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A Dual Diffusion Model-Based Representation Learning Framework for AMPs Classification. 基于双扩散模型的AMPs分类表示学习框架。
IF 5.4 Pub Date : 2026-02-15 DOI: 10.1093/bioinformatics/btag077
Wen Kong, Lingling Fu, Xingpeng Jiang, Weizhong Zhao

Motivation: The increasing prevalence of antibiotic-resistant bacteria has intensified the demand for novel antimicrobial agents. Antimicrobial peptides (AMPs) have emerged as promising alternatives, yet their identification or classification remains challenging due to the lack of multi-perspective information, insufficient feature representation learning, and monocular data modalities.

Results: In this paper, we propose a dual diffusion model-based representation learning framework for classifying AMPs, which effectively integrates both peptide sequence and structure information to address existing issues for the task. Specifically, our approach utilizes a multi-view feature construction module, which encodes peptide sequences and structures from distinctive perspectives, deriving initial feature representations with enriched biological semantics. To enhance representation learning, the proposed framework leverages both diffusion models for sequence and structure information respectively to effectively capture complex semantics from dual modalities. In addition, both single-modal and dual-modal contrastive learning are employed to further advance the representation learning. Results of comprehensive experiments demonstrate that our model outperforms existing methods for the task of AMPs classification, providing a feasible solution to accelerating the discovery of novel antimicrobial agents.

Availability of data and codes: The data and source codes are available in GitHub at https://github.com/kww567upup/DDM.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:抗生素耐药细菌的日益流行加剧了对新型抗菌药物的需求。抗菌肽(AMPs)已成为有希望的替代品,但由于缺乏多角度信息、特征表示学习不足和单目数据模式,它们的识别或分类仍然具有挑战性。结果:在本文中,我们提出了一个基于双扩散模型的表征学习框架,该框架有效地整合了肽序列和结构信息,解决了该任务中存在的问题。具体来说,我们的方法利用了一个多视图特征构建模块,该模块从不同的角度编码肽序列和结构,从而获得具有丰富生物语义的初始特征表示。为了增强表征学习,所提出的框架分别利用序列和结构信息的扩散模型来有效地从双重模态中捕获复杂语义。此外,采用单模态和双模态对比学习来进一步推进表征学习。综合实验结果表明,该模型在抗菌药物分类任务上优于现有方法,为加速发现新型抗菌药物提供了可行的解决方案。数据和代码的可用性:数据和源代码可在GitHub上获得https://github.com/kww567upup/DDM.Supplementary information:补充数据可在Bioinformatics在线获得。
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引用次数: 0
pyBiodatafuse: Extending interoperability of data using modular queries across biomedical resources. pyBiodatafuse:使用跨生物医学资源的模块化查询扩展数据的互操作性。
IF 5.4 Pub Date : 2026-02-15 DOI: 10.1093/bioinformatics/btag064
Yojana Gadiya, Javier Millán Acosta, Ammar Ammar, Alejandro Adriaque Lozano, Delano Wetstede, Dominik Martinát, Ana Claudia Sima, Hailiang Mei, Egon Willighagen, Tooba Abbassi-Daloii

Motivation: Integrating omics data analysis with publicly available databases is crucial for unravelling complex biological mechanisms. However, this integration process is often intricate and time-consuming due to the diversity and complexity of the data involved. Achieving consistent harmonization across data types is challenging when managing disparate formats and sources. To address these issues, we introduce pyBiodatafuse, a query-based Python tool designed to integrate biomedical databases. This tool establishes a modular framework that simplifies data wrangling, enabling the creation of context-specific knowledge graphs (KGs) while supporting graph-based analyses.

Results: We developed a pipeline for generating context-specific knowledge graphs dynamically, allowing users to create KGs on the fly from a set of gene or metabolite identifiers. pyBiodatafuse features a user-friendly interface that streamlines this process, making it accessible even to researchers without extensive computational expertise. Additionally, the tool offers plugins for widely used platforms such as Cytoscape, Neo4j, and GraphDB, enabling local hosting of resulting property and RDF graphs. This versatility ensures that generated KGs can be efficiently utilized within diverse research workflows. To demonstrate its potential, we used pyBiodatafuse to create a graph for post-COVID syndrome using differential gene expression data, showcasing its ability to build adaptable and context-specific knowledge representations. Thus, pyBiodatafuse sets the stage for streamlined data integration, empowering researchers to focus on discovery and analysis without being hindered by data management complexities.

