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FILM: Mapping organellar metabolism by mid-infrared photothermal modulated fluorescence. 胶片:利用中红外光热调制荧光绘制细胞器代谢图谱。
Pub Date : 2026-05-04
Jianpeng Ao, Jiaze Yin, Haonan Lin, Guangrui Ding, Youchen Guan, Bethany Weinberg, Dashan Dong, Qing Xia, Zhongyue Guo, Marzia Savini, Biwen Gao, Ji-Xin Cheng, Meng C Wang

Metabolism unfolds within specific organelles in eukaryotic cells. Lysosomes are highly metabolically active organelles, and their metabolic states dynamically influence signal transduction, cellular homeostasis, and organismal physiopathology. Despite the significance of lysosomal metabolism, a method for its in vivo measurement is currently lacking. Here, we report optical boxcar-enhanced, fluorescence-detected mid-infrared photothermal microscopy, together with AI-assisted data denoising and spectral deconvolution, to map metabolic activity and composition of individual lysosomes in living cells and organisms. Using this method, we uncovered lipolysis and proteolysis heterogeneity across lysosomes within the same cell, as well as early-onset lysosomal dysfunction during organismal aging. Additionally, we discovered organelle-level metabolic changes associated with diverse lysosomal storage diseases. This method holds the broad potential to profile metabolic fingerprints of individual organelles within their native context and quantitatively assess their dynamic changes under different physiological and pathological conditions, providing a high-resolution chemical cellular atlas.

在真核细胞中,代谢在特定的细胞器内展开。溶酶体是高度代谢活跃的细胞器,其代谢状态动态影响信号转导、细胞稳态和机体生理病理。尽管溶酶体代谢具有重要意义,但目前缺乏一种体内测量方法。在这里,我们报告了光学箱车增强的荧光检测中红外光热显微镜,以及人工智能辅助的数据去噪和光谱反褶积,以绘制活细胞和生物体中单个溶酶体的代谢活性和组成。利用这种方法,我们发现了同一细胞内溶酶体的脂解和蛋白解异质性,以及机体衰老过程中溶酶体的早发性功能障碍。此外,我们发现细胞器水平的代谢变化与多种溶酶体贮积病有关。该方法具有广泛的潜力,可以分析单个细胞器在其天然环境中的代谢指纹,并定量评估其在不同生理和病理条件下的动态变化,提供高分辨率的化学细胞图谱。
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引用次数: 0
On a Keller-Segel type equation to model Brain Microvascular Endothelial Cells growth's patterns. 用Keller-Segel型方程模拟脑微血管内皮细胞的生长模式。
Pub Date : 2026-05-01
B Ambrosio, A Garroudji, S Fitzsimons, H Zaag, F M Elahi

This article presents a partial differential equation (PDE) of Keller-Segel (KS) type that reproduces patterns commonly observed during the growth of brain microvasculature. We provide mathematical insights into the mechanisms underlying the emergence of these patterns. In addition, we derive a data-driven equation that ensures a consistent temporal evolution of the chemoattractant associated with the observed microvascular dynamics. Beyond numerical simulations, the aim of this study is to advance a comprehensive mathematical modeling framework, spanning blood flow in cerebral arterial networks to biochemical processes, in order to better understand how vascular impairments may contribute to neurodegenerative diseases.

本文提出了一个Keller-Segel (KS)型偏微分方程(PDE),它再现了在脑微血管生长过程中常见的模式。我们为这些模式出现的机制提供了数学上的见解。此外,我们推导了一个数据驱动的方程,以确保与观察到的微血管动力学相关的化学引诱剂的一致的时间演化。除了数值模拟,本研究的目的是推进一个全面的数学建模框架,从脑动脉网络的血流到生化过程,以便更好地了解血管损伤如何导致神经退行性疾病。
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引用次数: 0
Pre-CAT: A web-based, graphical user-interface toolbox for preclinical CEST-MRI data processing and analysis. Pre-CAT:一个基于网络的图形用户界面工具箱,用于临床前CEST-MRI数据处理和分析。
Pub Date : 2026-05-01
Jonah Weigand-Whittier, Samuel Rubin, Cindy Ayala, Mark Velasquez, Nikita Vladimirov, Hadas Avraham, Or Perlman, M Roselle Abraham, Moriel H Vandsburger

