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Protein structure alignment by reseek improves sensitivity to remote homologs. 通过 reseek 进行蛋白质结构比对可提高对远端同源物的敏感性。
Pub Date : 2024-11-15 DOI: 10.1093/bioinformatics/btae687
Robert C Edgar

Motivation: Recent breakthroughs in protein fold prediction from amino acid sequences have unleashed a deluge of new structures, presenting new opportunities and challenges to bioinformatics.

Results: Reseek is a novel protein structure alignment algorithm based on sequence alignment where each residue in the protein backbone is represented by a letter in a "mega-alphabet" of 85,899,345,920 (∼1011) distinct states. Reseek achieves substantially improved sensitivity to remote homologs compared to state-of-the-art methods including DALI, TMalign and Foldseek, with comparable speed to Foldseek, the fastest previous method. Scaling to large databases of AI-predicted folds is analyzed. Foldseek E-values are shown to be under-estimated by several orders of magnitude, while Reseek E-values are in good agreement with measured error rates.

Availability: https://github.com/rcedgar/reseek.

Supplementary information: Supplementary data are available at Bioinformatics online.

动因:最近在根据氨基酸序列预测蛋白质折叠方面取得了突破性进展,从而产生了大量新结构,为生物信息学带来了新的机遇和挑战:Reseek是一种基于序列比对的新型蛋白质结构比对算法,蛋白质骨架中的每个残基都用一个字母来表示,这个 "巨型字母表 "包含85,899,345,920(∼1011)种不同的状态。与 DALI、TMalign 和 Foldseek 等最先进的方法相比,Reseek 大大提高了对远端同源物的灵敏度,其速度与之前最快的方法 Foldseek 不相上下。我们对扩展到大型人工智能预测折叠数据库的情况进行了分析。结果表明,Foldseek 的 E 值被低估了几个数量级,而 Reseek 的 E 值与测得的误差率十分吻合。可用性:https://github.com/rcedgar/reseek.Supplementary 信息:补充数据可在 Bioinformatics online 上获取。
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引用次数: 0
A signal-diffusion-based unsupervised contrastive representation learning for spatial transcriptomics analysis. 用于空间转录组学分析的基于信号扩散的无监督对比表征学习。
Pub Date : 2024-11-15 DOI: 10.1093/bioinformatics/btae663
Nan Chen, Xiao Yu, Weimin Li, Fangfang Liu, Yin Luo, Zhongkun Zuo

Motivation: Spatial transcriptomics allows for the measurement of high-throughput gene expression data while preserving the spatial structure of tissues and histological images. Integrating gene expression, spatial information, and image data to learn discriminative low-dimensional representations is critical for dissecting tissue heterogeneity and analyzing biological functions. However, most existing methods have limitations in effectively utilizing spatial information and high-resolution histological images. We propose a signal-diffusion-based unsupervised contrast learning method (SDUCL) for learning low-dimensional latent embeddings of cells/spots.

Results: SDUCL integrates image features, spatial relationships and gene expression information. We designed a signal diffusion microenvironment discovery algorithm, which effectively captures and integrates interaction information within the cellular microenvironment by simulating the biological signal diffusion process. By maximizing the mutual information between the local representation and the microenvironment representation of cells/spots, SDUCL learns more discriminative representations. SDUCL was employed to analyze spatial transcriptomics datasets from multiple species, encompassing both normal and tumor tissues. SDUCL performed well in downstream tasks such as clustering, visualization, trajectory inference, and differential gene analysis, thereby enhancing our understanding of tissue structure and tumor microenvironments.

