新一代肿瘤微环境反褶积技术的研究。

4区 生物学 Q4 Biochemistry, Genetics and Molecular Biology
Methods in cell biology Pub Date : 2025-01-01 Epub Date: 2025-02-06 DOI:10.1016/bs.mcb.2025.01.003
Lorenzo Merotto, Alexander Dietrich, Markus List, Francesca Finotello
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引用次数: 0

摘要

肿瘤微环境,特别是肿瘤浸润性免疫细胞可以深刻地影响肿瘤的进展和对治疗的反应。反褶积是一种强大的计算技术,可以利用特定于感兴趣的细胞类型的表达特征,从大量RNA测序(RNA-seq)数据中估计细胞类型分数。最近,新一代的反卷积算法已经出现,可以直接学习细胞类型特异性签名,用于从注释单细胞RNA-seq (scRNA-seq)数据集进行反卷积。由于它们的灵活性,这些下一代方法可以将反褶积扩展到任何细胞类型、组织和生物体,只要有合适的单细胞参考。然而,这些方法在编程语言、计算工作流和输入/输出数据方面是高度多样化的,这使得它们的使用和比较变得复杂。为了克服这些挑战,我们开发了omnideconv,这是一个R包,它集成了几种反卷积方法,简化了它们的使用并统一了它们的语义。在本章中,我们展示了omnideconv如何与一个带注释的scRNA-seq数据集(包括来自乳腺癌微环境的恶性细胞和正常细胞)相结合,以量化来自乳腺癌患者队列的大量RNA-seq数据的细胞组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Next-generation deconvolution of the tumor microenvironment with omnideconv.

The tumor microenvironment and, particularly, tumor-infiltrating immune cells can profoundly influence tumor progression and response to therapy. Deconvolution is a powerful computational technique to estimate cell-type fractions from bulk RNA sequencing (RNA-seq) data leveraging expression signatures specific to the cell types of interest. Recently, a new generation of deconvolution algorithms has emerged, making it possible to directly learn cell-type-specific signatures to be used for deconvolution from annotated single-cell RNA-seq (scRNA-seq) datasets. Thanks to their flexibility, these next-generation methods can extend deconvolution to any cell type, tissue, and organism for which a suitable single-cell reference is available. However, these methodologies are highly diverse in terms of programming languages, computational workflows, and input/output data, which complicate their usage and comparison. To overcome these challenges, we developed omnideconv, an R package that integrates several deconvolution methods, streamlining their usage and unifying their semantics. In this chapter, we demonstrate how omnideconv can be integrated with an annotated scRNA-seq dataset, comprising both malignant and normal cells from the breast cancer microenvironment, to quantify the cellular composition of bulk RNA-seq data from a cohort of breast cancer patients.

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来源期刊
Methods in cell biology
Methods in cell biology 生物-细胞生物学
CiteScore
3.10
自引率
0.00%
发文量
125
审稿时长
3 months
期刊介绍: For over fifty years, Methods in Cell Biology has helped researchers answer the question "What method should I use to study this cell biology problem?" Edited by leaders in the field, each thematic volume provides proven, state-of-art techniques, along with relevant historical background and theory, to aid researchers in efficient design and effective implementation of experimental methodologies. Over its many years of publication, Methods in Cell Biology has built up a deep library of biological methods to study model developmental organisms, organelles and cell systems, as well as comprehensive coverage of microscopy and other analytical approaches.
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