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transFusion: a Novel Comprehensive Platform for integration Analysis of Single-Cell and Spatial Transcriptomics. 输血:单细胞和空间转录组学整合分析的新型综合平台。
IF 5.4 Pub Date : 2026-02-05 DOI: 10.1093/bioinformatics/btag059
Weiqiang Lin, Xinyi Xiao, Chuan Qiu, Hui Shen, Hongwen Deng

Motivation: Understanding spatial organization, intercellular interactions and regulatory networks within the spatial context of tissues is crucial for uncovering complex biological processes and disease mechanisms. Spatial transcriptomics technologies have revolutionized this field by enabling the spatially resolved profiling of gene expression. 10X Genomics Visium has emerged as the predominant spatial technology, but its low resolution and the complexity of integrating multimodal datasets present significant analytical challenges, particularly for researchers with limited computational and statistical expertise. Current spatial transcriptomics analysis platforms generally fall short of effectively integrating multi-modal data and maximizing the utility of spatial information-such as uncovering complex cellular spatial dependencies, multimodal gradient patterns and spatial co-expression of ligand-receptor pairs and regulatory networks related to disease or biological states-thereby limiting their ability to provide comprehensive end-to-end analytical workflows when analyzing 10X Genomics Visium data.

Results: To address these limitations, we developed transFusion, a novel, advanced web-based platform specializing in the most comprehensive and effective integration analysis of scRNA-seq and 10X Visium spatial transcriptomics data. transFusion offers 12 key functions, from basic visualization to advanced analyses, including intercellular dependency analysis, ligand-receptor co-expression identification and visualization, and spatial multimodal gradient variation patterns. Two case studies were used to demonstrate transFusion's capabilities in exploring tissue architecture, intercellular communication, dependency networks and multimodal gradient variation patterns with minimal computational skills and statistical expertise. transFusion provides a flexible and powerful framework for multi-modal data integration analysis.

Availability: transFusion is freely available at https://github.com/WQLin8/transFusion.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:了解空间组织、细胞间相互作用和组织空间背景下的调控网络对于揭示复杂的生物过程和疾病机制至关重要。空间转录组学技术通过实现基因表达的空间解析分析,彻底改变了这一领域。10X Genomics Visium已成为主要的空间技术,但其低分辨率和集成多模态数据集的复杂性给分析带来了重大挑战,特别是对于计算和统计专业知识有限的研究人员。目前的空间转录组学分析平台通常缺乏有效整合多模态数据和最大化空间信息的利用-例如揭示复杂的细胞空间依赖性,多模态梯度模式和配体-受体对的空间共表达以及与疾病或生物状态相关的调节网络-从而限制了它们在分析10X Genomics Visium数据时提供全面的端到端分析工作流程的能力。结果:为了解决这些限制,我们开发了输血,这是一个新颖、先进的基于网络的平台,专门用于最全面、最有效的scRNA-seq和10X Visium空间转录组学数据的整合分析。输血提供从基本可视化到高级分析的12个关键功能,包括细胞间依赖性分析、配体-受体共表达识别和可视化以及空间多模态梯度变化模式。两个案例研究被用来证明输血在探索组织结构、细胞间通信、依赖网络和多模态梯度变化模式方面的能力,只需最少的计算技能和统计专业知识。输血为多模态数据集成分析提供了一个灵活而强大的框架。可获得性:输血可在https://github.com/WQLin8/transFusion.Supplementary免费获得信息;补充数据可在Bioinformatics在线获得。
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引用次数: 0
LtransHeteroGGM: Local transfer learning for Gaussian graphical model-based heterogeneity analysis. LtransHeteroGGM:基于高斯图模型的局部迁移学习异质性分析。
IF 5.4 Pub Date : 2026-02-04 DOI: 10.1093/bioinformatics/btag057
Chengye Li, Hongwei Ma, Mingyang Ren

Motivation: Heterogeneity is a hallmark of both macroscopic complex diseases and microscopic single-cell distribution. Gaussian Graphical Models (GGM)-based heterogeneity analysis highlights its important role in capturing the essential characteristics of biological regulatory networks, but faces instability with scarce samples from rare subgroups. Transfer learning offers promise by leveraging auxiliary data, yet existing approaches rely on unrealistic overall similarity between domains, requiring the same subgroup number and similar parameters. Numerous biological problems call for local similarities, where only some subgroups share statistical structures.

