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Lack of sufficiently strong informative features limits the potential of gene expression analysis as predictive tool for many clinical classification problems

机译:缺乏足够强大的信息功能限制了基因表达分析作为许多临床分类问题的预测工具的潜力

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摘要

BackgroundOur goal was to examine how various aspects of a gene signature influence the success of developing multi-gene prediction models. We inserted gene signatures into three real data sets by altering the expression level of existing probe sets. We varied the number of probe sets perturbed (signature size), the fold increase of mean probe set expression in perturbed compared to unperturbed data (signature strength) and the number of samples perturbed. Prediction models were trained to identify which cases had been perturbed. Performance was estimated using Monte-Carlo cross validation.
机译:背景我们的目标是研究基因签名的各个方面如何影响开发多基因预测模型的成功。通过改变现有探针集的表达水平,我们将基因签名插入了三个真实数据集中。我们改变了被干扰的探针组的数量(签名大小),与未干扰的数据相比(被签名的强度),被干扰的平均探针组表达的增加倍数和被干扰的样本数量。对预测模型进行了训练,以识别哪些案例受到了干扰。使用蒙特卡洛交叉验证来评估性能。

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