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PEtab-GUI: A graphical user interface to create, edit and inspect PEtab parameter estimation problems. PEtab- gui:用于创建、编辑和检查PEtab参数估计问题的图形用户界面。
IF 5.4 Pub Date : 2026-03-05 DOI: 10.1093/bioinformatics/btag106
Paul J Jost, Frank T Bergmann, Daniel Weindl, Jan Hasenauer

Motivation: Parameter estimation is a cornerstone of data-driven modeling in systems biology. Yet, constructing such problems in a reproducible and accessible manner remains challenging. The PEtab format has established itself as a powerful community standard to encode parameter estimation problems, promoting interoperability and reusability. However, its reliance on multiple interlinked files-often edited manually-can introduce inconsistencies, and new users often struggle to navigate them. Here, we present PEtab-GUI, an open-source Python application designed to streamline the creation, editing, and validation of PEtab problems through an intuitive graphical user interface. PEtab-GUI integrates all PEtab components, including SBML models and tabular files, into a single environment with live error-checking and customizable defaults. Interactive visualization and simulation capabilities enable users to inspect the relationship between the model and the data. PEtab-GUI lowers the barrier to entry for specifying standardized parameter estimation problems, making dynamic modeling more accessible, especially in educational and interdisciplinary settings.

Availability and implementation: PEtab-GUI is implemented in Python, open-source under a 3-Clause BSD license. The code, designed to be modular and extensible, is hosted on https://github.com/PEtab-dev/PEtab-GUI, available as a Zenodo repository at https://doi.org/10.5281/zenodo.15355752, and can be installed from PyPI.

动机:参数估计是系统生物学中数据驱动建模的基石。然而,以可复制和可访问的方式构建此类问题仍然具有挑战性。PEtab格式已经成为一种强大的社区标准,用于编码参数估计问题,促进互操作性和可重用性。然而,它依赖于多个相互链接的文件(通常是手动编辑的),这可能会导致不一致,新用户经常难以驾驭它们。在这里,我们介绍PEtab- gui,这是一个开源Python应用程序,旨在通过直观的图形用户界面简化PEtab问题的创建、编辑和验证。PEtab- gui将所有PEtab组件(包括SBML模型和表格文件)集成到具有实时错误检查和可定制默认值的单个环境中。交互式可视化和仿真功能使用户能够检查模型和数据之间的关系。PEtab-GUI降低了指定标准化参数估计问题的进入门槛,使动态建模更易于访问,特别是在教育和跨学科设置中。可用性和实现:PEtab-GUI是用Python实现的,在3-Clause BSD许可下开源。该代码被设计为模块化和可扩展的,托管在https://github.com/PEtab-dev/PEtab-GUI上,可以在https://doi.org/10.5281/zenodo.15355752上作为Zenodo存储库获得,并且可以从PyPI安装。
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引用次数: 0
A deep learning framework for comprehensive prediction of human RNA G-quadruplex-binding proteins. 人类RNA g -四重结合蛋白综合预测的深度学习框架。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag088
Serena Rosignoli, Sophie Taraglio, Francesco Di Luzio, Elisa Lustrino, Dario Marzella, Arne Elofsson, Massimo Panella, Alessandro Paiardini

Motivation: G-quadruplex-binding proteins (G4BPs) play key roles in RNA metabolism and stress response, yet their identification remains experimentally challenging. Here, we present a deep learning (DL) framework for the prediction of RNA G4BPs (RG4BPs), integrating diverse encoding strategies and neural architectures. Our best-performing model, which includes ESM-2 protein language model embeddings and consists of an LSTM architecture, achieved 86% accuracy in distinguishing RG4BPs from non-binder proteins. The application of this model to the human proteome uncovered 2160 high-confidence RG4BP candidates, many of which display intrinsically disordered regions (IDRs) and enrichment in stress granule organelles. These findings reveal a potential link between G-quadruplex recognition and cellular stress responses. To enable easy and broad access to the framework, we developed G4REP, a web server for RG4BP prediction and analysis. Overall, an effective approach to explore the RG4BPs landscape and uncover novel players in RNA regulation is provided.