Availability and implementation: pyBiodatafuse is open-source, with its source code and PyPi package available at https://github.com/BioDataFuse/pyBiodatafuse and https://pypi.org/project/pyBiodatafuse/. The user interface can be accessed at https://biodatafuse.org/. Additionally, a release has been made on Zenodo at https://doi.org/10.5281/zenodo.18468942.

动机:将组学数据分析与公开可用的数据库集成对于揭示复杂的生物机制至关重要。然而,由于所涉及的数据的多样性和复杂性,这种集成过程通常是复杂和耗时的。在管理不同的格式和源时,实现跨数据类型的一致协调是一项挑战。为了解决这些问题,我们介绍了pyBiodatafuse,这是一个基于查询的Python工具,旨在集成生物医学数据库。该工具建立了一个模块化框架,简化了数据争论,在支持基于图的分析的同时,支持创建特定于上下文的知识图(KGs)。结果:我们开发了一个动态生成上下文特定知识图谱的管道,允许用户从一组基因或代谢物标识符动态创建kg。pyBiodatafuse具有用户友好的界面,简化了这一过程,即使没有广泛的计算专业知识的研究人员也可以访问它。此外,该工具还为广泛使用的平台(如Cytoscape、Neo4j和GraphDB)提供了插件,支持本地托管生成的属性和RDF图。这种多功能性确保生成的kg可以在不同的研究工作流程中有效地利用。为了展示其潜力,我们使用pyBiodatafuse使用差异基因表达数据创建了后covid综合征的图表,展示了其构建适应性和特定于上下文的知识表示的能力。因此,pyBiodatafuse为简化数据集成奠定了基础,使研究人员能够专注于发现和分析,而不会受到数据管理复杂性的阻碍。可用性和实现:pyBiodatafuse是开源的,其源代码和PyPi包可从https://github.com/BioDataFuse/pyBiodatafuse和https://pypi.org/project/pyBiodatafuse/获得。用户界面可通过https://biodatafuse.org/访问。此外,在Zenodo网站https://doi.org/10.5281/zenodo.18468942上也发布了一个版本。
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引用次数: 0
stDyer-image improves clustering analysis of spatially resolved transcriptomics and proteomics with morphological images. stDyer-image改进了形态学图像的空间分辨转录组学和蛋白质组学聚类分析。
IF 5.4 Pub Date : 2026-02-15 DOI: 10.1093/bioinformatics/btag071
Ke Xu, Xin Maizie Zhou, Lu Zhang

Spatially resolved transcriptomics (SRT) and spatially resolved proteomics (SRP) data enable the study of gene expression and protein abundances within their precise spatial and cellular contexts in tissues. Certain SRT and SRP technologies also capture corresponding morphology images, adding another layer of valuable information. However, few existing methods developed for SRT data effectively leverage these supplementary images to enhance clustering performance. Here, we introduce stDyer-image, an end-to-end deep learning framework designed for clustering for SRT and SRP datasets with images. Unlike existing methods that utilize images to complement gene expression data, stDyer-image directly links image features to cluster labels. This approach draws inspiration from pathologists, who can visually identify specific cell types or tumor regions from morphological images without relying on gene expression or protein abundances. Benchmarks against state-of-the-art tools demonstrate that stDyer-image achieves superior performance in clustering. Moreover, it is capable of handling large-scale datasets across diverse technologies, making it a versatile and powerful tool for spatial omics analysis.

