Gorlov Ivan P, Byun Jinyoung, Zhao Hongya, Logothetis Christopher J, Gorlova Olga Y
Department of Genitourinary Medical Oncology, The University of Texas MD Anderson Cancer Center, Houston, Texas 77030-3721, USA.
J Bioinform Comput Biol. 2012 Apr;10(2):1241013. doi: 10.1142/S0219720012410132.
Identifying genes associated with cancer development is typically accomplished by comparing mean expression values in normal and tumor tissues, which identifies differentially expressed (DE) genes. Interindividual variation (IV) in gene expression is indirectly included in DE gene identification because given the same absolute differences in means, genes with lower variance tend to have lower p-values. We explored the direct use of IV in gene expression to identify candidate genes associated with cancer development. We focused on prostate (PCa) and lung (LC) cancers and compared IV in the expression level of genes shown to be cancer related with that in all other genes in the human genome. Compared with all those other genes, cancer-related genes tended to have greater IV in normal tissues and a greater increase in IV during the transition from normal to tumorous tissue. Genes without significantly different mean expression values between tumor and normal tissues but with greater IV in tumor than in normal tissue (note: the DE-based approach completely ignores those genes) had stronger associations with clinically important features like Gleason score in PCa or tumor histology in LC than all other genes were. Our results suggest that analyzing IV in gene expression level is useful in identifying novel candidate genes associated with cancer development.
识别与癌症发展相关的基因通常是通过比较正常组织和肿瘤组织中的平均表达值来完成的,这可以识别出差异表达(DE)基因。基因表达中的个体间变异(IV)在DE基因识别中被间接纳入,因为在均值的绝对差异相同的情况下,方差较低的基因往往具有较低的p值。我们探索了直接利用基因表达中的IV来识别与癌症发展相关的候选基因。我们聚焦于前列腺癌(PCa)和肺癌(LC),并比较了已显示与癌症相关的基因的表达水平的IV与人类基因组中所有其他基因的表达水平的IV。与所有其他基因相比,癌症相关基因在正常组织中往往具有更大的IV,并且在从正常组织向肿瘤组织转变过程中IV有更大的增加。在肿瘤组织和正常组织之间平均表达值没有显著差异,但在肿瘤组织中的IV比在正常组织中更大的基因(注意:基于DE的方法完全忽略了这些基因)与临床上重要的特征(如PCa中的Gleason评分或LC中的肿瘤组织学)的关联比所有其他基因更强。我们的结果表明,分析基因表达水平中的IV有助于识别与癌症发展相关的新候选基因。