Availability: https://github.com/WeiMin-Li-visual/SDUCL.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机空间转录组学可以测量高通量基因表达数据,同时保留组织和组织学图像的空间结构。整合基因表达、空间信息和图像数据以学习具有区分性的低维表征对于剖析组织异质性和分析生物功能至关重要。然而,大多数现有方法在有效利用空间信息和高分辨率组织学图像方面存在局限性。我们提出了一种基于信号扩散的无监督对比学习方法(SDUCL),用于学习细胞/斑点的低维潜在嵌入:SDUCL整合了图像特征、空间关系和基因表达信息。我们设计了一种信号扩散微环境发现算法,该算法通过模拟生物信号扩散过程,有效捕捉并整合了细胞微环境中的交互信息。通过最大化细胞/斑点的局部表征与微环境表征之间的互信息,SDUCL 可以学习到更多具有区分性的表征。SDUCL 被用于分析多个物种的空间转录组学数据集,包括正常组织和肿瘤组织。SDUCL在聚类、可视化、轨迹推断和差异基因分析等下游任务中表现出色,从而增强了我们对组织结构和肿瘤微环境的了解。可用性:https://github.com/WeiMin-Li-visual/SDUCL.Supplementary 信息:补充数据可在 Bioinformatics online 上获取。
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引用次数: 0
AltGosling: Automatic Generation of Text Descriptions for Accessible Genomics Data Visualization. AltGosling:为可访问的基因组学数据可视化自动生成文本描述。
Pub Date : 2024-11-14 DOI: 10.1093/bioinformatics/btae670
Thomas C Smits, Sehi L'Yi, Andrew P Mar, Nils Gehlenborg

Motivation: Biomedical visualizations are key to accessing biomedical knowledge and detecting new patterns in large datasets. Interactive visualizations are essential for biomedical data scientists and are omnipresent in data analysis software and data portals. Without appropriate descriptions, these visualizations are not accessible to all people with blindness and low vision, who often rely on screen reader accessibility technologies to access visual information on digital devices. Screen readers require descriptions to convey image content. However, many images lack informative descriptions due to unawareness and difficulty writing such descriptions. Describing complex and interactive visualizations, like genomics data visualizations, is even more challenging. Automatic generation of descriptions could be beneficial, yet current alt text generating models are limited to basic visualizations and cannot be used for genomics.

Results: We present AltGosling, an automated description generation tool focused on interactive data visualizations of genome-mapped data, created with the grammar-based genomics toolkit Gosling. The logic-based algorithm of AltGosling creates various descriptions including a tree-structured navigable panel. We co-designed AltGosling with a blind screen reader user (co-author). We show that AltGosling outperforms state-of-the-art large language models and common image-based neural networks for alt text generation of genomics data visualizations. As a first of its kind in genomic research, we lay the groundwork to increase accessibility in the field.

Availability and implementation: The source code, examples, and interactive demo are accessible under the MIT License at https://github.com/gosling-lang/altgosling. The package is available at https://www.npmjs.com/package/altgosling.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:生物医学可视化是获取生物医学知识和在大型数据集中发现新模式的关键。交互式可视化对于生物医学数据科学家来说至关重要,在数据分析软件和数据门户网站中无处不在。如果没有适当的描述,所有盲人和低视力者都无法获取这些可视化信息,他们通常依赖屏幕阅读器无障碍技术来获取数字设备上的可视化信息。屏幕阅读器需要描述来传达图像内容。然而,许多图像缺乏翔实的描述,原因在于盲人和低视力者没有意识到这一点,也很难编写这样的描述。描述复杂的交互式可视化图像(如基因组学数据可视化图像)更具挑战性。自动生成描述可能是有益的,但目前的alt文本生成模型仅限于基本的可视化,不能用于基因组学:我们介绍了 AltGosling,这是一种自动描述生成工具,专注于基因组映射数据的交互式数据可视化,由基于语法的基因组学工具包 Gosling 创建。AltGosling 基于逻辑的算法可创建各种描述,包括树形结构的可导航面板。我们与一位盲人屏幕阅读器用户(合著者)共同设计了 AltGosling。我们的研究表明,在基因组学数据可视化的alt文本生成方面,AltGosling优于最先进的大型语言模型和普通基于图像的神经网络。作为基因组研究领域的首创,我们为提高该领域的可访问性奠定了基础:源代码、示例和交互式演示可在 MIT 许可下访问 https://github.com/gosling-lang/altgosling。软件包可在 https://www.npmjs.com/package/altgosling.Supplementary 上获取信息:补充数据可在 Bioinformatics online 上获取。
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引用次数: 0
FAPM: Functional Annotation of Proteins using Multi-Modal Models Beyond Structural Modeling. FAPM:超越结构建模的多模式蛋白质功能注释。
Pub Date : 2024-11-14 DOI: 10.1093/bioinformatics/btae680
Wenkai Xiang, Zhaoping Xiong, Huan Chen, Jiacheng Xiong, Wei Zhang, Zunyun Fu, Mingyue Zheng, Bing Liu, Qian Shi

Motivation: Assigning accurate property labels to proteins, like functional terms and catalytic activity, is challenging, especially for proteins without homologs and "tail labels" with few known examples. Previous methods mainly focused on protein sequence features, overlooking the semantic meaning of protein labels.

