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Deep Learning-Driven Inversion Framework for Shear Modulus Estimation in Magnetic Resonance Elastography (DIME). 磁共振弹性成像(DIME)中剪切模量估计的深度学习驱动反演框架。
Pub Date : 2025-12-15
Hassan Iftikhar, Rizwan Ahmad, Arunark Kolipaka

The Multimodal Direct Inversion (MMDI) algorithm is widely used in Magnetic Resonance Elastography (MRE) to estimate tissue shear stiffness. However, MMDI relies on the Helmholtz equation, which assumes wave propagation in a uniform, homogeneous, and infinite medium. Furthermore, the use of the Laplacian operator makes MMDI highly sensitive to noise, which compromises the accuracy and reliability of stiffness estimates. In this study, we propose the Deep-Learning driven Inversion Framework for Shear Modulus Estimation in MRE (DIME), aimed at enhancing the robustness of inversion. DIME is trained on the displacement fields-stiffness maps pair generated through Finite Element Modelling (FEM) simulations. To capture local wave behavior and improve robustness to global image variations, DIME is trained on small image patches. We first validated DIME using homogeneous and heterogeneous datasets simulated with FEM, where DIME produced stiffness maps with low inter-pixel variability, accurate boundary delineation, and higher correlation with ground truth (GT) compared to MMDI. Next, DIME was evaluated in a realistic anatomy-informed simulated liver dataset with known GT and compared directly to MMDI. DIME reproduced ground-truth stiffness patterns with high fidelity (r = 0.99, R2 = 0.98), while MMDI showed greater underestimation. After validating DIME on synthetic data, we tested the model in in vivo liver MRE data from eight healthy and seven fibrotic subjects. DIME preserved physiologically consistent stiffness patterns and closely matched MMDI, which showed directional bias. Overall, DIME showed higher correlation with ground truth and visually similar stiffness patterns, whereas MMDI displayed a larger bias that can potentially be attributed to directional filtering. These preliminary results highlight the feasibility of DIME for clinical applications in MRE.

多模态直接反演(MMDI)算法被广泛应用于磁共振弹性成像(MRE)中估计组织剪切刚度。然而,MMDI依赖于亥姆霍兹方程,该方程假设波在均匀、均匀和无限的介质中传播。此外,拉普拉斯算子的使用使得MMDI对噪声高度敏感,从而降低了刚度估计的准确性和可靠性。在这项研究中,我们提出了深度学习驱动的MRE剪切模量估计反演框架(DIME),旨在提高反演的鲁棒性。DIME是根据有限元模拟生成的位移场-刚度映射对进行训练的。为了捕获局部波行为并提高对全局图像变化的鲁棒性,DIME在小图像块上进行训练。我们首先使用FEM模拟的同质和异质数据集验证DIME,其中DIME生成的刚度图具有低像素间变异性,精确的边界描绘,与MMDI相比,与地面真值(GT)的相关性更高。接下来,在已知GT的真实解剖模拟肝脏数据集中评估DIME,并直接与MMDI进行比较。DIME能高保真地再现地真刚度模式(r = 0.99, r ^2 = 0.98),而MMDI则表现出更大的低估。在合成数据上验证DIME后,我们在8名健康受试者和7名纤维化受试者的体内肝脏MRE数据中测试了该模型。DIME保留了生理上一致的刚度模式,并与MMDI密切匹配,显示出方向偏差。总体而言,DIME与地面真值和视觉上相似的刚度模式显示出更高的相关性,而MMDI显示出更大的偏差,这可能归因于定向过滤。这些初步结果突出了DIME在MRE临床应用的可行性。
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引用次数: 0
DarkSPARC: Dark-Blood Spectral Self-Calibrated Reconstruction of 3D Left Atrial LGE MRI for Post-Ablation Scar Imaging. DarkSPARC:用于消融后瘢痕成像的3D左心房LGE MRI暗血谱自校准重建。
Pub Date : 2025-12-15
Mohammed S M Elbaz

Purpose: To develop DarkSPARC, a retrospective, training-free, self-calibrated spectral reconstruction method that converts routine bright-blood 3D left atrial (LA) late gadolinium enhancement (LGE) MRI into a dark-blood image, and to quantify its impact on LA scar-pool CNR, SNR, effective CNR (eCNR), and scar quantification accuracy.

Methods: DarkSPARC embeds bright-blood LA LGE into a calibrator-conditioned (N+1)-dimensional spectral domain and reconstructs a dark-blood-like image using scan-specific spectral landmarks. A scan-specific 3D numerical phantom framework was built from LAScarQS post-ablation LGE by cloning remote myocardium into the LA wall and imposing controlled scar burden. Five baseline cases spanning the 5th-95th percentiles of native scar-pool CNR, each with multiple scar burdens and 10 CNR degradation levels, yielded 200 phantoms. For every phantom, LA scar-pool CNR, SNR, eCNR, and Scar% were measured on bright-blood and DarkSPARC images. In vivo performance was evaluated in 60 public post-ablation scans of atrial fibrillation patients.

