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Subcellular proteome niche discovery using semi-supervised functional clustering. 利用半监督功能聚类发现亚细胞蛋白质组生态位。
Pub Date : 2025-12-08
Ziyue Zheng, Loay J Jabre, Matthew McIlvin, Mak A Saito, Sangwon Hyun

Intracellular compartmentalization of proteins underpins their function and the metabolic processes they sustain. Various mass spectrometry-based proteomics methods (subcellular spatial proteomics) now allow high throughput subcellular protein localization. Yet, the curation, analysis and interpretation of these data remain challenging, particularly in non-model organisms where establishing reliable marker proteins is difficult, and in contexts where experimental replication and subcellular fractionation are constrained. Here, we develop FSPmix, a semi-supervised functional clustering method implemented as an open-source R package, which leverages partial annotations from a subset of marker proteins to predict protein subcellular localization from subcellular spatial proteomics data. This method explicitly assumes that protein signatures vary smoothly across subcellular fractions, enabling more robust inference under low signal-to-noise data regimes. We applied FSPmix to a subcellular proteomics dataset from a marine diatom, allowing us to assign probabilistic localizations to proteins and uncover potentially new protein functions. Altogether, this work lays the foundation for more robust statistical analysis and interpretation of subcellular proteomics datasets, particularly in understudied organisms.

细胞内蛋白质的区隔化支持它们的功能和它们所维持的代谢过程。各种基于质谱的蛋白质组学方法(亚细胞空间蛋白质组学)现在允许高通量亚细胞蛋白质定位。然而,这些数据的管理、分析和解释仍然具有挑战性,特别是在难以建立可靠标记蛋白的非模式生物中,以及在实验复制和亚细胞分离受到限制的背景下。在这里,我们开发了FSPmix,这是一种半监督功能聚类方法,作为一个开源的R包实现,它利用标记蛋白子集的部分注释来预测亚细胞空间蛋白质组学数据中的蛋白质亚细胞定位。该方法明确假设蛋白质特征在亚细胞部分平滑变化,从而在低信噪比数据制度下实现更稳健的推断。我们将FSPmix应用于海洋硅藻的亚细胞蛋白质组学数据集,使我们能够分配蛋白质的概率定位并发现潜在的新蛋白质功能。总之,这项工作为亚细胞蛋白质组学数据集的更强大的统计分析和解释奠定了基础,特别是在研究不足的生物体中。
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引用次数: 0
Quantitative Characterization of Brain Tissue Alterations in Brain Cancer Using Fractal, Multifractal, and IPR Metrics. 使用分形、多重分形和IPR指标定量表征脑癌脑组织改变。
Pub Date : 2025-12-08
Mousa Alrubayan, Santanu Maity, Prabhakar Pradhan

We studied the structural alterations between healthy and diseased brain tissues using a multiparametric framework combining fractal analysis, fractal functional transformation, multifractal analysis, and the Inverse Participation Ratio (IPR) analysis. Accurate characterization of brain tissue microstructure is crucial for early detection and diagnosis of cancer. By applying box-counting methods on brightfield microscopy images, we estimated the fractal dimension D f and its logarithmic l n D f and functional l n D t f forms to highlight spatial irregularities in the tissue architecture. While D f and l n D f exhibited long-tailed distributions distinguishing healthy from cancer tissues, l n D t f provided significantly improved differentiation by emphasizing local structural variations. Additionally, multifractal analysis revealed broader f ( α ) vs α curves in cancerous samples, reflecting higher heterogeneity. IPR analysis based on light localization further demonstrated increased nanoscale variations in mass density, reflecting higher structural disorder in cancer tissues. Combining these complementary approaches creates a robust framework for measuring tissue complexity and holds great potential to improve microscopic diagnostic methods for brain cancer detection.

