规范化(社会学)
基因签名
虚假关系
肺癌
基因表达谱
计算生物学
肿瘤科
微阵列分析技术
阶段(地层学)
基因表达
签名(拓扑)
计算机科学
基因
生物信息学
生物
医学
数学
机器学习
遗传学
古生物学
几何学
社会学
人类学
作者
Lishuang Qi,Libin Chen,Yang Li,Yuan Qin,Rufei Pan,Wenyuan Zhao,Yunyan Gu,Hongwei Wang,Linghua Wang,Xiangqi Chen,Zheng Guo
摘要
Most of current gene expression signatures for cancer prognosis are based on risk scores, usually calculated as some summaries of expression levels of the signature genes, whose applications require presetting risk score thresholds and data normalization. In this study, we demonstrate the critical limitations of such type of signatures that the risk scores of samples will change greatly when they are normalized together with different samples, which would induce spurious risk classification and difficulty in clinical settings, and the risk scores of independent samples are incomparable if data normalization is not adopted. To overcome these limitations, we propose a rank-based method to extract a prognostic gene pair signature for overall survival of stage I non-small-cell lung cancer. The prognostic gene pair signature is verified in three integrated data sets detected by different laboratories with different microarray platforms. We conclude that, different from the type of signatures based on risk scores summarized from gene expression levels, the rank-based signatures could be robustly applied at the individualized level to independent clinical samples assessed in different laboratories.
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