Deciphering Human Tumor Biology by Single-Cell Expression Profiling

IF 4.7 2区 医学 Q1 ONCOLOGY
I. Tirosh, M. Suvà
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引用次数: 38

Abstract

Human tumors are complex ecosystems where diverse cancer and noncancer cells interact to determine tumor biology and response to therapies. Genomic and transcriptomic methods have traditionally profiled these intricate ecosystems as bulk samples, thereby masking individual cellular programs and the variability among them. Recent advances in single-cell profiling have paved the way for studying tumors at the resolution of individual cells, providing a compelling strategy to bridge gaps in our understanding of human tumors. Here, we review methodologies for single-cell expression profiling of tumors and the initial studies deploying them in clinical contexts. We highlight how these studies uncover new biology and provide insights into drug resistance, stem cell programs, metastasis, and tumor classifications. We also discuss areas of technology development in single-cell genomics that provide new tools to address key questions in cancer biology. These emerging studies and technologies have the potential to revolutionize our understanding and management of human malignancies.
通过单细胞表达谱解读人类肿瘤生物学
人类肿瘤是一个复杂的生态系统,不同的癌细胞和非癌细胞相互作用,决定肿瘤生物学和对治疗的反应。基因组学和转录组学方法传统上将这些复杂的生态系统作为大样本进行分析,从而掩盖了单个细胞程序和它们之间的可变性。单细胞分析的最新进展为在单个细胞的分辨率下研究肿瘤铺平了道路,为我们对人类肿瘤的理解提供了一个令人信服的策略。在这里,我们回顾了肿瘤单细胞表达谱的方法以及在临床环境中应用它们的初步研究。我们强调这些研究如何揭示新的生物学,并为耐药性、干细胞程序、转移和肿瘤分类提供见解。我们还讨论了单细胞基因组学的技术发展领域,为解决癌症生物学中的关键问题提供了新的工具。这些新兴的研究和技术有可能彻底改变我们对人类恶性肿瘤的理解和管理。
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来源期刊
CiteScore
14.50
自引率
1.30%
发文量
13
期刊介绍: The Annual Review of Cancer Biology offers comprehensive reviews on various topics within cancer research, covering pivotal and emerging areas in the field. As our understanding of cancer's fundamental mechanisms deepens and more findings transition into targeted clinical treatments, the journal is structured around three main themes: Cancer Cell Biology, Tumorigenesis and Cancer Progression, and Translational Cancer Science. The current volume of this journal has transitioned from gated to open access through Annual Reviews' Subscribe to Open program, ensuring all articles are published under a CC BY license.
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