Guan Qingzhou, Chen Rou, Yan Haidan, Cai Hao, Guo You, Li Mengyao, Li Xiangyu, Tong Mengsha, Ao Lu, Li Hongdong, Hong Guini, Guo Zheng
Key Laboratory of Ministry of Education for Gastrointestinal Cancer, Department of Bioinformatics, Fujian Medical University, Fuzhou 350001, China.
Department of Preventive Medicine, School of Basic Medicine Sciences, Gannan Medical University, Ganzhou, 341000, China.
Oncotarget. 2016 Oct 18;7(42):68909-68920. doi: 10.18632/oncotarget.11996.
The highly stable within-sample relative expression orderings (REOs) of gene pairs in a particular type of human normal tissue are widely reversed in the cancer condition. Based on this finding, we have recently proposed an algorithm named RankComp to detect differentially expressed genes (DEGs) for individual disease samples measured by a particular platform. In this paper, with 461 normal lung tissue samples separately measured by four commonly used platforms, we demonstrated that tens of millions of gene pairs with significantly stable REOs in normal lung tissue can be consistently detected in samples measured by different platforms. However, about 20% of stable REOs commonly detected by two different platforms (e.g., Affymetrix and Illumina platforms) showed inconsistent REO patterns due to the differences in probe design principles. Based on the significantly stable REOs (FDR<0.01) for normal lung tissue consistently detected by the four platforms, which tended to have large rank differences, RankComp detected averagely 1184, 1335 and 1116 DEGs per sample with averagely 96.51%, 95.95% and 94.78% precisions in three evaluation datasets with 25, 57 and 58 paired lung cancer and normal samples, respectively. Individualized pathway analysis revealed some common and subtype-specific functional mechanisms of lung cancer. Similar results were observed for colorectal cancer. In conclusion, based on the cross-platform significantly stable REOs for a particular normal tissue, differentially expressed genes and pathways in any disease sample measured by any of the platforms can be readily and accurately detected, which could be further exploited for dissecting the heterogeneity of cancer.
在特定类型的人类正常组织中,基因对高度稳定的样本内相对表达顺序(REO)在癌症状态下广泛逆转。基于这一发现,我们最近提出了一种名为RankComp的算法,用于检测通过特定平台测量的个体疾病样本中的差异表达基因(DEG)。在本文中,我们使用四个常用平台分别测量了461个正常肺组织样本,结果表明,在正常肺组织中具有显著稳定REO的数千万基因对能够在不同平台测量的样本中被一致检测到。然而,由于探针设计原则的差异,两个不同平台(如Affymetrix和Illumina平台)共同检测到的约20%的稳定REO显示出不一致的REO模式。基于四个平台一致检测到的正常肺组织中显著稳定的REO(FDR<0.01),这些REO往往具有较大的秩差异,RankComp在分别包含25、57和58对肺癌和正常样本的三个评估数据集中,每个样本平均检测到1184、1335和1116个DEG,平均精度分别为96.51%、95.95%和94.78%。个性化通路分析揭示了肺癌的一些共同和亚型特异性功能机制。在结直肠癌中也观察到了类似的结果。总之,基于特定正常组织的跨平台显著稳定REO,可以轻松、准确地检测通过任何平台测量的任何疾病样本中的差异表达基因和通路,这可进一步用于剖析癌症的异质性。