空间分辨转录组学(SRT)和空间分辨蛋白质组学(SRP)数据可以在组织中精确的空间和细胞背景下研究基因表达和蛋白质丰度。某些SRT和SRP技术还捕获相应的形态学图像,增加了另一层有价值的信息。然而,针对SRT数据开发的现有方法很少有效地利用这些补充图像来提高聚类性能。在这里,我们介绍了stDyer-image,这是一个端到端深度学习框架,专为具有图像的SRT和SRP数据集聚类而设计。与现有的利用图像来补充基因表达数据的方法不同,stdye -image直接将图像特征与聚类标签联系起来。这种方法从病理学家那里获得灵感,病理学家可以从形态学图像中直观地识别特定的细胞类型或肿瘤区域,而不依赖于基因表达或蛋白质丰度。针对最先进工具的基准测试表明,stdye -image在集群中实现了卓越的性能。此外,它能够处理跨不同技术的大规模数据集,使其成为空间组学分析的多功能和强大工具。
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引用次数: 0
AutoFlow: An interactive Shiny app for supervised and unsupervised flow cytometry analysis. AutoFlow:用于监督和无监督流式细胞术分析的交互式Shiny应用程序。
IF 5.4 Pub Date : 2026-02-15 DOI: 10.1093/bioinformatics/btag078
Freya E R Woods, Emilyanne Leonard, Timothy Ebbels, Jonathan Cairns, Rhiannon David

Motivation: Flow cytometry (FC) is a widely used technique for analysing cells or particles based on the fluorescence of specific markers. Thresholds for fluorescence are typically set manually, a laborious, subjective process that scales poorly as FC technology advances. Machine learning (ML) methods can address these issues but often require technical expe r tise many bench scientists do not possess. Thus, accessible, open-source, and cross-domain ML-based FC tools are needed.

Results: We present AutoFlow, an easy-to-use, adaptable R Shiny application for automa t  ed flow cytometry (FC) analysis. AutoFlow supports two workflows: supervised and uns  u  pervised learning. The application automates key preprocessing steps including fluore  s  cence compensation, debris exclusion, single-cell identification, surface marker gating, MFI quantification, and downstream classification or clustering. Across three datasets, two pu  b  licly available (Mosmann and Nilsson Rare) and a novel bone marrow microphysiological system (BM-MPS) dataset, AutoFlow demonstrated robust performance. In the supervised workflow, multiclass classification on BM-MPS achieved 97.2% accuracy under a leave-one-timepoint-out scheme, with high sensitivity and specificity across major lineages. For rare populations, performance was strong: Mosmann Rare (0.03% prevalence) achieved 87.5% sensitivity, and 100% specificity, while Nilsson Rare (0.08% prevalence) achieved 87.9% sensitivity, and 99.9% specificity. The unsupervised workflow accurately grouped cells into biologically meaningful clusters, recovering known populations and identifying a  d  ditional candidate populations with marker profiles consistent with true biology. AutoFlow offers a fast, reproducible, and scalable solution for FC analysis, enabling high-throughput studies and improving the discovery of rare or unexpected cell types.

Availability: The application is available at  https://github.com/FERWoods/AutoFlow  for download using R. An archived version is available at DOI  :10.5281/zenodo.18235796.

Supplementary information: Supplementary data are available at Bioinformatics online.

