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Detecting hidden batch factors through data-adaptive adjustment for biological effects

机译:通过数据自适应调整来检测隐藏的批次因子以实现生物学效应

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摘要

MotivationBatch effects are one of the major source of technical variations that affect the measurements in high-throughput studies such as RNA sequencing. It has been well established that batch effects can be caused by different experimental platforms, laboratory conditions, different sources of samples and personnel differences. These differences can confound the outcomes of interest and lead to spurious results. A critical input for batch correction algorithms is the knowledge of batch factors, which in many cases are unknown or inaccurate. Hence, the primary motivation of our paper is to detect hidden batch factors that can be used in standard techniques to accurately capture the relationship between gene expression and other modeled variables of interest.
机译:MotivationBatch效应是影响高通量研究(例如RNA测序)中的测量的技术变化的主要来源之一。众所周知,批次效应可能是由不同的实验平台,实验室条件,不同的样品来源和人员差异引起的。这些差异可能会混淆感兴趣的结果并导致虚假结果。批处理校正算法的关键输入是批处理因素的知识,在许多情况下,这些因素是未知的或不准确的。因此,本文的主要动机是检测可用于标准技术中的隐式批处理因子,以准确捕获基因表达与其他模型化关注变量之间的关系。

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