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Gene Expression Signatures Based on Variability can Robustly Predict Tumor Progression and Prognosis

机译:基于变异性的基因表达签名可以稳健地预测肿瘤的进展和预后

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Gene expression signatures are commonly used to create cancer prognosis and diagnosis methods, yet only a small number of them are successfully deployed in the clinic since many fail to replicate performance on subsequent validation. A primary reason for this lack of reproducibility is the fact that these signatures attempt to model the highly variable and unstable genomic behavior of cancer. Our group recently introduced gene expression anti-profiles as a robust methodology to derive gene expression signatures based on the observation that while gene expression measurements are highly heterogeneous across tumors of a specific cancer type relative to the normal tissue, their degree of deviation from normal tissue expression in specific genes involved in tissue differentiation is a stable tumor mark that is reproducible across experiments and cancer types. Here we show that constructing gene expression signatures based on variability and the anti-profile approach yields classifiers capable of successfully distinguishing benign growths from cancerous growths based on deviation from normal expression. We then show that this same approach generates stable and reproducible signatures that predict probability of relapse and survival based on tumor gene expression. These results suggest that using the anti-profile framework for the discovery of genomic signatures is an avenue leading to the development of reproducible signatures suitable for adoption in clinical settings.
机译:基因表达签名通常用于创建癌症的预后和诊断方法,但由于在后续的验证中许多无法复制性能,因此只有少数基因表达签名可以成功地部署到临床中。缺乏可重复性的主要原因是这些标记试图模拟癌症的高度可变和不稳定的基因组行为。我们的小组最近引入了基因表达反谱作为一种可靠的方法来得出基因表达特征,其依据是以下观察结果:尽管特定癌症类型的肿瘤相对于正常组织的基因表达测量值高度异质,但它们与正常组织的偏离程度在与组织分化有关的特定基因中的表达是稳定的肿瘤标记,可在实验和癌症类型之间重现。在这里,我们显示了基于变异性和反谱方法构建基因表达特征产生的分类器能够基于与正常表达的差异,成功地将良性生长与癌性生长区分开。然后,我们显示该相同方法可生成稳定且可重现的签名,这些签名可根据肿瘤基因表达预测复发和存活的可能性。这些结果表明,使用反谱框架来发现基因组特征是开发适用于临床环境的可再现特征的途径。

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