Results: In scan-specific phantoms, DarkSPARC increased LA scar-pool CNR, SNR, and eCNR over bright-blood in all 200 experiments, with DarkSPARC/bright-blood ratios up to about 30-fold for CNR and about 6-fold for SNR in the lowest-CNR conditions. At 70% CNR degradation, bright-blood underestimated ground-truth LA Scar% by -37% to -54%, whereas DarkSPARC reduced bias to about -3% to -5%. In vivo, DarkSPARC similarly improved metrics: median scar-pool CNR, SNR, and eCNR increased from 20.0 to 135.9 (6.8x), 70.6 to 200.6 (2.8x), and 0.22 to 0.75 (3.4x), respectively (all p<0.001), and LA Scar% increased from 3.9% to 9.75%.

Conclusion: DarkSPARC is a self-calibrated, training-free reconstruction that yields dark-blood 3D LA LGE, boosting CNR/SNR/eCNR and stabilizing reliable scar quantification without extra scans.

目的:开发DarkSPARC,一种回顾性、无需训练、自校准的光谱重建方法,将常规亮血3D左房(LA)晚期钆增强(LGE) MRI转换为暗血图像,并量化其对LA疤痕池CNR、信噪比、有效CNR (eCNR)和疤痕量化精度的影响。方法:DarkSPARC将亮血LA LGE嵌入校准器条件(N+1)维光谱域,利用扫描特异性光谱标记重建类似暗血的图像。在LAScarQS消融后LGE中,通过克隆远端心肌到LA壁上并施加可控疤痕负担,构建扫描特异性3D数值幻影框架。5个基线病例跨越原生疤痕池CNR的第5 -95百分位数,每个病例都有多个疤痕负担和10个CNR退化水平,产生200个幻影。对于每个幻像,在亮血和暗血图像上测量LA疤痕池的CNR、SNR、eCNR和Scar%。对60例房颤患者消融后的公开扫描进行了体内表现评估。结果:在扫描特异性幻影中,在所有200个实验中,DarkSPARC增加了LA疤痕池的CNR、信噪比和eCNR,在最低CNR条件下,DarkSPARC/亮血的CNR比高达约30倍,信噪比约为6倍。在70%的CNR退化情况下,亮血对LA Scar%的估计偏差为-37%至-54%,而DarkSPARC将偏差降低至-3%至-5%。在体内,DarkSPARC同样改善了指标:疤痕池中位CNR、SNR和eCNR分别从20.0增加到135.9(6.8倍)、70.6增加到200.6(2.8倍)和0.22增加到0.75(3.4倍)。结论:DarkSPARC是一种自校准、无需训练的重建方法,可产生深色血液3D LA LGE,提高CNR/SNR/eCNR,稳定可靠的疤痕量化,无需额外扫描。
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引用次数: 0
Mechanisms of thrombin inhibition by protein S and the TFPIα-fVshort-protein S complex. 蛋白S和tfpi α- fvshort蛋白S复合物抑制凝血酶的机制。
Pub Date : 2025-12-12
Alexander G Ginsberg, Josefin Ahnström, James T B Crawley, Karin Leiderman, Dougald M Monroe, Keith B Neeves, Suzanne F Sindi, Aaron L Fogelson

Protein S (PS) is a notable anticoagulant implicated in both bleeding and thrombotic disorders, making it a promising drug target. Importantly, PS enhances the anticoagulant function of TFPI$α$, likely circulating in the bloodstream together with TFPI$α$ and a truncated form of factor V (fVshort) in the trimolecular complex, TFPI$α$-fVshort-PS, which we call protein S complex (PSC). PSC has been proposed to strongly inhibit thrombin production by enhancing the ability of TFPI$α$ to inhibit clotting factor Xa up to 100-fold and by localizing to platelet membranes, limiting fXa activity shortly after coagulation starts. Yet, exactly how PS functions with TFPI$α$ as an anticoagulant remains poorly understood. To investigate, we extend an experimentally validated mathematical model of blood coagulation to include PSC and free PS (not part of PSC) in the plasma, as well as free PS and TFPI$α$ in platelets. We find that shortly after coagulation initiation, PSC strongly inhibits thrombin production. We find that the (unknown) magnitude of the enhanced affinity of PSC binding to inhibit fXa critically regulates PSC's impact on thrombin production. We find that under flow, PSC can unexpectedly accumulate on platelets to concentrations ~50 times higher than in the plasma. We also find that PSC limits thrombin production by occupying fV-specific binding sites on platelets. Our results show that changes in PSC can dramatically impact severity of pathological bleeding disorders. For the east Texas bleeding disorder, elevated PSC concentrations eliminate thrombin bursts, leading to bleeding. With fV deficiency, reducing PSC rescues thrombin production in severe fV deficiency and returns thrombin production due to mild fV deficiency to normal. Finally, thrombin production in severe hemophilia A can be substantially improved by blocking PSC's anticoagulant function.

