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Evergene:一个用于原发性肿瘤大规模基因中心分析的交互式网络工具。

Evergene: an interactive webtool for large-scale gene-centric analysis of primary tumours.

作者信息

Kennedy Anna, Richardson Ella, Higham Jonathan, Kotsantis Panagiotis, Mort Richard, Shih Barbara Bo-Ju

机构信息

Division of Biomedical and Life Sciences, Faculty of Health and Medicine, Lancaster University, Lancaster LA1 4YG, United Kingdom.

Department of Mathematics and Statistics, Faculty of Science and Technology, Lancaster University, Lancaster LA1 4YF, United Kingdom.

出版信息

Bioinform Adv. 2024 Jun 18;4(1):vbae092. doi: 10.1093/bioadv/vbae092. eCollection 2024.

Abstract

MOTIVATION

The data sharing of large comprehensive cancer research projects, such as The Cancer Genome Atlas (TCGA), has improved the availability of high-quality data to research labs around the world. However, due to the volume and inherent complexity of high-throughput omics data, analysis of this is limited by the capacity for performing data processing through programming languages such as R or Python. Existing webtools lack functionality that supports large-scale analysis; typically, users can only input one gene, or a gene list condensed into a gene set, instead of individual gene-level analysis. Furthermore, analysis results are usually displayed without other sample-level molecular or clinical annotations. To address these gaps in the existing webtools, we have developed Evergene using R and Shiny.

RESULTS

Evergene is a user-friendly webtool that utilizes RNA-sequencing data, alongside other sample and clinical annotation, for large-scale gene-centric analysis, including principal component analysis (PCA), survival analysis (SA), and correlation analysis (CA). Moreover, Evergene achieves in-depth analysis of cancer transcriptomic data which can be explored through dimensional reduction methods, relating gene expression with clinical events or other sample information, such as ethnicity, histological classification, and molecular indices. Lastly, users can upload custom data to Evergene for analysis.

AVAILABILITY AND IMPLEMENTATION

Evergene webtool is available at https://bshihlab.shinyapps.io/evergene/. The source code and example user input dataset are available at https://github.com/bshihlab/evergene.

摘要

动机

大型综合性癌症研究项目的数据共享,如癌症基因组图谱(TCGA),提高了全球研究实验室获取高质量数据的可能性。然而,由于高通量组学数据的数量和内在复杂性,对此类数据的分析受到通过R或Python等编程语言进行数据处理能力的限制。现有的网络工具缺乏支持大规模分析的功能;通常,用户只能输入一个基因,或浓缩为基因集的基因列表,而无法进行单个基因水平的分析。此外,分析结果通常在不附带其他样本水平分子或临床注释的情况下显示。为了弥补现有网络工具中的这些不足,我们使用R和Shiny开发了Evergene。

结果

Evergene是一个用户友好的网络工具,它利用RNA测序数据以及其他样本和临床注释,进行大规模的以基因为中心的分析,包括主成分分析(PCA)、生存分析(SA)和相关性分析(CA)。此外,Evergene实现了对癌症转录组数据的深入分析,可通过降维方法进行探索,将基因表达与临床事件或其他样本信息(如种族、组织学分类和分子指标)相关联。最后,用户可以将自定义数据上传到Evergene进行分析。

可用性与实现

Evergene网络工具可在https://bshihlab.shinyapps.io/evergene/获取。源代码和示例用户输入数据集可在https://github.com/bshihlab/evergene获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5d44/11213629/669594ae30a6/vbae092f1.jpg

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