Rohan Phadke, Harlene Kaur, Phani Paladugu, Joshua Ong, Ethan Waisberg, Andrew G Lee

Muscle weakness after immobilization often exceeds that explained by loss of muscle mass alone, suggesting a role for neuromuscular synaptic changes. To quantify these adaptations, we developed a composite transcriptomic Neuromuscular Junction (NMJ) Remodeling Score and evaluated its behavior relative to classical atrophy pathways during short-term unloading. We analyzed vastus lateralis RNA sequencing data from adults undergoing 10 days of unilateral lower-limb suspension followed by a 21-day recovery, generating NMJ and atrophy scores for 15 and 10 genes, respectively. Transcriptome-wide testing across more than twenty thousand genes identified a broad pattern of metabolic suppression. The NMJ score showed a large effect increase during unloading and partial normalization with recovery, while the atrophy score rose more strongly and reversed during recovery. The two scores demonstrated weak correlation, consistent with distinct biological processes. Individual NMJ-related genes displayed coordinated regulation, including marked upregulation of several acetylcholine receptor subunits and modest downregulation of muscle signaling kinase (MuSK), reflecting a denervation-like transcriptional pattern. Directional replication in a 60-day bed rest cohort supported generalizability across disuse conditions. Together, these findings indicate that limb unloading elicits measurable transcriptomic remodeling at the NMJ that is only partially aligned with atrophy signaling, providing a framework for investigating neural contributions to immobilization-induced weakness.

固定后的肌肉无力通常超过了肌肉质量损失的单独解释,这表明神经肌肉突触改变的作用。为了量化这些适应,我们开发了一个复合转录组神经肌肉连接(NMJ)重塑评分,并评估其在短期卸载过程中与经典萎缩途径相关的行为。我们分析了接受10天单侧下肢停摆和21天康复治疗的成年人的股外侧肌RNA测序数据,分别生成了15个和10个基因的NMJ和萎缩评分。对超过2万个基因的转录组测试确定了代谢抑制的广泛模式。NMJ评分在卸荷期显著升高,随恢复期部分归一化,而萎缩评分在恢复期上升更强,且呈逆转。这两个分数表现出弱相关性,符合不同的生物学过程。个体nmj相关基因表现出协同调控,包括几个乙酰胆碱受体亚基的显著上调和肌肉信号激酶(MuSK)的适度下调,反映了一种类似去神经传导的转录模式。在60天卧床休息队列中的定向复制支持在废弃条件下的普遍性。综上所述,这些发现表明肢体卸载引起NMJ可测量的转录组重塑,仅部分与萎缩信号一致,为研究神经对固定诱导的虚弱的贡献提供了框架。
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引用次数: 0
Deep Learning-Based Classification of Temporal Stages of AT8-Labeled Tau Pathology After Experimental Traumatic Brain Injury. 基于深度学习的实验性创伤性脑损伤后at8标记Tau病理时间分期分类
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-19 DOI: 10.1007/s12021-025-09763-0
Guilherme José de Antunes E Sousa, Rodrigo Afonso Sá, Marcos António Spínola Monteiro Gomes, George A Edwards, Ines Moreno-González, Ricardo José Alves de Sousa

Tauopathies are characterised by a progressive accumulation of hyperphosphorylated tau. However, early and intermediate stages remain challenging to quantify due to subtle and heterogeneous morphological characteristics. This study evaluates a deep learning framework for classifying multiple temporal stages of tauopathy progression using AT8 (anti-phospho-tau antibody)-stained cortical micrographs in a controlled traumatic brain injury mouse model - an underexplored application. Three convolutional neural network (CNN) architectures were examined: a custom CNN and two transfer-learning models (InceptionV3 and DenseNet). Images were grouped into four post-injury stages: 1 day, 1 week, 1 month and 3 months. Preprocessing included normalisation, augmentation and oversampling to address imbalance. Performance was assessed using stratified k-fold cross-validation with accuracy, macro-F1, per-class F1, and one-vs-rest area under the receiver operating characteristic curve (AUC). DenseNet achieved the best overall performance (accuracy = 70.9%, macro-F1 = 0.68) with strong discrimination for the 1-week stage (F1 = 0.95). All models showed limited separability in the earliest post-injury stage (1 day), while intermediate to late stages (1-3 months) exhibited partial overlap, consistent with the progressive nature of tau accumulation. These results indicate that deep learning, particularly transfer learning, offers a scalable approach for automated temporal staging of tauopathy in preclinical histology. Although the results are based on internal cross-validation without independent animal-level identifiers or external cohorts, the proposed framework provides a reliable foundation for incorporating CNN-based analysis into digital neuropathology workflows. Larger multi-centre datasets and slide-level modelling will be required to assess generalisation and support applications in early detection, longitudinal tracking, and treatment evaluation of tau-related neurodegeneration.