Purpose: As interest in CEST-MRI grows, particularly in the preclinical setting, the necessity for standardized and easy-to-use acquisition and data analysis pipelines has become apparent. While vendors have increasingly introduced support for CEST acquisitions on both clinical and preclinical hardware, image post-processing and analysis pipelines remain siloed based on privately developed code. We aim to develop an easy-to-use, open-source graphical user interface toolbox for preclinical CEST-MRI data analysis (Preclinical CEST-MRI Analysis Tool; Pre-CAT), supporting multiple acquisition types, organ systems, and CEST contrast mechanisms.

Methods: Pre-CAT was developed in Python and utilizes the Numpy, Scipy, and Matplotlib libraries for data analysis and plotting. Inbuilt data processing steps include image loading, reconstruction, post-processing, and segmentation. Pre-CAT also supports data analysis for QUESP, CEST-MRF, and field mapping experiments using consensus protocols and methods. Pre-CAT's web interface and GUI were developed using Streamlit, an open-source Python framework. Pre-CAT is hosted and accessible online and can be downloaded for local installation to complete the data analysis pipeline in roughly one minute using modern hardware.

Results: Pre-CAT analysis pipelines for Z-spectroscopy, CEST-MRF, and quantitative CEST (QUESP/QUEST) are demonstrated.

Conclusion: With the introduction of Pre-CAT, we aim to standardize the preclinical CEST-MRI data analysis pipeline, fostering collaboration across research sites and reducing methodological redundancy. Pre-CAT is open-source and relatively modular, encouraging the addition of new methods and protocols.

目的:随着对CEST-MRI的兴趣的增长,特别是在临床前环境中,标准化和易于使用的采集和数据分析管道的必要性已经变得明显。虽然供应商越来越多地在临床和临床前硬件上引入对CEST获取的支持,但图像后处理和分析管道仍然基于私人开发的代码。我们的目标是开发一个易于使用的开源图形用户界面工具箱,用于临床前CEST- mri数据分析(临床前CEST- mri分析工具;Pre-CAT),支持多种采集类型,器官系统和CEST对比机制。方法:使用Python开发Pre-CAT,利用Numpy、Scipy和Matplotlib库进行数据分析和绘图。内置的数据处理步骤包括图像加载、重建、后处理和分割。Pre-CAT还支持使用共识协议和方法进行QUESP, CEST-MRF和现场制图实验的数据分析。Pre-CAT的web界面和GUI是使用开源Python框架Streamlit开发的。Pre-CAT是托管的,可以在线访问,并且可以下载用于本地安装,使用现代硬件在大约一分钟内完成数据分析管道。结果:演示了z光谱、CEST- mrf和定量CEST (QUESP/QUEST)的预cat分析管道。结论:随着Pre-CAT的引入,我们的目标是标准化临床前CEST-MRI数据分析管道,促进研究站点之间的合作,减少方法冗余。Pre-CAT是开源和相对模块化的,鼓励添加新的方法和协议。
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引用次数: 0
Reconstruction of glymphatic transport fields from subject-specific imaging data, with particular emphasis on cerebrospinal fluid flow and tracer conservation. 从受试者特定的成像数据重建淋巴转运场,特别强调脑脊液流动和示踪剂保护。
Pub Date : 2026-05-01
A Derya Bakiler, Michael J Johnson, Michael R A Abdelmalik, Frimpong A Baidoo, Andrew Badachhape, Ananth V Annapragada, Thomas J R Hughes, Shaolie S Hossain

