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Team updates at Nature Methods 团队更新在自然方法
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-11 DOI: 10.1038/s41592-026-03019-8
We share some recent staff changes at Nature Methods.
我们将分享Nature Methods最近的一些人事变动。
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引用次数: 0
Diffusion model generating regulatory DNAs 产生调控dna的扩散模型
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-11 DOI: 10.1038/s41592-026-03013-0
Lin Tang
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引用次数: 0
Using AI responsibly in scientific publishing 在科学出版中负责任地使用人工智能
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-11 DOI: 10.1038/s41592-026-03020-1
Generative AI technology is having substantial impacts across society, and scientific publishing is by no means immune. We highlight journal policies around the use of generative AI and discuss its responsible use in writing, peer reviewing and publishing scientific research.
生成式人工智能技术正在对整个社会产生重大影响,科学出版也无法幸免。我们重点介绍了围绕生成式人工智能使用的期刊政策,并讨论了其在写作、同行评审和发表科学研究中的负责任使用。
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引用次数: 0
Long-term imaging in the embryonic mouse brain 胚胎小鼠大脑的长期成像
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-11 DOI: 10.1038/s41592-026-03012-1
Nina Vogt
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引用次数: 0
Deep-coverage, high-throughput single-cell metabolomics 深度覆盖,高通量单细胞代谢组学。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-10 DOI: 10.1038/s41592-025-02976-w
Current single-cell metabolomics methods show low sensitivity and limited coverage of small-molecule metabolites. We developed an ion mobility-resolved mass cytometry technology that incorporates selective ion accumulation and cell superposition strategies to deliver high sensitivity and deep coverage, which captured over 5,000 metabolic peaks and about 800 metabolites from individual cells in a high-throughput manner.
目前的单细胞代谢组学方法灵敏度低,对小分子代谢物的覆盖范围有限。我们开发了一种离子迁移分辨的质量细胞术技术,该技术结合了选择性离子积累和细胞叠加策略,提供高灵敏度和深度覆盖,以高通量的方式捕获了来自单个细胞的5000多个代谢峰和约800种代谢物。
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引用次数: 0
Rate variation and recurrent sequence errors in pandemic-scale phylogenetics 大流行系统发育中的比率变异和反复序列错误。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-09 DOI: 10.1038/s41592-025-02932-8
Nicola De Maio, Myrthe Willemsen, Samuel Martin, Zihao Guo, Abhratanu Saha, Martin Hunt, Nhan Ly-Trong, Bui Quang Minh, Zamin Iqbal, Nick Goldman
Phylogenetic analyses of genome sequences from infectious pathogens reveal essential information regarding their evolution and transmission, as seen during the coronavirus disease 2019 pandemic. Recently developed pandemic-scale phylogenetic inference methods reduce the computational demand of phylogenetic reconstruction from genomic epidemiological datasets, allowing the analysis of millions of closely related genomes. However, widespread homoplasies, due to recurrent mutations and sequence errors, cause phylogenetic uncertainty and biases. We present algorithms and models to substantially improve the computational performance and accuracy of pandemic-scale phylogenetics. In particular, we account for, and identify, mutation rate variation and recurrent sequence errors. We reconstruct a reliable and public sequence alignment and phylogenetic tree of >2 million severe acute respiratory syndrome coronavirus 2 genomes encapsulating the evolutionary history and global spread of the virus up to February 2023. Performing pandemic-scale phylogenetic analysis poses multifaceted challenges. This study develops methods for identifying and accounting for mutation rate variation and recurrent sequence errors, leading to an improved global phylogenetic tree of >2 million severe acute respiratory syndrome coronavirus 2 genomes.