Availability: Source code for the G4REP Model training and evaluation is available at: https://github.com/G4REP/G4REPmodel and at https://doi.org/10.5281/zenodo.17963046. G4REP Server is hosted at: https://schubert.bio.uniroma1.it/g4/.

动机:g -四重结合蛋白(g4bp)在RNA代谢和应激反应中起着关键作用,但它们的鉴定仍然具有实验挑战性。在这里,我们提出了一个用于预测RNA g4bp (rg4bp)的深度学习框架,整合了多种编码策略和神经架构。我们最好的模型,包括ESM-2蛋白语言模型嵌入和LSTM结构,在区分rg4bp和非结合蛋白方面达到了86%的准确率。将该模型应用于人类蛋白质组,发现了2160个高置信度的RG4BP候选基因,其中许多在应激颗粒细胞器中表现出内在无序区(IDRs)和富集。这些发现揭示了g -四重体识别和细胞应激反应之间的潜在联系。为了方便和广泛地访问该框架,我们开发了G4REP,这是一个用于RG4BP预测和分析的web服务器。总之,本文提供了一种有效的方法来探索rg4bp的格局,并揭示RNA调控的新参与者。可用性:G4REP模型培训和评估的源代码可在:https://github.com/G4REP/G4REPmodel和https://doi.org/10.5281/zenodo.17963046上获得,G4REP服务器托管在:https://schubert.bio.uniroma1.it/g4/.Supplementary上。信息:补充数据可在Bioinformatics在线上获得。
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引用次数: 0
Rawsamble: overlapping raw nanopore signals using a hash-based seeding mechanism. Rawsamble:使用基于哈希的种子机制重叠原始纳米孔信号。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag087
Can Firtina, Maximilian Mordig, Harun Mustafa, Sayan Goswami, Nika Mansouri Ghiasi, Stefano Mercogliano, Furkan Eris, Joel Lindegger, André Kahles, Onur Mutlu

Motivation: Raw nanopore signal analysis is a common approach in genomics to provide fast and resource-efficient analysis without translating the signals to bases (i.e. without basecalling). However, existing solutions cannot interpret raw signals directly if a reference genome is unknown due to a lack of accurate mechanisms to handle increased noise in pairwise raw signal comparison. Our goal is to enable the direct analysis of raw signals without a reference genome. To this end, we propose Rawsamble, the first mechanism that can identify regions of similarity between all raw signal pairs, known as all-vs-all overlapping, using a hash-based search mechanism.

Results: We use these overlaps to construct de novo assembly graphs with an existing assembler, miniasm, off-the-shelf. To our knowledge, these are the first de novo assemblies ever constructed directly from raw signals without basecalling. Our extensive evaluations across multiple genomes of varying sizes show that Rawsamble provides a significant speedup (on average by 5.01× and up to 23.10×) and reduces peak memory usage (on average by 5.74× and up to by 22.00×) compared to a conventional genome assembly pipeline using the state-of-the-art tools for basecalling (Dorado's fastest mode) and overlapping (minimap2) on a CPU. We find that around one-third of Rawsamble's overlapping pairs are also found by minimap2. We find that when we use overlapping reads from Rawsamble, we can construct unitigs that are (i) as accurate as those built from minimap2's overlaps and (ii) up to half a chromosome in length (e.g. 2.3 million bases for E. coli).

Availability and implementation: Rawsamble is available at https://github.com/CMU-SAFARI/RawHash. We also provide the scripts to fully reproduce our results on our GitHub page.

