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Prediction of Stage, Grade, and Survival in Bladder Cancer Using Genome-wide Expression Data: A Validation Study

机译:全基因组表达数据预测膀胱癌的分期,分级和生存率:一项验证研究

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Purpose: To evaluate performances of published gene signatures for the assessment of urothelial carcinoma.Experimental Design: We evaluated 28 published gene signatures designed for diagnostic and prognostic purposes of urothelial cancer. The investigated signatures include eight signatures for stage, five for grade, four for progression, and six for survival. We used two algorithms for classification, nearest centroid classification and support vector machine, and Cox regression to evaluate signature performance in four independent data sets.Results: The overlap of genes among the signatures was low, ranging from 11% among stage signatures to 0.6% among survival signatures. The published signatures predicted muscle-invasive and high-grade tumors with accuracies in the range of 70% to 90%. The performance for a given signature varied considerably with the validation data set used, and interestingly, some of the best performing signatures were not designed for the tested classification problem. In addition, several nonbladder-derived gene signatures performed equally well. Large randomly selected gene signatures performed better than the published signatures, and by systematically increasing signature size, we show that signatures with >150 genes are needed to obtain robust performance in independent validation data sets. None of the published survival signatures performed better than random assignments when applied to independent validation data.Conclusion: We conclude that gene expression signatures with >150 genes predict muscle-invasive growth and high-grade tumors with robust accuracies. Special considerations have to be taken when designing gene signatures for outcome in bladder cancer.
机译:目的:评估已发表的基因签名用于评估尿路上皮癌的性能。实验设计:我们评估了28种已发布的基因签名,这些签名用于尿路上皮癌的诊断和预后。被调查的签名包括八个签名,分别代表五个阶段,五个等级,四个进展和六个存活。我们使用两种算法进行分类,最接近质心分类和支持向量机,以及Cox回归来评估四个独立数据集中的签名性能。结果:签名之间的基因重叠率很低,范围从阶段签名之间的11%到0.6%在生存特征中。公开的签名预测了肌肉浸润性和高级别肿瘤的准确性在70%至90%的范围内。给定签名的性能随所使用的验证数据集的不同而有很大差异,有趣的是,某些性能最好的签名并非针对测试的分类问题而设计。另外,几个非膀胱衍生的基因签名同样表现良好。随机选择的大型基因签名的性能要优于已发布的签名,并且通过系统地增加签名的大小,我们显示,需要> 150个基因的签名才能在独立的验证数据集中获得强大的性能。结论:我们得出结论认为,具有> 150个基因的基因表达签名可以预测肌肉侵袭性生长和具有高准确性的高级肿瘤。在设计膀胱癌预后的基因特征时,必须特别注意。

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