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DBNorm: normalizing high-density oligonucleotide microarray data based on distributions

机译:DBNorm:基于分布归一化高密度寡核苷酸微阵列数据

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Data from patients with rare diseases is often produced using different platforms and probe sets because patients are widely distributed in space and time. Aggregating such data requires a method of normalization that makes patient records comparable. This paper proposed DBNorm, implemented as an R package, is an algorithm that normalizes arbitrarily distributed data to a common, comparable form. Specifically, DBNorm merges data distributions by fitting functions to each of them, and using the probability of each element drawn from the fitted distribution to merge it into a global distribution. DBNorm contains state-of-the-art fitting functions including Polynomial, Fourier and Gaussian distributions, and also allows users to define their own fitting functions if required. The performance of DBNorm is compared with z-score, average difference, quantile normalization and ComBat on a set of datasets, including several that are publically available. The performance of these normalization methods are compared using statistics, visualization, and classification when class labels are known based on a number of self-generated and public microarray datasets. The experimental results show that DBNorm achieves better normalization results than conventional methods. Finally, the approach has the potential to be applicable outside bioinformatics analysis.
机译:由于患者在时空上分布广泛,因此经常使用不同的平台和探针集来获得来自罕见疾病患者的数据。汇总此类数据需要一种使患者记录具有可比性的标准化方法。本文提出的DBNorm(作为R包实现)是一种将任意分布的数据规范化为常见的可比较形式的算法。具体来说,DBNorm通过对每个函数拟合函数来合并数据分布,并使用从拟合的分布中提取的每个元素的概率将其合并为全局分布。 DBNorm包含最新的拟合函数,包括多项式,傅立叶和高斯分布,并且还允许用户根据需要定义自己的拟合函数。将DBNorm的性能与z得分,平均差,分位数归一化和ComBat在一组数据集中进行比较,其中包括一些公开可用的数据集。当基于许多自生成的和公共的微阵列数据集知道类标签时,将使用统计量,可视化和分类来比较这些归一化方法的性能。实验结果表明,DBNorm比常规方法具有更好的归一化结果。最后,该方法有可能在生物信息学分析之外适用。

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