动机:原始纳米孔信号分析是基因组学中提供快速和资源高效分析的常用方法,无需将信号翻译为碱基(即无需碱基调用)。然而,由于缺乏精确的机制来处理两两原始信号比较中增加的噪声,如果参考基因组未知,现有的解决方案无法直接解释原始信号。我们的目标是能够在没有参考基因组的情况下直接分析原始信号。为此,我们提出了Rawsamble,这是第一种可以使用基于哈希的搜索机制识别所有原始信号对之间相似区域的机制,称为全对全重叠。结果:我们使用这些重叠来构建新的装配图与现有的汇编器,miniasm,现成的。据我们所知,这些是第一个从头组装,没有基本调用直接从原始信号构建。我们对不同大小的多个基因组的广泛评估表明,与使用最先进的工具进行基调用(Dorado的最快模式)和重叠(minimap2)的传统基因组组装管道相比,Rawsamble提供了显着的加速(平均提高5.01倍和最高23.10倍),并减少了峰值内存使用(平均降低5.74倍和最高22.00倍)。我们发现大约三分之一的Rawsamble重叠对也是由minimap2发现的。我们发现,当我们使用来自Rawsamble的重叠reads时,我们可以构建出1)与使用minimap2的重叠构建的相同精确的单元,2)长达半个染色体的长度(例如,大肠杆菌的230万个碱基)。可用性和实现:Rawsamble可从https://github.com/CMU-SAFARI/RawHash获得。我们还提供了脚本,以便在GitHub页面上完全复制我们的结果。
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引用次数: 0
Multi-scale structural similarity embedding search across entire proteomes. 跨整个蛋白质组的多尺度结构相似性嵌入搜索。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag058
Joan Segura, Ruben Sanchez-Garcia, Sebastian Bittrich, Yana Rose, Stephen K Burley, Jose M Duarte

Motivation: The rapid expansion of three-dimensional (3D) biomolecular structure information, driven by breakthroughs in artificial intelligence/deep learning (AI/DL)-based structure predictions, has created an urgent need for scalable and efficient structure similarity search methods. Traditional alignment-based approaches, such as structural superposition tools, are computationally expensive and challenging to scale with the vast number of available macromolecular structures.

Results: Herein, we present a scalable structure similarity search strategy designed to navigate extensive repositories of experimentally determined structures and computed structure models predicted using AI/DL methods. Our approach leverages protein language models and a deep neural network architecture to transform 3D structures into fixed-length vectors, enabling efficient large-scale comparisons. Although trained to predict TM-scores between single-domain structures, our model generalizes beyond the domain level, accurately identifying 3D similarity for full-length polypeptide chains and multimeric assemblies. By integrating vector databases, our method facilitates efficient large-scale structure retrieval, addressing the growing challenges posed by the expanding volume of 3D biostructure information.

Availability and implementation: Source code available at https://github.com/bioinsilico/rcsb-embedding-search. Source code DOI: https://doi.org/10.6084/m9.figshare.30546698.v1. Benchmark datasets DOI: https://doi.org/10.6084/m9.figshare.30546650.v1. Web server prototype available at: http://embedding-search.rcsb.org/.

动机:基于人工智能/深度学习(AI/DL)的结构预测技术的突破推动了三维(3D)生物分子结构信息的快速扩展,迫切需要可扩展且高效的结构相似性搜索方法。传统的基于排列的方法,如结构叠加工具,在计算上是昂贵的,并且很难与大量可用的大分子结构进行扩展。在此,我们提出了一种可扩展的结构相似性搜索策略,旨在导航大量的实验确定的结构库和使用AI/DL方法预测的计算结构模型。我们的方法利用蛋白质语言模型和深度神经网络架构将3D结构转换为固定长度的向量,从而实现高效的大规模比较。虽然经过训练可以预测单域结构之间的tm分数,但我们的模型可以推广到域水平之外,准确识别全长多肽链和多聚体组装的3D相似性。通过整合矢量数据库,我们的方法促进了高效的大规模结构检索,解决了三维生物结构信息量不断扩大所带来的日益增长的挑战。可用性:源代码可在https://github.com/bioinsilico/rcsb-embedding-search.Source获得代码DOI: https://doi.org/10.6084/m9.figshare.30546698.v1.Benchmark数据集DOI: https://doi.org/10.6084/m9.figshare.30546650.v1.Web服务器原型可在http://embedding-search.rcsb.org/.Supplementary获得信息:补充数据可在Bioinformatics online获得。
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引用次数: 0
CEMUSA: a graph-based integrative metric for evaluating clusters in spatial transcriptomics. CEMUSA:一种基于图的综合度量,用于评估空间转录组学中的簇。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag056
Jiaying Hu, Yihang Du, Suyang Hou, Yueyang Ding, Jinyan Li, Hao Wu, Xiaobo Sun