本研究采用分形分析、分形函数变换、多重分形分析和逆参与比(IPR)分析相结合的多参数框架研究了健康和患病脑组织的结构变化。脑组织微观结构的准确表征对于癌症的早期发现和诊断至关重要。通过对明场显微镜图像应用盒计数方法,我们估计了分形维数(Df)及其对数(ln(Df))和函数(ln(Dtf))形式,以突出组织结构中的空间不规则性。虽然Df和ln(Df)表现出区分健康组织和癌症组织的长尾分布,但ln(Dtf)通过强调局部结构变异,显著改善了分化。此外,多重分形分析显示,癌症样本的f(α) vs α曲线更宽,反映了更高的异质性。基于光定位的IPR分析进一步表明,质量密度的纳米级变化增加,反映了癌组织中更高的结构紊乱。将这些互补的方法结合起来,为测量组织复杂性创造了一个强大的框架,并具有改善脑癌检测的显微诊断方法的巨大潜力。
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引用次数: 0
Alterations of brain tissue structural complexity and disorder in Alzheimer's disease (AD): Fractal, multifractal, fractal transformation, and disorder strength analyses. 阿尔茨海默病(AD)脑组织结构复杂性和紊乱的改变:分形、多重分形、分形变换和紊乱强度分析
Pub Date : 2025-12-08
Santanu Maity, Mousa Alrubayan, Mohammad Moshahid Khan, Prabhakar Pradhan

Alzheimer's disease (AD) is characterized by progressive microstructural deterioration in brain tissue, yet conventional imaging and histopathology often lack the sensitivity needed to detect subtle early-stage changes. Here, we present a multiparametric framework combining fractal and multifractal analysis and their distributions to quantify structural alterations in human brain tissue affected by AD. Moreover, from the fractal and multifractal formalism, we introduced an innovative fractal functional distribution method, a novel technique that transforms fractal distribution into a Gaussian form. Statistically, these distribution parameters are easy to interpret and can distinguish between control and diseased tissues. Across samples, we identify pronounced threshold-dependent behavior of fractal and multifractal parameters, reflecting the intrinsic sparsity and heterogeneous intensity landscape of brain tissue. These threshold-sensitive signatures provide a framework for quantitative stage detection and may serve as biomarkers for early pathological transitions. In addition, we studied structural disorder and complexity using our established light localization technique, inverse participation ratio (IPR) analysis. IPR-based analysis demonstrates that increasing IPR pixel size highlights the elevation of structural alterations with disease progression. Together, these integrative analyses establish a robust, multi-scale quantitative framework for detecting microstructural alterations in AD, providing a promising foundation for early diagnosis and improved pathological assessment.

阿尔茨海默病(AD)的特点是脑组织的微结构进行性恶化,但传统的成像和组织病理学往往缺乏检测早期细微变化所需的灵敏度。在此,我们提出了一个结合分形和多重分形分析及其分布的多参数框架来量化AD影响的人脑组织结构变化。此外,从分形和多重分形的形式出发,提出了一种新颖的分形泛函分布方法,将分形分布转化为高斯分布。统计上,这些分布参数很容易解释,可以区分对照和病变组织。在样本中,我们发现分形和多重分形参数明显的阈值依赖行为,反映了脑组织的内在稀疏性和异质性强度景观。这些阈值敏感的特征为定量阶段检测提供了框架,并可作为早期病理转变的生物标志物。此外,我们利用我们建立的光定位技术,逆参与比(IPR)分析来研究结构的无序性和复杂性。基于知识产权的分析表明,随着疾病进展,知识产权像素大小的增加突出了结构改变的增加。总之,这些综合分析建立了一个强大的、多尺度的定量框架,用于检测阿尔茨海默病的微观结构改变,为早期诊断和改进病理评估提供了有希望的基础。
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引用次数: 0
CATNUS: Coordinate-Aware Thalamic Nuclei Segmentation Using T1-Weighted MRI. 利用t1加权MRI进行丘脑核的坐标感知分割。
Pub Date : 2025-12-05
Anqi Feng, Zhangxing Bian, Samuel W Remedios, Savannah P Hays, Blake E Dewey, Alexa Colinco, Jiachen Zhuo, Dan Benjamini, Jerry L Prince

Accurate segmentation of thalamic nuclei from magnetic resonance images is important due to the distinct roles of these nuclei in overall brain function and to their differential involvement in neurological and psychiatric disorders. However, segmentation remains challenging given the small size of many nuclei, limited intrathalamic contrast and image resolution, and inter-subject anatomical variability. In this work, we present CATNUS (Coordinate-Aware Thalamic Nuclei Segmentation), segmenting 13 thalamic nuclei (or nuclear groups) using a 3D U-Net architecture enhanced with coordinate convolution layers, which provide more precise localization of both large and small nuclei. To support broad clinical applicability, we provide pre-trained model variants that can operate on quantitative T1 maps as well as on widely used magnetization-prepared rapid gradient echo (MPRAGE) and fast gray matter acquisition T1 inversion recovery (FGATIR) sequences. We benchmarked CATNUS against established methods, including FreeSurfer, THOMAS and HIPS-THOMAS, demonstrating improved segmentation accuracy and robust test-retest reliability across multiple nuclei. Furthermore, CATNUS demonstrated strong out-of-distribution generalization on traveling-subject datasets spanning multiple scanners, field strengths, and vendors, producing reliable and anatomically coherent segmentations across diverse acquisition conditions. Overall, CATNUS provides an accurate and generalizable solution for thalamic nuclei segmentation, with strong potential to facilitate large-scale neuroimaging studies and support real-world clinical assessment.

