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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
STransfer: a transfer learning-enhanced graph convolutional network for clustering spatial transcriptomics data. 迁移:用于聚类空间转录组学数据的迁移学习增强图卷积网络。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag049
Chaojie Wang, Xin Yu

Motivation: Capturing spatial structure is fundamental to the analysis of spatial transcriptomics data. However, most existing methods focus on clustering within individual tissue slices and often ignore the high inter-slice similarity inherent in multi-slice datasets.

Results: To address this limitation, we propose STransfer, a novel transfer learning framework that combines graph convolutional networks (GCNs) with positive pointwise mutual information (PPMI) to model both local and global spatial dependencies. An attention-based module is introduced to fuse features from multiple graphs into unified node representations, facilitating the learning of low-dimensional embeddings that jointly encode gene expression and spatial context. By transferring knowledge from labeled slices to adjacent unlabeled ones, STransfer significantly enhances clustering accuracy while reducing manual annotation costs. Extensive experiments demonstrate that STransfer consistently outperforms state-of-the-art methods in both spatial modeling and cross-slice transfer performance.

Availability and implementation: The code for STransfer has been uploaded to GitHub: https://github.com/Saki-JSU/Publications/tree/main/STransfer.

动机:获取空间结构是空间转录组学数据分析的基础。然而,大多数现有的方法都集中在单个组织切片内的聚类,往往忽略了多切片数据集固有的高切片间相似性。为了解决这一限制,我们提出了一种新的迁移学习框架,将图卷积网络(GCNs)与正点互信息(PPMI)结合起来,对局部和全局空间依赖关系进行建模。引入了一个基于注意力的模块,将多个图的特征融合到统一的节点表示中,促进了共同编码基因表达和空间上下文的低维嵌入的学习。通过将知识从标记的切片转移到相邻的未标记的切片,strtransfer显著提高了聚类精度,同时降低了人工标注成本。大量的实验表明,在空间建模和横切片传输性能方面,transfer始终优于最先进的方法。可用性和实现:strtransfer的代码已上传到GitHub: https://github.com/Saki-JSU/Publications/tree/main/STransfer.Supplementary information:本文没有补充信息。
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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 : 2026-02-03 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 (GNNs) 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 integrates a link-prediction module with a path-identification module to generate interpretable and faithful explanations. When benchmarked against other GNN-based 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 evaluated through multiple complementary approaches, including comparison with manually curated drug mechanisms, assessment of explanation faithfulness using deletion and insertion studies, and measurement of stability under graph perturbations. Together, these results show that DBR-X advances the state of the art in drug repositioning while providing multi-hop mechanistic explanations that can facilitate the translation of computational predictions into clinical applications. Availability and implementation: DBR-X package is freely accessible from online repository https://github.com/SuLab/DBR-X.

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
DNAvi: integration, statistics, and visualization of cell-free DNA fragment traces. DNAvi:整合,统计,和可视化的细胞游离DNA片段痕迹。
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btag041
Anja Hess, Dominik Seelow, Helene Kretzmer

Summary: DNAvi is a Python-based tool for rapid grouped analysis and visualization of cell-free DNA fragment size profiles directly from electrophoresis data, overcoming the need for sequencing in basic fragmentomic screenings. It enables normalization, statistical comparison, and publication-ready plotting of multiple samples, supporting quality control and exploratory fragmentomics in clinical and research workflows.

Availability and implementation: DNAvi is implemented in Python and freely available on GitHub at https://github.com/anjahess/DNAvi under a GNU General Public License v3.0, along with source code, documentation, and examples. An archived version is available under https://doi.org/10.5281/zenodo.18401705.