蛋白S (PS)是一种显著的抗凝血剂,与出血和血栓性疾病有关,使其成为一个有希望的药物靶点。重要的是,PS增强了TFPI$α$的抗凝血功能,可能与TFPI$α$和三分子复合物TFPI$α$-fVshort-PS中的截断形式的因子V (fVshort)一起在血液中循环,我们称之为蛋白S复合物(PSC)。已提出PSC通过增强TFPI$α$抑制凝血因子Xa高达100倍的能力,并通过定位于血小板膜,在凝血开始后不久限制fXa的活性,从而强烈抑制凝血酶的产生。然而,确切地说,PS如何与TFPI$α$作为抗凝剂起作用仍然知之甚少。为了研究,我们扩展了一个实验验证的血液凝固数学模型,包括血浆中的PSC和游离PS(不是PSC的一部分),以及血小板中的游离PS和TFPI$α$。我们发现在凝血开始后不久,PSC强烈抑制凝血酶的产生。我们发现(未知的)PSC结合抑制fXa的亲和力增强的程度关键地调节了PSC对凝血酶产生的影响。我们发现,在流动下,PSC可以意外地积聚在血小板上,浓度比血浆高50倍。我们还发现PSC通过占领血小板上的fv特异性结合位点来限制凝血酶的产生。我们的研究结果表明,PSC的变化可以显著影响病理性出血性疾病的严重程度。对于东德克萨斯出血障碍,升高的PSC浓度消除凝血酶爆发,导致出血。在fV缺乏的情况下,减少PSC可以挽救严重fV缺乏的凝血酶产生,并使轻度fV缺乏的凝血酶产生恢复正常。最后,阻断PSC的抗凝血功能可以显著改善严重血友病A的凝血酶生成。
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引用次数: 0
Hierarchical Molecular Language Models (HMLMs). 层次分子语言模型(HMLMs)。
Pub Date : 2025-12-12
Hasi Hays, Yue Yu, William J Richardson

Artificial intelligence (AI) is reshaping computational and network biology by enabling new approaches to decode cellular communication networks. We introduce Hierarchical Molecular Language Models (HMLMs), a novel framework that models cellular signaling as a specialized molecular language, where signaling molecules function as tokens, protein interactions define syntax, and functional consequences constitute semantics. HMLMs employ a transformer-based architecture adapted to accommodate graph-structured signaling networks through information transducers, mathematical entities that capture how molecules receive, process, and transmit signals. The architecture integrates multi-modal data sources across molecular, pathway, and cellular scales through hierarchical attention mechanisms and scale-bridging operators that enable information flow across biological hierarchies. Applied to a complex network of cardiac fibroblast signaling, HMLMs outperformed traditional approaches in temporal dynamics prediction, particularly under sparse sampling conditions. Attention-based analysis revealed biologically meaningful crosstalk patterns, including previously uncharacterized interactions between signaling pathways. By bridging molecular mechanisms with cellular phenotypes through AI-driven molecular language representation, HMLMs establish a foundation for biology-oriented large language models (LLMs) that could be pre-trained on comprehensive pathway datasets and applied across diverse signaling systems and tissues, advancing precision medicine and therapeutic discovery.

人工智能(AI)通过启用解码细胞通信网络的新方法,正在重塑计算和网络生物学。我们介绍了层次分子语言模型(HMLMs),这是一个新的框架,将细胞信号作为一种专门的分子语言建模,其中信号分子作为标记,蛋白质相互作用定义语法,功能结果构成语义。HMLMs采用基于变压器的架构,通过信息换能器、捕捉分子如何接收、处理和传输信号的数学实体来适应图形结构的信号网络。该体系结构通过分层注意机制和规模桥接算子集成了跨分子、通路和细胞尺度的多模态数据源,从而实现了跨生物层次的信息流。应用于心脏成纤维细胞信号的复杂网络,HMLMs在时间动态预测方面优于传统方法,特别是在稀疏采样条件下。基于注意力的分析揭示了生物学上有意义的串扰模式,包括信号通路之间以前未表征的相互作用。通过人工智能驱动的分子语言表示将分子机制与细胞表型连接起来,HMLMs为面向生物学的大型语言模型(LLMs)奠定了基础,LLMs可以在综合途径数据集上进行预训练,并应用于不同的信号系统和组织,从而推进精准医学和治疗发现。
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引用次数: 0
Mesoscale tissue properties and electric fields in brain stimulation -- bridging the macroscopic and microscopic scales. 中尺度组织特性和脑刺激中的电场——连接宏观和微观尺度。
Pub Date : 2025-12-11
Boshuo Wang, Torge Worbs, Minhaj A Hussain, Aman S Aberra, Axel Thielscher, Warren M Grill, Angel V Peterchev

