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Cell context-dependent in silico organelle localization in label-free microscopy images. 细胞环境依赖于硅细胞器定位在无标记显微镜图像。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-19 DOI: 10.1038/s41592-025-02960-4
Nitsan Elmalam, Assaf Zaritsky

The in silico labeling prediction of organelle fluorescence from label-free microscopy images has the potential to revolutionize our understanding of cells as integrated complex systems. However, out-of-distribution data caused by changes in the intracellular organization across cell types, cellular processes or perturbations can lead to altered label-free images and impaired in silico labeling. Here we demonstrate that incorporating biological meaningful cell contexts, via a context-dependent model that we call CELTIC, enhanced in silico labeling prediction and enabled the downstream analysis of out-of-distribution data such as cells undergoing mitosis and cells located at the edge of the colony. These results suggest a link between cell context and intracellular organization. Using CELTIC to generate single-cell images transitioning between different contexts enabled us to overcome intercell variability toward the integrated characterization of organelles' alterations in cellular organization. The explicit inclusion of context has the potential to harmonize multiple datasets, paving the way for generalized in silico labeling foundation models.

从无标记显微镜图像中对细胞器荧光的硅标记预测有可能彻底改变我们对细胞作为综合复杂系统的理解。然而,由于细胞内组织在细胞类型、细胞过程或扰动中的变化而引起的分布外数据可能导致无标签图像的改变和硅标记受损。在这里,我们证明,通过我们称为CELTIC的上下文依赖模型,结合生物学上有意义的细胞背景,增强了硅标记预测,并能够对分布外数据(如有丝分裂的细胞和位于集落边缘的细胞)进行下游分析。这些结果表明细胞环境和细胞内组织之间存在联系。使用CELTIC生成在不同环境之间转换的单细胞图像,使我们能够克服细胞间的变异性,从而综合表征细胞组织中细胞器的变化。上下文的明确包含有可能协调多个数据集,为通用的计算机标记基础模型铺平道路。
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引用次数: 0
SpaceBar enables single-cell-resolution clone tracing with imaging-based spatial transcriptomics. 空格键可以使用基于成像的空间转录组学实现单细胞分辨率克隆跟踪。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-18 DOI: 10.1038/s41592-025-02968-w
Grant Kinsler, Caitlin Fagan, Haiyin Li, Jessica Kaster, Maggie Dunne, Robert J Vander Velde, Ryan H Boe, Sydney Shaffer, Meenhard Herlyn, Arjun Raj, Yael Heyman

Imaging-based spatial transcriptomics methods allow for the measurement of spatial determinants of cellular phenotypes but are incompatible with random barcode-based clone-tracing methods, preventing the simultaneous detection of clonal and spatial drivers. Here we report SpaceBar, which enables simultaneous clone tracing and spatial gene expression profiling with standard imaging-based spatial transcriptomics pipelines. Our approach uses a library of 96 synthetic barcode sequences that combinatorially labels each cell. Thus, SpaceBar can distinguish between clonal dynamics and environmentally driven transcriptional regulation in complex tissue contexts.