Results: In this article, we propose LtransHeteroGGM, a novel local transfer learning framework for GGM-based heterogeneity analysis. It can achieve powerful subgroup-level local knowledge transfer between target and informative auxiliary domains, despite unknown subgroup structures and numbers, while mitigating the negative interference of non-informative domains. The effectiveness and robustness of the proposed approach are demonstrated through comprehensive numerical simulations and real-world T cell heterogeneity analysis.

Availability and implementation: The R implementation of LtransHeteroGGM is available at https://github.com/Ren-Mingyang/LtransHeteroGGM.

动机:异质性是宏观复杂疾病和微观单细胞分布的标志。基于高斯图形模型(Gaussian Graphical Models, GGM)的异质性分析在捕捉生物调控网络的本质特征方面发挥了重要作用,但由于样本较少、亚群较少,异质性分析存在不稳定性。迁移学习通过利用辅助数据提供了希望,然而现有的方法依赖于不切实际的领域之间的总体相似性,需要相同的子群数量和相似的参数。许多生物学问题需要局部相似性,只有一些亚群共享统计结构。结果:在本文中,我们提出了一种新的局部迁移学习框架LtransHeteroGGM,用于基于gmm的异质性分析。它可以在未知子群结构和数量的情况下,在目标和信息辅助领域之间实现强大的子群级局部知识转移,同时减轻非信息辅助领域的负面干扰。通过全面的数值模拟和真实世界的T细胞异质性分析,证明了所提出方法的有效性和鲁棒性。可用性和实现:LtransHeteroGGM的R实现可从https://github.com/Ren-Mingyang/LtransHeteroGGM获得。
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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 : 2026-02-03 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: 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/.

Supplementary information: Supplementary data are available at Bioinformatics online.

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
MetaFX: feature extraction from whole-genome metagenomic sequencing data. MetaFX:从全基因组宏基因组测序数据中提取特征。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag018
Artem Ivanov, Vladimir Popov, Maxim Morozov, Evgenii Olekhnovich, Vladimir Ulyantsev

Motivation: Microbial communities consist of thousands of microorganisms and viruses and have a tight connection with an environment, such as gut microbiota modulation of host body metabolism. However, the direct relationship between the presence of certain microorganism and the host state often remains unknown. Toolkits using reference-based approaches are limited to microbes present in databases. Reference-free methods often require enormous resources for metagenomic assembly or results in many poorly interpretable features based on k-mers.

Results: Here we present MetaFX-an open-source library for feature extraction from whole-genome metagenomic sequencing data and classification of groups of samples. Using a large volume of metagenomic samples deposited in databases, MetaFX compares samples grouped by metadata criteria (e.g. disease, treatment, etc.) and constructs genomic features distinct for certain types of communities. Features constructed based on statistical k-mer analysis and de Bruijn graphs partition. Those features are used in machine learning models for classification of novel samples. Extracted features can be visualized on de Bruijn graphs and annotated for providing biological insights. We demonstrate the utility of MetaFX by building classification models for 590 human gut samples with inflammatory bowel disease. Our results outperform the previous research disease prediction accuracy up to 17%, and improves classification results compared to taxonomic analysis by 9±10% on average.

Availability and implementation: MetaFX is a feature extraction toolkit applicable for metagenomic datasets analysis and samples classification. The source code, test data, and relevant information for MetaFX are freely accessible at https://github.com/ctlab/metafx under the MIT License. Alternatively, MetaFX can be obtained via http://doi.org/10.5281/zenodo.16949369.