Motivation: Spatial clustering is a critical analytical task in spatial transcriptomics (ST) that aids in uncovering the spatial molecular mechanisms underlying biological phenotypes. Along with the numerous spatial clustering methods, there comes the imperative need for an effective metric to evaluate their performance. An ideal metric should consider three factors: label agreement, spatial organization, and error severity. However, existing evaluation metrics focus solely on either label agreement or spatial organization, leading to biased and misleading evaluations.

Results: To fill this gap, we propose CEMUSA, a novel graph-based metric that integrates these factors into a unified evaluation framework. Extensive testing on both simulated and real datasets demonstrate CEMUSA's superiority over conventional metrics in differentiating clustering results with subtle differences in topology and error severity, while maintaining computational efficiency.

Availability and implementation: The source code and data are freely available at https://github.com/YihDu/CEMUSA. CEMUSA is implemented as an R package at https://yihdu.github.io/CEMUSA.

动机:空间聚类是空间转录组学(ST)中的一项关键分析任务,有助于揭示生物学表型背后的空间分子机制。随着空间聚类方法的出现,迫切需要一个有效的度量来评估它们的性能。理想的度量应该考虑三个因素:标签一致性、空间组织和错误严重性。然而,现有的评价指标只关注标签一致性或空间组织,导致有偏见和误导性的评价。结果:为了填补这一空白,我们提出了CEMUSA,这是一种基于图形的新指标,将这些因素整合到统一的评估框架中。在模拟和真实数据集上的广泛测试表明,CEMUSA在区分拓扑和错误严重程度的细微差异的聚类结果方面优于传统指标,同时保持了计算效率。可用性和实现:源代码和数据可以在https://github.com/YihDu/CEMUSA上免费获得。CEMUSA以R软件包的形式在https://yihdu.github.io/CEMUSA.Supplementary上实现:补充数据可在Bioinformatics上在线获得。
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引用次数: 0
FishFeats: streamlined quantification of multimodal labeling at the single-cell level in 3D tissues. 鱼的壮举:在单细胞水平在3D组织的多模态标记流线型量化。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag105
Gaëlle Letort, Tanya Foley, Ilona Mignerey, Laure Bally-Cuif, Nicolas Dray

Summary: Characterizing the distribution of biological marker expression at the single cell level in whole tissues requires diverse image analysis steps, such as segmentation of cells and nuclei, detection of RNA transcripts (or other staining), or their mapping (e.g. assigning nuclei/RNA dots to their corresponding cell). Several software programs or algorithms have been developed for each step independently but integrating them into a comprehensive pipeline for the quantification of individual cells from 3D imaging samples remains a significant challenge. We developed FishFeats, an open-source and flexible napari plugin, to perform all these steps together within the same framework, taking advantage of available and efficient software applications. The primary core of our pipeline is to propose a user-friendly tool for users who do not have a computational background. FishFeats streamlines extracting quantitative information from multimodal 3D fluorescent microscopy images (smFISH expression in individual cells, immunohistochemical staining, cell morphologies, cell classification) to a unified "cell-by-cell" table for downstream analysis, without requiring any coding. Our second focus is to propose and ease manual correction of each step to further improve accuracy, which can be critical for many biological studies.