The reconstruction of physically valid transport fields from subject-specific imaging data is a fundamental challenge in image-based computational modeling due to measurement noise, modeling uncertainties and discretization errors. Without a methodology to construct models that faithfully reflect the underlying physics, mechanistic understanding of complex biological systems is inherently limited. In this work, we address this challenge in the glymphatic system, the brain's waste-clearance network, where cerebrospinal fluid (CSF) is transported through perivascular spaces into the brain parenchyma to facilitate metabolic waste removal. We introduce a computational framework for the high-fidelity reconstruction of subject-specific glymphatic transport fields from spatiotemporal imaging data. The formulation utilizes an advection-diffusion model with a velocity decomposition that imposes mass conservation, enabling the recovery of solenoidal (divergence-free) velocity fields through the solution of a constrained inverse problem. The system is discretized using immersed isogeometric analysis with quadratic B-spline basis functions, providing smooth, high-continuity solutions and inherent regularization of imaging noise. We demonstrate the framework's utility by using contrast-enhanced magnetic resonance imaging of tracer transport in a mouse brain, obtaining spatially varying estimates of CSF velocity, diffusivity, and clearance parameters. Forward simulations using the recovered fields show close agreement with experimental observations, validating the framework's ability to characterize complex transport dynamics while preserving physical integrity. This approach provides a generalizable methodology for the robust inference of physically consistent transport fields from imperfect imaging data, with broad applicability to the image-guided modeling of biological and engineering systems.

由于测量噪声、建模不确定性和离散化误差,从特定主题的成像数据中重建物理有效的传输场是基于图像的计算建模的一个基本挑战。没有一种方法来构建忠实地反映底层物理的模型,对复杂生物系统的机械理解本质上是有限的。在这项工作中,我们在淋巴系统中解决了这一挑战,淋巴系统是大脑的废物清除网络,脑脊液(CSF)通过血管周围间隙运输到脑实质,以促进代谢废物的清除。我们介绍了一个计算框架,用于从时空成像数据中高保真地重建受试者特异性淋巴转运场。该公式利用平流扩散模型和速度分解来施加质量守恒,通过求解约束逆问题来恢复螺线形(无散度)速度场。利用二次b样条基函数对系统进行浸没等几何分析,得到光滑、高连续性的解和成像噪声的固有正则化。我们通过使用小鼠大脑中示踪剂运输的对比增强磁共振成像,获得脑脊液速度、扩散率和间隙参数的空间变化估计,证明了该框架的实用性。利用回收油田进行的正演模拟与实验观察结果非常吻合,验证了该框架在保持物理完整性的同时表征复杂输运动力学的能力。这种方法提供了一种可推广的方法,可以从不完美的成像数据中可靠地推断出物理上一致的传输场,广泛适用于生物和工程系统的图像引导建模。
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引用次数: 0
Effect of swimming mode on shielding of odor traces in turbulence. 游泳方式对湍流中气味痕迹屏蔽的影响。
Pub Date : 2026-05-01
Martin James, Francesco Viola, Agnese Seminara

Marine organisms manipulate their surrounding flow through their swimming dynamics, which affects the transport of their own odor cues. We demonstrate by direct numerical simulations how a group of swimmers, moving at intermediate Reynolds numbers, immersed in a turbulent flow, alter the shape of the odor plume they release in the water. Odor mixing is enhanced by increased velocity fluctuations and a swimmer-induced flow circulation that widens the odor plume at close range while speeding up dilution of the chemical trace. Beyond a short-range increase in the likelihood of being detected, swimming considerably reduces detections with effects that can persist at distances on the order of ten times the size of the group or more. We find that pullerlike swimmers are more effective at olfactory shielding than pusherlike swimmers. We trace this difference back to the dynamics at the swimmer location, which tends to trap odor at the source for pushers and to dilute it for pullers. Olfactory shielding is robust to changes in the conditions, and is more pronounced for weak turbulent Reynolds numbers and large swimmer Reynolds numbers. Our results suggest that olfactory shielding may play a role in the emergence of different swimming modalities by marine organisms.