Accurate simulations of electric fields (E-fields) in brain stimulation depend on tissue conductivity representations that link macroscopic assumptions with underlying microscopic tissue structure. Mesoscale conductivity variations can produce meaningful changes in E-fields and neural activation thresholds but remain largely absent from standard macroscopic models. Recent microscopic models have suggested substantial local E-field perturbations and could, in principle, inform mesoscale conductivity. However, the quantitative validity of microscopic models is limited by fixation-related tissue distortion and incomplete extracellular-space reconstruction. We outline approaches that bridge macro- and microscales to derive consistent mesoscale conductivity distributions, providing a foundation for accurate multiscale models of E-fields and neural activation in brain stimulation.

脑刺激中电场(E-fields)的精确模拟依赖于组织电导率表征,这种表征将宏观假设与潜在的微观组织结构联系起来。中尺度电导率变化可以产生有意义的电场和神经激活阈值变化,但在标准宏观模型中仍然存在很大的缺失。最近的微观模型表明存在大量的局部电场扰动,并且原则上可以为中尺度电导率提供信息。然而,显微模型的定量有效性受到固定相关组织畸变和不完整的细胞外空间重建的限制。我们概述了连接宏观和微观尺度以获得一致的中尺度电导率分布的方法,为精确的多尺度电场模型和脑刺激中的神经激活提供了基础。
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引用次数: 0
Sensitivity of literature T 1 mapping methods to the underlying magnetization transfer parameters. 文献$T_1$映射方法对底层磁化传递参数的敏感性。
Pub Date : 2025-12-11
Jakob Assländer

Purpose: Magnetization transfer (MT) has been identified as the principal source of T 1 variability in the MRI literature. This study assesses the sensitivity of established T 1 mapping techniques to variations in the underlying MT parameters.

Methods: For each T 1 -mapping method, the observed T 1 was simulated as a function of the underlying MT parameters p i MT , corresponding to different brain regions of interest (ROIs) at 3T. As measures of sensitivity, the derivatives T 1 observed / p i MT were computed and analyzed with a linear mixed-effects model as a function of p i MT , ROI, pulse sequence type (e.g., inversion recovery, variable flip angle), and the individual sequences.

Results: The analyzed T 1 -mapping sequences have a considerable sensitivity to changes in the semi-solid spin pool size m 0 s , T 1 f of the free, T 1 s of the semi-solid spin pool, and the (inverse) exchange rate T x . All derivatives vary considerably with the underlying MT parameters and between pulse sequences. In general, the derivatives cannot be determined by the sequence type, but rather depend on the implementation details of the sequence. One notable exception is that variable-flip-angle methods are, in general, more sensitive to the exchange rate than inversion-recovery methods.

Conclusion: Variations in the observed T 1 can be caused by several underlying MT parameters, and the sensitivity to each parameter depends on both the underlying MT parameters and the sequence.