目的:流式细胞术(FC)是一种广泛使用的基于特定标记物的荧光分析细胞或颗粒的技术。荧光阈值通常是手动设置的,这是一个费力的主观过程,随着FC技术的进步,这个过程的可扩展性很差。机器学习(ML)方法可以解决这些问题,但通常需要许多实验室科学家不具备的技术费用。因此,需要可访问的、开源的、跨域的基于ml的FC工具。结果:我们提出了AutoFlow,一个易于使用,适应性强的R - Shiny应用程序,用于自动流式细胞术(FC)分析。AutoFlow支持两种工作流程:监督学习和非监督学习。该应用程序自动化关键预处理步骤,包括荧光补偿,碎片排除,单细胞鉴定,表面标记门控,MFI量化,和下游分类或聚类。在三个数据集中,两个可用的数据集(Mosmann和Nilsson Rare)和一个新的骨髓微生理系统(BM-MPS)数据集,AutoFlow显示出强大的性能。在监督工作流程中,BM-MPS的多类分类准确率达到97.2%,在主要谱系中具有较高的灵敏度和特异性。对于罕见人群,表现很好:Mosmann rare(患病率0.03%)的敏感性为87.5%,特异性为100%,Nilsson rare(患病率0.08%)的敏感性为87.9%,特异性为99.9%。无监督的工作流程准确地将细胞分组为具有生物学意义的簇,恢复已知的种群,并识别具有与真实生物学一致的标记谱的其他候选种群。AutoFlow为FC分析提供了快速、可重复和可扩展的解决方案,实现了高通量研究,并改进了罕见或意外细胞类型的发现。可用性:该应用程序可在https://github.com/FERWoods/AutoFlow上使用r下载,存档版本可在DOI:10.5281/zenodo.18235796处获得。补充信息:补充数据可在生物信息学在线获取。
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引用次数: 0
Umite: fast quantification of smart-seq3 libraries with improved UMI retrieval. Umite:快速定量智能seq3文库与改进的UMI检索。
IF 5.4 Pub Date : 2026-02-15 DOI: 10.1093/bioinformatics/btag075
Leo Carl Foerster, Enrico Frigoli, Xiaoyu Sun, Jooa Hooli, Angela Goncalves, Ana Martin-Villalba

Motivation: Commercial solutions like 10X cellranger provide robust UMI quantification for their proprietary single-cell protocols, but open methods such as Smart-seq3 lack comparable support.

Results: Here, we introduce umite, a Smart-seq3 UMI counting pipeline with a focus on speed and a light memory footprint. Unlike existing tools, umite offers efficient mismatch-tolerant UMI detection, boosting UMI retrieval by 5-15% in benchmarks. It also outperforms current Smart-seq3 quantification tools in runtime, disk usage, and memory footprint, offering better scalability on large datasets.

Availability: umite is available at https://github.com/leoforster/umite (or via Zenodo: https://doi.org/10.5281/zenodo.18166431) and includes a Snakemake workflow for Smart-seq3 quantification. Single cell libraries of the mouse nasal vasculature dataset (GSE207085) and human CD4+ T-cell dataset (GSE270928) used in benchmarking were downloaded from NCBI (see Supplement for details).

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:像10X cellranger这样的商业解决方案为其专有的单细胞协议提供了强大的UMI量化,但像Smart-seq3这样的开放方法缺乏类似的支持。结果:在这里,我们介绍了umite,一个专注于速度和内存占用的Smart-seq3 UMI计数管道。与现有工具不同,umite提供了高效的不匹配UMI检测,在基准测试中将UMI检索提高了5-15%。它在运行时、磁盘使用和内存占用方面也优于当前的Smart-seq3量化工具,在大型数据集上提供更好的可伸缩性。可用性:umite可在https://github.com/leoforster/umite(或通过Zenodo: https://doi.org/10.5281/zenodo.18166431)获得,并包括用于Smart-seq3量化的snakemaker工作流。用于基准测试的小鼠鼻血管数据集(GSE207085)和人CD4+ t细胞数据集(GSE270928)的单细胞文库从NCBI下载(详见补充资料)。补充信息:补充数据可在生物信息学在线获取。
{"title":"Umite: fast quantification of smart-seq3 libraries with improved UMI retrieval.","authors":"Leo Carl Foerster, Enrico Frigoli, Xiaoyu Sun, Jooa Hooli, Angela Goncalves, Ana Martin-Villalba","doi":"10.1093/bioinformatics/btag075","DOIUrl":"https://doi.org/10.1093/bioinformatics/btag075","url":null,"abstract":"<p><strong>Motivation: </strong>Commercial solutions like 10X cellranger provide robust UMI quantification for their proprietary single-cell protocols, but open methods such as Smart-seq3 lack comparable support.</p><p><strong>Results: </strong>Here, we introduce umite, a Smart-seq3 UMI counting pipeline with a focus on speed and a light memory footprint. Unlike existing tools, umite offers efficient mismatch-tolerant UMI detection, boosting UMI retrieval by 5-15% in benchmarks. It also outperforms current Smart-seq3 quantification tools in runtime, disk usage, and memory footprint, offering better scalability on large datasets.</p><p><strong>Availability: </strong>umite is available at https://github.com/leoforster/umite (or via Zenodo: https://doi.org/10.5281/zenodo.18166431) and includes a Snakemake workflow for Smart-seq3 quantification. Single cell libraries of the mouse nasal vasculature dataset (GSE207085) and human CD4+ T-cell dataset (GSE270928) used in benchmarking were downloaded from NCBI (see Supplement for details).</p><p><strong>Supplementary information: </strong>Supplementary data are available at Bioinformatics online.</p>","PeriodicalId":93899,"journal":{"name":"Bioinformatics (Oxford, England)","volume":" ","pages":""},"PeriodicalIF":5.4,"publicationDate":"2026-02-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"146204292","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
CCC-GPU: A graphics processing unit (GPU)-accelerated nonlinear correlation coefficient for large-scale transcriptomic analyses. CCC-GPU:一个图形处理单元(GPU)-加速非线性相关系数大规模转录组分析。
IF 5.4 Pub Date : 2026-02-13 DOI: 10.1093/bioinformatics/btag068
Haoyu Zhang, Kevin Fotso, Marc Subirana-Granés, Milton Pividori