Results: We introduce FAPM, a contrastive multi-modal model that links natural language with protein sequence language. This model combines a pretrained protein sequence model with a pretrained large language model to generate labels, such as Gene Ontology (GO) functional terms and catalytic activity predictions, in natural language. Our results show that FAPM excels in understanding protein properties, outperforming models based solely on protein sequences or structures. It achieves state-of-the-art performance on public benchmarks and in-house experimentally annotated phage proteins, which often have few known homologs. Additionally, FAPM's flexibility allows it to incorporate extra text prompts, like taxonomy information, enhancing both its predictive performance and explainability. This novel approach offers a promising alternative to current methods that rely on multiple sequence alignment for protein annotation. The online demo is at: https://huggingface.co/spaces/wenkai/FAPM_demo.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机为蛋白质指定准确的属性标签(如功能术语和催化活性)是一项挑战,尤其是对于没有同源物的蛋白质和已知例子很少的 "尾标签"。以前的方法主要关注蛋白质序列特征,忽略了蛋白质标签的语义:我们介绍了 FAPM,这是一种将自然语言与蛋白质序列语言联系起来的对比性多模态模型。该模型将预训练的蛋白质序列模型与预训练的大型语言模型相结合,用自然语言生成基因本体(GO)功能术语和催化活性预测等标签。我们的研究结果表明,FAPM 在理解蛋白质特性方面表现出色,优于仅基于蛋白质序列或结构的模型。它在公共基准和内部实验注释的噬菌体蛋白质(通常只有很少的已知同源物)上达到了最先进的性能。此外,FAPM 的灵活性还使其能够结合额外的文本提示,如分类信息,从而提高其预测性能和可解释性。这种新颖的方法为目前依赖多序列比对进行蛋白质注释的方法提供了一种很有前途的替代方法。在线演示见:https://huggingface.co/spaces/wenkai/FAPM_demo.Supplementary information:补充数据可在 Bioinformatics online 上获取。
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引用次数: 0
Predicting the subcellular location of prokaryotic proteins with DeepLocPro. 利用 DeepLocPro 预测原核生物蛋白质的亚细胞位置。
Pub Date : 2024-11-14 DOI: 10.1093/bioinformatics/btae677
Jaime Moreno, Henrik Nielsen, Ole Winther, Felix Teufel

Motivation: Protein subcellular location prediction is a widely explored task in bioinformatics because of its importance in proteomics research. We propose DeepLocPro, an extension to the popular method DeepLoc, tailored specifically to archaeal and bacterial organisms.

Results: DeepLocPro is a multiclass subcellular location prediction tool for prokaryotic proteins, trained on experimentally verified data curated from UniProt and PSORTdb. DeepLocPro compares favorably to the PSORTb 3.0 ensemble method, surpassing its performance across multiple metrics in our benchmark experiment.

Availability: The DeepLocPro prediction tool is available online at https://ku.biolib.com/deeplocpro and https://services.healthtech.dtu.dk/services/DeepLocPro-1.0/.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机蛋白质亚细胞位置预测在蛋白质组学研究中非常重要,因此是生物信息学中被广泛探讨的一项任务。我们提出了 DeepLocPro,它是流行方法 DeepLoc 的扩展,专门为古生物和细菌生物定制:DeepLocPro是一种原核生物蛋白质的多类别亚细胞位置预测工具,它是根据从UniProt和PSORTdb收集的实验验证数据训练而成的。在我们的基准实验中,DeepLocPro与PSORTb 3.0集合方法的性能相比毫不逊色,在多个指标上都超过了PSORTb 3.0:DeepLocPro 预测工具可通过 https://ku.biolib.com/deeplocpro 和 https://services.healthtech.dtu.dk/services/DeepLocPro-1.0/.Supplementary 在线获取:补充数据可在 Bioinformatics online 上获取。
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引用次数: 0
DeepRSMA: a cross-fusion based deep learning method for RNA-small molecule binding affinity prediction. DeepRSMA:一种基于交叉融合的深度学习方法,用于 RNA-小分子结合亲和力预测。
Pub Date : 2024-11-14 DOI: 10.1093/bioinformatics/btae678
Zhijian Huang, Yucheng Wang, Song Chen, Yaw Sing Tan, Lei Deng, Min Wu