基于成像的空间转录组学方法允许测量细胞表型的空间决定因素,但与基于随机条形码的克隆追踪方法不兼容,无法同时检测克隆和空间驱动因素。在这里,我们报告了SpaceBar,它可以同时克隆跟踪和空间基因表达谱与标准的基于成像的空间转录组学管道。我们的方法使用一个包含96个合成条形码序列的库来组合标记每个细胞。因此,空格键可以在复杂的组织环境中区分克隆动态和环境驱动的转录调控。
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引用次数: 0
Methods to analyze cell migration data: fundamentals and practical guidelines 分析细胞迁移数据的方法:基础和实用指南。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-18 DOI: 10.1038/s41592-025-02935-5
Pei-Hsun Wu, Jude M. Phillip, Wenxuan Du, Andre Forjaz, Praful R. Nair, Denis Wirtz
Cell migration assays provide invaluable insights into fundamental biological processes. In a companion Review, we describe commercial and custom in vitro and in vivo assays to measure cell migration and provide guidelines on how to select the most appropriate assay for a given biological question. Here, we describe the fundamental principles of how to compute—from the raw data generated by these assays—quantitative cell migration parameters that help determine the biophysical nature of the cell migration, such as cell speed, mean-squared displacement, diffusivity, persistence, speed and anisotropy, and how to quantify cell heterogeneity, with practical guidance. We also describe new imaging and computational technologies, including AI-based methods, which have helped establish fast, robust and accurate tracking of cells and quantification of cell migration. Taken together, these Reviews offer practical guidance for cell migration assays from conception to analysis. This Review describes the principles of data analysis for extracting quantitative data from cell migration assays. It also highlights advanced image analysis tools and offers practical guidance for interested users.
细胞迁移分析为基本的生物过程提供了宝贵的见解。在一篇配套的综述中,我们描述了用于测量细胞迁移的商业和定制的体外和体内检测方法,并提供了如何为给定的生物学问题选择最合适的检测方法的指南。在这里,我们描述了如何计算的基本原理-从这些实验产生的原始数据-定量细胞迁移参数,有助于确定细胞迁移的生物物理性质,如细胞速度,均方位移,扩散率,持久性,速度和各向异性,以及如何量化细胞异质性,并提供实际指导。我们还描述了新的成像和计算技术,包括基于人工智能的方法,这些技术有助于建立快速,稳健和准确的细胞跟踪和细胞迁移的量化。总之,这些评论提供了实用的指导细胞迁移测定从概念到分析。
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引用次数: 0
Selecting the optimal cell migration assay: fundamentals and practical guidelines 选择最佳细胞迁移试验:基本原理和实用指南。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-18 DOI: 10.1038/s41592-025-02890-1
Wenxuan Du, Praful R. Nair, Andre Forjaz, Jude M. Phillip, Pei-Hsun Wu, Denis Wirtz
Cell migration is a key cellular process that drives major developmental programs. To mimic and mechanistically understand cell migration in these different contexts, different assays have been developed. However, owing to the lack of practical guidelines, these different cell migration assays are often used interchangeably. This and the inherent dynamic nature of cell migration, which often requires sophisticated live-cell microscopy, may have caused cell migration to be notably less well understood than equally important cell functions, such as cell differentiation or proliferation. In this Review, we describe commonly used custom and commercial in vitro and in vivo cell migration assays and provide a comprehensive practical guide and decision tree outlining how to choose and implement an assay that best suits the biological question at hand. We hope this guidance spurs biological insights into this complex process and encourages future methods development. This Review introduces ten cell migration assays, offers practical guidance toward selecting the best assay for a specific biological question and describes how future advances can reveal important insights into dynamic cellular behaviors.
细胞迁移是驱动主要发育程序的关键细胞过程。为了模拟和机械地理解这些不同背景下的细胞迁移,已经开发了不同的测定方法。然而,由于缺乏实用的指导方针,这些不同的细胞迁移测定经常互换使用。这和细胞迁移固有的动态特性(通常需要复杂的活细胞显微镜)可能导致细胞迁移明显不如同等重要的细胞功能(如细胞分化或增殖)了解得好。在这篇综述中,我们描述了常用的定制和商业化的体外和体内细胞迁移测定,并提供了一个全面的实用指南和决策树,概述了如何选择和实施最适合手头生物学问题的测定。我们希望这一指导能激发对这一复杂过程的生物学见解,并鼓励未来方法的发展。
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引用次数: 0
Orthogonal RNA-regulated destabilization domains for three-color RNA imaging with minimal RNA perturbation 正交RNA调节的不稳定结构域的三色RNA成像与最小的RNA扰动。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-17 DOI: 10.1038/s41592-025-02905-x
Tien G. Pham, Omoyemi Ajayi, Jiaze He, Irina Sagarbarria, Jeanne A. Hardy, Jiahui Wu
RNA is one of the key molecules responsible for controlling gene expression regulation, and visualizing individual RNA molecules in living cells offers unique insights into the dynamics of this process. Recently, the RNA-regulated destabilization domain was developed for live-cell imaging of single RNA. However, this method is limited to single-color RNA imaging and its long RNA tag induces destabilization of the tagged RNA. Here we describe two orthogonal RNA-regulated destabilization domains (mDeg and pDeg) that enable three-color messenger RNA (mRNA) imaging in living cells. We show that these destabilization domains can image mRNA tethered to the endoplasmic reticulum membrane, the inner surface of the plasma membrane and in the cytosol. In addition, we show that mDeg can detect mRNA more effectively than the previously reported tDeg system. Moreover, mDeg can be combined with a short RNA tag (9XMS2) for single-molecule RNA imaging without perturbation of RNA stability. This work presents two distinct RNA-regulated destabilization domains that support three-color live-cell imaging of single mRNA molecules, one of which shows minimal impact on RNA stability.
RNA是负责控制基因表达调控的关键分子之一,可视化活细胞中的单个RNA分子为这一过程的动力学提供了独特的见解。最近,RNA调控的不稳定结构域被开发用于单个RNA的活细胞成像。然而,这种方法仅限于单色RNA成像,其长RNA标签会导致被标记RNA的不稳定。在这里,我们描述了两个正交的RNA调控的不稳定结构域(mDeg和pDeg),使三色信使RNA (mRNA)在活细胞中成像。我们发现这些不稳定结构域可以成像连接在内质网膜、质膜内表面和细胞质溶胶中的mRNA。此外,我们发现mDeg可以比以前报道的tDeg系统更有效地检测mRNA。此外,mDeg可以与短RNA标签(9XMS2)结合,在不影响RNA稳定性的情况下进行单分子RNA成像。
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引用次数: 0
Targeted RNA-binding protein degradation to improve mRNA live imaging in animal cells 靶向rna结合蛋白降解改善动物细胞mRNA活成像。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-17 DOI: 10.1038/s41592-025-02869-y
Gal Haimovich
The gold standard system for mRNA imaging in live cells just got upgraded by being degraded. This development improves signal-to-noise ratios and may lead to a better understanding of mRNA transport and localization.
活细胞中mRNA成像的金标准系统只是通过降解得到了升级。这一进展提高了信噪比,并可能导致对mRNA转运和定位的更好理解。
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引用次数: 0
Inferring cancer type-specific patterns of metastatic spread using Metient. 使用Metient推断转移扩散的癌症类型特异性模式。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-17 DOI: 10.1038/s41592-025-02924-8
Divya Koyyalagunta, Karuna Ganesh, Quaid Morris