海洋生物通过它们的游泳动态来操纵周围的水流,这影响了它们自身气味线索的传输。我们通过直接数值模拟证明了一群游泳者,在中间雷诺数下运动,沉浸在湍流中,如何改变他们在水中释放的气味羽状物的形状。通过增加速度波动和游泳者诱导的流动循环,在近距离内扩大气味羽流,同时加速化学痕迹的稀释,从而增强了气味混合。除了在短时间内增加被发现的可能性外,游泳还大大减少了被发现的可能性,这种影响可以持续十倍于群体规模或更多的距离。我们发现拉式游泳者比推式游泳者更有效地屏蔽嗅觉。我们将这种差异追溯到游泳者所在位置的动力学,它倾向于将气味困在推者的源头,并将其稀释给拉者。嗅觉屏蔽对条件的变化是稳健的,对于弱湍流雷诺数和大游泳者雷诺数更为明显。我们的研究结果表明,嗅觉屏蔽可能在海洋生物不同游泳方式的出现中发挥作用。
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引用次数: 0
LNODE: latent dynamics reveal the shared spatiotemporal structure of amyloid-$β$ progression. LNODE:潜在动力学揭示了淀粉样蛋白- β$进展的共同时空结构。
Pub Date : 2026-04-30
Zheyu Wen, George Biros

We introduce LNODE, a mechanism-based phenomenological model for amyloid beta (A$β$) dynamics, calibrated using positron emission tomography (PET) imaging. A$β$ is a key biomarker of Alzheimer's disease. LNODE is designed to support the fusion, harmonization, quantitative analysis, and interpretation of Abeta PET scans. We evaluate LNODE on 1461 subjects in the ADNI cohort and 1070 subjects in the A4 Study, using MUSE and DKT anatomical atlases. LNODE is formulated as a regional neural ordinary differential equation (ODE) model that is jointly calibrated on all available scans within a cohort. The model captures the spatial propagation, proliferation, and clearance of A$β$ and incorporates a latent-state representation that modulates A$β$ dynamics. The temporal evolution of these latent states is governed by cohort-shared parameters, enabling LNODE to represent both population-level trajectories and subject-specific deviations. The proposed model demonstrates strong parameter identifiability and stability properties, supported by synthetic experiments and analytical analysis of the Hessian condition number. To mitigate overfitting and reduce spurious correlations, LNODE is intentionally underparameterized, employing approximately five to ten parameters per subject. Despite this parsimonious parameterization, LNODE achieves $R^2 > 0.99$ in both the ADNI and A4 datasets. LNODE exhibits strong predictive performance: in the A4 cohort, it accurately forecasts the A$β$ PET signal in previously unseen follow-up scans, including cases with inter-scan intervals exceeding four years. Clustering in the learned latent-state space reveals distinct subgroups, consistent with the existence of different subtypes of Alzheimer's disease progression.

我们介绍了LNODE,这是一种基于机制的β淀粉样蛋白(a $β$)动力学现象学模型,使用正电子发射断层扫描(PET)成像进行校准。A$β$是阿尔茨海默病的关键生物标志物。LNODE旨在支持Abeta PET扫描的融合、协调、定量分析和解释。我们使用MUSE和DKT解剖图谱对ADNI队列中的1461名受试者和A4研究中的1070名受试者进行了LNODE评估。LNODE是一个区域神经常微分方程(ODE)模型,在一个队列中对所有可用的扫描进行联合校准。该模型捕获了A$β$的空间传播、增殖和清除,并结合了调节A$β$动态的潜在状态表示。这些潜在状态的时间演变受队列共享参数的控制,使LNODE既能代表群体水平的轨迹,也能代表受试者特定的偏差。综合实验和Hessian条件数分析结果表明,该模型具有较强的参数可辨识性和稳定性。为了减轻过拟合和减少虚假相关性,LNODE故意进行了低参数化,每个主题使用大约5到10个参数。尽管这种简约的参数化,LNODE在ADNI和A4数据集上都达到了$R^2 > 0.99$。LNODE表现出强大的预测性能:在A4队列中,它准确地预测了以前未见过的随访扫描中的A$β$ PET信号,包括扫描间隔超过四年的病例。习得潜伏状态空间的聚类揭示了不同的亚群,这与阿尔茨海默病不同亚型的存在是一致的。
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引用次数: 0
Complex Effects of Salt on Small-Angle X-ray Scattering of BSA Originate From the Interplay of Ions and Hydration Water. 盐对牛血清白蛋白小角x射线散射的复杂影响源于离子与水合水的相互作用。
Pub Date : 2026-04-30
Anshika Dhiman, Sanbo Qin, Huan-Xiang Zhou