Motivation: RNA is implicated in numerous aberrant cellular functions and disease progressions, highlighting the crucial importance of RNA-targeted drugs. To accelerate the discovery of such drugs, it is essential to develop an effective computational method for predicting RNA-small molecule affinity (RSMA). Recently, deep learning based computational methods have been promising due to their powerful nonlinear modeling ability. However, the leveraging of advanced deep learning methods to mine the diverse information of RNAs, small molecules and their interaction still remains a great challenge.

Results: In this study, we present DeepRSMA, an innovative cross-attention-based deep learning method for RSMA prediction. To effectively capture fine-grained features from RNA and small molecules, we developed nucleotide-level and atomic-level feature extraction modules for RNA and small molecules, respectively. Additionally, we incorporated both sequence and graph views into these modules to capture features from multiple perspectives. Moreover, a Transformer-based cross-fusion module is introduced to learn the general patterns of interactions between RNAs and small molecules. To achieve effective RSMA prediction, we integrated the RNA and small molecule representations from the feature extraction and cross-fusion modules. Our results show that DeepRSMA outperforms baseline methods in multiple test settings. The interpretability analysis and the case study on spinal muscular atrophy (SMA) demonstrate that DeepRSMA has the potential to guide RNA-targeted drug design.

Availability: The codes and data are publicly available at https://github.com/Hhhzj-7/DeepRSMA.

Supplementary information: Supplementary data are available at Bioinformatics online.

动机:RNA 与许多异常细胞功能和疾病进展有关,这凸显了 RNA 靶向药物的至关重要性。为了加速此类药物的发现,必须开发一种有效的计算方法来预测 RNA-小分子亲和力(RSMA)。最近,基于深度学习的计算方法因其强大的非线性建模能力而大有可为。然而,如何利用先进的深度学习方法挖掘 RNA、小分子及其相互作用的各种信息仍然是一个巨大的挑战:在这项研究中,我们提出了 DeepRSMA,一种创新的基于交叉注意力的深度学习方法,用于 RSMA 预测。为了有效捕捉 RNA 和小分子的细粒度特征,我们分别为 RNA 和小分子开发了核苷酸级和原子级特征提取模块。此外,我们还在这些模块中加入了序列和图视图,以便从多个角度捕捉特征。此外,我们还引入了基于 Transformer 的交叉融合模块,以学习 RNA 和小分子之间相互作用的一般模式。为了实现有效的 RSMA 预测,我们整合了特征提取和交叉融合模块中的 RNA 和小分子表征。结果表明,DeepRSMA 在多个测试环境中都优于基准方法。可解释性分析和脊髓性肌萎缩症(SMA)案例研究表明,DeepRSMA 具有指导 RNA 靶向药物设计的潜力:代码和数据可在 https://github.com/Hhhzj-7/DeepRSMA.Supplementary 信息中公开获取:补充数据可在 Bioinformatics online 上获取。
{"title":"DeepRSMA: a cross-fusion based deep learning method for RNA-small molecule binding affinity prediction.","authors":"Zhijian Huang, Yucheng Wang, Song Chen, Yaw Sing Tan, Lei Deng, Min Wu","doi":"10.1093/bioinformatics/btae678","DOIUrl":"https://doi.org/10.1093/bioinformatics/btae678","url":null,"abstract":"<p><strong>Motivation: </strong>RNA is implicated in numerous aberrant cellular functions and disease progressions, highlighting the crucial importance of RNA-targeted drugs. To accelerate the discovery of such drugs, it is essential to develop an effective computational method for predicting RNA-small molecule affinity (RSMA). Recently, deep learning based computational methods have been promising due to their powerful nonlinear modeling ability. However, the leveraging of advanced deep learning methods to mine the diverse information of RNAs, small molecules and their interaction still remains a great challenge.</p><p><strong>Results: </strong>In this study, we present DeepRSMA, an innovative cross-attention-based deep learning method for RSMA prediction. To effectively capture fine-grained features from RNA and small molecules, we developed nucleotide-level and atomic-level feature extraction modules for RNA and small molecules, respectively. Additionally, we incorporated both sequence and graph views into these modules to capture features from multiple perspectives. Moreover, a Transformer-based cross-fusion module is introduced to learn the general patterns of interactions between RNAs and small molecules. To achieve effective RSMA prediction, we integrated the RNA and small molecule representations from the feature extraction and cross-fusion modules. Our results show that DeepRSMA outperforms baseline methods in multiple test settings. The interpretability analysis and the case study on spinal muscular atrophy (SMA) demonstrate that DeepRSMA has the potential to guide RNA-targeted drug design.</p><p><strong>Availability: </strong>The codes and data are publicly available at https://github.com/Hhhzj-7/DeepRSMA.</p><p><strong>Supplementary information: </strong>Supplementary data are available at Bioinformatics online.</p>","PeriodicalId":93899,"journal":{"name":"Bioinformatics (Oxford, England)","volume":" ","pages":""},"PeriodicalIF":0.0,"publicationDate":"2024-11-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142634357","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
PubMed Computed Authors in 2024: an open resource of disambiguated author names in biomedical literature. 2024 年的 PubMed 计算作者:生物医学文献中已消歧作者姓名的开放资源。
Pub Date : 2024-11-09 DOI: 10.1093/bioinformatics/btae672
Shubo Tian, Qingyu Chen, Donald C Comeau, W John Wilbur, Zhiyong Lu