Availability and implementation: FishFeats is open source under the BSD-3 license, freely available on github: https://github.com/gletort/FishFeats (DOI 10.5281/zenodo.17701225). FishFeats is developed in python, as a napari plugin for the user interface. Documentation is available in the github pages: https://gletort.github.io/FishFeats/. To report an issue using FishFeats or contributing to it please file an issue in the github repository https://github.com/gletort/FishFeats/issues.

摘要:在整个组织的单细胞水平上表征生物标记表达的分布需要不同的图像分析步骤,如细胞和细胞核的分割,RNA转录物的检测(或其他染色),或它们的定位(例如,将细胞核/RNA点分配到相应的细胞)。已经为每一步独立开发了几个软件程序或算法,但将它们集成到一个全面的管道中,用于从3D成像样本中定量单个细胞仍然是一个重大挑战。我们开发了fishfeat,一个开源和灵活的napari插件(sofronview et al. 2025),在同一框架内一起执行所有这些步骤,利用可用和高效的软件应用程序。我们管道的主要核心是为没有计算背景的用户提供一个用户友好的工具。fish壮举简化了从多模态3D荧光显微镜图像中提取定量信息(单个细胞中的smFISH表达,免疫组织化学染色,细胞形态学,细胞分类)到统一的“逐细胞”表进行下游分析,而无需任何编码。我们的第二个重点是提出并简化每个步骤的人工校正,以进一步提高准确性,这对许多生物学研究至关重要。可用性:fishfeat在BSD-3许可下是开源的,可以在github上免费获得:https://github.com/gletort/FishFeats (DOI 10.5281/zenodo.17701225)。fishfeat是用python开发的,作为用户界面的napari插件。文档可在github页面中获得:https://gletort.github.io/FishFeats/.Contact:要报告使用fishfeat或为其做出贡献的问题,请在github存储库中提交问题https://github.com/gletort/FishFeats/issues.Supplementary信息:补充数据可在Bioinformatics在线获取。
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引用次数: 0
moiraine: an R package to construct reproducible pipelines for the application and comparison of multi-omics integration methods. Moiraine:一个构建可复制管道的R包,用于多组学集成方法的应用和比较。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag070
Olivia Angelin-Bonnet, Lindy Guo, Roy Storey, Susan Thomson

Motivation: In the past decades, many statistical methods for integrating multi-omics data have been developed. They have been implemented into software tools, which differ widely in their programming choices, such as the format required for data input, or the format of the generated integration results. This lack of standards renders cumbersome and time-intensive the application and comparison of different integration tools to the same multi-omics dataset.

Results: We have developed the moiraine R package for constructing reproducible multi-omics integration pipelines, which enables users to apply one or more statistical methods for multi-omics integration to their own multi-omics dataset. moiraine facilitates the preprocessing of the omics datasets and automates their formatting for the integration step. It simplifies the interpretation and evaluation of the integration results through the construction of visualizations in which metadata about samples and features can easily be included. Crucially, it enables the comparison of results obtained with different integration tools, allowing users to assess the robustness of their results.

Availability and implementation: The moiraine R package is publicly available at https://github.com/Plant-Food-Research-Open/moiraine; an archival snapshot of the package is available on Zenodo at https://doi.org/10.5281/zenodo.17172718. A detailed tutorial is available at https://plant-food-research-open.github.io/moiraine-manual/.

