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mirtronDB 2.0: enhanced database with novel mirtron discoveries. mirtronDB 2.0:具有新发现的镜像的增强数据库。
IF 5.4 Pub Date : 2026-03-11 DOI: 10.1093/bioinformatics/btag114
Fabiana Rodrigues de Goes, Matheus Fujimura Soares, Vitor Gregorio, Bruno Thiago de Lima Nichio, Alisson Gaspar Chiquitto, Flavia Lombardi Lopes, Mark Basham, Douglas Silva Domingues, Alexandre Rossi Paschoal

Motivation: MirtronDB provides a comprehensive and up-to-date resource for advancing mirtron research within RNA biology. Therefore, maintaining a specialized and continuously updated resource for mirtrons is essential to support ongoing discoveries and to serve as a key reference for researchers investigating the roles of mirtrons.

Results: Here, we present mirtronDB 2.0, an enhanced version that expands both content and functionality. This version integrates mirtron data published between 2017 and 2025, increasing the number of documented mirtrons across various species. In addition, it incorporates newly predicted mirtrons identified through a robust pipeline that combines advanced bioinformatics and machine learning approaches, with specific coverage of six mammalian species. We have introduced new website features, including an interactive dashboard to enhance usability and facilitate intuitive data exploration. These rigorous updates consolidate mirtronDB as a key resource for mirtron to the RNA biology community.

Availability and implementation: mirtronDB can be found under http://mirtrondb.cp.utfpr.edu.br/. The complete content of Database 2.0 and the source code for the analyses are also freely available in the FigShare repository: https://figshare.com/articles/dataset/MirtronDB_version2/29344775.

Contact: Corresponding authors: Alexandre Rossi Paschoal, Rosalind Franklin Institute, Harwell Science and Innovation Campus, Didcot, OX11 0QS, UK; Department of Computer Science, Federal University of Technology-Parana, Cornelio Procopio, Brazil. Email: alexandre.paschoal@rfi.ac.uk or paschoal@utfpr.edu.br; Douglas Silva Domingues, Department of Genetics, "Luiz de Queiroz" College of Agriculture, University of São Paulo, Piracicaba, São Paulo, Brazil. Email: dougsd@usp.br.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:MirtronDB为推进RNA生物学中的镜像研究提供了全面和最新的资源。因此,维护一个专门的和不断更新的镜面资源对于支持正在进行的发现和作为研究人员调查镜面作用的关键参考是必不可少的。结果:在这里,我们展示了mirtronDB 2.0,一个扩展了内容和功能的增强版本。该版本整合了2017年至2025年之间发布的镜像数据,增加了不同物种中记录的镜像数量。此外,它还结合了通过结合先进生物信息学和机器学习方法的强大管道识别的新预测镜像,具体覆盖六种哺乳动物物种。我们引入了新的网站功能,包括一个交互式仪表板,以增强可用性和促进直观的数据探索。这些严格的更新巩固了mirtronDB作为RNA生物学社区mirtron的关键资源的地位。可用性和实现:mirtronDB可以在http://mirtrondb.cp.utfpr.edu.br/下找到。数据库2.0的完整内容和分析的源代码也可以在FigShare存储库中免费获得:https://figshare.com/articles/dataset/MirtronDB_version2/29344775.Contact。通讯作者:Alexandre Rossi Paschoal,罗莎琳德富兰克林研究所,Harwell科学与创新校园,Didcot, OX11 0QS, UK;计算机科学系,巴拉那联邦理工大学,巴西科涅利奥普罗科皮奥。邮箱:alexandre.paschoal@rfi.ac.uk或paschoal@utfpr.edu.br;Douglas Silva Domingues,巴西圣保罗大学皮拉西卡巴分校“Luiz de Queiroz”农业学院遗传学系。电子邮件:dougsd@usp.br.Supplementary information:补充数据可在Bioinformatics在线获取。
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引用次数: 0
TerminatorNet: comprehensive identification of intrinsic transcription terminators in bacteria. TerminatorNet:细菌内在转录终止子的综合鉴定。
IF 5.4 Pub Date : 2026-03-11 DOI: 10.1093/bioinformatics/btag116
Brian Tjaden

Motivation: The primary mechanism for transcription termination in bacteria is intrinsic terminators. These terminators influence transcript stability and play key roles in gene regulation. Existing computational methods for genome-wide terminator identification have been designed and evaluated based on a small number of experimentally evinced terminators often from only one or two organisms.