Cancers differ in how they spread. These routes of metastatic dissemination can be reconstructed from tumor sequencing data, but current reconstruction methods scale poorly or rely on assumptions that do not reflect known biology. Metient overcomes these limitations using gradient-based, multiobjective optimization to generate multiple hypotheses of metastatic spread that are rescored using independent genetic distance and organotropism data. Unlike current methods, Metient can be used with both clinical sequencing data and barcode-based lineage tracing in preclinical models. Here, applied to data from 167 patients and 479 tumors, Metient identifies distinct trends of metastatic dissemination in melanoma, high-risk neuroblastoma and non-small cell lung cancer. Its reconstructions usually match expert analyses but Metient often finds other plausible migration histories, ultimately positing more polyclonal and metastasis-to-metastasis seeding than previously reported. Metient's reconstructions thus challenge existing assumptions about metastatic dissemination and offer insights into cancer type-specific patterns of metastatic spread.

癌症的扩散方式不同。这些转移传播途径可以从肿瘤测序数据中重建,但目前的重建方法规模性差或依赖于不反映已知生物学的假设。Metient克服了这些限制,使用基于梯度的多目标优化来生成转移扩散的多个假设,这些假设使用独立的遗传距离和器官亲和性数据重新获得。与目前的方法不同,Metient可以用于临床测序数据和基于条形码的临床前模型谱系追踪。通过167名患者和479个肿瘤的数据分析,Metient发现了黑色素瘤、高危神经母细胞瘤和非小细胞肺癌中明显的转移传播趋势。它的重建通常与专家分析相匹配,但Metient经常发现其他合理的迁移历史,最终假设比以前报道的更多的多克隆和转移到转移的种子。因此,Metient的重建挑战了关于转移性扩散的现有假设,并为转移性扩散的癌症类型特异性模式提供了见解。
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引用次数: 0
High-parameter spatial multi-omics through histology-anchored integration. 通过组织锚定整合的高参数空间多组学。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-17 DOI: 10.1038/s41592-025-02926-6
Yonghao Liu, Chuyao Wang, Zhikang Wang, Liang Chen, Zhi Li, Jiangning Song, Qi Zou, Rui Gao, Bin-Zhi Qian, Xiaoyue Feng, Renchu Guan, Zhiyuan Yuan