目的:在MRI文献中,磁化转移(MT)已被确定为$T_1$变异性的主要来源。本研究评估了建立的$T_1$映射技术对潜在MT参数变化的敏感性。方法:对于每种$T_1$-映射方法,将观察到的$T_1$模拟为底层MT参数$p_i^text{MT}$的函数,对应于3T时不同的大脑感兴趣区域(roi)。作为灵敏度的度量,导数$partial T_1^text{observed} / partial p_i^text{MT}$用线性混合效应模型作为$p_i^text{MT}$、ROI、脉冲序列类型(如反转恢复、可变翻转角)和单个序列的函数进行计算和分析。结果:所分析的$T_1$-映射序列对半固体自旋池大小$m_0^text{s}$、$T_1^text{f}$、$T_1^text{s}$和(逆)汇率$T_text{x}$的变化具有相当的敏感性。所有的导数随底层MT参数和脉冲序列之间变化很大。一般来说,衍生不是由序列类型决定的,而是取决于序列的实现细节。一个值得注意的例外是,变翻转角度方法通常比反转恢复方法对汇率更敏感。结论:$T_1$测量值的变化可能由几个潜在的MT参数引起,对每个参数的敏感性取决于潜在的MT参数和序列。
{"title":"<ArticleTitle xmlns:ns0=\"http://www.w3.org/1998/Math/MathML\">Sensitivity of literature <ns0:math> <ns0:msub><ns0:mrow><ns0:mi>T</ns0:mi></ns0:mrow> <ns0:mrow><ns0:mn>1</ns0:mn></ns0:mrow> </ns0:msub> </ns0:math> mapping methods to the underlying magnetization transfer parameters.","authors":"Jakob Assländer","doi":"","DOIUrl":"","url":null,"abstract":"<p><strong>Purpose: </strong>Magnetization transfer (MT) has been identified as the principal source of <math> <msub><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> </msub> </math> variability in the MRI literature. This study assesses the sensitivity of established <math> <msub><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> </msub> </math> mapping techniques to variations in the underlying MT parameters.</p><p><strong>Methods: </strong>For each <math> <msub><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> </msub> </math> -mapping method, the observed <math> <msub><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> </msub> </math> was simulated as a function of the underlying MT parameters <math> <msubsup><mrow><mi>p</mi></mrow> <mrow><mi>i</mi></mrow> <mrow><mtext>MT</mtext></mrow> </msubsup> </math> , corresponding to different brain regions of interest (ROIs) at 3T. As measures of sensitivity, the derivatives <math><mo>∂</mo> <msubsup><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> <mrow><mtext>observed</mtext></mrow> </msubsup> <mo>/</mo> <mo>∂</mo> <msubsup><mrow><mi>p</mi></mrow> <mrow><mi>i</mi></mrow> <mrow><mtext>MT</mtext></mrow> </msubsup> </math> were computed and analyzed with a linear mixed-effects model as a function of <math> <msubsup><mrow><mi>p</mi></mrow> <mrow><mi>i</mi></mrow> <mrow><mtext>MT</mtext></mrow> </msubsup> </math> , ROI, pulse sequence type (e.g., inversion recovery, variable flip angle), and the individual sequences.</p><p><strong>Results: </strong>The analyzed <math> <msub><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> </msub> </math> -mapping sequences have a considerable sensitivity to changes in the semi-solid spin pool size <math> <msubsup><mrow><mi>m</mi></mrow> <mrow><mn>0</mn></mrow> <mrow><mtext>s</mtext></mrow> </msubsup> </math> , <math> <msubsup><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> <mrow><mtext>f</mtext></mrow> </msubsup> </math> of the free, <math> <msubsup><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> <mrow><mtext>s</mtext></mrow> </msubsup> </math> of the semi-solid spin pool, and the (inverse) exchange rate <math> <msub><mrow><mi>T</mi></mrow> <mrow><mtext>x</mtext></mrow> </msub> </math> . All derivatives vary considerably with the underlying MT parameters and between pulse sequences. In general, the derivatives cannot be determined by the sequence type, but rather depend on the implementation details of the sequence. One notable exception is that variable-flip-angle methods are, in general, more sensitive to the exchange rate than inversion-recovery methods.</p><p><strong>Conclusion: </strong>Variations in the observed <math> <msub><mrow><mi>T</mi></mrow> <mrow><mn>1</mn></mrow> </msub> </math> can be caused by several underlying MT parameters, and the sensitivity to each parameter depends on both the underlying MT parameters and the sequence.</p>","PeriodicalId":93888,"journal":{"name":"ArXiv","volume":" ","pages":""},"PeriodicalIF":0.0,"publicationDate":"2025-12-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12458585/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145152174","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
HEIST: A Graph Foundation Model for Spatial Transcriptomics and Proteomics Data. HEIST:空间转录组学和蛋白质组学数据的图形基础模型。
Pub Date : 2025-12-11
Hiren Madhu, João Felipe Rocha, Tinglin Huang, Siddharth Viswanath, Smita Krishnaswamy, Rex Ying

Single-cell transcriptomics and proteomics have become a great source for data-driven insights into biology, enabling the use of advanced deep learning methods to understand cellular heterogeneity and gene expression at the single-cell level. With the advent of spatial-omics data, we have the promise of characterizing cells within their tissue context as it provides both spatial coordinates and intra-cellular transcriptional or protein counts. Beyond transcriptomics, proteomics offers a complementary view by directly measuring proteins, which are the primary effectors of cellular function and key therapeutic targets. However, existing models either ignore the spatial information or the complex genetic and proteomic programs within cells. Thus they cannot infer how cell internal regulation adapts to microenvironmental cues. Furthermore, these models often utilize fixed gene vocabularies, hindering their generalizability to datasets with different genes than pretraining. In this paper, we introduce HEIST, a hierarchical graph transformer foundation model for spatial transcriptomics and proteomics. HEIST models tissues as hierarchical graphs. The higher level graph is a spatial cell graph, and each cell in turn, is represented by its lower level gene co-expression network graph. Rather than using a fixed gene vocabulary, HEIST computes gene embeddings from its co-expression network and cellular context. HEIST achieves this by performing both intra-level and cross-level message passing to utilize the hierarchy in its embeddings and can thus generalize to novel datatypes including spatial proteomics without retraining. HEIST is pretrained on 22.3M cells from 124 tissues across 15 organs using spatially-aware contrastive and masked autoencoding objectives. Unsupervised analysis of HEIST embeddings reveals spatially informed subpopulations missed by prior models. Downstream evaluations demonstrate generalizability to proteomics data and state-of-the-art performance in clinical outcome prediction, cell type annotation, and gene imputation across multiple technologies.

