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Characterizing Clinical Toxicity in Cancer Combination Therapies. 肿瘤联合治疗的临床毒性特征。
IF 5.4 Pub Date : 2026-01-14 DOI: 10.1093/bioinformatics/btag007
Alexandra M Wong, Cecile Meier-Scherling, Lorin Crawford

Motivation: Predicting synergistic cancer drug combinations through computational methods offers a scalable approach to creating therapies that are more effective and less toxic. However, most algorithms focus solely on synergy without considering toxicity when selecting optimal drug combinations. In the absence of combinatorial toxicity assays, a few models use toxicity penalties to balance high synergy with lower toxicity. Still, these penalties have not been explicitly validated against known drug-drug interactions.

Results: In this study, we examine whether synergy scores and toxicity metrics correlate with known adverse drug interactions. While some metrics show trends with toxicity levels, our results reveal significant limitations in using them as penalties. These findings highlight the challenges of incorporating toxicity into synergy prediction frameworks and suggest that advancing the field requires more comprehensive combination toxicity data.

Availability and implementation: The code written for this project is available at https://github.com/amw14/toxicity-cancer-drug-combination.

动机:通过计算方法预测协同抗癌药物组合为创造更有效、毒性更小的治疗方法提供了一种可扩展的方法。然而,在选择最佳药物组合时,大多数算法只关注协同作用而不考虑毒性。在没有组合毒性试验的情况下,一些模型使用毒性惩罚来平衡高协同作用和低毒性。尽管如此,这些惩罚还没有明确地针对已知的药物-药物相互作用进行验证。结果:在本研究中,我们研究了协同作用评分和毒性指标是否与已知的不良药物相互作用相关。虽然一些指标显示了毒性水平的趋势,但我们的研究结果表明,使用它们作为惩罚措施存在重大局限性。这些发现突出了将毒性纳入协同作用预测框架的挑战,并表明推进该领域需要更全面的联合毒性数据。可用性和实现:为这个项目编写的代码可在https://github.com/amw14/toxicity-cancer-drug-combination上获得。
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引用次数: 0
A Case-Based Explainable Graph Neural Network Framework for Mechanistic Drug Repositioning. 一种基于案例的可解释图神经网络框架用于机械药物重新定位。
IF 5.4 Pub Date : 2026-01-14 DOI: 10.1093/bioinformatics/btag008
Adriana Carolina Gonzalez-Cavazos, Roger Tu, Meghamala Sinha, Andrew I Su

Drug repositioning offers a cost-effective alternative to traditional drug development by identifying new uses for existing drugs. Recent advances leverage Graph Neural Networks (GNN) to model complex biological data, showing promise in predicting novel drug-disease associations. However, these frameworks often lack explainability, a critical factor for validating predictions and understanding drug mechanisms. Here, we introduce Drug-Based Reasoning Explainer (DBR-X), an explainable GNN model that combines a link prediction module and a path-identification module to generate interpretable and faithful explanations. When benchmarked against other GNN link prediction frameworks, DBR-X achieves superior performance in identifying known drug-disease associations, demonstrating higher accuracy across all evaluation metrics. The quality of DBR-X biological explanations was assessed through multiple approaches: comparison with manually-curated drug mechanisms, evaluation of explanation faithfulness through deletion and insertion studies, and measurement of stability under graph perturbations. Together, our model not only advances the state-of-the-art in drug repositioning predictions but also provides multi-hop explanations that can accelerate the translation of computational predictions into clinical applications.

药物重新定位通过确定现有药物的新用途,为传统药物开发提供了一种具有成本效益的替代方案。最近的进展利用图神经网络(GNN)来模拟复杂的生物数据,在预测新的药物-疾病关联方面显示出希望。然而,这些框架往往缺乏可解释性,这是验证预测和理解药物机制的关键因素。本文介绍了基于药物的推理解释器(Drug-Based Reasoning Explainer, DBR-X),这是一种可解释的GNN模型,它结合了链接预测模块和路径识别模块,以生成可解释和可靠的解释。当与其他GNN链接预测框架进行基准比较时,DBR-X在识别已知药物-疾病关联方面表现优异,在所有评估指标中都显示出更高的准确性。通过多种方法评估DBR-X生物学解释的质量:与人工编制的药物机制进行比较,通过删除和插入研究评估解释的可信度,以及测量图扰动下的稳定性。总之,我们的模型不仅推进了最先进的药物重新定位预测,而且提供了多跳解释,可以加速将计算预测转化为临床应用。
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引用次数: 0
GAMMA: Gap-aware Motif Mining under Incomplete Labeling with Applications to MHC Motifs. GAMMA:不完全标记下的间隙感知基序挖掘及其在MHC基序中的应用。
IF 5.4 Pub Date : 2026-01-14 DOI: 10.1093/bioinformatics/btag014
Xinyi Tang, Ran Liu