Results: We present TerminatorNet, a system for identifying intrinsic transcription terminators throughout bacteria. TerminatorNet uses a neural network model trained on a large set of experimentally characterized transcription terminators from a variety of bacterial genomes. TerminatorNet identifies 98% of terminators and has a false positive rate of 3%, substantially better than existing approaches. TerminatorNet commonly identifies terminators at the ends of operons. We applied TerminatorNet to thousands of genomes across the taxonomic spectrum of prokaryotes, creating a repository of tens of millions of terminators. We observe heavy use of intrinsic termination in some groups, such as Bacillota, and rare use in other groups such as archaea. We also observe a wealth of instances of DNA uptake signal sequences, important components of transformation specificity for some competent bacteria, in terminators identified in Neisseriaceae and Pasteurellaceae.

Availability: TerminatorNet and its repository of identifications are available for use via a webserver: https://cs.wellesley.edu/∼btjaden/TermNet. The source code is available at GitHub https://github.com/btjaden/TerminatorNet and Zenodo https://doi.org/10.5281/zenodo.18406126.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:细菌中转录终止的主要机制是内在终止子。这些终止子影响转录物的稳定性,在基因调控中发挥关键作用。现有的全基因组终止子鉴定的计算方法是基于少量的实验证明的终止子设计和评估的,这些终止子通常来自一个或两个生物体。结果:我们提出了TerminatorNet,一个识别细菌内固有转录终止子的系统。TerminatorNet使用一个神经网络模型,该模型训练了大量来自各种细菌基因组的实验表征的转录终止子。TerminatorNet识别了98%的终止器,假阳性率为3%,大大优于现有的方法。TerminatorNet通常在操作符的末端标识终止符。我们将TerminatorNet应用于原核生物分类光谱中的数千个基因组,创建了一个包含数千万个终结者的存储库。我们观察到在一些群体中大量使用固有终止,如杆菌,而在其他群体中很少使用,如古菌。我们还在奈瑟菌科和巴氏杆菌科的终止体中发现了大量的DNA摄取信号序列,这些信号序列是一些胜任菌转化特异性的重要组成部分。可用性:TerminatorNet及其标识库可通过web服务器使用:https://cs.wellesley.edu/ ~ tbjaden /TermNet。源代码可在GitHub https://github.com/btjaden/TerminatorNet和Zenodo https://doi.org/10.5281/zenodo.18406126.Supplementary获取信息:补充数据可在Bioinformatics在线获取。
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引用次数: 0
Souporcell3: Robust Demultiplexing for High-Donor Single-Cell RNA-seq Datasets. Souporcell3:高供体单细胞rna序列数据集的鲁棒解复用。
IF 5.4 Pub Date : 2026-03-10 DOI: 10.1093/bioinformatics/btag117
Minindu Weerakoon, Hai Vu, Reza Behboudi, Haynes Heaton

Motivation: Accurate demultiplexing of pooled single-cell RNA-seq (scRNA-seq) data is critical for large-scale studies. However, existing methods like vireo, while effective up to ∼16 donors, often struggle with poor clustering due to local optima as donor numbers rise. In high-donor scenarios, overlapping genotypes, a dense genotype space, and increased doublet formation make demultiplexing challenging, requiring methods that are robust to sparse, high-dimensional data and maintain reliable accuracy even as sample complexity grows.

Results: We present an enhanced version of souporcell capable of demultiplexing up to 64 donors. The method uses 10x merge for initialization, K-Harmonic Means for robust clustering, and iterative refinement with reinitialization of low-quality clusters and locking of high-quality ones. Compared to vireo, overclustered vireo, and the original souporcell, our approach completely eliminates incorrectly merged clusters and achieves consistently high Adjusted Rand Index (ARI) scores across various doublet rates, demonstrating improved accuracy and scalability.