Summary: Over 55% of author names in PubMed are ambiguous: the same name is shared by different individual researchers. This poses significant challenges on precise literature retrieval for author name queries, a common behavior in biomedical literature search. In response, we present a comprehensive dataset of disambiguated authors. Specifically, we complement the automatic PubMed Computed Authors algorithm with the latest ORCID data for improved accuracy. As a result, the enhanced algorithm achieves high performance in author name disambiguation, and subsequently our dataset contains more than 21 million disambiguated authors for over 35 million PubMed articles and is incrementally updated on a weekly basis. More importantly, we make the dataset publicly available for the community such that it can be utilized in a wide variety of potential applications beyond assisting PubMed's author name queries. Finally, we propose a set of guidelines for best practices of authors pertaining to use of their names.

Availability and implementation: The PubMed Computed Authors dataset is publicly available for bulk download at: https://ftp.ncbi.nlm.nih.gov/pub/lu/ComputedAuthors/. Additionally, it is available for query through web API at: https://www.ncbi.nlm.nih.gov/research/bionlp/APIs/authors/.

Supplementary information: Supplementary data are available at Bioinformatics online.

摘要:PubMed 中超过 55% 的作者姓名是模棱两可的:不同的研究人员共享同一个名字。这给作者姓名查询的精确文献检索带来了巨大挑战,而这正是生物医学文献检索中的常见行为。为此,我们提出了一个全面的作者消歧义数据集。具体来说,我们利用最新的 ORCID 数据对 PubMed 作者自动计算算法进行了补充,以提高准确性。因此,增强后的算法在作者姓名消歧方面达到了很高的性能,随后我们的数据集包含了超过 3500 万篇 PubMed 文章的 2100 多万消歧作者,并且每周都在不断更新。更重要的是,我们向社会公开了数据集,使其可以用于协助 PubMed 作者姓名查询之外的各种潜在应用。最后,我们提出了一套作者使用其姓名的最佳实践指南:PubMed 计算作者数据集可在以下网址批量下载:https://ftp.ncbi.nlm.nih.gov/pub/lu/ComputedAuthors/。此外,还可通过网络 API 进行查询:https://www.ncbi.nlm.nih.gov/research/bionlp/APIs/authors/.Supplementary information:补充数据可在 Bioinformatics online 上获取。
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引用次数: 0
PRONA: An R-package for Patient Reported Outcomes Network Analysis. PRONA:用于患者报告结果网络分析的 R 软件包。
Pub Date : 2024-11-09 DOI: 10.1093/bioinformatics/btae671
Brandon H Bergsneider, Orieta Celiku