Motivation: Sequence motif identification is crucial for understanding molecular recognition, particularly in immune responses involving peptide binding to MHC class I molecules for antigen presentation to T cells. Traditionally, MHC class I binding motifs are assumed to be contiguous and span nine amino acids. However, structural evidence suggests that binding may involve non-adjacent residues, challenging the assumptions of existing methods.

Results: In this study, we propose GAMMA (Gap-Aware Motif Mining Algorithm), a probabilistic framework designed to identify non-contiguous motifs under conditions of incomplete labeling. GAMMA employs Bayesian inference with MCMC sampling to jointly estimate motif parameters, binding locations, and the relative spacing between binding positions. Through extensive simulations and real-world applications to MHC class I peptide datasets, GAMMA outperforms existing motif discovery tools such as GLAM2 in accurately localizing binding residues and identifying the underlying motifs. Notably, our results suggest that the true number of binding residues may be eight, fewer than the commonly assumed nine. In addition, for longer peptides, the model captures increased flexibility in the central region, consistent with structural observations that peptides may bulge in the middle.

Availability: The raw data and the source codes are available on GitHub (https://github.com/RanLIUaca/GAMMAmotif).

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:序列基序识别对于理解分子识别至关重要,特别是在涉及肽与MHC I类分子结合以向T细胞呈递抗原的免疫反应中。传统上,MHC I类结合基序被认为是连续的,跨越9个氨基酸。然而,结构证据表明,结合可能涉及非相邻残基,挑战现有方法的假设。结果:在本研究中,我们提出了GAMMA (Gap-Aware Motif Mining Algorithm),这是一个概率框架,旨在识别不完全标记条件下的非连续Motif。GAMMA使用贝叶斯推理和MCMC采样来联合估计基序参数、结合位置和结合位置之间的相对间距。通过对MHC I类肽数据集的广泛模拟和实际应用,GAMMA在精确定位结合残基和识别潜在基序方面优于现有的基序发现工具,如GLAM2。值得注意的是,我们的结果表明,结合残基的真实数量可能是8个,少于通常假设的9个。此外,对于较长的肽,该模型捕获了中心区域增加的灵活性,这与结构观察结果一致,即肽可能在中间凸起。可用性:原始数据和源代码可在GitHub上获得(https://github.com/RanLIUaca/GAMMAmotif).Supplementary information:补充数据可在Bioinformatics在线获得。
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引用次数: 0
Improving biomedical entity linking with generative relevance feedback. 利用生成相关性反馈改进生物医学实体链接。
IF 5.4 Pub Date : 2026-01-14 DOI: 10.1093/bioinformatics/btag011
Darya Shlyk, Lawrence Hunter

Motivation: Biomedical Entity Linking (BEL) maps mentions in biomedical text to standardized identifiers, enabling structured data integration and downstream knowledge discovery. However, current BEL systems remain fundamentally constrained by the recall of the initial candidate pool, where suboptimal retrieval limits the overall effectiveness of the normalization pipeline.

Results: We present the first systematic evaluation of Generative Relevance Feedback (GRF) for enhancing candidate retrieval in state-of-the-art BEL systems. GRF leverages large language models (LLMs) to enrich the expressiveness of the mention in a zero-shot fashion. We assess GRF's impact under two scenarios-direct linking prediction and candidate generation in cascading normalization pipelines-and analyze its sensitivity to different LLMs, feedback types, and integration strategies. Experiments across eight corpora and four biomedical knowledge bases demonstrate that integrating GRF significantly improves both accuracy and recall, thereby increasing the upper bound on normalization performance. Our findings highlight GRF as an efficient, model-agnostic solution and underscore its potential as a key component for advancing BEL.

Availability: The code to reproduce our experiments can be found at: https://doi.org/10.5281/zenodo.17853541.