由于丘脑核在整个脑功能中的不同作用以及它们在神经和精神疾病中的不同参与,因此从磁共振图像中准确分割丘脑核非常重要。然而,由于许多核的小尺寸,有限的丘脑内对比度和图像分辨率,以及受试者之间的解剖差异,分割仍然具有挑战性。在这项工作中,我们提出了CATNUS(坐标感知丘脑核分割),使用坐标卷积层增强的3D U-Net架构对13个丘脑核(或核群)进行分割,从而提供更精确的大核和小核定位。为了支持广泛的临床适用性,我们提供了预先训练的模型变体,可以在定量T1图以及广泛使用的磁化制备的快速梯度回波(MPRAGE)和快速灰质采集T1反转恢复(FGATIR)序列上操作。我们将CATNUS与现有的方法(包括FreeSurfer、THOMAS和HIPS-THOMAS)进行了基准测试,证明了在多核中提高的分割精度和稳健的重测可靠性。此外,CATNUS在跨越多个扫描仪、场强和供应商的旅行主题数据集上表现出了强大的分布外泛化,在不同的采集条件下产生了可靠的、解剖学上一致的分割。总的来说,CATNUS为丘脑核分割提供了一个准确和通用的解决方案,具有促进大规模神经影像学研究和支持现实世界临床评估的强大潜力。
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引用次数: 0
Tree Thinking in the Genomic Era: Unifying Models Across Cells, Populations, and Species. 基因组时代的树形思维:跨细胞、种群和物种的统一模型。
Pub Date : 2025-12-05
Yun Deng, Shing H Zhan, Yulin Zhang, Chao Zhang, Bingjie Chen

The ongoing explosion of genome sequence data is transforming how we reconstruct and understand the histories of biological systems. Across biological scales, from individual cells to populations and species, trees-based models provide a common framework for representing ancestry. Once limited to species phylogenetics, "tree thinking" now extends deeply to population genomics and cell biology, revealing the genealogical structure of genetic and phenotypic variation within and across organisms. Recently, there have been great methodological and computational advances on tree-based methods, including methods for inferring ancestral recombination graphs in populations, phylogenetic frameworks for comparative genomics, and lineage-tracing techniques in developmental and cancer biology. Despite differences in data types and biological contexts, these approaches share core statistical and algorithmic challenges: efficiently inferring branching histories from genomic information, integrating temporal and spatial signals, and connecting genealogical structures to evolutionary and functional processes. Recognizing these shared foundations opens opportunities for cross-fertilization between fields that are traditionally studied in isolation. By examining how tree-based methods are applied across cellular, population, and species scales, we identify the conceptual parallels that unite them and the distinct challenges that each domain presents. These comparisons offer new perspectives that can inform algorithmic innovations and lead to more powerful inference strategies across the full spectrum of biological systems.

基因组序列数据的持续爆炸式增长正在改变我们重建和理解生物系统历史的方式。跨越生物尺度,从单个细胞到种群和物种,基于树的模型为表示祖先提供了一个共同框架。曾经局限于物种系统发育学的“树形思维”现在深入到种群基因组学和细胞生物学,揭示了生物内部和生物之间的遗传和表型变异的谱系结构。最近,基于树的方法在方法学和计算上取得了巨大的进步,包括推断种群中祖先重组图的方法,比较基因组学的系统发育框架,以及发育和癌症生物学的谱系追踪技术。尽管数据类型和生物学背景存在差异,但这些方法都面临着核心的统计和算法挑战:从基因组信息中有效推断分支历史,整合时间和空间信号,并将家谱结构与进化和功能过程联系起来。认识到这些共同的基础为传统上孤立研究的领域之间的交叉施肥提供了机会。通过研究基于树的方法如何在细胞、种群和物种尺度上应用,我们确定了将它们联合起来的概念上的相似之处,以及每个领域提出的不同挑战。这些比较提供了新的视角,可以为算法创新提供信息,并在整个生物系统范围内产生更强大的推理策略。
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引用次数: 0
The Basic Reproduction Number for Petri Net Models: A Next-Generation Matrix Approach. Petri网模型的基本再现数:新一代矩阵方法。
Pub Date : 2025-12-04
Trevor Reckell, Beckett Sterner, Petar Jevtić