Availability: Souporcell3 is freely available under the MIT open-source license at https://github.com/wheaton5/souporcell.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:准确解复用合并的单细胞RNA-seq (scRNA-seq)数据对于大规模研究至关重要。然而,现有的方法,如vireo,虽然有效到16个供体,但随着供体数量的增加,由于局部最优,通常会出现较差的聚类问题。在高供体情况下,重叠的基因型、密集的基因型空间和增加的双重态形成使得多路解复用具有挑战性,需要对稀疏、高维数据具有鲁棒性的方法,并且即使样本复杂性增加也能保持可靠的准确性。结果:我们提出了一种增强版的souporcell,能够分离多达64个供体。该方法使用10x合并进行初始化,K-Harmonic Means进行鲁棒聚类,并通过重新初始化低质量聚类和锁定高质量聚类进行迭代细化。与vireo、过度聚类vireo和原始souporcell相比,我们的方法完全消除了不正确合并的聚类,并在各种双态率下获得了一致的高调整后Rand指数(ARI)分数,证明了更高的准确性和可扩展性。可用性:Souporcell3在麻省理工学院开源许可下免费提供,网址为https://github.com/wheaton5/souporcell.Supplementary。信息:补充数据可在Bioinformatics在线获取。
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引用次数: 0
PULPO: Pipeline of understanding large-scale patterns of oncogenomic signatures. PULPO:了解肿瘤基因组特征大规模模式的管道。
IF 5.4 Pub Date : 2026-03-10 DOI: 10.1093/bioinformatics/btag118
Marta Portasany-Rodríguez, Gonzalo Soria-Alcaide, Elena G Sánchez, Mariya Ivanova, Ana Gómez, Reyes Giménez, Jaanam Lalchandani, Gonzalo García-Aguilera, Silvia Alemán-Arteaga, Cristina Saiz-Ladera, Manuel Ramírez-Orellana, Jorge Garcia-Martinez

Summary: PULPO v1.0 is a novel, fully automated pipeline designed for the preprocess and extraction of mutational signatures from raw Optical Genome Mapping (OGM) data. Built using Snakemake and executed within an isolated, Conda-managed environment, PULPO transforms complex cytogenetic alterations, captured at ultra-high resolution, into Catalogue of somatic mutations in cancer mutational signatures (COSMIC). This innovative approach not only enables researchers to work directly from raw OGM inputs but also streamlines the traditionally complex process of signature extraction, making advanced oncogenomic analyses accessible to users with varying levels of bioinformatics expertise. By facilitating the integration of comprehensive structural variants (SVs) and copy number variants (CNVs) data with established signature catalogues, PULPO paves the way for improved diagnostic accuracy and personalized therapeutic strategies.

Availability: The pipeline is open source and freely available under the MIT License at https://github.com/OncologyHNJ/PULPO-v.1.0 and DOI in Zenodo: https://zenodo.org/records/17749097.

Supplementary information: Supplementary data are available at Bioinformatics online.

PULPO v1.0是一种全新的全自动流水线,用于预处理和提取原始光学基因组图谱(OGM)数据中的突变特征。PULPO使用Snakemake构建,并在一个孤立的、conda管理的环境中执行,将以超高分辨率捕获的复杂细胞遗传学改变转化为癌症突变特征(COSMIC)中的体细胞突变目录。这种创新的方法不仅使研究人员能够直接从原始OGM输入中进行工作,而且还简化了传统上复杂的特征提取过程,使具有不同生物信息学专业知识水平的用户可以访问先进的肿瘤基因组分析。通过促进综合结构变异(SVs)和拷贝数变异(cnv)数据与已建立的特征目录的整合,PULPO为提高诊断准确性和个性化治疗策略铺平了道路。可用性:该管道是开源的,在MIT许可下免费提供,网址为https://github.com/OncologyHNJ/PULPO-v.1.0, DOI为Zenodo: https://zenodo.org/records/17749097.Supplementary信息:补充数据可在Bioinformatics在线获取。
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引用次数: 0
BrainConnect: processing brain connectivity and spatial transcriptomics data for integrative analysis. 脑连接:处理脑连接和空间转录组学数据进行综合分析。
IF 5.4 Pub Date : 2026-03-10 DOI: 10.1093/bioinformatics/btag120
Chenglong Sang, Cheng Peng

Motivation: Characterizing the neuronal connectomes provides route to understand the basis of neural circuit in brains, one of the central missions in neuroscience, but the mapped connectivity is absent of molecular information, obscuring the understanding on the important genes underlying the connectomes. The whole-brain spatial transcriptomics data provide the opportunity to predict and understand the brain connectivity. However, there is no method to process these datasets in consistent data format for integrative analysis.

Results: In this work, we developed a software to process different kinds of mouse brain connectivity data together with spatial transcriptomics in consistent brain regions to define the connectivity path and strength, and then used the long short-term memory network to predict connectivity strengths from the spatial transcriptomics by using our data framework. We evaluated the model in different ways, and the results showed that our model accurately predicted the connectivity strengths and helped in selecting the important genes potentially involved in the regulation, establishment or maintenance of brain connectivity.