Spatial omics face challenges in achieving high-parameter, multi-omics coprofiling. Serial-section profiling of complementary panels mitigates technical trade-offs but introduces the spatial diagonal integration problem. To address this, here we present SpatialEx and its extension SpatialEx+, computational frameworks leveraging histology as a universal anchor to integrate spatial molecular data across tissue sections. SpatialEx combines a pretrained hematoxylin and eosin foundation model with hypergraph and contrastive learning to predict single-cell omics from histology, encoding multi-neighborhood spatial dependencies and global tissue context. SpatialEx+ further introduces an omics cycle module that encourages cross-omics consistency via slice-invariant mappings, enabling seamless integration without comeasured training data. Extensive validations show superior hematoxylin and eosin-to-omics prediction, panel diagonal integration and omics diagonal integration across various biological scenarios. The frameworks scale to datasets exceeding 1 million cells, maintain robustness with nonoverlapping or heterogeneous sections and support unlimited omics layers in principle. Our work makes multimodal spatial profiling broadly accessible.

空间组学在实现高参数、多组学共分析方面面临挑战。互补面板的连续剖面减轻了技术上的权衡,但引入了空间对角整合问题。为了解决这个问题,我们提出了SpatialEx及其扩展SpatialEx+,这是一个利用组织学作为通用锚的计算框架,可以跨组织切片整合空间分子数据。SpatialEx将预训练的苏木精和伊红基础模型与超图和对比学习相结合,从组织学预测单细胞组学,编码多邻域空间依赖性和全局组织背景。SpatialEx+进一步引入了一个组学循环模块,通过切片不变映射鼓励跨组学一致性,在没有测量训练数据的情况下实现无缝集成。广泛的验证表明,苏木精和伊红对组学的预测、面板对角整合和组学对角整合在各种生物学情景中具有优势。该框架可扩展到超过100万个细胞的数据集,保持非重叠或异构部分的鲁棒性,原则上支持无限组学层。我们的工作使多模态空间分析广泛可用。
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引用次数: 0
Dissecting how morphogens shape cell fates in human neural organoids. 解剖形态因子如何塑造人类神经类器官的细胞命运。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-16 DOI: 10.1038/s41592-025-02959-x
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引用次数: 0
MultiCell: geometric learning in multicellular development. 多细胞:多细胞发育中的几何学习。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2025-12-15 DOI: 10.1038/s41592-025-02983-x
Haiqian Yang, George Roy, Anh Q Nguyen, Dapeng Bi, Tomer Stern, Markus J Buehler, Ming Guo

During developmental processes such as embryogenesis, how a group of cells self-organizes into specific structures is a central question in biology. However, it remains a major challenge to understand and predict the behavior of every cell within the living tissue over time during such intricate processes. Here we present MultiCell, a geometric deep learning method that can accurately capture the highly convoluted interactions among cells. We demonstrate that multicellular data can be represented with both granular and foam-like physical pictures through a unified graph data structure, considering both cellular interactions and cell junction networks. Using this method, we achieve interpretable four-dimensional morphological sequence alignment and predict single-cell behaviors before they occur at single-cell resolution during Drosophila embryogenesis. Furthermore, using neural activation map and model ablation studies, we demonstrate that cell geometry and cell junction networks are essential features for predicting cell behaviors during morphogenesis. This method sets the stage for data-driven quantitative studies of dynamic multicellular developmental processes at single-cell precision, offering a proof-of-concept pathway toward a unified morphodynamic atlas.

在胚胎发生等发育过程中,一群细胞如何自我组织成特定的结构是生物学中的一个核心问题。然而,在如此复杂的过程中,理解和预测活组织内每个细胞随时间的行为仍然是一个重大挑战。在这里,我们提出了MultiCell,一种几何深度学习方法,可以准确地捕捉细胞之间高度复杂的相互作用。我们证明,考虑到细胞相互作用和细胞连接网络,通过统一的图形数据结构,多细胞数据可以用颗粒状和泡沫状的物理图像来表示。利用这种方法,我们实现了可解释的四维形态序列比对,并预测了果蝇胚胎发生过程中单细胞分辨率前的单细胞行为。此外,通过神经激活图和模型消融研究,我们证明了细胞几何和细胞连接网络是预测形态发生过程中细胞行为的基本特征。该方法为单细胞精度的动态多细胞发育过程的数据驱动定量研究奠定了基础,为统一的形态动力学图谱提供了概念验证途径。
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引用次数: 0
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Nature Methods
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