动机:生物医学实体链接(BEL)将生物医学文本中的提及映射到标准化标识符,从而实现结构化数据集成和下游知识发现。然而,当前的BEL系统仍然从根本上受到初始候选池召回的限制,其中次优检索限制了规范化管道的整体有效性。结果:我们首次对生成关联反馈(GRF)进行了系统评估,以增强最先进的BEL系统中的候选检索。GRF利用大型语言模型(llm)以零射击的方式丰富提及的表达性。我们评估了GRF在级联归一化管道中直接链接预测和候选生成两种情况下的影响,并分析了其对不同llm、反馈类型和集成策略的敏感性。基于8个语料库和4个生物医学知识库的实验表明,整合GRF显著提高了正确率和召回率,从而提高了归一化性能的上限。我们的发现强调了GRF是一种高效的、与模型无关的解决方案,并强调了它作为推进bel的关键组件的潜力。可用性:可以在https://doi.org/10.5281/zenodo.17853541上找到重现我们实验的代码。
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引用次数: 0
scSNViz: Visualization and analysis of Cell-Specific expressed SNVs. scSNViz:细胞特异性表达snv的可视化和分析。
IF 5.4 Pub Date : 2026-01-14 DOI: 10.1093/bioinformatics/btag023
Siera Martinez, Tushar Sharma, Luke Johnson, Allen Kim, Vania Ballesteros Prieto, Hovhannes Arestakesyan, Sunisha Harish, Jewel Dias, Joseph Goldfrank, Nathan Edwards, Anelia Horvath

Motivation: Accurately characterizing expressed genetic variation at the single-cell level is essential for understanding transcriptional heterogeneity, allelic regulation, and mutational dynamics within complex tissues. However, few tools enable comprehensive visualization and quantitative analysis of expressed variants across individual cells.

Results: scSNViz is an R package for the exploration, quantification, and visualization of expressed single-nucleotide variants (SNVs) from cell-barcoded single-cell RNA sequencing (scRNA-seq) data. The software supports estimation of variant allele fractions, clustering of SNV expression profiles, and 2D and 3D visualization of individual SNVs or user-defined SNV groups. Beyond visualization, scSNViz facilitates investigation of cell-, cluster-, or lineage-specific variant expression patterns, as well as allelic dynamics including imprinting, random allele inactivation, and transcriptional bursting. It interoperates seamlessly with established single-cell frameworks-Seurat for clustering, Slingshot for trajectory inference, scType for cell-type annotation, and CopyKat for copy-number profiling-enabling integrative multi-omic analyses of expressed variation.

Availability: scSNViz is implemented in R and freely available at https://github.com/HorvathLab/scSNViz (DOI: 10.5281/zenodo.17307516). The package includes comprehensive documentation and example workflows designed for users with limited bioinformatics experience.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:准确地描述单细胞水平上表达的遗传变异对于理解复杂组织中的转录异质性、等位基因调控和突变动力学至关重要。然而,很少有工具能够对单个细胞的表达变异进行全面的可视化和定量分析。结果:scSNViz是一个R软件包,用于从细胞条形码单细胞RNA测序(scRNA-seq)数据中探索、量化和可视化表达的单核苷酸变异(snv)。该软件支持变异等位基因分数的估计,SNV表达谱的聚类,以及单个SNV或用户定义的SNV组的2D和3D可视化。除了可视化之外,scSNViz还有助于研究细胞、集群或谱系特异性变异表达模式,以及等位基因动力学,包括印迹、随机等位基因失活和转录破裂。它与已建立的单细胞框架(seurat用于聚类,Slingshot用于轨迹推断,scType用于细胞类型注释,CopyKat用于拷贝数分析)无缝互操作,从而实现表达变异的综合多组学分析。可用性:scSNViz是用R实现的,可以在https://github.com/HorvathLab/scSNViz免费获得(DOI: 10.5281/zenodo.17307516)。该软件包包括全面的文档和示例工作流程,为有限的生物信息学经验的用户设计。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
ChemGenXplore: An Interactive Tool for Exploring and Analysing Chemical Genomic Data. ChemGenXplore:一个用于探索和分析化学基因组数据的交互式工具。
IF 5.4 Pub Date : 2026-01-13 DOI: 10.1093/bioinformatics/btag021
Huda Ahmad, Hannah M Doherty, Sam Benedict, James Haycocks, Ge Zhou, Patrick Moynihan, Danesh Moradigaravand, Manuel Banzhaf

Motivation: Chemical genomics is a powerful high-throughput approach to systematically link phenotypes to genotypes. However, the vast datasets generated remain challenging to explore due to the lack of integrated, interactive tools for visualisation and analysis. Existing workflows often require multiple independent software tools, limiting data accessibility and collaboration. Therefore, we created a user-friendly platform that enables efficient exploration and sharing of chemical genomics data.