动机:微生物群落由成千上万的微生物和病毒组成,与环境有着密切的联系,如肠道微生物群对宿主机体代谢的调节。然而,某些微生物的存在与宿主状态之间的直接关系往往是未知的。使用基于参考的方法的工具包仅限于数据库中存在的微生物。无参考的方法通常需要大量的资源进行宏基因组组装,或者导致基于k-mers的许多难以解释的特征。结果:在这里,我们提出了metafx -一个开源库,用于从全基因组宏基因组测序数据中提取特征并对样本进行分类。MetaFX使用存储在数据库中的大量宏基因组样本,比较按元数据标准(例如疾病、治疗等)分组的样本,并为某些类型的社区构建不同的基因组特征。基于统计k-mer分析和de Bruijn图划分构建的特征。这些特征被用于机器学习模型中对新样本进行分类。提取的特征可以在德布鲁因图上可视化,并进行注释,以提供生物学见解。我们通过为590例患有炎症性肠病的人类肠道样本建立分类模型来证明MetaFX的实用性。我们的结果比以往的研究疾病预测准确率提高了17%,分类结果比分类学分析平均提高了9±10%。可用性:MetaFX是一个特征提取工具包,适用于宏基因组数据集分析和样本分类。MetaFX的源代码、测试数据和相关信息可以在MIT许可下免费访问https://github.com/ctlab/metafx。另外,MetaFX可以通过http://doi.org/10.5281/zenodo.16949369获得。
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引用次数: 0
Uchimata: a toolkit for visualization of 3D genome structures on the web and in computational notebooks. 内田:一个在网络和计算机笔记本上可视化三维基因组结构的工具包。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag035
David Kouřil, Trevor Manz, Tereza Clarence, Nils Gehlenborg

Summary: Uchimata is a toolkit for visualization of 3D structures of genomes. It consists of two packages: a Javascript library facilitating the rendering of 3D models of genomes, and a Python widget for visualization in Jupyter Notebooks. Main features include an expressive way to specify visual encodings, and filtering of 3D genome structures based on genomic semantics and spatial aspects. Uchimata is designed to be highly integratable with biological tooling available in Python.

Availability and implementation: Uchimata is released under the MIT License. The Javascript library is available on NPM, while the widget is available as a Python package hosted on PyPI. The source code for both is available publicly on Github (https://github.com/hms-dbmi/uchimata and https://github.com/hms-dbmi/uchimata-py) and Zenodo (https://doi.org/10.5281/zenodo.17831959 and https://doi.org/10.5281/zenodo.17832045). The documentation with examples is hosted at https://hms-dbmi.github.io/uchimata/.

摘要:Uchimata是一个用于可视化基因组三维结构的工具包。它由两个包组成:一个Javascript库,用于促进基因组3D模型的渲染,以及一个Python小部件,用于在Jupyter notebook中进行可视化。主要特征包括一种指定视觉编码的表达方式,以及基于基因组语义和空间方面的三维基因组结构过滤。Uchimata被设计成与Python中可用的生物工具高度集成。可用性和实现:内田在MIT许可下发布。Javascript库在NPM上可用,而小部件则作为托管在PyPI上的Python包可用。两者的源代码都可以在Github (https://github.com/hms-dbmi/uchimata和https://github.com/hms-dbmi/uchimata-py)和Zenodo (https://doi.org/10.5281/zenodo.17831959和https://doi.org/10.5281/zenodo.17832045)上公开获得。带有示例的文档位于https://hms-dbmi.github.io/uchimata/。
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引用次数: 0
ProteoGyver: a fast, user-friendly tool for routine QC and analysis of MS-based proteomics data. ProteoGyver:一个快速,用户友好的工具,用于常规QC和分析基于质谱的蛋白质组学数据。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag050
Kari Salokas, Salla Keskitalo, Markku Varjosalo

Availability and implementation: PG image and source code are available in github and dockerhub under LGPL-2.1.