传染性病原体基因组序列的系统发育分析揭示了其进化和传播的重要信息,正如2019年冠状病毒大流行期间所看到的那样。最近开发的大流行级系统发育推断方法减少了从基因组流行病学数据集进行系统发育重建的计算需求,允许分析数百万个密切相关的基因组。然而,由于反复发生的突变和序列错误,广泛的同源性导致了系统发育的不确定性和偏差。我们提出了算法和模型,以大大提高大流行尺度系统发育的计算性能和准确性。特别是,我们解释,并确定,突变率变异和反复出现的序列错误。我们重建了一个可靠的、公开的bb220万个严重急性呼吸综合征冠状病毒2基因组序列比对和系统发育树,涵盖了截至2023年2月该病毒的进化史和全球传播。
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引用次数: 0
Deep-coverage single-cell metabolomics enabled by ion mobility-resolved mass cytometry 深度覆盖单细胞代谢组学由离子迁移分辨的细胞计数仪实现。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-09 DOI: 10.1038/s41592-025-02970-2
Mingdu Luo, Tianzhang Kou, Yandong Yin, Shengyi Zhou, Xiaolan Zhu, Xinhao Zeng, Junhao Hu, Zheng-Jiang Zhu
Current single-cell metabolomics approaches are limited by insufficient sensitivity, robustness and metabolite coverage. We present an ion mobility-resolved mass cytometry technology that integrates high-throughput single-cell injection with ion mobility–mass spectrometry for multidimensional metabolomic profiling. Ion mobility-enabled selective ion accumulation and cell superposition-based amplification strategies substantially enhance sensitivity, robustness and overall analytical performance. Combined with our computational tool, MetCell, this technology allows high-throughput analysis while achieving exceptional profiling depth, detecting over 5,000 metabolic peaks and annotating approximately 800 metabolites per cell—representing a 3-fold to 10-fold improvement over existing methods. It offers attomole-level sensitivity and captures a broad dynamic range of metabolites within individual cells. Applied to 45,603 primary liver cells from aging mice, it enabled accurate cell-type and cell-subtype annotation and revealed distinct metabolic states and heterogeneity in hepatocytes during aging. This platform sets a new benchmark for high-throughput single-cell metabolomics, advancing our understanding of metabolic heterogeneity at single-cell resolution. An ion mobility-resolved mass cytometry method for single-cell metabolomics enables multidimensional metabolomic profiling. The approach was used to curate a metabolic single-cell atlas containing 45,603 primary liver cells from aging mice.
目前的单细胞代谢组学方法受到灵敏度、稳健性和代谢物覆盖范围不足的限制。我们提出了一种离子迁移分辨的质谱技术,该技术将高通量单细胞注射与离子迁移质谱相结合,用于多维代谢组学分析。离子迁移激活的选择性离子积累和基于细胞叠加的扩增策略大大提高了灵敏度、鲁棒性和整体分析性能。结合我们的计算工具MetCell,该技术可以实现高通量分析,同时实现卓越的分析深度,检测超过5000个代谢峰,每个细胞注释大约800种代谢物,比现有方法提高了3到10倍。它提供原子摩尔级别的灵敏度,并捕获单个细胞内代谢物的广泛动态范围。应用于衰老小鼠的45603个原代肝细胞,实现了准确的细胞类型和细胞亚型注释,揭示了衰老过程中肝细胞不同的代谢状态和异质性。该平台为高通量单细胞代谢组学设定了新的基准,促进了我们对单细胞分辨率代谢异质性的理解。
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引用次数: 0
Addressing pandemic-wide systematic errors in the SARS-CoV-2 phylogeny 解决大流行范围内SARS-CoV-2系统发育的系统性错误。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-02-09 DOI: 10.1038/s41592-025-02947-1
Martin Hunt, Angie S. Hinrichs, Daniel Anderson, Lily Karim, Bethany L. Dearlove, Jeff Knaggs, Bede Constantinides, Philip W. Fowler, Gillian Rodger, Teresa Street, Sheila Lumley, Hermione Webster, Theo Sanderson, Christopher Ruis, Benjamin Kotzen, Nicola de Maio, Lucas N. Amenga-Etego, Dominic S. Y. Amuzu, Martin Avaro, Gordon A. Awandare, Reuben Ayivor-Djanie, Timothy Barkham, Matthew Bashton, Elizabeth M. Batty, Yaw Bediako, Denise De Belder, Estefania Benedetti, Andreas Bergthaler, Stefan A. Boers, Josefina Campos, Rosina Afua Ampomah Carr, Yuan Yi Constance Chen, Facundo Cuba, Maria Elena Dattero, Wanwisa Dejnirattisai, Alexander Dilthey, Kwabena Obeng Duedu, Lukas Endler, Ilka Engelmann, Ngiambudulu M. Francisco, Jonas Fuchs, Etienne Z. Gnimpieba, Soraya Groc, Jones Gyamfi, Dennis Heemskerk, Torsten Houwaart, Nei-yuan Hsiao, Matthew Huska, Martin Hölzer, Arash Iranzadeh, Hanna