Results: We developed ChemGenXplore, a web-based Shiny application designed to streamline the visualisation and analysis of chemical genomic screens. It offers two primary functionalities: one for exploring pre-implemented datasets and another for analysing user-uploaded datasets. ChemGenXplore enables users to visualise phenotypic profiles, assess gene-gene and condition-condition correlations, perform GO and KEGG enrichment analysis, and generate customisable, interactive heatmaps. To further support collaborative research, ChemGenXplore also facilitates the comparative analysis of chemical genomic and other omics datasets. By consolidating these features into a single interactive and accessible tool, ChemGenXplore facilitates data sharing, enhances reproducibility, and promotes collaboration within the research community.

Availability: ChemGenXplore is freely accessible as a web application at https://chemgenxplore.kaust.edu.sa/. Source code and documentation, including instructions for local installation, are provided on GitHub (https://github.com/Hudaahmadd/ChemGenXplore). A Docker image is also available on DockerHub (https://hub.docker.com/r/hudaahmad/chemgenxplore) to ensure reproducibility and simplify installation.

Contact: example@example.org.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:化学基因组学是一种强大的高通量方法,可以系统地将表型与基因型联系起来。然而,由于缺乏集成的、交互式的可视化和分析工具,产生的大量数据集仍然具有挑战性。现有的工作流通常需要多个独立的软件工具,限制了数据的可访问性和协作。因此,我们创建了一个用户友好的平台,可以有效地探索和共享化学基因组学数据。结果:我们开发了ChemGenXplore,这是一个基于网络的Shiny应用程序,旨在简化化学基因组筛选的可视化和分析。它提供了两个主要功能:一个用于探索预实现的数据集,另一个用于分析用户上传的数据集。ChemGenXplore使用户能够可视化表型谱,评估基因-基因和条件-条件相关性,执行GO和KEGG富集分析,并生成可定制的交互式热图。为了进一步支持合作研究,ChemGenXplore还促进了化学基因组学和其他组学数据集的比较分析。ChemGenXplore将这些功能整合到一个单一的交互式和可访问的工具中,促进了数据共享,提高了可重复性,并促进了研究界的合作。可用性:ChemGenXplore作为web应用程序可免费访问https://chemgenxplore.kaust.edu.sa/。源代码和文档,包括本地安装的说明,在GitHub (https://github.com/Hudaahmadd/ChemGenXplore)上提供。DockerHub (https://hub.docker.com/r/hudaahmad/chemgenxplore)上也提供Docker镜像,以确保可再现性并简化安装。联系方式:example@example.org.Supplementary信息:补充数据可在Bioinformatics在线获取。
{"title":"ChemGenXplore: An Interactive Tool for Exploring and Analysing Chemical Genomic Data.","authors":"Huda Ahmad, Hannah M Doherty, Sam Benedict, James Haycocks, Ge Zhou, Patrick Moynihan, Danesh Moradigaravand, Manuel Banzhaf","doi":"10.1093/bioinformatics/btag021","DOIUrl":"https://doi.org/10.1093/bioinformatics/btag021","url":null,"abstract":"<p><strong>Motivation: </strong>Chemical genomics is a powerful high-throughput approach to systematically link phenotypes to genotypes. However, the vast datasets generated remain challenging to explore due to the lack of integrated, interactive tools for visualisation and analysis. Existing workflows often require multiple independent software tools, limiting data accessibility and collaboration. Therefore, we created a user-friendly platform that enables efficient exploration and sharing of chemical genomics data.</p><p><strong>Results: </strong>We developed ChemGenXplore, a web-based Shiny application designed to streamline the visualisation and analysis of chemical genomic screens. It offers two primary functionalities: one for exploring pre-implemented datasets and another for analysing user-uploaded datasets. ChemGenXplore enables users to visualise phenotypic profiles, assess gene-gene and condition-condition correlations, perform GO and KEGG enrichment analysis, and generate customisable, interactive heatmaps. To further support collaborative research, ChemGenXplore also facilitates the comparative analysis of chemical genomic and other omics datasets. By consolidating these features into a single interactive and accessible tool, ChemGenXplore facilitates data sharing, enhances reproducibility, and promotes collaboration within the research community.</p><p><strong>Availability: </strong>ChemGenXplore is freely accessible as a web application at https://chemgenxplore.kaust.edu.sa/. Source code and documentation, including instructions for local installation, are provided on GitHub (https://github.com/Hudaahmadd/ChemGenXplore). A Docker image is also available on DockerHub (https://hub.docker.com/r/hudaahmad/chemgenxplore) to ensure reproducibility and simplify installation.</p><p><strong>Contact: </strong>example@example.org.</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":"2026-01-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145967397","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
Best practices when benchmarking CATCH for the design of genome enrichment probes. 在设计基因组富集探针时对标CATCH的最佳实践。
IF 5.4 Pub Date : 2026-01-13 DOI: 10.1093/bioinformatics/btag002
Hayden C Metsky, Katherine J Siddle, Christian B Matranga, Pardis C Sabeti
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引用次数: 0
RoBep: A Region-Oriented Deep Learning Model for B-Cell Epitope Prediction. 基于区域的b细胞表位预测深度学习模型。
IF 5.4 Pub Date : 2026-01-12 DOI: 10.1093/bioinformatics/btag006
Yitao Xu, Guanyun Wei, Jingying Zhou, Yuanhua Huang, Weichua Yu, Zhixiang Lin, Ran Liu, Xiaodan Fan