Summary: Network analysis (NA) has recently emerged as a new paradigm by which to model the symptom patterns of patients with complex illnesses such as cancer. NA uses graph theory-based methods to capture the interplay between symptoms and identify which symptoms may be most impactful to patient quality of life and are therefore most critical to treat/prevent. Despite NA's increasing popularity in research settings, its clinical applicability is hindered by the lack of a unified platform that consolidates all the software tools needed to perform NA, and by the lack of methods for capturing heterogeneity across patient cohorts. Addressing these limitations, we present PRONA, an R-package for Patient Reported Outcomes Network Analysis. PRONA not only consolidates previous NA tools into a unified, easy-to-use analysis pipeline, but also augments the traditional approach with functionality for performing unsupervised discovery of patient subgroups with distinct symptom patterns.

Availability and implementation: PRONA is implemented in R. Source code, installation, and use instructions are available on GitHub at https://github.com/bbergsneider/PRONA.

Supplementary information: Supplementary information is available at Bioinformatics online.

摘要:网络分析(NA)是最近出现的一种新范式,可用于模拟癌症等复杂疾病患者的症状模式。网络分析使用基于图论的方法来捕捉症状之间的相互作用,并确定哪些症状可能对患者的生活质量影响最大,因此是治疗/预防的关键。尽管 NA 在研究环境中越来越受欢迎,但由于缺乏一个统一的平台来整合执行 NA 所需的所有软件工具,以及缺乏捕捉患者队列间异质性的方法,NA 的临床适用性受到了阻碍。为了解决这些局限性,我们推出了 PRONA,一个用于患者报告结果网络分析的 R 软件包。PRONA 不仅将之前的 NA 工具整合到一个统一、易用的分析管道中,还通过对具有不同症状模式的患者亚群进行无监督发现的功能增强了传统方法:PRONA用R语言实现。源代码、安装和使用说明可在GitHub上获取:https://github.com/bbergsneider/PRONA.Supplementary information:补充信息可在 Bioinformatics online 上获取。
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引用次数: 0
FEHAT: Efficient, Large scale and Automated Heartbeat Detection in Medaka Fish Embryos. FEHAT:青鳉鱼胚胎中的高效、大规模自动心跳检测。
Pub Date : 2024-11-07 DOI: 10.1093/bioinformatics/btae664
Marcio Soares Ferreira, Sebastian Stricker, Tomas Fitzgerald, Jack Monahan, Fanny Defranoux, Philip Watson, Bettina Welz, Omar Hammouda, Joachim Wittbrodt, Ewan Birney

High resolution imaging of model organisms allows the quantification of important physiological measurements. In the case of fish with transparent embryos, these videos can visualise key physiological processes, such as heartbeat. High throughput systems can provide enough measurements for the robust investigation of developmental processes as well as the impact of system perturbations on physiological state. However, few analytical schemes have been designed to handle thousands of high-resolution videos without the need for some level of human intervention. We developed a software package, named FEHAT, to provide a fully automated solution for the analytics of large numbers of heart rate imaging datasets obtained from developing Medaka fish embryos in 96 well plate format imaged on an Acquifer machine. FEHAT uses image segmentation to define regions of the embryo showing changes in pixel intensity over time, followed by the classification of the most likely position of the heart and Fourier Transformations to estimate the heart rate. Here we describe some important features of the FEHAT software, showcasing its performance across a large set of medaka fish embryos and compare its performance to established, less automated solutions. FEHAT provides reliable heart rate estimates across a range of temperature-based perturbations and can be applied to tens of thousands of embryos without the need for any human intervention.

Availability: Data used in this manuscript will be made available on request.

Supplementary information: Supplementary data are available at Bioinformatics online.