基于质谱的蛋白质组学产生越来越大的数据集,需要快速的质量控制(QC)和初步分析。当前的软件解决方案通常需要专业知识,限制了它们的日常使用。我们开发了ProteoGyver (PG),这是一种易于使用的轻量级软件解决方案,专为快速QC和初步蛋白质组学数据分析而设计。PG提供自动化的QC指标,直观的图形报告,以及全蛋白质组和相互作用组数据集的简化工作流程,大大降低了常规QC实践的障碍。该平台包括其他工具,如用于纵向色谱检查的MS Inspector和用于显微镜数据的Colocalizer。PG很容易部署为Docker容器或独立的Python安装。PG是开源的,可以在dockerhub和github中免费获得,源代码在github.com/varjolab/Proteogyver。可用性PG映像和源代码可在LGPL-2.1下的github和dockerhub中获得。
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引用次数: 0
Learning a pairwise epigenomic and transcription factor binding association score across the human genome. 学习跨人类基因组的成对表观基因组和转录因子结合关联评分。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag024
Soo Bin Kwon, Jason Ernst

Motivation: Identifying pairwise associations between genomic loci is an important challenge for which large and diverse collections of epigenomic and transcription factor (TF) binding data can potentially be informative.

Results: We developed Learning Evidence of Pairwise Association from Epigenomic and TF binding data (LEPAE). LEPAE uses neural networks to quantify evidence of association for pairs of genomic windows from large-scale epigenomic and TF binding data along with distance information. We applied LEPAE using thousands of human datasets. We show using additional data that LEPAE captures biologically meaningful pairwise relationships between genomic loci, and we expect LEPAE scores to be a resource.

Availability and implementation: The LEPAE scores and the software are available at https://github.com/ernstlab/LEPAE.

动机:识别基因组位点之间的成对关联是一个重要的挑战,因为大量不同的表观基因组和转录因子(TF)结合数据的收集可能会提供信息。结果:我们从表观基因组和TF结合数据(LEPAE)中获得了成对关联的学习证据。LEPAE使用神经网络来量化来自大规模表观基因组和TF结合数据以及距离信息的基因组窗口对的关联证据。我们使用数千个人类数据集应用LEPAE。我们使用额外的数据表明,LEPAE捕获了基因组位点之间具有生物学意义的两两关系,我们希望LEPAE分数能成为一种资源。可获得性和实施:LEPAE分数和软件可在https://github.com/ernstlab/LEPAE.Supplementary上获得:补充数据可在Bioinformatics在线获得。
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引用次数: 0
VUScope: a mathematical model for evaluating image-based drug response measurements and predicting long-term incubation outcomes. VUScope:用于评估基于图像的药物反应测量和预测长期潜伏期结果的数学模型。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btaf679
Nguyen Khoa Tran, My Ky Huynh, Alexander D Kotman, Martin Jürgens, Thomas Kurz, Sascha Dietrich, Gunnar W Klau, Nan Qin

Motivation: Live-cell imaging-based drug screening increases the likelihood of identifying effective and safe drugs by providing dynamic, high-content, and physiologically relevant data. As a result, it improves the success rate of drug development and facilitates the translation of benchside discoveries to bedside applications. Despite these advantages, no comprehensive metrics currently exist to evaluate dose-time-dependent drug responses. To address this gap, we established a systematic framework to assess drug effects across a range of concentrations and exposure durations simultaneously. This metric enables more accurate evaluation of drug responses measured by live-cell imaging.

Results: We employed treatment concentrations ranging from 0 to 10 μM and performed live-cell imaging-based measurements over a 120-h incubation period. To analyze the experimental data, we developed VUScope, a new mathematical model combining the 4-parameter logistic curve and a logistic function to characterize dose-time-dependent responses. This enabled us to calculate the Growth Rate Inhibition Volume Under the dose-time-response Surface (GRIVUS), which serves as a critical metric for assessing dynamic drug responses. Furthermore, our mathematical model allowed us to predict long-term treatment responses based on short-term drug responses. We validated the predictive capabilities of our model using independent datasets and observed that VUScope enhances prediction accuracy and offers deeper insights into drug effects than previously possible. By integrating VUScope into high-throughput drug screening platforms, we can further improve the efficacy of drug development and treatment selection.

Availability and implementation: We have made VUScope more accessible to users conducting pharmacological studies by uploading a detailed description, example datasets, and the source code to vuscope.albi.hhu.de, https://github.com/AlBi-HHU/VUScope, and https://doi.org/10.5281/zenodo.17610533.