Motivation: Identifying meaningful patterns in complex biological data necessitates correlation coefficients capable of capturing diverse relationship types beyond simple linearity. Furthermore, efficient computational tools are crucial for handling the ever-increasing scale of biological datasets.

Results: We introduce CCC-GPU, a high-performance, GPU-accelerated implementation of the Clustermatch Correlation Coefficient (CCC). CCC-GPU computes correlation coefficients for mixed data types, effectively detects nonlinear relationships, and offers significant speed improvements over its predecessor.

Availability and implementation: The source code of CCC-GPU is openly available on GitHub (https://github.com/pivlab/ccc-gpu) and archived on Zenodo (https://doi.org/10.5281/zenodo.18310318), distributed under the BSD-2-Clause Plus Patent License.

动机:在复杂的生物数据中识别有意义的模式需要能够捕获超越简单线性的各种关系类型的相关系数。此外,高效的计算工具对于处理不断增长的生物数据集至关重要。结果:我们介绍了CCC- gpu,一种高性能,gpu加速的群集匹配相关系数(CCC)实现。cc - gpu计算混合数据类型的相关系数,有效地检测非线性关系,并且比其前身提供了显着的速度改进。可用性和实现:cc-gpu的源代码在GitHub (https://github.com/pivlab/ccc-gpu)上公开可用,并在Zenodo (https://doi.org/10.5281/zenodo.18310318)上存档,在BSD-2-Clause Plus专利许可下分发。
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引用次数: 0
TrIPP: a Trajectory Iterative pKa Predictor. TrIPP:一个轨迹迭代pKa预测器。
IF 5.4 Pub Date : 2026-02-12 DOI: 10.1093/bioinformatics/btag063
Christos Matsingos, Ka Fu Man, Arianna Fornili

Summary: The protonation propensity of ionisable residues in proteins can change in response to changes in the local residue environment. The link between protein dynamics and pK  a is particularly important in pH regulation of protein structure and function. Here, we introduce TrIPP (Trajectory Iterative pK  a Predictor), a Python tool to track and analyse changes in the pK  a of ionisable residues along Molecular Dynamics trajectories of proteins. We show how TrIPP can be used to identify residues with physiologically relevant variations in their predicted pK  a values during the simulations, and link them to changes in the local and global environment.

Availability and implementation: TrIPP is available at https://github.com/fornililab/TrIPP.

Supplementary information: Supplementary data are available at Bioinformatics online.