Availability: The software is freely available at Github (https://github.com/CPenglab/BrainConnect) and Pypi (https://pypi.org/project/BrainConnect). An archived version is available at https://doi.org/10.5281/zenodo.18440094.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:表征神经元连接体为理解大脑神经回路的基础提供了途径,这是神经科学的中心任务之一,但映射的连接缺乏分子信息,模糊了对连接体背后重要基因的理解。全脑空间转录组学数据为预测和理解大脑连接提供了机会。然而,目前还没有一种方法能够以一致的数据格式处理这些数据集,以便进行综合分析。结果:在本研究中,我们开发了一个软件,将不同类型的小鼠大脑连接数据与空间转录组学一起处理,在一致的大脑区域定义连接路径和强度,然后利用我们的数据框架,利用长短期记忆网络来预测空间转录组学的连接强度。我们以不同的方式对模型进行了评估,结果表明我们的模型准确地预测了连接强度,并有助于选择可能参与调节、建立或维持大脑连接的重要基因。可用性:该软件可以在Github (https://github.com/CPenglab/BrainConnect)和Pypi (https://pypi.org/project/BrainConnect)上免费获得。存档版本可在https://doi.org/10.5281/zenodo.18440094.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
Igv-reports: Embedding interactive genomic visualizations in HTML reports to aid variant review. igv报告:在HTML报告中嵌入交互式基因组可视化,以帮助变体审查。
IF 5.4 Pub Date : 2026-03-10 DOI: 10.1093/bioinformatics/btag125
James T Robinson, Helga Thorvaldsdottir, Jill P Mesirov

Summary: We present igv-reports, a command-line tool to create standalone HTML pages embedding interactive genomic visualizations of read alignments and associated annotations to support variant inspection workflows. The reports contain all data and code required for visualization of the variant sites, with no dependencies on the input data files.

Availability and implementation: igv-reports is command-line application written in Python. It is freely available at https://github.com/igvteam/igv-reports under an MIT license.

Supplementary information: Supplementary data are available at Bioinformatics online.

摘要:我们提出了igv-reports,这是一个命令行工具,用于创建独立的HTML页面,嵌入读取对齐的交互式基因组可视化和相关注释,以支持变体检查工作流程。这些报告包含了可视化不同站点所需的所有数据和代码,不依赖于输入数据文件。可用性和实现:igv-reports是用Python编写的命令行应用程序。在MIT许可下,它可以在https://github.com/igvteam/igv-reports上免费获得。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
Predicting Antibody-Antigen Affinity with a Dual-Level Representation Model. 用双水平表示模型预测抗体-抗原亲和力。
IF 5.4 Pub Date : 2026-03-10 DOI: 10.1093/bioinformatics/btag109
Ziyang Wang, Yu Zhang, Youli Zhang, Jianwei Huang, Xiaoli Lu, Xiaoping Min, Shengxiang Ge, Jun Zhang, Ningshao Xia

Motivation: Protein language models (pLMs) are critical for modeling antibody-antigen interactions, yet sequence-based affinity prediction remains a key challenge, particularly when structural data are scarce. Existing methods often struggle to fully exploit sequence information, limiting their applicability across diverse antibody formats such as single-domain antibodies (sdAbs).

Results: We propose DLP-Affinity, a dual-level deep learning framework for accurate sequence-based affinity prediction. It leverages two complementary modules: Residue-to-Residue (R2R) to capture local interface contacts, and Global Stochastic Projection Embedding (GSPE) to represent global protein properties. Utilizing a fine-tuned protein language model, our approach achieves state-of-the-art performance on the general AB-Bind dataset (reducing mean absolute error by up to 20.9%) and delivers highly competitive results on the sdAb-DB dataset. This provides a robust tool for sequence-based antibody affinity prediction.