tau病变的特征是过度磷酸化tau蛋白的逐渐积累。然而,由于微妙和异质形态特征,早期和中期阶段仍然难以量化。本研究评估了一种深度学习框架,该框架使用AT8(抗磷酸化tau抗体)染色的皮层显微图在受控创伤性脑损伤小鼠模型中对tau病进展的多个时间阶段进行分类,这是一个尚未开发的应用。研究了三种卷积神经网络(CNN)架构:一个自定义CNN和两个迁移学习模型(InceptionV3和DenseNet)。损伤后图像分为4个阶段:1天、1周、1个月和3个月。预处理包括归一化,增强和过采样,以解决不平衡。使用分层k-fold交叉验证,包括准确性、宏观F1、每类F1和接收者工作特征曲线(AUC)下的1 -vs-rest区域。DenseNet获得了最佳的综合性能(准确度= 70.9%,宏观F1 = 0.68),对1周期有很强的辨别能力(F1 = 0.95)。所有模型在损伤后早期(1天)均表现出有限的可分离性,而中后期(1-3个月)则表现出部分重叠,这与tau积累的进行性一致。这些结果表明,深度学习,特别是迁移学习,为临床前组织学中牛头病的自动时间分期提供了一种可扩展的方法。虽然结果是基于内部交叉验证,没有独立的动物水平标识符或外部队列,但所提出的框架为将基于cnn的分析纳入数字神经病理学工作流程提供了可靠的基础。将需要更大的多中心数据集和滑动水平模型来评估泛化和支持在tau相关神经变性的早期检测、纵向跟踪和治疗评估中的应用。
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引用次数: 0
Towards Multi-Brain Decoding in Autism: A Self-Supervised Learning Approach. 自闭症的多脑解码:一种自我监督学习方法。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-13 DOI: 10.1007/s12021-025-09755-0
Ghazaleh Ranjabaran, Quentin Moreau, Adrien Dubois, Guillaume Dumas
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引用次数: 0
Revealing Structural Brain-Cognition Relationships in Children: A Comparison of Morphometric Similarity and INverse Divergence Networks. 揭示儿童脑-认知结构关系:形态相似性和反发散网络的比较。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-08 DOI: 10.1007/s12021-025-09764-z
Shuning Han, Hao Jia, Gemma Vilaseca, Núria Vilaró, Feng Duan, Zhe Sun, Cesar F Caiafa, Jordi Solé-Casals

The study of structural brain networks (SBNs) offers critical insights into brain-cognition relationships. However, a comprehensive comparison of these methods in terms of their topological properties, cognitive relevance, and sensitivity to connection density remains lacking. This study compares two types of individual-level SBNs-morphometric similarity networks (MSNs) and morphometric inverse divergence (MIND) networks-by analyzing their associations with cognitive performance using sMRI data from 29 male children. Group- and individual-level analyses were conducted to evaluate differences in hemispheric connectivity, topological features, and their correlations with cognitive performance across different connection densities. In our analyses, a connection density of [Formula: see text] appeared optimal for stabilizing network properties and maximizing cognitive correlations in both MSN and MIND. Moreover, advanced network segregation and integration metrics (such as local efficiency and node versatility, along with their global summaries) demonstrated greater sensitivity to cognitive performance. However, MSNs appeared to provide a more reliable framework, demonstrating more stable associations across connection densities in topological and hemispheric dimensions. Specifically, higher cognitive performance may be linked to stronger left intra-hemispheric connectivity, weaker inter-hemispheric connectivity, and more modular network organization-consistent with established theories of hemispheric specialization and efficient modularity. In contrast, MIND networks exhibit reduced effectiveness and stability across metrics and densities in our data. These preliminary insights enhance our understanding of brain-cognition relationships and provide practical guidelines for parameter selection and metric identification in network-based cognitive analyses.

