Functional genomic imaging (FGI), a virtual tool for visualization of functional gene expression modules in heterogeneous tumor samples.

IF 5.7 2区 生物学 Q1 BIOLOGY Biology Direct Pub Date : 2025-01-21 DOI:10.1186/s13062-025-00598-y
Xinlei Chen, Youbing Guo, Xiaorong Gu, Danyi Wen
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Abstract

Advances in sequencing technologies are reshaping clinical diagnostics, prompting the development of new software tools to decipher big data. To this end, we developed functional genomic imaging (FGI), a visualization tool designed to assist clinicians in interpreting RNA-Seq results from patient samples. FGI uses weighted gene co-expression network analysis (WGCNA), followed by a modified Phenograph clustering algorithm to identify co-expression gene clusters. These gene modules were annotated and projected onto a t-SNE map for visualization. Annotation of FGI gene clusters revealed three categories: tissue-specific, functional, and positional. These clusters may be used to build tumor subtypes with pre-annotated functions. At the multi-cancer cohort level, tissue-specific clusters are enriched, whereas at the single cancer level, such as in lung cancer or ovarian cancer, positional clusters can be more prominent. Moreover, FGI analysis could also reveal molecular tumor subtypes not documented in clinical records and generated a more detailed co-expression gene cluster map. Based on different levels of FGI modeling, each individual tumor sample can be customized to display various types of information such as tissue origin, molecular subtypes, immune activation status, stromal signaling pathways, cell cycle activity, and potential amplicon regions which can aid in diagnosis and guide treatment decisions. Our results highlight the potential of FGI as a robust visualization tool for personalized medicine in molecular diagnosis.

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功能基因组成像(FGI)是一种可视化异质肿瘤样本中功能基因表达模块的虚拟工具。
测序技术的进步正在重塑临床诊断,促使开发新的软件工具来破译大数据。为此,我们开发了功能基因组成像(FGI),这是一种可视化工具,旨在帮助临床医生解释来自患者样本的RNA-Seq结果。FGI使用加权基因共表达网络分析(WGCNA),然后使用改进的表型聚类算法来识别共表达基因簇。这些基因模块被注释并投影到t-SNE图上进行可视化。FGI基因簇的注释显示了三种类型:组织特异性、功能性和定位性。这些聚类可用于构建具有预注释功能的肿瘤亚型。在多癌症队列水平上,组织特异性聚类丰富,而在单一癌症水平上,如肺癌或卵巢癌,位置聚类可能更加突出。此外,FGI分析还可以揭示临床记录中未记录的分子肿瘤亚型,并生成更详细的共表达基因簇图。基于不同水平的FGI建模,每个肿瘤样本都可以定制,以显示各种类型的信息,如组织来源、分子亚型、免疫激活状态、基质信号通路、细胞周期活性和潜在的扩增子区域,这些信息有助于诊断和指导治疗决策。我们的研究结果突出了FGI作为分子诊断中个性化医疗的强大可视化工具的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biology Direct
Biology Direct 生物-生物学
CiteScore
6.40
自引率
10.90%
发文量
32
审稿时长
7 months
期刊介绍: Biology Direct serves the life science research community as an open access, peer-reviewed online journal, providing authors and readers with an alternative to the traditional model of peer review. Biology Direct considers original research articles, hypotheses, comments, discovery notes and reviews in subject areas currently identified as those most conducive to the open review approach, primarily those with a significant non-experimental component.
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