Interpreting and visualizing pathway analyses using embedding representations with PAVER.

IF 1.9 Bioinformation Pub Date : 2024-07-31 eCollection Date: 2024-01-01 DOI:10.6026/973206300200700
William G Ryan V, Ali Sajid Imami, Hunter Ali Sajid, John Vergis, Xiaolu Zhang, Jarek Meller, Rammohan Shukla, Robert McCullumsmith
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引用次数: 0

Abstract

Omics studies use large-scale high-throughput data to explain changes underlying different traits or conditions. However, omics analysis often results in long lists of pathways that are difficult to interpret. Therefore, it is of interest to describe a tool named PAVER (Pathway Analysis Visualization with Embedding Representations) for large scale genomic analysis. PAVER curates similar pathways into groups, identifies the pathway most representative of each group, and provides publication-ready intuitive visualizations. PAVER clusters pathways defined by their vector embedding representations and then identifies the term most cosine similar to its respective cluster's average embedding. PAVER can integrate multiple pathway analyses, highlight relevant biological insights, and work with any pathway database.

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利用 PAVER 的嵌入表示法解释和可视化通路分析。
全局组学研究利用大规模高通量数据来解释不同性状或条件下的变化。然而,omics 分析通常会产生一长串难以解释的通路。因此,我们有兴趣介绍一种名为 PAVER(Pathway Analysis Visualization with Embedding Representations)的工具,用于大规模基因组分析。PAVER 将相似的通路整理成组,识别出每组中最具代表性的通路,并提供可供发表的直观可视化效果。PAVER 根据矢量嵌入表征对通路进行聚类,然后找出与其各自聚类的平均嵌入最相似的余弦项。PAVER 可以整合多种通路分析,突出相关的生物学见解,并与任何通路数据库协同工作。
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来源期刊
Bioinformation
Bioinformation MATHEMATICAL & COMPUTATIONAL BIOLOGY-
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