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Removing batch effects for prediction problems with frozen surrogate variable analysis

机译:使用冻结替代变量分析消除批处理效应来预测问题

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摘要

Batch effects are responsible for the failure of promising genomic prognostic signatures, major ambiguities in published genomic results, and retractions of widely-publicized findings. Batch effect corrections have been developed to remove these artifacts, but they are designed to be used in population studies. But genomic technologies are beginning to be used in clinical applications where samples are analyzed one at a time for diagnostic, prognostic, and predictive applications. There are currently no batch correction methods that have been developed specifically for prediction. In this paper, we propose an new method called frozen surrogate variable analysis (fSVA) that borrows strength from a training set for individual sample batch correction. We show that fSVA improves prediction accuracy in simulations and in public genomic studies. fSVA is available as part of the sva Bioconductor package.
机译:批量效应是导致有希望的基因组预后签名失败,已发表的基因组结果存在重大歧义,以及广为人知的发现被撤消的原因。已经开发了批效应校正来消除这些伪影,但是它们被设计用于人口研究。但是基因组技术已开始用于临床应用中,其中一次分析一个样本以用于诊断,预后和预测性应用。当前没有专门针对预测开发的批处理校正方法。在本文中,我们提出了一种称为冻结替代变量分析(fSVA)的新方法,该方法借鉴了训练集的强度来进行单个样本批次校正。我们表明,fSVA在模拟和公共基因组研究中提高了预测准确性。 fSVA是sva Bioconductor软件包的一部分。

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