Jarva, Chandima Jeewandara, Bani Jolly, Rageema Joseph, Ravi Kant, Karrie Ko Kwan Ki, Satu Kurkela, Maija Lappalainen, Marie Lataretu, Jacob Lemieux, Chang Liu, Gathsaurie Neelika Malavige, Tapfumanei Mashe, Juthathip Mongkolsapaya, Brigitte Montes, Jose Arturo Molina Mora, Collins M. Morang’a, Bernard Mvula, Niranjan Nagarajan, Andrew Nelson, Joyce M. Ngoi, Joana Paula da Paixão, Marcus Panning, Tomas Poklepovich, Peter K. Quashie, Diyanath Ranasinghe, Mara Russo, James Emmanuel San, Nicholas D. Sanderson, Vinod Scaria, Gavin Screaton, October Michael Sessions, Tarja Sironen, Abay Sisay, Darren Smith, Teemu Smura, Piyada Supasa, Chayaporn Suphavilai, Jeremy Swann, Houriiyah Tegally, Bryan Tegomoh, Olli Vapalahti, Andreas Walker, Robert J. Wilkinson, Carolyn Williamson, Xavier Zair, IMSSC Laboratory Network Consortium, Tulio de Oliveira, Timothy EA Peto, Derrick Crook, Russell Corbett-Detig, Zamin Iqbal
The majority of SARS-CoV-2 genomes obtained during the pandemic were derived by amplifying overlapping windows of the genome (‘tiled amplicons’), reconstructing their sequences and fitting them together. This leads to systematic errors in genomes unless the software is both aware of the amplicon scheme and of the error modes of amplicon sequencing. Additionally, over time, amplicon schemes need to be updated as new mutations in the virus interfere with the primer binding sites at the end of amplicons. Thus, waves of variants swept the world during the pandemic and were followed by waves of systematic errors in the genomes, which had significant impacts on the inferred phylogenetic tree. Here we reconstruct the genomes from all public data as of June 2024 using an assembly tool called Viridian ( https://github.com/iqbal-lab-org/viridian ), developed to rigorously process amplicon sequence data. With these high-quality consensus sequences we provide a global phylogenetic tree of 4,471,579 samples, viewable at https://viridian.taxonium.org . We provide simulation and empirical validation of the methodology, and quantify the improvement in the phylogeny. This Resource paper presents a global SARS-CoV-2 phylogenetic tree of 4,471,579 high-quality genomes consistently constructed by Viridian, an efficient amplicon-aware assembler.
在大流行期间获得的大多数SARS-CoV-2基因组是通过放大基因组的重叠窗口(“平铺扩增子”),重建其序列并将它们组装在一起而获得的。这将导致基因组中的系统错误,除非软件既知道扩增子方案又知道扩增子测序的错误模式。此外,随着时间的推移,扩增子方案需要更新,因为病毒中的新突变会干扰扩增子末端的引物结合位点。因此,在大流行期间,变异浪潮席卷了世界,随后是基因组中的系统错误浪潮,这对推断的系统发育树产生了重大影响。在这里,我们使用名为Viridian (https://github.com/iqbal-lab-org/viridian)的组装工具从截至2024年6月的所有公开数据中重建基因组,该工具是为严格处理扩增子序列数据而开发的。通过这些高质量的一致序列,我们提供了一个包含4,471,579个样本的全球系统发育树,可在https://viridian.taxonium.org上查看。我们提供了该方法的模拟和经验验证,并量化了系统发育的改进。
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引用次数: 0
Take a dive into seascape genomics 来看看海景基因组学吧。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-26 DOI: 10.1038/s41592-026-03002-3
Vivien Marx
In this field, scientists draw on ecology, population genomics, oceanography and biophysical modeling to assess and predict change. Their dynamic study object just never quite sits still.
在这个领域,科学家利用生态学、人口基因组学、海洋学和生物物理模型来评估和预测变化。他们的动态研究对象永远不会静止不动。
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引用次数: 0
It’s poster time 海报时间到了。
IF 32.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Pub Date : 2026-01-22 DOI: 10.1038/s41592-025-03001-w
Vivien Marx
Poster sessions are a staple at conferences. Some junior and senior scientists share some experiences and strategies about making and presenting posters.
海报会议是会议的主要内容。一些初级和高级科学家分享了制作和展示海报的经验和策略。
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引用次数: 0
期刊
Nature Methods
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