Salts are an integral part of the environment for living systems and, therefore, understanding their effects on proteins and other biomolecules is of fundamental interest. Small-angle X-ray scattering (SAXS) of protein solutions can provide valuable information on salt effects, but extracting this information has been a significant challenge. For example, SAXS data of bovine serum albumin (BSA) at various salt concentrations were fit to three different spherical models. Here we combined the newly developed FMAPIq approach with explicit-solvent all-atom molecular dynamics simulations to show that the complex effects of salt on the SAXS of BSA originate from the interplay of ions and hydration water, leading to a general picture of protein-ion-water interactions.

盐是生命系统环境不可分割的一部分,因此,了解它们对蛋白质和其他生物分子的影响具有重要意义。蛋白质溶液的小角度x射线散射(SAXS)可以提供有关盐效应的宝贵信息,但提取这些信息一直是一个重大挑战。例如,不同盐浓度下牛血清白蛋白(BSA)的SAXS数据拟合到三种不同的球形模型中。在这里,我们将新开发的FMAPIq方法与显式溶剂全原子分子动力学模拟相结合,表明盐对BSA的SAXS的复杂影响源于离子和水合水的相互作用,从而得到了蛋白质-水相互作用的总体图景。
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引用次数: 0
The Genetic and Environmental Architecture of the Human Functional Connectome. 人类功能连接体的遗传和环境结构。
Pub Date : 2026-04-27
Tanu Raghav, Daniel Guerrero, Uttara Tipnis, Julie Sara Benny, Mintao Liu, Mario Dzemidzic, Arian Ashourvan, Alex P Miller, Beau Ances, Jaroslaw Harezlak, Joaquín Goñi

Functional connectivity varies across individuals due to genetic and environmental factors, yet classical twin models typically confound non-shared environment with measurement error and are largely limited to resting-state analyses. We hypothesized that: i) explicitly modeling measurement error from repeated fMRI sessions enables more accurate application of classical twin models (ACE/ADE) to functional connectivity; ii) model applicability depends on scan-length and parcellation granularity; iii) genetic and environmental effects on functional connectomes show differentiated functional modules across conditions. We extended ACE/ADE models to include a repeated-scan derived error term by analyzing monozygotic and dizygotic twins from the Young-Adult Human Connectome Project dataset. Genetic and environment variance components were estimated for all functional couplings across resting-state and task conditions, integrated across conditions using a minimum-error criterion, and analyzed using multilayer community detection across resolution scales. Functional couplings segregated into distinct categories characterized by shared environmental, additive, dominant, or epistatic influences, with a substantial fraction not meeting twin-model assumptions. Integrating across conditions revealed hierarchical community structure in genetic and environmental components observed across community resolution scales. Incorporating measurement error into twin models improves interpretability and applicability at the functional connectome level, revealing that genetic and environmental influences are structured into coherent, multiscale brain networks.