The basic reproduction number ( R 0 ) is an epidemiological metric that represents the average number of new infections caused by a single infectious individual in a completely susceptible population. The methodology for calculating this metric is well-defined for numerous model types, including, most prominently, Ordinary Differential Equations (ODEs). The basic reproduction number is used in disease modeling to predict the potential of an outbreak and the transmissibility of a disease, as well as by governments to inform public health interventions and resource allocation for controlling the spread of diseases. A Petri Net (PN) is a directed bipartite graph where places, transitions, arcs, and the firing of the arcs determine the dynamic behavior of the system. Petri Net models have been an increasingly used tool within the epidemiology community. However, no generalized method for calculating R 0 directly from PN models has been established. Thus, in this paper, we establish a generalized computational framework for calculating R 0 directly from Petri Net models. We adapt the next-generation matrix method to be compatible with multiple Petri Net formalisms, including both deterministic Variable Arc Weight Petri Nets (VAPNs) and stochastic continuous-time Petri Nets (SPNs). We demonstrate the method's versatility on a range of complex epidemiological models, including those with multiple strains, asymptomatic states, and nonlinear dynamics. Crucially, we numerically validate our framework by demonstrating that the analytically derived R 0 values are in strong agreement with those estimated from simulation data, thereby confirming the method's accuracy and practical utility.

基本繁殖数(R_0)是一种流行病学度量,表示在完全易感人群中由单个感染个体引起的新感染的平均数量。对于许多模型类型,包括最突出的常微分方程(ode),计算该度量的方法都是定义良好的。基本繁殖数用于疾病建模,以预测疾病爆发的可能性和疾病的传播性,并由政府为控制疾病传播的公共卫生干预措施和资源分配提供信息。Petri网(PN)是一个有向二部图,其中位置、过渡、弧线和弧线的发射决定了系统的动态行为。Petri网模型已经成为流行病学社区中越来越多使用的工具。然而,目前还没有建立直接从PN模型计算R_0的广义方法。因此,在本文中,我们建立了一个直接从Petri网模型计算R_0的广义计算框架。我们采用新一代矩阵方法来兼容多种Petri网形式,包括确定性变弧权Petri网(VAPNs)和随机连续时间Petri网(SPNs)。我们在一系列复杂的流行病学模型上展示了该方法的多功能性,包括那些具有多菌株,无症状状态和非线性动力学的模型。至关重要的是,我们通过证明解析导出的$R_0$值与模拟数据估计的值非常一致,从而证实了该方法的准确性和实用性,从而在数值上验证了我们的框架。
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引用次数: 0
Depth-enhanced molecular imaging with two-photon oblique plane microscopy. 深度增强分子成像与双光子斜面显微镜。
Pub Date : 2025-12-04
Kevin Keomanee-Dizon, Yaakov Clenman, Alejandra Duran, Sergey Ryabichko, Pauline Hansen, Tohn Borjigin, Richard Thornton, Jared E Toettcher, Harold M McNamara

High-numerical-aperture (NA) oblique plane microscopy enables noninvasive fluorescence imaging of subcellular dynamics without requiring radical sample modification. However, performance degrades at depth in multicellular specimens as scattering and refractive-index heterogeneity raise out-of-focus background. We report a two-photon oblique plane microscope that improves resolution at depth by combining high-NA single-objective detection with multiphoton plane illumination. The microscope achieves $sim!300$ nm lateral and $sim!650$ nm axial resolution, with single-molecule sensitivity in vivo. Compared with two-photon point scanning, the lower illumination NA delivers an order of magnitude lower peak intensity, enabling $>!5times$ faster volumetric acquisition (up to $3.25 times 10^6$ voxels s$^{-1}$) with reduced photodamage. In multicellular contexts, near-infrared nonlinear excitation enhances contrast throughout the illumination depth by $sim!2times$ and restores volumetric resolving power by $>!2times$ relative to linear excitation. We demonstrate these capabilities through molecular imaging of epithelial tissue, stem-cell-derived gastruloids, and living fruit fly embryos, including multicolor transcription-factor dynamics, optogenetic subcellular control, and single-mRNA tracking, all using standard glass-based mounting.