摘要:DNAvi是一个基于python的工具,可直接从电泳数据中快速分组分析和可视化无细胞DNA片段大小谱,克服了在基本片段组学筛选中对测序的需求。它可以实现多个样本的规范化、统计比较和出版准备绘图,支持临床和研究工作流程中的质量控制和探索性片段组学。可用性和实现:DNAvi是用Python实现的,在GNU通用公共许可证v3.0下的GitHub (https://github.com/anjahess/DNAvi)上免费提供,以及源代码、文档和示例。存档版本可在https://doi.org/10.5281/zenodo.18097730.Supplementary信息中获得;补充数据可在Bioinformatics在线获得。
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引用次数: 0
Comprehensive evaluation of ACMG/AMP-based variant classification tools. 基于ACMG/ amp的变异分类工具的综合评价
IF 5.4 Pub Date : 2026-02-03 DOI: 10.1093/bioinformatics/btaf623
Tohid Ghasemnejad, Yuheng Liang, Khadijeh Hoda Jahanian, Milad Eidi, Arash Salmaninejad, Seyedeh Sedigheh Abedini, Fabrizzio Horta, Nigel H Lovell, Thantrira Porntaveetus, Mark Grosser, Mahmoud Aarabi, Hamid Alinejad-Rokny

Motivation: The American College of Medical Genetics and Genomics/Association for Molecular Pathology (ACMG/AMP) guidelines represent the gold standard for clinical variant interpretation. Despite the widespread adoption of ACMG/AMP guidelines, a comprehensive comparison of the software tools designed to implement them has been lacking. This represents a significant gap, as clinicians require evidence-based guidance on which tools to use in their practice.

Results: We benchmarked four ACMG/AMP-based tools (Franklin, InterVar, TAPES, Genebe) selected from 22 tools, and compared their performance with LIRICAL, a top-performing phenotype-driven tool, using 151 expert-curated datasets from Mendelian disorders. Selection criteria included free availability, VCF compatibility, operational reliability, and not being disease-specific. Our evaluation framework assessed top-N accuracy (N = 1, 5, 10, 20, 50), retention rates, precision, recall, F1 scores, and area under the curve (AUC). Statistical validation employed bootstrap confidence intervals (n = 1000) and Friedman tests. LIRICAL (68.21%) and Franklin (61.59%) demonstrated superior top-10 variant prioritization accuracy in Mendelian disorders, significantly outperforming other tools (P = .0000). Results demonstrate that tools with advanced phenotypic integration significantly outperform those relying primarily on genomic features.

Availability and implementation: All data and source code required to reproduce the findings of this study are openly available in the Code Ocean repository at https://doi.org/10.24433/CO.6562438.v1.

动机:美国医学遗传学和基因组学学院/分子病理学协会(ACMG/AMP)指南代表了临床变异解释的金标准。尽管ACMG/AMP指南被广泛采用,但对设计用于实现它们的软件工具进行全面比较的研究一直缺乏。这代表了一个重大的差距,因为临床医生需要在实践中使用哪些工具的循证指导。结果:我们从22种工具中选择了四种基于ACMG/ amp的工具(Franklin, InterVar, TAPES, Genebe)作为基准,并使用来自孟德尔疾病的151个专家整理的数据集,将它们的性能与LIRICAL(表现最好的表型驱动工具)进行了比较。选择标准包括免费可用性、VCF兼容性、操作可靠性和非疾病特异性。我们的评估框架评估了top-N准确率(N = 1,5,10,20,50),保留率,准确率,召回率,F1分数和曲线下面积(AUC)。统计验证采用bootstrap置信区间(n = 1000)和Friedman检验。LIRICAL(68.21%)和Franklin(61.59%)在孟德尔疾病中显示出更高的前10个变异优先排序准确率,显著优于其他工具(p = 0.0000)。结果表明,具有先进表型整合的工具明显优于主要依赖基因组特征的工具。可用性:复制本研究结果所需的所有数据和源代码都可以在代码海洋存储库中公开获取,网址为https://doi.org/10.24433/CO.6562438.v1.Supplementary information:补充数据可在Bioinformatics在线获取。
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引用次数: 0
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