单细胞转录组学和蛋白质组学已经成为数据驱动的生物学见解的重要来源,可以使用先进的深度学习方法来了解单细胞水平的细胞异质性和基因表达。随着空间组学数据的出现,我们有希望在其组织背景下表征细胞,因为它提供了空间坐标和细胞内转录或蛋白质计数。蛋白质组学通过直接测量蛋白质提供了一种互补的观点,蛋白质是细胞功能的主要效应器和关键的治疗靶点。然而,现有的模型要么忽略了空间信息,要么忽略了细胞内复杂的遗传和蛋白质组学程序。因此,他们无法推断细胞内部调节如何适应微环境信号。此外,这些模型通常使用固定的基因词汇表,阻碍了它们对未知基因的推广。本文介绍了空间转录组学和蛋白质组学的层次图转换基础模型HEIST。HEIST将组织建模为层次图。较高层次的图是一个空间细胞图,每个细胞依次由其较低层次的基因共表达网络图表示。HEIST通过执行层内和跨层消息传递来实现这一点,从而在其嵌入中利用层次结构,从而可以推广到新的数据类型,包括空间蛋白质组学,而无需重新训练。HEIST在来自15个器官的124个组织的2230万个细胞上进行预训练,使用空间感知对比和掩蔽自动编码目标。HEIST嵌入的无监督分析揭示了先前模型遗漏的空间知情亚种群。下游评估证明了蛋白质组学数据的普遍性,以及在临床结果预测、细胞类型注释和跨多种技术的基因植入方面的最新性能。
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引用次数: 0
MoDaH achieves rate optimal batch correction. MoDaH实现速率最优的批量校正。
Pub Date : 2025-12-10
Yang Cao, Zongming Ma

Batch effects pose a significant challenge in the analysis of single-cell omics data, introducing technical artifacts that confound biological signals. While various computational methods have achieved empirical success in correcting these effects, they lack the formal theoretical guarantees required to assess their reliability and generalization. To bridge this gap, we introduce Mixture-Model-based Data Harmonization (MoDaH), a principled batch correction algorithm grounded in a rigorous statistical framework. Under a new Gaussian-mixture-model with explicit parametrization of batch effects, we establish the minimax optimal error rates for batch correction and prove that MoDaH achieves this rate by leveraging the recent theoretical advances in clustering data from anisotropic Gaussian mixtures. This constitutes, to the best of our knowledge, the first theoretical guarantee for batch correction. Extensive experiments on diverse single-cell RNA-seq and spatial proteomics datasets demonstrate that MoDaH not only attains theoretical optimality but also achieves empirical performance comparable to or even surpassing those of state-of-the-art heuristics (e.g., Harmony, Seurat-V5, and LIGER), effectively balancing the removal of technical noise with the conservation of biological signal.

批效应对单细胞组学数据的分析提出了重大挑战,引入了混淆生物信号的技术伪影。虽然各种计算方法在纠正这些影响方面取得了经验上的成功,但它们缺乏评估其可靠性和泛化所需的正式理论保证。为了弥补这一差距,我们引入了基于混合模型的数据协调(MoDaH),这是一种基于严格统计框架的原则性批处理校正算法。在具有批效应显式参数化的新高斯混合模型下,我们建立了批校正的最小最大最优错误率,并利用各向异性高斯混合数据聚类的最新理论进展证明了MoDaH达到了这一错误率。据我们所知,这是批量校正的第一个理论保证。在多种单细胞RNA-seq和空间蛋白质组学数据集上进行的大量实验表明,MoDaH不仅达到了理论上的最优性,而且还达到了与最先进的启发式方法(如Harmony、Seurat-V5和LIGER)相当甚至超过的经验性能,有效地平衡了技术噪声的去除与生物信号的保护。
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引用次数: 0
Sleep effects on brain, cognition, and mental health during adolescence are mediated by the glymphatic system. 青春期睡眠对大脑、认知和心理健康的影响是由淋巴系统介导的。
Pub Date : 2025-12-09
Xinglin Zeng, Yiran Li, Fan Nils Yang, Gianpaolo Del Mauro, Jiaao Yu, Ruoxi Lu, Jiachen Zhuo, Laura Rowland, Wickwire Emerson, Ze Wang

Background: Adolescence is a critical period of brain maturation and heightened vulnerability to cognitive and mental health disorders. Sleep plays a vital role in neurodevelopment, yet the mechanisms linking insufficient sleep to adverse brain and behavioral outcomes remain unclear. The glymphatic system (GS), a brain-wide clearance pathway, may provide a key mechanistic link.