对模型生物进行高分辨率成像可以量化重要的生理测量结果。对于具有透明胚胎的鱼类,这些视频可以将心跳等关键生理过程可视化。高通量系统可提供足够的测量数据,用于对发育过程以及系统扰动对生理状态的影响进行有力的研究。然而,很少有人设计出无需人工干预就能处理数千个高分辨率视频的分析方案。我们开发了一款名为 FEHAT 的软件包,为分析大量心率成像数据集提供了全自动解决方案,这些数据集来自在 Acquifer 机器上成像的 96 孔板格式发育中的青鳉胚胎。FEHAT 使用图像分割来定义胚胎中像素强度随时间变化的区域,然后对心脏最可能的位置进行分类,并通过傅里叶变换来估算心率。在此,我们将介绍 FEHAT 软件的一些重要功能,展示其在大量青鳉鱼胚胎中的表现,并将其表现与现有的自动化程度较低的解决方案进行比较。FEHAT 可在一系列基于温度的扰动中提供可靠的心率估计值,并可应用于数以万计的胚胎,无需任何人工干预:本手稿中使用的数据可应要求提供:补充数据可在生物信息学网上获取。
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引用次数: 0
Ranking Antibody Binding Epitopes and Proteins Across Samples from Whole Proteome Tiled Linear Peptides. 从全蛋白质组平铺线性肽对样本中的抗体结合表位和蛋白质进行排序。
Pub Date : 2024-11-05 DOI: 10.1093/bioinformatics/btae637
Sean J McIlwain, Anna Hoefges, Amy K Erbe, Paul M Sondel, Irene M Ong

Introduction: Ultradense peptide binding arrays that can probe millions of linear peptides comprising the entire proteomes of human or mouse, or hundreds of thousands of microbes, are powerful tools for studying the antibody repertoire in serum samples to understand adaptive immune responses.

Motivation: There are few tools for exploring high-dimensional, significant and reproducible antibody targets for ultradense peptide binding arrays at the linear peptide, epitope (grouping of adjacent peptides), and protein level across multiple samples/subjects (i.e. epitope spread or immunogenic regions of proteins) for understanding the heterogeneity of immune responses.

Results: We developed HERON (Hierarchical antibody binding Epitopes and pROteins from liNear peptides), an R package, which identifies immunogenic epitopes, using meta-analyses and spatial clustering techniques to explore antibody targets at various resolution and confidence levels, that can be found consistently across a specified number of samples through the entire proteome to study antibody responses for diagnostics or treatment. Our approach estimates significance values at the linear peptide (probe), epitope, and protein level to identify top candidates for validation. We test the performance of predictions on all three levels using correlation between technical replicates and comparison of epitope calls on two datasets, which shows HERON's competitiveness in estimating false discovery rates and finding general and sample-level regions of interest for antibody binding.

Availability: The HERON R package is available at Bioconductor https://bioconductor.org/packages/release/bioc/html/HERON.html.

Supplementary information: Supplementary data are available at Bioinformatics online.

简介超高密度肽结合阵列可以探测数百万个线性肽,包括人类或小鼠的整个蛋白质组,或数十万个微生物,是研究血清样本中抗体复合物以了解适应性免疫反应的强大工具:目前很少有工具能在线性肽、表位(相邻肽的分组)和蛋白质水平上探索超高密度肽结合阵列的高维、重要和可重现的抗体靶标(即蛋白质的表位扩散或免疫原性区域),以了解免疫反应的异质性:我们开发了HERON(Hierarchical antibody binding Epitopes and pROteins from liNear peptides),这是一个R软件包,它利用荟萃分析和空间聚类技术识别免疫原表位,以不同的分辨率和置信度探索抗体靶点,这些靶点可以在整个蛋白质组的指定数量样本中找到,以研究用于诊断或治疗的抗体反应。我们的方法在线性肽(探针)、表位和蛋白质水平上估算显著性值,以确定需要验证的顶级候选目标。我们使用技术复制之间的相关性和两个数据集上表位调用的比较来测试所有三个层面的预测性能,这表明 HERON 在估计误发现率和发现抗体结合的一般和样本级感兴趣区域方面具有竞争力:HERON R软件包可从Bioconductor https://bioconductor.org/packages/release/bioc/html/HERON.html.Supplementary 获取:补充数据可在 Bioinformatics online 上获取。
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引用次数: 0
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