A Gold Standard-Derived Modular Barcoding Approach to Cancer Transcriptomics

Cancers Pub Date : 2024-05-15 DOI:10.3390/cancers16101886
Yan Zhu, M. Koleilat, J. Roszik, Man Kam Kwong, Zhonglin Wang, D. Maru, S. Kopetz, Lawrence N. Kwong
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Abstract

A challenge with studying cancer transcriptomes is in distilling the wealth of information down into manageable portions of information. In this resource, we develop an approach that creates and assembles cancer type-specific gene expression modules into flexible barcodes, allowing for adaptation to a wide variety of uses. Specifically, we propose that modules derived organically from high-quality gold standards such as The Cancer Genome Atlas (TCGA) can accurately capture and describe functionally related genes that are relevant to specific cancer types. We show that such modules can: (1) uncover novel gene relationships and nominate new functional memberships, (2) improve and speed up analysis of smaller or lower-resolution datasets, (3) re-create and expand known cancer subtyping schemes, (4) act as a “decoder” to bridge seemingly disparate established gene signatures, and (5) efficiently apply single-cell RNA sequencing information to other datasets. Moreover, such modules can be used in conjunction with native spreadsheet program commands to create a powerful and rapid approach to hypothesis generation and testing that is readily accessible to non-bioinformaticians. Finally, we provide tools for users to create and interpret their own modules. Overall, the flexible modular nature of the proposed barcoding provides a user-friendly approach to rapidly decoding transcriptome-wide data for research or, potentially, clinical uses.
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癌症转录组学的黄金标准模块化条形码方法
癌症转录组研究面临的一个挑战是如何将大量信息提炼成易于管理的信息部分。在本资源中,我们开发了一种方法,可以创建癌症类型特异性基因表达模块并将其组装成灵活的条形码,从而适应各种用途。具体来说,我们建议从癌症基因组图谱(The Cancer Genome Atlas,TCGA)等高质量黄金标准中有机提取的模块可以准确捕捉和描述与特定癌症类型相关的功能相关基因。我们的研究表明,此类模块可以(1) 发现新的基因关系并提名新的功能成员,(2) 改进并加快对较小或较低分辨率数据集的分析,(3) 重新创建并扩展已知的癌症亚型方案,(4) 作为 "解码器 "连接看似不同的既定基因特征,以及 (5) 高效地将单细胞 RNA 测序信息应用于其他数据集。此外,这些模块还可与本地电子表格程序命令结合使用,为非生物信息学家提供一种强大而快速的假设生成和测试方法。最后,我们还为用户创建和解释自己的模块提供了工具。总之,条形码灵活的模块化特性为快速解码整个转录组的数据提供了一种用户友好型方法,可用于研究或潜在的临床用途。
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