动机:基于活细胞成像的药物筛选通过提供动态、高含量和生理学相关的数据,增加了识别有效和安全药物的可能性。因此,它提高了药物开发的成功率,并促进了实验室发现到床边应用的转化。尽管有这些优势,目前还没有全面的指标来评估剂量-时间依赖性药物反应。为了解决这一差距,我们建立了一个系统的框架来评估药物在不同浓度和暴露时间范围内的影响。该指标能够更准确地评估通过活细胞成像测量的药物反应。结果:我们使用的处理浓度范围为0至10 μM,并在120小时的潜伏期内进行了基于活细胞成像的测量。为了分析实验数据,我们开发了一种新的数学模型VUScope,该模型结合了4参数logistic曲线和logistic函数来表征剂量-时间相关的反应。这使我们能够计算剂量-时间-反应表面下的生长速率抑制体积(GRIVUS),这是评估动态药物反应的关键指标。此外,我们的数学模型使我们能够根据短期药物反应预测长期治疗反应。我们使用独立数据集验证了模型的预测能力,并观察到VUScope提高了预测准确性,并比以前更深入地了解药物效应。通过将VUScope集成到高通量药物筛选平台中,我们可以进一步提高药物开发和治疗选择的有效性。可用性和实施:通过将详细描述、示例数据集和源代码上传到VUScope .albi.hhu.de、https://github.com/AlBi-HHU/VUScope和https://doi.org/10.5281/zenodo.17610533.Supplementary,我们使VUScope更易于用户进行药理学研究:a: GR指标的时间独立性;B:关键资源;C, D, E:补充数据;F:建模选择。
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引用次数: 0
textToKnowledgeGraph: generation of molecular interaction knowledge graphs using large language models for exploration in Cytoscape. 生成分子相互作用知识图使用大语言模型探索细胞景观。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag031
Favour James, Dexter Pratt, Christopher Churas, Augustin Luna

Motivation: Knowledge graphs (KGs) are powerful tools for structuring and analyzing biological information due to their ability to represent data and improve queries across heterogeneous datasets. However, constructing KGs from unstructured literature remains challenging due to the cost and expertise required for manual curation. Prior works have explored text-mining techniques to automate this process, but have limitations that impact their ability to capture complex relationships fully. Traditional text-mining methods struggle with understanding context across sentences. Additionally, these methods lack expert-level background knowledge, making it difficult to infer relationships that require awareness of concepts indirectly described in the text. Large Language Models (LLMs) present an opportunity to overcome these challenges. LLMs are trained on diverse literature, equipping them with contextual knowledge that enables more accurate information extraction.

Results: We present textToKnowledgeGraph, an artificial intelligence tool using LLMs to extract interactions from individual publications directly in Biological Expression Language (BEL). BEL was chosen for its compact, detailed representation of biological relationships, enabling structured, computationally accessible encoding. This work makes several contributions. (i) Development of the open-source Python textToKnowledgeGraph package (pypi.org/project/texttoknowledgegraph) for BEL extraction from scientific articles, usable from the command line and within other projects, (ii) an interactive application within Cytoscape Web to simplify extraction and exploration, (iii) a dataset of extractions that have been both computationally and manually reviewed to support future fine-tuning efforts.

Availability and implementation: https://github.com/ndexbio/llm-text-to-knowledge-graph.