Motivation: Accurate in silico identification of B-cell epitope residues is crucial for antibody design and structure-guided vaccine development. Although recent protein language models and structure-aware methods can capture spatial information of tertiary structure when generating residue embeddings, most existing epitope predictors use these embeddings to perform classification for individual residues one by one, without enforcing spatial continuity for reported epitope residues. Such methods often result in biologically implausible predictions because B-cell epitope residues always cluster together on the antigen surface.

Results: We present RoBep, a region-oriented B-cell epitope predictor that explicitly models the spatial clustering of epitope residues. RoBep introduces a novel region constraint mechanism and combines the advanced protein language model ESM-Cambrian with an equivariant graph neural network. Our method outperforms existing structure-based methods on the benchmark dataset, demonstrating improvements of 26%, 45%, 13%, and 43% in F1, MCC, AUPR, and AUROC0.1, respectively. In addition to residue-level predictions, RoBep can also provide antibody-antigen binding regions. Importantly, the predicted epitope residues are ensured to be spatially compact, enhancing biological plausibility and practical relevance for immunotherapeutic design.

Availability: A user-friendly website for using RoBep is provided at https://huggingface.co/spaces/NielTT/RoBep. All datasets, source code used in this work, and implementation instructions of the website are publicly available at https://github.com/YitaoXU/RoBep.

动机:b细胞表位残基的精确计算机鉴定对于抗体设计和结构导向疫苗开发至关重要。虽然最近的蛋白质语言模型和结构感知方法可以在生成残基嵌入时捕获三级结构的空间信息,但大多数现有的表位预测器使用这些嵌入对单个残基进行逐个分类,而没有强制报道的表位残基的空间连续性。由于b细胞表位残基总是聚集在抗原表面,这种方法往往导致生物学上不可信的预测。结果:我们提出RoBep,一个面向区域的b细胞表位预测器,明确地模拟表位残基的空间聚类。RoBep引入了一种新的区域约束机制,并将先进的蛋白质语言模型ESM-Cambrian与等变图神经网络相结合。我们的方法在基准数据集上优于现有的基于结构的方法,在F1、MCC、AUPR和AUROC0.1上分别提高了26%、45%、13%和43%。除了残基水平预测外,RoBep还可以提供抗体-抗原结合区域。重要的是,预测的表位残基确保在空间上紧密,增强了免疫治疗设计的生物学合理性和实际相关性。可用性:提供了一个使用RoBep的用户友好网站https://huggingface.co/spaces/NielTT/RoBep。所有的数据集,在这项工作中使用的源代码,以及网站的实现说明是公开的https://github.com/YitaoXU/RoBep。
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引用次数: 0
mimicDetector: a pipeline for protein motif mimicry detection in host-pathogen interactions. mimicDetector:宿主-病原体相互作用中蛋白质基序模仿检测的管道。
IF 5.4 Pub Date : 2026-01-12 DOI: 10.1093/bioinformatics/btag012
Kaylee D Rich, James D Wasmuth

Motivation: Molecular mimicry is used by pathogens to evade the host immune system and manipulate other host cellular processes. It is often mediated by short motifs in non-homologous proteins, whose detection challenges the sensitivity and specificity of existing bioinformatics tools.

Results: We present mimicDetector, a k-mer-based pipeline for identifying protein-level molecular mimicry between pathogens and their hosts. Applied to 17 globally important pathogens, mimicDetector identified a broad and biologically plausible set of mimicry candidates, including helminth proteins mimicking components of the human complement system and a Leishmania infantum mimic of Reticulon-4, a regulator of immune cell recruitment.