结构脑网络(sbn)的研究为大脑认知关系提供了重要的见解。然而,这些方法在拓扑特性、认知相关性和对连接密度的敏感性方面的综合比较仍然缺乏。本研究利用29名男性儿童的sMRI数据,分析了两种类型的个体水平的sbn -形态相似性网络(MSNs)和形态反发散(MIND)网络与认知表现的关系,比较了它们之间的关系。通过群体和个体水平的分析来评估不同连接密度下大脑半球连通性、拓扑特征及其与认知表现的相关性的差异。在我们的分析中,[公式:见文本]的连接密度对于稳定网络特性和最大化MSN和MIND中的认知相关性似乎是最佳的。此外,先进的网络隔离和集成度量(如局部效率和节点多功能性,以及它们的全局摘要)对认知性能表现出更大的敏感性。然而,msn似乎提供了一个更可靠的框架,在拓扑和半球维度上展示了更稳定的连接密度关联。具体来说,更高的认知表现可能与更强的左半球内连通性、更弱的左半球间连通性和更模块化的网络组织有关,这与半球专业化和高效模块化的既定理论一致。相比之下,在我们的数据中,MIND网络在度量和密度方面表现出较低的有效性和稳定性。这些初步的见解增强了我们对脑-认知关系的理解,并为基于网络的认知分析中的参数选择和度量识别提供了实用的指导。
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引用次数: 0
Impact of Neuron Models on Spiking Neural Network Performance: A Complexity-based Classification Approach. 神经元模型对脉冲神经网络性能的影响:一种基于复杂性的分类方法。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-08 DOI: 10.1007/s12021-025-09754-1
Zofia Rudnicka, Janusz Szczepanski, Agnieszka Pregowska

This study addresses the important question of how neuron model choice and learning rules shape the classification performance of Spiking Neural Networks (SNNs) in bio-signal processing. By systematically contrasting Leaky Integrate-and-Fire, metaneurons, and probabilistic Levy-Baxter (LB) neurons across spike-timing dependent plasticity, tempotron, and reward-modulated learning, we identify model-rule combinations best suited for capturing the temporal richness of neural data. A novel contribution is the integration of a complexity-driven evaluation into the SNN pipeline. Using Lempel-Ziv Complexity (LZC), an entropy-related measure of spike-train regularity, we provide a consistent and interpretable benchmark of classification outcomes across architectures. To probe neural dynamics under controlled conditions, we employed synthetic datasets with varying temporal dependencies and stochasticity, including Markov and Poisson processes established models of neuronal spike-trains. Moreover, we validated the observed trends on real data by testing the same architectures on an MNIST dataset. Performance trends reveal strong dependence on the interaction between neuron model, learning rule, and network size. The LZC based evaluation highlights configurations resilient to weak or noisy signals. The LB-tempotron combination proved most effective for tasks with complex temporal patterns, leveraging adaptive neuronal dynamics and precise spike-timing exploitation. LIF-based architectures with Bio-inspired Active Learning delivered solid accuracy at lower computational cost, while hybrid models offered a versatile middle ground when paired with appropriate learning algorithms. This work delivers the first systematic mapping of neuron model learning rule synergies in SNNs and introduces complexity-based evaluation framework that sets a robust benchmark for biosignal classification. Beyond benchmarking, our results provide actionable guidelines for building next-generation SNNs capable of handling the variability and complexity of real neural data.

本研究解决了神经元模型选择和学习规则如何影响生物信号处理中峰值神经网络(snn)分类性能的重要问题。通过系统地对比Leaky - integrative -and- fire、元神经元和概率Levy-Baxter (LB)神经元在spike-timing依赖的可塑性、节奏和奖励调节学习方面的差异,我们确定了最适合捕获神经数据的时间丰富性的模型规则组合。一个新颖的贡献是将复杂性驱动的评估集成到SNN管道中。使用Lempel-Ziv复杂度(LZC),一种与熵相关的峰列规律性度量,我们提供了跨架构分类结果的一致和可解释的基准。为了探索受控条件下的神经动力学,我们使用了具有不同时间依赖性和随机性的合成数据集,包括马尔可夫过程和泊松过程,建立了神经元峰值序列模型。此外,我们通过在MNIST数据集上测试相同的架构来验证在真实数据上观察到的趋势。性能趋势显示神经元模型、学习规则和网络大小之间的相互作用有很强的依赖性。基于LZC的评估突出了对弱信号或噪声信号的弹性配置。LB-tempotron组合被证明对具有复杂时间模式的任务最有效,利用了自适应神经元动力学和精确的峰值时间利用。基于liff的架构与生物启发的主动学习以较低的计算成本提供了可靠的准确性,而混合模型在与适当的学习算法配对时提供了一个通用的中间地带。这项工作提供了snn中神经元模型学习规则协同作用的第一个系统映射,并引入了基于复杂性的评估框架,该框架为生物信号分类设置了一个强大的基准。除了基准测试,我们的结果为构建能够处理真实神经数据的可变性和复杂性的下一代snn提供了可操作的指导方针。
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引用次数: 0
Application of Fully Convolutional Neural Networks in the Assessment of Cerebral White Matter Involvement in Primary Sjögren's Syndrome. 全卷积神经网络在原发性Sjögren综合征脑白质受累评估中的应用。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-29 DOI: 10.1007/s12021-025-09762-1
Michał Sobański, Miłosz Gajowczyk, Patryk Rygiel, Martyna Sobańska, Adrian Korbecki, Kamil Litwinowicz, Arkadiusz Kacała, Justyna Korbecka, Agata Zdanowicz-Ratajczyk, Edyta Dziadkowiak, Maciej Sebastian, Piotr Wiland, Grzegorz Trybek, Agata Sebastian, Joanna Bladowska