动机:在过去的几十年中,已经开发了许多用于集成多组学数据的统计方法。它们已经被实现到软件工具中,这些工具在编程选择上有很大的不同,比如数据输入所需的格式,或者生成的集成结果的格式。这种标准的缺乏使得对相同多组学数据集的不同集成工具的应用和比较变得繁琐和耗时。结果:我们开发了用于构建可重复的多组学集成管道的moiraine R包,使用户能够将一种或多种多组学集成的统计方法应用于自己的多组学数据集。Moiraine促进了组学数据集的预处理,并为集成步骤自动格式化。它简化了集成结果的解释和评估,通过可视化的构建,可以很容易地包含关于样本和特征的元数据。至关重要的是,它可以比较使用不同集成工具获得的结果,允许用户评估其结果的稳健性。可用性和实现:moiraine R包可在https://github.com/Plant-Food-Research-Open/moiraine上公开获得;该软件包的存档快照可在Zenodo上获得,网址为https://doi.org/10.5281/zenodo.17172718。详细的教程可在https://plant-food-research-open.github.io/moiraine-manual/.Supplementary information上获得;补充数据可在Bioinformatics在线上获得。
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引用次数: 0
ReverseGWAS identifies combined phenotypes associated with a genotype in GWA studies. ReverseGWAS在GWA研究中识别与基因型相关的组合表型。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag079
Leonid Chindelevitch, Åsa K Hedman, Dmitri Bichko, Daniel Ziemek

Motivation: Traditional genome-wide association studies (GWAS) aim to uncover the genetic variants associated with a single phenotype of interest (typically a disease), and to elucidate its genotypic architecture. However, many of today's GWAS simultaneously measure multiple related phenotypes, leading to the possibility of pursuing the reverse aim of elucidating the "phenotypic architecture" of a single genetic variant. In other words, we may ask what combination of measured phenotypes is associated with a given genotypic variant. ReverseGWAS is an algorithmic platform for answering such questions in the context of large-scale multi-phenotype GWAS.

Results: We demonstrate the effectiveness of ReverseGWAS on simulated data, showing its ability to identify logical combinations of phenotypes with a reasonable amount of noise. We then apply it to a selection of combined phenotypes from the UK Biobank, obtaining 719 candidate associations using autoimmune diseases and 205 using common ICD10 codes. We find that the majority of these associations (546/719 and 111/205, respectively) successfully replicate in an independent cohort, FinnGen.

Availability and implementation: The source code of ReverseGWAS is freely available to non-commercial users as an installable R package at https://github.com/Leonardini/rgwas.

动机:传统的全基因组关联研究(GWAS)旨在揭示与单个感兴趣表型(通常是一种疾病)相关的遗传变异,并阐明其基因型结构。然而,今天的许多GWAS同时测量多种相关表型,导致可能追求相反的目标,阐明单一遗传变异的“表型结构”。换句话说,我们可能会问,测量的表型组合与给定的基因型变异有关。ReverseGWAS是一个算法平台,用于在大规模多表型GWAS的背景下回答这些问题。结果:我们证明了ReverseGWAS在模拟数据上的有效性,显示了其识别具有合理噪声量的表型逻辑组合的能力。然后,我们将其应用于来自UK Biobank的组合表型选择,获得719个使用自身免疫性疾病的候选关联和205个使用常见ICD10代码的候选关联。我们发现这些关联中的大多数(分别为546/719和111/205)在独立的队列FinnGen中成功复制。可用性:ReverseGWAS的源代码作为可安装的R包免费提供给非商业用户,地址为https://github.com/Leonardini/rgwas.Supplementary information:补充数据可在Bioinformatics在线获取。
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引用次数: 0
Response to: "best practices when benchmarking CATCH for the design of genome enrichment probes". 响应:基因组富集探针设计CATCH基准测试的最佳实践。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag100
Jarno N Alanko, Ilya B Slizovskiy, Daniel Lokshtanov, Travis Gagie, Noelle R Noyes, Christina Boucher

We clarify the design principles and evaluation choices underlying Syotti, a robust and scalable probe-design tool developed to support large, heterogeneous bacterial datasets with minimal parameter tuning. We highlight Syotti's ability to perform simultaneous large-scale designs and its effectiveness as a reliable alternative when existing tools such as CATCH are not well suited to the problem setting.