Availability: mimicDetector is freely available at https://github.com/kayleerich/mimicDetector/, implemented in Python and Snakemake, and compatible with Unix-based systems.

Supplementary information: Data related to the results are incorporated into the article and online supplementary material available at Bioinformatics online.

动机:病原体利用分子模仿来逃避宿主免疫系统和操纵宿主其他细胞过程。它通常由非同源蛋白中的短基序介导,其检测挑战了现有生物信息学工具的敏感性和特异性。结果:我们提出了mimicDetector,这是一个基于k-mer的管道,用于鉴定病原体和宿主之间的蛋白质水平分子模仿。mimicDetector应用于17种全球重要的病原体,确定了一组广泛的、生物学上合理的模拟候选物,包括模仿人类补体系统成分的蠕虫蛋白和免疫细胞募集调节剂Reticulon-4的婴儿利什曼原虫模拟物。可用性:mimicDetector可以在https://github.com/kayleerich/mimicDetector/上免费获得,用Python和Snakemake实现,并与基于unix的系统兼容。补充信息:与结果相关的数据被纳入文章和在线补充材料,可在Bioinformatics在线上获得。
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引用次数: 0
Malaria-GENOMAP: A web-based tool for exploring genomic variation of malaria parasites. 疟疾- genomap:一个基于网络的工具,用于探索疟疾寄生虫的基因组变异。
IF 5.4 Pub Date : 2026-01-11 DOI: 10.1093/bioinformatics/btag016
Joseph Thorpe, Nina Billows, Gabrielle C Ngwana-Joseph, Amy Ibrahim, Deborah Nolder, Colin J Sutherland, Nguyen Thi Hong Ngoc, Nguyen Thi Huong Binh, Nguyen Quang Thieu, Jamille G Dombrowski, Silvia Maria Di Santi, Claudio R F Marinho, Jody E Phelan, Tomasz Kurowski, Fady Mohareb, Susana Campino, Taane G Clark

Motivation: Malaria, caused by Plasmodium parasites, imposes a significant public health burden. While Plasmodium falciparum remains the primary target of elimination strategies due to its high mortality rate, lesser-known species such as P. malariae, P. vivax, and P. knowlesi continue to contribute to substantial human morbidity. Genomic approaches, including whole-genome sequencing, offer powerful tools for understanding the biology, transmission, and emerging drug resistance of these neglected Plasmodium species. However, there is an urgent need for informatic tools to summarise and visualise the high-dimensional and complex genomic data generated.

Results: We developed Malaria-GENOMAP, a user-friendly web-based tool, which integrates genomic variant data, such as allele frequencies, with geographical maps and chromosome-wide to gene views for in-depth exploration. The tool includes variation from P. knowlesi (n = 139), P. malariae (n = 158), P. ovale curtisi (n = 36), P. ovale wallikeri (n = 47), P. simium (n = 38), and P. vivax (n = 1,359). It enables the investigation of population structure, geographic associations of mutations, and putative drug resistance markers, offering valuable insights for malaria control efforts.

Availability: Malaria-GENOMAP is available online at https://genomics.lshtm.ac.uk/malaria-genomaps/#/.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:由疟原虫引起的疟疾对公共卫生造成重大负担。虽然恶性疟原虫由于其高死亡率仍然是消除战略的主要目标,但鲜为人知的物种,如疟疾疟原虫、间日疟原虫和诺氏疟原虫继续造成大量人类发病率。基因组方法,包括全基因组测序,为了解这些被忽视的疟原虫物种的生物学、传播和新出现的耐药性提供了强大的工具。然而,迫切需要信息工具来总结和可视化所产生的高维和复杂的基因组数据。结果:我们开发了一个用户友好的基于网络的工具——疟疾基因图谱(Malaria-GENOMAP),该工具将基因组变异数据(如等位基因频率)与地理地图和染色体范围到基因的观点相结合,以进行深入探索。该工具包括诺氏疟原虫(n = 139)、疟疾疟原虫(n = 158)、卵形疟原虫curtisi (n = 36)、卵形疟原虫wallikeri (n = 47)、猴形疟原虫(n = 38)和间日疟原虫(n = 1359)的变异。它能够调查种群结构、突变的地理关联和假定的耐药性标记,为疟疾控制工作提供有价值的见解。可用性:疟疾基因组计划可在https://genomics.lshtm.ac.uk/malaria-genomaps/#/.Supplementary上在线获得: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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