Central nervous system (CNS) involvement in primary Sjögren's syndrome (pSS), although less frequent, can lead to serious complications. Our study aimed to assess white matter (WM) tract integrity, identify specific regions of disruption, quantify diffusion tensor imaging (DTI) metrics, and correlate these findings with rheumatologic factors. Thirty-three patients with pSS and twenty-six healthy subjects included in the control group, matched by gender and age were studied by performing brain DTI, which was reprocessed by the TractSeg algorithm based on fully convolutional neural networks (FCNN). The result was the segmentation of 72 main WM tracts, which were used to calculate quantitative values (fractional anisotropy - FA) of WM integrity. Finally, correlations of these values with rheumatological factors were made. Considering all WM tracts collectively, we observed significant differences between the study group and the control group. Numerous areas showed significant reductions in FA values, including novel observations involving all cerebellar peduncles and optic radiations. There were numerous significant correlations between altered FA values and particular clinical factors such as CRP level, haemoglobin level, presence of cryoglobulins and more. Our work unquestionably confirms and emphasises CNS involvement in pSS patients. Multiple impaired WM tracts correspond with symptoms associated with CNS, moreover, there were areas of impaired WM tracts previously not reported in DTI studies. Finally, multiple significant correlations were found with particular rheumatological factors, can indirectly indicate the influence of the severity of pSS on the integrity of WM tracts of CNS.

中枢神经系统(CNS)受累于原发性Sjögren综合征(pSS),虽然不太常见,但可导致严重的并发症。我们的研究旨在评估白质(WM)束的完整性,确定特定的破坏区域,量化弥散张量成像(DTI)指标,并将这些发现与风湿病因素联系起来。采用基于全卷积神经网络(FCNN)的TractSeg算法对33例pSS患者和26例按性别和年龄匹配的健康对照组进行脑DTI研究。结果是对72个主要的WM束进行分割,并用于计算WM完整性的定量值(分数各向异性- FA)。最后,分析了这些数值与风湿病因素的相关性。综合考虑所有WM束,我们观察到研究组与对照组之间存在显著差异。许多区域显示FA值显著降低,包括涉及所有小脑蒂和视光辐射的新观察结果。FA值的改变与特定的临床因素(如CRP水平、血红蛋白水平、冷球蛋白的存在等)之间有许多显著的相关性。我们的工作毫无疑问地证实并强调了pSS患者中中枢神经系统的参与。多个WM束受损与中枢神经系统相关的症状相对应,此外,有一些区域的WM束受损以前未在DTI研究中报道。最后,发现与特定风湿病因素的多重显著相关,可以间接表明pSS严重程度对中枢神经系统WM束完整性的影响。
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引用次数: 0
Synthetic Data Generation for Classifying Electrophysiological and Morpho-Electrophysiological Neurons from Mouse Visual Cortex. 小鼠视觉皮层电生理和形态电生理神经元分类的综合数据生成。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-27 DOI: 10.1007/s12021-025-09761-2
Xavier Vasques, Laura Cif

