Moody Laura, Mantha Suparna, Chen Hong, Pan Yuan-Xiang
Division of Nutritional Sciences, University of Illinois at Urbana-Champaign, Urbana, IL 61801, United States.
Carle Physician Group, Carle Cancer Center, Carle Foundation Hospital, Urbana, IL 61802, United States.
J Biomed Inform. 2019;100S:100001. doi: 10.1016/j.yjbinx.2018.100001. Epub 2018 Dec 14.
Standard methods for detecting cancer-associated genes rely on comparison of sample means between cancer patients and healthy controls. While such methods have successfully identified several oncogenes and tumor suppressor genes, they neglect to account for heterogeneity within the cancer population. Genetic mutations, translocations, and amplifications are often inconsistent across tumors, and instead they often affect smaller subsets of patients. This concept gives rise to the idea of bimodally expressed genes, or genes that display two modes of expression within one population. Analysis of bimodal gene expression has been explored via a variety of techniques including test statistics and clustering. In this review, we summarize the methodologies used to quantify bimodal gene expression and address the utility of these genes in patient stratification and specialized therapeutics in breast and lung cancer. Finally we discuss the limitations and future directions for bimodal genes in the era of high-throughput sequencing and personalized medicine.
检测癌症相关基因的标准方法依赖于癌症患者与健康对照之间样本均值的比较。虽然这些方法已成功鉴定出几种癌基因和肿瘤抑制基因,但它们忽略了癌症群体内部的异质性。基因突变、易位和扩增在肿瘤之间往往不一致,相反,它们通常影响较小的患者亚群。这一概念引出了双峰表达基因的概念,即在一个群体中显示两种表达模式的基因。通过包括检验统计和聚类在内的多种技术对双峰基因表达进行了分析。在本综述中,我们总结了用于量化双峰基因表达的方法,并探讨了这些基因在乳腺癌和肺癌患者分层及个性化治疗中的效用。最后,我们讨论了高通量测序和个性化医学时代双峰基因的局限性和未来方向。