Availability and implementation: The source code and datasets for DLP-Affinity are freely available at https://github.com/Zy-Wang-bit/DLP_Affinity and archived on Zenodo at https://doi.org/10.5281/zenodo.18437656.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:蛋白质语言模型(pLMs)对于模拟抗体-抗原相互作用至关重要,但基于序列的亲和力预测仍然是一个关键挑战,特别是在结构数据稀缺的情况下。现有的方法往往难以充分利用序列信息,限制了它们在不同抗体格式(如单域抗体(sabs))中的适用性。结果:我们提出了一种双层深度学习框架DLP-Affinity,用于精确的基于序列的亲和力预测。它利用两个互补的模块:残基到残基(R2R)捕获局部界面接触,全局随机投影嵌入(GSPE)表示全局蛋白质特性。利用微调的蛋白质语言模型,我们的方法在常规AB-Bind数据集上实现了最先进的性能(将平均绝对误差降低了20.9%),并在数据库数据库数据集上提供了极具竞争力的结果。这为基于序列的抗体亲和力预测提供了一个强大的工具。可用性和实现:DLP-Affinity的源代码和数据集可在https://github.com/Zy-Wang-bit/DLP_Affinity上免费获得,并在https://doi.org/10.5281/zenodo.18437656.Supplementary上存档于Zenodo: information:补充数据可在Bioinformatics在线获得。
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引用次数: 0
CoMBCR: Co-Learning Multi-Modalities of BCRs and Gene Expressions. CoMBCR:共同学习bcr和基因表达的多模式。
IF 5.4 Pub Date : 2026-03-09 DOI: 10.1093/bioinformatics/btag115
Yiping Zou, Jiaqi Luo, Shuaicheng Li

Motivation: B-cell receptors (BCRs) and gene expression profiles are two distinct yet complementary modalities of B cells. However, most analyses treat them independently. Here, we present CoMBCR, a B-cell embedding tool that co-learns BCRs and gene expressions, representing data within a unified latent space for downstream analysis.

Results: We applied CoMBCR to 126,791 B cells from diverse datasets with matched BCRs and gene expressions. First, CoMBCR outperforms the methods solely encoding BCRs in capturing B-cell biological features, achieving at least 0.1 improvement in Matthews Correlation Coefficient on a SARS-CoV-2 binding prediction task. Second, CoMBCR reveals active immune responses and CDR3 motif preferences through modality gap analysis in SARS-CoV-2-specific memory B cells. Moreover, when supported by spatial transcriptomics data, CoMBCR accurately traces the developmental trajectories of malignant B cells and uncovers transcriptional patterns associated with their survival within lymphoma patients.

Availability and implementation: The CoMBCR software is publicly available under the MIT License at https://github.com/deepomicslab/CoMBCR.git.

Supplementary information: Supplementary files are available at Bioinformatics online.

B细胞受体(BCRs)和基因表达谱是B细胞的两种不同但互补的形式。然而,大多数分析都是独立对待它们的。在这里,我们提出了CoMBCR,这是一种b细胞嵌入工具,可以共同学习bcr和基因表达,在统一的潜在空间内表示下游分析的数据。结果:我们将CoMBCR应用于来自不同数据集的126791个bcr和基因表达相匹配的B细胞。首先,在捕获b细胞生物学特征方面,CoMBCR优于单独编码bcr的方法,在SARS-CoV-2结合预测任务中的马修斯相关系数至少提高了0.1。其次,通过对sars - cov -2特异性记忆B细胞的模态差异分析,CoMBCR揭示了主动免疫反应和CDR3基序偏好。此外,在空间转录组学数据的支持下,CoMBCR准确地追踪了恶性B细胞的发育轨迹,并揭示了与淋巴瘤患者生存相关的转录模式。可用性和实现:CoMBCR软件在MIT许可下可在https://github.com/deepomicslab/CoMBCR.git.Supplementary上公开获得:补充文件可在Bioinformatics在线上获得。
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引用次数: 0
VDJ-Insights: simplifying the annotation of genomic IG and TCR regions. VDJ-Insights:简化基因组IG和TCR区域的注释。
IF 5.4 Pub Date : 2026-03-09 DOI: 10.1093/bioinformatics/btag108
Susan E Ott, Giang N Le, Sayed J Mohammadi, Jesse Mittertreiner, Erica M Pasini, Ronald E Bontrop, Natasja G de Groot, Jesse Bruijnesteijn

Motivation: Accurate annotation of germline immunoglobulin (IG) and T cell receptor (TCR) loci is critical for understanding adaptive immunity.

Results: VDJ-Insights provides a user-friendly software package for characterizing these complex immune regions. In addition, it assesses gene segment functionality, identifies recombination signal sequences (RSS), and annotates complementarity-determining regions 1 and 2 (CDR1, CDR2). VDJ-Insights achieved over 99% concordance with curated annotations from multiple species, outperforming existing annotation tools. When applied to 95 haplotypes from the Human Pangenome Reference Consortium, VDJ-Insights identified 652 and 275 novel IG and TCR alleles, respectively, highlighting its scalability for large immunogenetic studies.