Accurate classification of neuronal cell types is essential for understanding brain organization, but multimodal neuron datasets are scarce and strongly imbalanced across subclasses. We present a benchmark of synthetic data augmentation methods for predicting electrophysiology-defined neuronal classes (e-types) in the Allen Cell Types mouse visual cortex dataset. Two supervised tasks were evaluated over the same 17 e-type labels: prediction from electrophysiology features alone (E→e-type) and prediction from combined morphology plus electrophysiology features (M + E→e-type). We established real-data baselines across multiple classifier families under a unified preprocessing pipeline, then augmented only the training sets using matched per-class grids with Synthetic Minority Over-sampling Technique (SMOTE) and deep generative models: Variational Autoencoders (VAE), Generative Adversarial Networks (GAN), masked autoregressive normalizing flows, and Denoising Diffusion Probabilistic Models (DDPM). Augmentation produced substantial generalization gains when applied in the native high-dimensional feature space, whereas introducing dimensionality reduction largely suppressed these benefits. SMOTE delivered the most robust and consistent improvements across tasks and augmentation levels. To assess biological realism, we introduced a fidelity framework combining feature-wise distribution comparisons, statistical concordance tests, and distance-based measures that compare synthetic-to-real variability against the natural variability between real classes. Most synthetic datasets stayed within biological diversity bounds, with deviations concentrated in the rarest subclasses. These results provide practical guidance on selecting and validating synthetic augmentation for neuronal subtype classification.

神经元细胞类型的准确分类对于理解大脑组织至关重要,但多模态神经元数据集很少,并且在亚类之间存在严重的不平衡。我们提出了一种综合数据增强方法的基准,用于预测Allen Cell Types小鼠视觉皮层数据集中电生理学定义的神经元类别(e-types)。在相同的17个E -type标签上评估两个监督任务:单独的电生理特征预测(E→E -type)和结合形态学和电生理特征的预测(M + E→E -type)。我们在统一的预处理管道下建立了跨多个分类器系列的真实数据基线,然后使用匹配的每类网格与合成少数过采样技术(SMOTE)和深度生成模型(变分自编码器(VAE)、生成对抗网络(GAN)、掩膜自回归归一化流和去噪扩散概率模型(DDPM))增强训练集。当应用于原生高维特征空间时,增强产生了大量的泛化收益,而引入降维在很大程度上抑制了这些收益。SMOTE在任务和增强级别之间提供了最稳健和一致的改进。为了评估生物真实性,我们引入了一个保真度框架,该框架结合了特征分布比较、统计一致性测试和基于距离的测量,将真实类别之间的合成变异性与自然变异性进行比较。大多数合成数据集保持在生物多样性范围内,偏差集中在最稀有的亚类上。这些结果为神经元亚型分类合成增强的选择和验证提供了实用的指导。
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引用次数: 0
Hierarchical Storage Management in User Space for Neuroimaging Applications. 神经成像应用中用户空间的分层存储管理。
IF 3.1 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-12-23 DOI: 10.1007/s12021-025-09760-3
Valérie Hayot-Sasson, Tristan Glatard

Neuroimaging open-data initiatives have led to increased availability of large scientific datasets. While these datasets are shifting the processing bottleneck from compute-intensive to data-intensive, current standardized analysis tools have yet to adopt strategies that mitigate the costs associated with large data transfers. A major challenge in adapting neuroimaging applications for data-intensive processing is that they must be entirely rewritten. To facilitate data management for standardized neuroimaging tools, we developed Sea, a library that intercepts and redirects application read and write calls to minimize data transfer time. In this paper, we investigate the performance of Sea on three preprocessing pipelines applied to three different neuroimaging datasets on two high-performance computing clusters. Our results demonstrate that Sea provides large speedups (up to 32×) when the shared file system's performance is deteriorated. When the shared file system is not overburdened by other users, performance is unaffected by Sea, suggesting that Sea's overhead is minimal even in cases where its benefits are limited.

神经影像学开放数据倡议已经增加了大型科学数据集的可用性。虽然这些数据集正在将处理瓶颈从计算密集型转移到数据密集型,但目前的标准化分析工具尚未采用降低与大数据传输相关的成本的策略。使神经成像应用程序适应数据密集型处理的一个主要挑战是它们必须完全重写。为了便于标准化神经成像工具的数据管理,我们开发了Sea,这是一个拦截和重定向应用程序读写调用的库,可以最大限度地减少数据传输时间。在本文中,我们研究了Sea在三个预处理管道上的性能,这些管道应用于两个高性能计算集群上的三个不同的神经成像数据集。我们的结果表明,当共享文件系统的性能恶化时,Sea提供了很大的加速(高达32倍)。当共享文件系统没有被其他用户负担过重时,性能不受Sea的影响,这表明即使在Sea的好处有限的情况下,Sea的开销也是最小的。
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引用次数: 0
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