摘要:蛋白质中可电离残基的质子化倾向会随着局部残基环境的变化而改变。蛋白质动力学和pK - a之间的联系在蛋白质结构和功能的pH调节中尤为重要。本文介绍了TrIPP (Trajectory Iterative pK a Predictor),这是一个Python工具,用于跟踪和分析蛋白质分子动力学轨迹上可电离残基pK a的变化。我们展示了TrIPP如何在模拟过程中用于识别具有预测pK值生理相关变化的残基,并将它们与局部和全球环境的变化联系起来。可用性和实施:TrIPP可在https://github.com/fornililab/TrIPP.Supplementary上获得信息;补充数据可在Bioinformatics在线获得。
{"title":"TrIPP: a Trajectory Iterative pKa Predictor.","authors":"Christos Matsingos, Ka Fu Man, Arianna Fornili","doi":"10.1093/bioinformatics/btag063","DOIUrl":"https://doi.org/10.1093/bioinformatics/btag063","url":null,"abstract":"<p><strong>Summary: </strong>The protonation propensity of ionisable residues in proteins can change in response to changes in the local residue environment. The link between protein dynamics and pK  a is particularly important in pH regulation of protein structure and function. Here, we introduce TrIPP (Trajectory Iterative pK  a Predictor), a Python tool to track and analyse changes in the pK  a of ionisable residues along Molecular Dynamics trajectories of proteins. We show how TrIPP can be used to identify residues with physiologically relevant variations in their predicted pK  a values during the simulations, and link them to changes in the local and global environment.</p><p><strong>Availability and implementation: </strong>TrIPP is available at https://github.com/fornililab/TrIPP.</p><p><strong>Supplementary information: </strong>Supplementary data are available at Bioinformatics online.</p>","PeriodicalId":93899,"journal":{"name":"Bioinformatics (Oxford, England)","volume":" ","pages":""},"PeriodicalIF":5.4,"publicationDate":"2026-02-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"146183744","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
UCell and pyUCell: single-cell gene signature scoring for R and python. UCell和pyUCell: R和python的单细胞基因标记评分。
IF 5.4 Pub Date : 2026-02-10 DOI: 10.1093/bioinformatics/btag055
Massimo Andreatta, Santiago J Carmona

Summary: Gene signature scoring provides a simple yet powerful approach for quantifying biological signals within single-cell omics datasets. UCell and pyUCell offer fast and robust implementations of rank-based signature scoring for R and Python, respectively, integrating seamlessly with leading single-cell analysis ecosystems such as Seurat, Bioconductor, and scanpy/scverse.

Availability and implementation: UCell v2 is distributed as an R package by BioConductor (https://bioconductor.org/packages/UCell/) and as a Python package by pyPI (https://pypi.org/project/pyucell/).

Supplementary information: Supplementary data are available at Bioinformatics online.

摘要:基因标记评分为单细胞组学数据集中的生物信号量化提供了一种简单而强大的方法。UCell和pyUCell分别为R和Python提供快速而强大的基于排名的签名评分实现,与领先的单细胞分析生态系统(如Seurat, Bioconductor和scanpy/scverse)无缝集成。可用性和实现:UCell v2由BioConductor (https://bioconductor.org/packages/UCell/)作为R包发布,由pyPI (https://pypi.org/project/pyucell/).Supplementary)作为Python包发布。信息:补充数据可在Bioinformatics在线获取。
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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 : 2026-02-09 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 is freely available at https://github.com/YihDu/CEMUSA. CEMUSA is implemented as an R package at https://yihdu.github.io/CEMUSA.

Supplementary information: Supplementary data are available at Bioinformatics online.

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。
{"title":"CEMUSA: A Graph-based Integrative Metric for Evaluating Clusters in Spatial Transcriptomics.","authors":"Jiaying Hu, Yihang Du, Suyang Hou, Yueyang Ding, Jinyan Li, Hao Wu, Xiaobo Sun","doi":"10.1093/bioinformatics/btag056","DOIUrl":"https://doi.org/10.1093/bioinformatics/btag056","url":null,"abstract":"<p><strong>Motivation: </strong>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.</p><p><strong>Results: </strong>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.</p><p><strong>Availability and implementation: </strong>The source code and data is freely available at https://github.com/YihDu/CEMUSA. CEMUSA is implemented as an R package at https://yihdu.github.io/CEMUSA.</p><p><strong>Supplementary information: </strong>Supplementary data are available at Bioinformatics online.</p>","PeriodicalId":93899,"journal":{"name":"Bioinformatics (Oxford, England)","volume":" ","pages":""},"PeriodicalIF":5.4,"publicationDate":"2026-02-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"146151369","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Mamba6mA: A Mamba-based DNA N6-methyladenine Site Prediction Model. Mamba6mA:一个基于mamba的DNA n6 -甲基腺嘌呤位点预测模型。
IF 5.4 Pub Date : 2026-02-05 DOI: 10.1093/bioinformatics/btag060
Qi Zhao, Zhen Zhang, Tingwei Chen, Qian Mao, Haoxuan Shi, Jingjing Chen, Zheng Zhao, Xiaoya Fan