Availability and implementation: Datasets and software package are available in the VDJ-insights repository, https://github.com/BPRC-Bioinfo and https://doi.org/10.5281/zenodo.17588835. Additional intermediate datasets used and analysed during the current study are available from the corresponding authors upon reasonable request.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:准确标注种系免疫球蛋白(IG)和T细胞受体(TCR)位点对于理解适应性免疫至关重要。结果:VDJ-Insights提供了一个用户友好的软件包来表征这些复杂的免疫区域。此外,它评估基因片段功能,识别重组信号序列(RSS),并注释互补性决定区域1和2 (CDR1, CDR2)。VDJ-Insights与来自多个物种的精选注释实现了99%以上的一致性,优于现有的注释工具。当应用于人类泛基因组参考联盟的95个单倍型时,VDJ-Insights分别鉴定出652个和275个新的IG和TCR等位基因,突出了其在大规模免疫遗传学研究中的可扩展性。可用性和实现:数据集和软件包可在VDJ-insights存储库中获得,https://github.com/BPRC-Bioinfo和https://doi.org/10.5281/zenodo.17588835。在本研究中使用和分析的其他中间数据集可根据合理要求从相应作者处获得。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
HXMS: a standardized file format for HX-MS data. HXMS: HX-MS数据的标准化文件格式。
IF 5.4 Pub Date : 2026-03-09 DOI: 10.1093/bioinformatics/btag113
Kyle C Weber, Chenlin Lu, Roberto Vera Alvarez, Bruce D Pascal, Anum Glasgow

Motivation: Hydrogen/deuterium exchange-mass spectrometry (HX-MS) is a rapidly expanding technique used to investigate protein conformational ensembles. The growing popularity and utility of HX-MS has driven the development of diverse instrumentation and software, resulting in inconsistent, non-standardized data analysis and representation. Most HX-MS data formats also employ only mean deuteration representations of the data rather than full isotopic mass spectra, which reduces the information content of the data and limits downstream quantitative analysis.

Results: Inspired by reliable protein structure and genomics data formats, we present HXMS, a unified, lightweight, scalable, and human-readable file format for HX-MS data. The HXMS format preserves the isotopic mass envelopes for all peptides, captures the full experimental time-course including fully deuterated control samples, and contains all other key information. It supports multimodal distributions, post-translational modifications (PTMs), and experimental replicates. To promote compatibility with existing HX-MS workflows, we also developed PFLink, a Python package that converts exported data files from commonly used HX-MS software to the HXMS format. PFLink and the HXMS format will enable quantitative, higher-resolution data processing, improved data sharing and storage among HX-MS practitioners, future machine learning applications, and further developments in HX-MS analysis.

Availability and implementation: PFLink is publicly available to install locally on HuggingFace, alongside documentation, or use online at HuggingFace (https://huggingface.co/spaces/glasgow-lab/PFlink). The supplementary information includes sample input files, sample HXMS files, and a generic unfilled PFlink custom CSV file that users may populate with key experimental conditions and results, which can then be read and converted into the HXMS format.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:氢/氘交换质谱(HX-MS)是一种快速发展的技术,用于研究蛋白质构象集合。HX-MS的日益普及和应用推动了各种仪器和软件的发展,导致不一致,非标准化的数据分析和表示。大多数HX-MS数据格式也只采用数据的平均氘化表示,而不是完整的同位素质谱,这降低了数据的信息含量,限制了下游的定量分析。结果:受可靠的蛋白质结构和基因组学数据格式的启发,我们提出了HXMS,一种用于HX-MS数据的统一、轻量级、可扩展和人类可读的文件格式。HXMS格式保留了所有肽的同位素质量包膜,捕获了完整的实验时间过程,包括完全氘化的对照样品,并包含所有其他关键信息。它支持多模态分布、翻译后修改(PTMs)和实验复制。为了提高与现有HX-MS工作流的兼容性,我们还开发了PFLink,这是一个Python包,可以将导出的数据文件从常用的HX-MS软件转换为HXMS格式。PFLink和HXMS格式将实现定量、更高分辨率的数据处理,改进HX-MS从业者之间的数据共享和存储,未来的机器学习应用,以及HX-MS分析的进一步发展。可用性和实现:PFLink是公开的,可以在HuggingFace本地安装,附带文档,或在HuggingFace在线使用(https://huggingface.co/spaces/glasgow-lab/PFlink)。补充信息包括示例输入文件、示例HXMS文件和一个通用的未填充PFlink自定义CSV文件,用户可以用关键实验条件和结果填充该文件,然后可以读取并将其转换为HXMS格式。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
期刊
Bioinformatics (Oxford, England)
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