动机:知识图(KGs)是构建和分析生物信息的强大工具,因为它们能够表示数据并改进跨异构数据集的查询。然而,由于手工管理所需的成本和专业知识,从非结构化文献中构建知识库仍然具有挑战性。先前的工作已经探索了文本挖掘技术来自动化这个过程,但是有一些限制,影响了它们完全捕获复杂关系的能力。传统的文本挖掘方法很难理解句子之间的上下文。此外,这些方法缺乏专家级的背景知识,因此很难推断出需要了解文本中间接描述的概念的关系。大型语言模型(llm)为克服这些挑战提供了机会。法学硕士接受过不同文献的培训,使他们具备上下文知识,从而能够更准确地提取信息。结果:我们提出了textToKnowledgeGraph,这是一个人工智能工具,使用法学硕士直接用生物表达语言(BEL)从单个出版物中提取交互。选择BEL是因为它紧凑、详细地表示生物关系,使结构化、计算可访问的编码成为可能。这项工作有几个贡献。1. 开发开源Python textToKnowledgeGraph包(pypi.org/project/texttoknowledgegraph),用于从科学文章中提取BEL,可从命令行和其他项目中使用;2 .在Cytoscape Web中简化提取和探索的交互式应用程序。经过计算和手动审查的提取数据集,以支持未来的微调工作。可用性:https://github.com/ndexbio/llm-text-to-knowledge-graph.Contact: augustin@nih.gov;favour.ujames196@gmail.com;depratt@health.ucsd.edu.Supplementary information:补充数据可在Bioinformatics网站在线获得。
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引用次数: 0
3D dendritic spines shape descriptors for efficient classification and morphology analysis in control and Alzheimer's disease modeling neurons. 用于控制和阿尔茨海默病建模神经元的有效分类和形态学分析的3D树突棘形状描述符。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag025
Daria Smirnova, Anita Ustinova, Viacheslav Chukanov, Ekaterina Pchitskaya

Motivation: Dendritic spines, postsynaptic structures characterized by their complex shapes, provide the essential structural foundation for synaptic function. Their shape is dynamic, undergoing alterations in various conditions, notably during neurodegenerative disorders like Alzheimer's disease. The dramatically increasing prevalence of such diseases highlights an urgent need for effective treatments. A key strategy in developing these treatments involves evaluating how dendritic spine morphology responds to potential therapeutic compounds. Although a link between spine shape and function is recognized, its precise nature is still not fully elucidated. Consequently, advancing our understanding of dendritic spines in both health and disease necessitates the urgent development of more effective methods for assessing their morphology.

Results: This study introduces qualitatively new 3D dendritic shape descriptors based on spherical harmonics and Zernike moments and proposes a bases on them clustering approach for grouping dendritic spines with similar shapes applied to 3D polygonal spines meshes acquired from Z-stack dendrite images. By integrating these methods, we achieve improved differentiation between normal and pathological spines represented by the Alzheimer's disease in vitro model, offering a more precise representation of morphological diversity. Additionally, the proposed spherical harmonics approach enables dendritic spine reconstruction from vector-based shape representations, providing a novel tool for studying structural changes associated with neurodegeneration and possibilities for synthetic dendritic spines dataset generation.

Availability and implementation: The software used for experiments is public and available at https://github.com/Biomed-imaging-lab/SpineTool with the DOI: 10.5281/zenodo.17359066. Descriptors codebase is available at https://github.com/Biomed-imaging-lab/Spine-Shape-Descriptors with the DOI: 10.5281/zenodo.17302859.

动机:树突棘是突触后结构,其形状复杂,为突触功能提供了必要的结构基础。它们的形状是动态的,在各种情况下都会发生变化,尤其是在阿尔茨海默病等神经退行性疾病期间。这类疾病的发病率急剧上升,突出表明迫切需要有效的治疗方法。开发这些治疗的关键策略包括评估树突脊柱形态对潜在治疗化合物的反应。虽然脊柱形状和功能之间的联系是公认的,但其确切性质仍未完全阐明。因此,提高我们对树突棘在健康和疾病中的理解,迫切需要开发更有效的方法来评估它们的形态。结果:本文引入了一种基于球面谐波和泽尼克矩的定性三维树突形状描述符,并提出了一种基于球面谐波和泽尼克矩的聚类方法,用于对Z-stack树突图像获取的三维多边形树突网格中具有相似形状的树突棘进行分组。通过整合这些方法,我们实现了以阿尔茨海默病体外模型为代表的正常和病理脊柱的更好区分,提供了更精确的形态学多样性表征。此外,提出的球面谐波方法能够从基于矢量的形状表示中重建树突脊柱,为研究与神经变性相关的结构变化和合成树突脊柱数据集生成的可能性提供了一种新的工具。可用性:用于实验的软件是公开的,可以在https://github.com/Biomed-imaging-lab/SpineTool上获得,DOI: 10.5281/zenodo.17359066。描述符代码库可在https://github.com/Biomed-imaging-lab/Spine-Shape-Descriptors上获得,DOI: 10.5281/zenodo.17302859。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
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