Motivation: N6-methyladenine (6 mA) is an important epigenetic modification of DNA that regulates biological processes such as gene expression, transcription, replication, DNA repair, and cell cycle without altering the DNA sequence. It also plays a key role in many diseases including cancer and autoimmune diseases. Although experimental approaches such as SMRT sequencing and methylated DNA immunoprecipitation can identify 6 mA sites, they suffer from drawbacks including suboptimal sequencing quality, low signal-to-noise ratios, high costs, and time-consuming procedures. In recent years, deep learning approaches have demonstrated significant advantages in predicting 6 mA sites; however, their generalization ability still requires further improvement.

Results: Inspired by the state space model Mamba, we propose a novel model for 6 mA site prediction, named Mamba6mA. In the Mamba6mA model, we design position-specific linear layers to replace traditional convolutional layers to facilitate capture specific positional information. Meanwhile, we construct a multi-scale feature extraction module and integrate features captured by sliding windows of different scales, feeding them into the classifier for prediction. Experimental results show that Mamba6mA achieves the best MCC on 9 out of 11 species datasets, surpassing existing state-of-the-art models. Ablation studies confirm that the position-specific linear layers and the multi-scale fusion module contribute MCC performance gains of 2.36% and 2.31%, respectively. Feature visualization analysis further reveals that the model effectively captures sequence patterns upstream and downstream of 6 mA sites providing a new technical approach for studying epigenetic modification mechanisms.

Availability and implementation: The source code for Mamba6mA is available at: https://github.com/XploreAI-Lab/Mamba6mA.

Contact: Xiaoya Fan (xiaoyafan@dlut.edu.cn), Zheng Zhao (zhaozheng@dlmu.edu.cn).

Supplementary information: Supplementary information are available at Bioinformatics online.

动机:n6 -甲基腺嘌呤(6ma)是一种重要的DNA表观遗传修饰,在不改变DNA序列的情况下调节基因表达、转录、复制、DNA修复和细胞周期等生物过程。它在包括癌症和自身免疫性疾病在内的许多疾病中也起着关键作用。虽然SMRT测序和甲基化DNA免疫沉淀等实验方法可以识别6ma位点,但它们存在测序质量不理想、信噪比低、成本高和耗时等缺点。近年来,深度学习方法在预测6个mA位点方面显示出显著的优势;但其泛化能力还有待进一步提高。结果:受状态空间模型Mamba的启发,我们提出了一种新的6ma位点预测模型Mamba6mA。在Mamba6mA模型中,我们设计了位置特定的线性层来取代传统的卷积层,以方便捕获特定的位置信息。同时,我们构建了一个多尺度特征提取模块,将不同尺度滑动窗捕获的特征整合到分类器中进行预测。实验结果表明,Mamba6mA在11个物种数据集中的9个上达到了最佳MCC,超过了现有的最先进模型。烧蚀研究证实,位置特定线性层和多尺度融合模块对MCC性能的贡献分别为2.36%和2.31%。特征可视化分析进一步表明,该模型有效捕获了6ma位点上下游的序列模式,为研究表观遗传修饰机制提供了新的技术途径。获取和实现:Mamba6mA的源代码可在:https://github.com/XploreAI-Lab/Mamba6mA.Contact;范小雅(xiaoyafan@dlut.edu.cn),赵征(zhaozheng@dlmu.edu.cn)。补充信息:补充信息可在Bioinformatics online获取。
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引用次数: 0
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