Methods: Leveraging baseline data from the Adolescent Brain Cognitive Development (ABCD) Study, we examined whether GS function mediates the effects of sleep on brain structure, cognition, and mental health. GS function was indexed by perivascular space (PVS) burden derived from structural MRI. Participants (n ≈ 6,800; age ≈ 11 years) were categorized into sleep-sufficient (≥9 h/night) and sleep-insufficient (<9 h/night) groups. Linear models tested associations among sleep, PVS burden, brain volumes, and behavioral outcomes. Mediation analyses evaluated whether PVS burden explained sleep-related effects.

Results: Adolescents with insufficient sleep exhibited significantly greater PVS burden (Cohen's d ≈ 0.15), reduced cortical, subcortical, and white matter volumes, poorer cognitive performance across multiple domains (largest effect in crystallized intelligence, d ≈ 0.20), and elevated psychopathology (largest effect in general problems, d ≈ -0.34). Sleep duration and quality were strongly associated with PVS burden (p < 10-8). Mediation analyses revealed that PVS burden partially mediated sleep effects on cognition (e.g., crystallized intelligence, episodic memory) and mental health (e.g., psychosis severity), with indirect proportions up to 10.9%. Sequential models suggested a pathway from sleep → PVS → brain volume → behavior as the most plausible route.

Conclusions: Insufficient sleep during adolescence is linked to glymphatic dysfunction, reflected by increased PVS burden, which partially accounts for adverse effects on brain structure, cognition, and mental health. These findings highlight the glymphatic system as a potential mechanistic pathway and imaging biomarker, underscoring the importance of promoting adequate sleep to support neurodevelopment and mental health.

背景:青春期是大脑成熟的关键时期,也是认知和精神健康障碍的高危期。睡眠在神经发育中起着至关重要的作用,然而睡眠不足与不良大脑和行为结果之间的联系机制尚不清楚。淋巴系统(GS),一个全脑清除途径,可能提供了一个关键的机制联系。方法:来自青少年脑认知发展(ABCD)研究的参与者(n =6,800,年龄~ 11岁)被分为睡眠充足(>=9小时/夜)和睡眠不足(结果:睡眠不足的青少年表现出更大的PVS负担,皮层、皮层下和白质体积减少,在多个领域的认知表现较差(在结晶智力方面影响最大),精神病理水平升高(在一般问题上影响最大)。睡眠时间和睡眠质量与PVS负担密切相关。中介分析显示,PVS负担部分介导睡眠对认知和心理健康的影响,间接比例高达10.9%。序列模型表明,睡眠-> pv ->脑容量->行为是最合理的途径。结论:青春期睡眠不足与淋巴功能障碍有关,反映在PVS负担增加上,这部分解释了对大脑结构、认知和心理健康的不利影响。这些发现强调了GS作为一种潜在的机制途径和成像生物标志物,强调了促进充足睡眠对支持神经发育和心理健康的重要性。
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引用次数: 0
The choice of viscous or viscoelastic models affects attenuation and velocity determination in simplified skull-mimicking digital phantoms. 黏性或粘弹性模型的选择影响简化颅骨模拟数字幻影的衰减和速度测定。
Pub Date : 2025-12-09
Samuel Clinard, Taylor Webb, Henrik Odéen, Dennis L Parker, Douglas A Christensen