高数值孔径(NA)斜平面显微镜使亚细胞动力学的非侵入性荧光成像不需要彻底的样品修改。然而,在多细胞标本中,由于散射和折射率不均一性引起背景失焦,性能在深度上下降。我们报道了一种双光子斜平面显微镜,通过将高na单物镜检测与多光子平面照明相结合,提高了深度分辨率。显微镜实现$sim!300$ nm横向和$sim!轴向分辨率650$ nm,具有体内单分子灵敏度。与双光子点扫描相比,低照度NA提供了一个低数量级的峰值强度,使$>!5倍更快的体积采集(高达$3.25 倍10^6$体素s$^{-1}$),减少光损伤。在多细胞环境下,近红外非线性激发通过$sim!2倍$,恢复体积分辨率$>!2乘以$相对于线性激励。我们通过上皮组织、干细胞衍生的原肠样细胞和活果蝇胚胎的分子成像证明了这些能力,包括多色转录因子动力学、光遗传亚细胞控制和单mrna跟踪,所有这些都使用标准的玻璃基安装。
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引用次数: 0
Generalizing matrix representations to fully heterochronous ranked tree shapes. 将矩阵表示推广到完全异构排序树形状。
Pub Date : 2025-12-02
Chris Jennings-Shaffer, Cherith Chen, Julia A Palacios, Frederick A Matsen Iv

Phylogenetic tree shapes capture fundamental signatures of evolution. We consider "ranked" tree shapes, which are equipped with a total order on the internal nodes compatible with the tree graph. Recent work has established an elegant bijection of ranked tree shapes and a class of integer matrices, called F -matrices, defined by simple inequalities. This formulation is for isochronous ranked tree shapes, where all leaves share the same sampling time, such as in the study of ancient human demography from present-day individuals. Another important style of phylogenetics concerns trees where the "timing" of events is by branch length rather than calendar time. This style of tree, called a rooted phylogram, is output by popular maximum-likelihood methods. These trees are broadly relevant, such as to study the affinity maturation of B cells in the immune system. Discretizing time in a rooted phylogram gives a fully heterochronous ranked tree shape, where leaves are part of the total order. Here we extend the F -matrix framework to such fully heterochronous ranked tree shapes. We establish an explicit bijection between a class of F -matrices and the space of such tree shapes. The matrix representation has the key feature that values at any entry are highly constrained via four previous entries, enabling straightforward enumeration of all valid tree shapes. We also use this framework to develop probabilistic models on ranked tree shapes. Our work extends understanding of combinatorial objects that have a rich history in the literature.

系统发育树的形状捕捉到了进化的基本特征。我们考虑“排序”树形状,它在与树图兼容的内部节点上配备了一个总顺序。最近的工作已经建立了一个优雅的双射排序树形状和一类整数矩阵,称为textbf{f} -矩阵,由简单的不等式定义。这个公式适用于等时排列的树木形状,其中所有的叶子共享相同的采样时间,例如从现代个体研究古人类人口统计。另一种重要的系统发育类型涉及树,其中事件的“定时”是根据分支长度而不是日历时间。这种类型的树,称为根系统图,是由流行的最大似然方法输出的。这些树具有广泛的相关性,例如研究免疫系统中B细胞的亲和成熟。离散时间在根系统图给出了一个完全异时排序树的形状,其中叶子是总顺序的一部分。在这里,我们将textbf{f} -矩阵框架扩展到这种完全异构排序树形状。我们建立了一类textbf{f} -矩阵与这种树形空间之间的显式双射。矩阵表示的一个关键特性是,任何条目上的值都受到前四个条目的高度约束,从而可以直接枚举所有有效的树形状。我们还使用这个框架来开发排序树形状的概率模型。我们的工作扩展了对具有丰富历史文献的组合对象的理解。
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引用次数: 0
Geometric Modeling of Hippocampal Tau Deposition: A Surface-Based Framework for Covariate Analysis and Off-Target Contamination Detection. 海马体Tau沉积的几何建模:协变量分析和脱靶污染检测的表面框架。
Pub Date : 2025-12-02
Liangkang Wang, Akhil Ambekar, Ani Eloyan