我们阐明了Syotti的设计原则和评估选择,Syotti是一种强大的、可扩展的探针设计工具,用于支持大型、异构细菌数据集,参数调整最少。我们强调Syotti同时执行大规模设计的能力,以及当现有工具(如CATCH)不太适合问题设置时,它作为可靠替代方案的有效性。
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引用次数: 0
InSituPy: a framework for histology-guided, multi-sample analysis of single-cell spatial omics data. InSituPy:用于单细胞空间组学数据的组织学指导、多样本分析的框架。
IF 5.4 Pub Date : 2026-02-28 DOI: 10.1093/bioinformatics/btag073
Johannes Wirth, Anna Chernysheva, Birthe Lemke, Isabel Giray, Katja Steiger

Motivation: Spatial omics data provides unprecedented insights into disease biology, yet its complexity introduces significant challenges in data analysis. Comprehensive analysis requires frameworks that integrate diverse modalities and enable joint processing of multiple datasets and corresponding metadata.

Results: To address these challenges, we introduce InSituPy, a versatile and scalable framework for analyzing spatial omics data from the multi-sample level down to the cellular and subcellular level. Its hierarchical data structure organizes all relevant data modalities per sample and links them to their corresponding metadata, enabling scalable analysis of large patient cohorts using spatial omics technologies. Interactive visualization tools within InSituPy enable seamless integration of histopathological expertise, promoting collaborative hypothesis generation in translational research. Additionally, InSituPy includes built-in analytical algorithms and interfaces with external tools, establishing a standardized workflow for multi-sample spatial omics data analysis.

Availability: The Python package InSituPy is publicly available on GitHub (https://github.com/SpatialPathology/InSituPy) and PyPi (https://pypi.org/project/insitupy-spatial/), and archived on Zenodo (DOI: 10.5281/zenodo.18459471). Tutorials and documentation for InSituPy are available at https://insitupy.readthedocs.io/. All code to replicate the results shown in this manuscript can be found in the GitHub repository. Scripts to connect QuPath and InSituPy can be found at https://github.com/SpatialPathology/InSituPy-QuPath. All data required to complete the tutorials is publicly available, and functions to download the data have been implemented. A Zulip community chat for user support and discussion is accessible at https://insitupy.zulipchat.com.

Contact: j.wirth@tum.de, katja.steiger@tum.de.

动机:单细胞空间组学数据为疾病状态提供了前所未有的见解。对此类数据的综合分析需要集成多种模式的框架,并能够联合处理多个数据集和相应的元数据。结果:为了应对这些挑战,我们引入了InSituPy,这是一个多功能和可扩展的框架,用于分析从多样本水平到细胞和亚细胞水平的空间组学数据。其模块化数据结构组织每个样本的所有相关数据模式,并将其链接到相应的元数据,从而使用空间组学技术对大型患者队列进行可扩展分析。InSituPy中的交互式可视化工具可以无缝整合组织病理学专业知识,促进转化研究中的协作假设生成。此外,InSituPy还包括内置的分析算法和与外部工具的接口,为多样本空间组学数据分析建立了标准化的工作流程。可用性:Python包InSituPy在GitHub (https://github.com/SpatialPathology/InSituPy)和PyPi (https://pypi.org/project/insitupy-spatial/)上公开提供,并在Zenodo上存档(DOI: 10.5281/ Zenodo .18459471)。InSituPy的教程和文档可在https://insitupy.readthedocs.io/上获得。所有复制本文中所示结果的代码都可以在GitHub存储库中找到。连接QuPath和InSituPy的脚本可以在https://github.com/SpatialPathology/InSituPy-QuPath上找到。完成教程所需的所有数据都是公开的,并且已经实现了下载数据的功能。用户支持和讨论的Zulip社区聊天可访问https://insitupy.zulipchat.com.Supplementary information:补充数据可在Bioinformatics在线获得。
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引用次数: 0
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Bioinformatics (Oxford, England)
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