Simulation-guided transcranial focused ultrasound therapies rely on estimating skull acoustic properties from pretreatment imaging. Typical clinical resolution (0.5 mm isotropic) cannot resolve bone microstructure, making the acoustic properties underdetermined and sensitive to modeling assumptions. Here, we examine how viscous and viscoelastic models predict changes in attenuation and phase velocity due to microstructure. Using viscous and viscoelastic k-Wave implementations, we simulated transmission of a broadband 625 kHz tone burst (250 kHz-1 MHz) through skull-mimicking digital phantoms. The phantoms contained spherical pores (0.1-1.0 mm diameter) randomly embedded within cortical bone (2.5%-90% porosity). Virtual sensors measured attenuation and phase velocity using a time-distance matrix approach. Both models predict increased attenuation with increasing pore size at a fixed porosity, but differ in the strength and porosity dependence of this relationship. The viscoelastic model generally predicts attenuation peaks at higher porosities than the viscous model. For 1.0 mm pores, the viscous peak (1.98 Np/cm) occurs at 20% porosity, while the viscoelastic peak (2.98 Np/cm) occurs at 70%. Phase velocity decreases with pore size for both models, though the viscoelastic predictions are less sensitive to pore size. These results demonstrate that viscous and viscoelastic models exhibit distinct attenuation and phase-velocity behavior for idealized bone microstructures. While both indicate that microstructure has a strong impact on attenuation, it has a lesser effect on phase velocity for the viscoelastic model compared to the viscous model. This work highlights the importance of acoustic model choice when estimating skull acoustic properties from computed tomography images. Future work will identify which acoustic model best represents ultrasound propagation through skull microstructure.

模拟引导的经颅聚焦超声治疗依赖于预处理成像对颅骨声学特性的估计。典型的临床分辨率(0.5 mm各向同性)不能分辨骨骼微观结构,使得声学特性不确定,并且对建模假设敏感。在这里,我们研究粘性和粘弹性模型如何预测由于微观结构的衰减和相速度的变化。使用粘性和粘弹性k波实现,我们通过模拟头骨的数字幻象模拟了宽带625 kHz音突发(250 kHz-1 MHz)的传输。假体包含球形孔(直径0.1 ~ 1.0 mm),随机嵌入皮质骨内(孔隙率2.5% ~ 90%)。虚拟传感器测量衰减和相速度使用时间-距离矩阵方法。两种模型都预测,在固定孔隙度下,随着孔隙尺寸的增加,衰减会增加,但这种关系的强度和对孔隙度的依赖性有所不同。粘弹性模型通常比粘性模型预测更高孔隙度处的衰减峰。对于1.0 mm孔隙,在孔隙率为20%时出现粘性峰值(1.98 Np/cm),在70%时出现粘弹性峰值(2.98 Np/cm)。两种模型的相速度都随孔隙大小而减小,但粘弹性预测对孔隙大小的敏感性较低。这些结果表明,粘性和粘弹性模型在理想的骨微结构中表现出明显的衰减和相速度行为。虽然两者都表明微观结构对衰减有很强的影响,但与粘性模型相比,粘弹性模型对相速度的影响较小。这项工作强调了声学模型选择的重要性,从计算机断层扫描图像估计颅骨声学特性。未来的工作将确定哪种声学模型最能代表超声通过颅骨微观结构的传播。
{"title":"The choice of viscous or viscoelastic models affects attenuation and velocity determination in simplified skull-mimicking digital phantoms.","authors":"Samuel Clinard, Taylor Webb, Henrik Odéen, Dennis L Parker, Douglas A Christensen","doi":"","DOIUrl":"","url":null,"abstract":"<p><p>Simulation-guided transcranial focused ultrasound therapies rely on estimating skull acoustic properties from pretreatment imaging. Typical clinical resolution (0.5 mm isotropic) cannot resolve bone microstructure, making the acoustic properties underdetermined and sensitive to modeling assumptions. Here, we examine how viscous and viscoelastic models predict changes in attenuation and phase velocity due to microstructure. Using viscous and viscoelastic k-Wave implementations, we simulated transmission of a broadband 625 kHz tone burst (250 kHz-1 MHz) through skull-mimicking digital phantoms. The phantoms contained spherical pores (0.1-1.0 mm diameter) randomly embedded within cortical bone (2.5%-90% porosity). Virtual sensors measured attenuation and phase velocity using a time-distance matrix approach. Both models predict increased attenuation with increasing pore size at a fixed porosity, but differ in the strength and porosity dependence of this relationship. The viscoelastic model generally predicts attenuation peaks at higher porosities than the viscous model. For 1.0 mm pores, the viscous peak (1.98 Np/cm) occurs at 20% porosity, while the viscoelastic peak (2.98 Np/cm) occurs at 70%. Phase velocity decreases with pore size for both models, though the viscoelastic predictions are less sensitive to pore size. These results demonstrate that viscous and viscoelastic models exhibit distinct attenuation and phase-velocity behavior for idealized bone microstructures. While both indicate that microstructure has a strong impact on attenuation, it has a lesser effect on phase velocity for the viscoelastic model compared to the viscous model. This work highlights the importance of acoustic model choice when estimating skull acoustic properties from computed tomography images. Future work will identify which acoustic model best represents ultrasound propagation through skull microstructure.</p>","PeriodicalId":93888,"journal":{"name":"ArXiv","volume":" ","pages":""},"PeriodicalIF":0.0,"publicationDate":"2025-12-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12709493/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145784069","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
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