Office of Cancer Clinical Proteomics Research, National Cancer Institute, National Institutes of Health, 31 Center Drive, MSC 2580, 20892 Bethesda, MD, USA.
Clin Proteomics. 2014 Jun 1;11(1):22. doi: 10.1186/1559-0275-11-22. eCollection 2014.
During the past several decades, the understanding of cancer at the molecular level has been primarily focused on mechanisms on how signaling molecules transform homeostatically balanced cells into malignant ones within an individual pathway. However, it is becoming more apparent that pathways are dynamic and crosstalk at different control points of the signaling cascades, making the traditional linear signaling models inadequate to interpret complex biological systems. Recent technological advances in high throughput, deep sequencing for the human genomes and proteomic technologies to comprehensively characterize the human proteomes in conjunction with multiplexed targeted proteomic assays to measure panels of proteins involved in biologically relevant pathways have made significant progress in understanding cancer at the molecular level. It is undeniable that proteomic profiling of differentially expressed proteins under many perturbation conditions, or between normal and "diseased" states is important to capture a first glance at the overall proteomic landscape, which has been a main focus of proteomics research during the past 15-20 years. However, the research community is gradually shifting its heavy focus from that initial discovery step to protein target verification using multiplexed quantitative proteomic assays, capable of measuring changes in proteins and their interacting partners, isoforms, and post-translational modifications (PTMs) in response to stimuli in the context of signaling pathways and protein networks. With a critical link to genotypes (i.e., high throughput genomics and transcriptomics data), new and complementary information can be gleaned from multi-dimensional omics data to (1) assess the effect of genomic and transcriptomic aberrations on such complex molecular machinery in the context of cell signaling architectures associated with pathological diseases such as cancer (i.e., from genotype to proteotype to phenotype); and (2) target pathway- and network-driven changes and map the fluctuations of these functional units (proteins) responsible for cellular activities in response to perturbation in a spatiotemporal fashion to better understand cancer biology as a whole system.
在过去的几十年中,对癌症的分子水平的理解主要集中在信号分子如何将稳态平衡的细胞转化为个体途径中的恶性细胞的机制上。然而,越来越明显的是,途径是动态的,并且在信号级联的不同控制点进行串扰,使得传统的线性信号模型不足以解释复杂的生物系统。最近在高通量、深度测序人类基因组和蛋白质组学技术方面的技术进步,以及与多指标靶向蛋白质组学检测相结合,以测量涉及生物学相关途径的蛋白质组,这些技术在分子水平上对癌症的理解取得了重大进展。不可否认的是,在许多扰动条件下或在正常和“疾病”状态之间对差异表达蛋白质进行蛋白质组学分析,对于捕捉整体蛋白质组学景观的全貌是很重要的,这一直是蛋白质组学研究的主要焦点在过去的 15-20 年。然而,研究界正逐渐将其重点从最初的发现阶段转移到使用多指标定量蛋白质组学检测来验证蛋白质靶标,这种检测能够测量蛋白质及其相互作用伙伴、同工型和翻译后修饰(PTMs)的变化,以及在信号通路和蛋白质网络的背景下对刺激的反应。通过与基因型(即高通量基因组学和转录组学数据)的关键联系,可以从多维组学数据中获取新的和补充信息,以评估基因组和转录组异常对与病理疾病(如癌症)相关的细胞信号结构中这种复杂分子机制的影响(即从基因型到蛋白质组型到表型);以及(2)靶向途径和网络驱动的变化,并绘制这些负责细胞活动的功能单元(蛋白质)的波动图,以时空方式响应扰动,从而更好地理解整个癌症生物学系统。