We introduce a framework combining geometric modeling with disease progression analysis to investigate tau deposition in Alzheimer's disease (AD) using positron emission tomography (PET) data. Focusing on the hippocampus, we construct a principal surface that captures the spatial distribution and morphological changes of tau pathology. By projecting voxels onto this surface, we quantify tau coverage, intensity, and thickness through bidirectional projection distances and interpolated standardized uptake value ratios (SUVR). This low-dimensional embedding preserves spatial specificity while mitigating multiple comparison issues. Covariate effects are analyzed using a two-stage regression model with inverse probability weighting to adjust for signal sparsity and selection bias. Using the SuStaIn model, we identify subtypes and stages of AD, revealing distinct tau dynamics: the limbic-predominant subtype shows age-related nonlinear accumulation in coverage and thickness, whereas the posterior subtype exhibits uniform SUVR increases across disease progression. Model-based predictions show that hippocampal tau deposition follows a structured spatial trajectory expanding bidirectionally with increasing thickness, while subtype differences highlight posterior hippocampal involvement consistent with whole-brain patterns. Finally, directional signal patterns on the principal surface reveal contamination from the choroid plexus, demonstrating the broader applicability of the proposed framework across modalities including amyloid PET.

我们引入了一个结合几何建模和疾病进展分析的框架,利用正电子发射断层扫描(PET)数据研究阿尔茨海默病(AD)中的tau沉积。以海马体为中心,我们构建了一个主要的表面来捕捉tau病理的空间分布和形态变化。通过将体素投影到该表面上,我们通过双向投影距离和插值的标准化摄取值比(SUVR)来量化tau覆盖范围、强度和厚度。这种低维嵌入保留了空间特异性,同时减轻了多重比较问题。协变量效应分析使用两阶段回归模型与逆概率加权,以调整信号稀疏性和选择偏差。使用SuStaIn模型,我们确定了AD的亚型和阶段,揭示了不同的tau动态:边缘主导亚型在覆盖和厚度上表现出与年龄相关的非线性积累,而后部亚型在疾病进展中表现出均匀的SUVR增加。基于模型的预测表明,海马tau沉积遵循结构化的空间轨迹,随着厚度的增加而双向扩展,而亚型差异突出了海马后部受损伤与全脑模式一致。最后,主表面的定向信号模式揭示了脉络膜丛的污染,证明了所提出的框架在包括淀粉样PET在内的各种模式中的更广泛的适用性。
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引用次数: 0
BART Streams: Real-time Reconstruction Using a Modular Framework for Pipeline Processing. BART流:使用模块化框架进行管道处理的实时重建。
Pub Date : 2025-12-02
Philip Schaten, Moritz Blumenthal, Bernhard Rapp, Christina Unterberg-Buchwald, Martin Uecker

Purpose: To create modular solutions for interactive real-time MRI using reconstruction algorithms implemented in BART.

Methods: A new protocol for streaming of multidimensional arrays is presented and integrated into BART. The new functionality is demonstrated using examples for interactive real-time MRI based on radial FLASH, where iterative reconstruction is combined with advanced features such as dynamic coil compression and gradient-delay correction. We analyze the latency of the reconstruction and measure end-to-end latency of the full imaging process.

Results: Reconstruction pipelines with iterative reconstruction and advanced functionality can be built in a modular way using scripting. Latency measurements demonstrate latency sufficient for interactive real-time MRI.

Conclusion: With the new streaming capabilities, real-time reconstruction pipelines can be assembled using BART in a flexible way, enabling rapid prototyping of advanced applications such as interactive real-time MRI.

方法:提出了一种用于多维阵列流的新协议,并将其集成到BART中。使用基于径向FLASH的交互式实时MRI示例演示了新功能,其中迭代重建与动态线圈压缩和梯度延迟校正等先进功能相结合。我们分析了重建的延迟,并测量了整个成像过程的端到端延迟。结果:具有迭代重建和高级功能的重建管道可以使用脚本以模块化的方式构建。延迟测量表明,延迟足以进行交互式实时MRI。结论:有了新的流功能,实时重建管道可以灵活地使用BART进行组装,从而实现交互式实时MRI等高级应用的快速原型设计。
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引用次数: 0
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