Yan Bin, Broek Robert Vander, Saleh Anthony D, Mehta Arpita, Van Waes Carter, Chen Zhong
Department of Biology, Hong Kong Baptist University, Kowloon, Hong Kong, China.
Tumor Biology Section, Head and Neck Surgery Branch, National Institute on Deafness and Other Communication Disorders, NIH, Bethesda, MD USA ; NIH Medical Research Scholars Program, Bethesda, MD USA.
J Carcinog Mutagen. 2013 Aug 5;Suppl 7:4. doi: 10.4172/2157-2518.S7-004.
Head and neck squamous cell carcinoma (HNSCC) arises from the upper aerodigestive tract and is the six most common cancers worldwide. HNSCC is associated with high morbidity and mortality, as standard surgery, radiation, and chemotherapy can cause significant disfigurement and only provide 5-year survival rates of ~50-60%. The heterogeneity of HNSCC subsets with different potentials for recurrence and metastasis challenges the traditional pathological classification system, thereby increasing demand for the development of new diagnostic, prognostic, and therapeutic tools based on global molecular signatures of HNSCC. Historically, using classical biological techniques, it has been extremely difficult and time-consuming to survey hundreds or thousands of genes in a given disease. However, the development of high throughput technologies and high-powered computation throughout the last two decades has enabled us to investigate hundreds or thousands of genes simultaneously. Using high throughput technologies, our laboratory has identified the gene signatures and protein networks, which significantly affect HNSCC malignant phenotypes, including TP53/p63/p73 family members, IL-1/TNF-β/NF-κB, PI3K/AKT/mTOR, IL-6/IL-6R/JAK/STAT3, EGFR/MAPK/AP1, HGF/cMET/EGR1, and TGFβ/TGFβR/TAK1/SMAD pathways. This review summarizes the results from high-throughput technological assays conducted on HNSCC samples, including microarray, DNA methylation, miRNA profiling, and protein array, using primarily experimental data and conclusions generated in our own laboratory. The use of bioinformatics and integrated analyses of data sets from different platforms, as well as meta-analysis of large datasets pulled from multiple publicly available studies, provided significantly higher statistical power to extract biologically relevant information. The data suggested that the heterogeneity of HNSCC genotype and phenotype are much more complex than we previously thought. Understanding of global molecular signatures and disease classification for specific subsets of HNSCC will be essential to provide accurate diagnoses for targeted therapy and personalized treatment, which is an important effort toward improving patient outcomes.
头颈部鳞状细胞癌(HNSCC)起源于上呼吸消化道,是全球第六大常见癌症。HNSCC的发病率和死亡率都很高,因为标准的手术、放疗和化疗会导致严重的毁容,且5年生存率仅为50% - 60%左右。HNSCC亚群在复发和转移潜力方面存在异质性,这对传统病理分类系统构成了挑战,从而增加了基于HNSCC整体分子特征开发新的诊断、预后和治疗工具的需求。从历史上看,使用经典生物学技术在特定疾病中检测数百或数千个基因极其困难且耗时。然而,在过去二十年中高通量技术和高性能计算的发展使我们能够同时研究数百或数千个基因。利用高通量技术,我们实验室已经确定了显著影响HNSCC恶性表型的基因特征和蛋白质网络,包括TP53/p63/p73家族成员、IL-1/TNF-β/NF-κB、PI3K/AKT/mTOR、IL-6/IL-6R/JAK/STAT3、EGFR/MAPK/AP1、HGF/cMET/EGR1以及TGFβ/TGFβR/TAK1/SMAD信号通路。本综述主要利用我们自己实验室产生的实验数据和结论,总结了对HNSCC样本进行的高通量技术检测结果,包括微阵列、DNA甲基化、miRNA谱分析和蛋白质阵列。生物信息学的应用以及对来自不同平台数据集的综合分析,以及对从多个公开可用研究中提取的大型数据集的荟萃分析,提供了显著更高的统计能力来提取生物学相关信息。数据表明,HNSCC基因型和表型的异质性比我们之前认为的要复杂得多。了解HNSCC特定亚群的整体分子特征和疾病分类对于提供准确的诊断以进行靶向治疗和个性化治疗至关重要,这是改善患者预后的一项重要工作。