由于遗传和环境因素,个体之间的功能连接有所不同,但经典的双胞胎模型通常会将非共享环境与测量误差混淆,并且很大程度上局限于静息状态分析。我们假设:i)明确建模重复fMRI会话的测量误差可以更准确地将经典双胞胎模型(ACE/ADE)应用于功能连接;Ii)模型适用性取决于扫描长度和包封粒度;遗传和环境对功能连接体的影响在不同条件下表现出不同的功能模块。通过分析来自Young-Adult Human Connectome Project数据集的同卵双胞胎和异卵双胞胎,我们扩展了ACE/ADE模型,以包括重复扫描衍生的误差项。对静息状态和任务条件下所有功能耦合的遗传和环境方差成分进行了估计,使用最小误差准则对不同条件进行了整合,并使用跨分辨率尺度的多层群落检测进行了分析。功能耦合被划分为不同的类别,以共享的环境、附加的、主导的或上位性的影响为特征,其中很大一部分不符合双模型假设。跨条件的整合揭示了在不同的群落分辨率尺度上观察到的遗传和环境成分的分层群落结构。将测量误差纳入孪生模型提高了功能连接组水平的可解释性和适用性,揭示了遗传和环境影响被构建成连贯的、多尺度的大脑网络。
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引用次数: 0
Generative diffusion models for spatiotemporal influenza forecasting. 时空流感预测的生成扩散模型。
Pub Date : 2026-04-27
Joseph Lemaitre, Justin Lessler

Forecasting infectious disease incidence can provide important information to guide public health planning, yet is difficult because epidemic dynamics are complex. Current mechanistic and statistical approaches often struggle to capture multimodal uncertainty or emergent trends. Influpaint adapts denoising diffusion probabilistic models to epidemic forecasting. By encoding influenza seasons as spatiotemporal images in which pixel intensity represents incidence, Influpaint learns a rich distribution of disease dynamics from a hybrid dataset of surveillance and simulated trajectories. Forecasting is formulated as a conditional generation (inpainting) task from partial observations. We show that Influpaint generates realistic, diverse epidemic trajectories and achieves forecast accuracy that is competitive with leading ensemble methods in retrospective evaluation. In real-time evaluation during the 2023--2025 U.S. CDC FluSight challenges, performance improved substantially across seasons, with highly accurate but somewhat overconfident projections in 2024--2025. The best performance was achieved with a training dataset containing 30% surveillance and 70% simulated trajectories. These results show that diffusion models can capture important spatiotemporal structure in influenza dynamics and provide a flexible framework for probabilistic infectious disease forecasting.

传染病发病率预测可以为指导公共卫生规划提供重要信息,但由于流行病动态复杂,因此很难预测。目前的机械和统计方法往往难以捕捉多模态不确定性或新兴趋势。influupaint将去噪扩散概率模型应用于流行病预测。通过将流感季节编码为时空图像,其中像素强度代表发病率,influupaint从监测和模拟轨迹的混合数据集中学习疾病动态的丰富分布。预测是由部分观测结果形成的条件生成(绘制)任务。我们表明,influupaint产生了现实的、多样化的流行病轨迹,并实现了与回顾性评估中领先的集成方法相竞争的预测准确性。在2023- 2025年美国CDC FluSight挑战期间的实时评估中,各个季节的性能都有很大提高,2024- 2025年的预测非常准确,但有些过于自信。当训练数据集包含30%的监视和70%的模拟轨迹时,获得了最佳性能。这些结果表明,扩散模型可以捕捉流感动力学中重要的时空结构,为概率传染病预测提供了一个灵活的框架。
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引用次数: 0
Solution of a large nonlinear recurrent neural network at fixed connectivity. 一类大型非线性递归神经网络在固定连通性下的解。
Pub Date : 2026-04-27
Albert J Wakhloo

We calculate the moments and response functions of a nonlinear random recurrent neural network in the large $N$ limit. Our approach does not require averaging over synaptic weights and gives the first nontrivial term in a $1/sqrt{N}$ expansion of general intensive-order correlation functions, proving a recent conjecture by Shen and Hu as a special case. Our results provide an analytical link between synaptic connectivity, correlations in spontaneous activity, and the response of a network to small perturbations.

我们计算了一个非线性随机递归神经网络在大$N$极限下的矩和响应函数。我们的方法不需要对突触权值进行平均,并且给出了一般强阶相关函数展开$1/sqrt{N}$中的第一个非平凡项,作为一个特例证明了Shen和Hu最近的一个猜想。我们的研究结果提供了突触连通性、自发活动相关性和网络对小扰动的响应之间的分析联系。
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引用次数: 0
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