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Consistency and overfitting of multi-omics methods on experimental data

机译:多组学方法在实验数据上的一致性和过度拟合

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摘要

Knowledge on the relationship between different biological modalities (RNA, chromatin, etc.) can help further our understanding of the processes through which biological components interact. The ready availability of multi-omics datasets has led to the development of numerous methods for identifying sources of common variation across biological modalities. However, evaluation of the performance of these methods, in terms of consistency, has been difficult because most methods are unsupervised. We present a comparison of sparse multiple canonical correlation analysis (Sparse mCCA), angle-based joint and individual variation explained (AJIVE) and multi-omics factor analysis (MOFA) using a cross-validation approach to assess overfitting and consistency. Both large and small-sample datasets were used to evaluate performance, and a permuted null dataset was used to identify overfitting through the application of our framework and approach. In the large-sample setting, we found that all methods demonstrated consistency and lack of overfitting; however, in the small-sample size setting, AJIVE provided the most stable results. We provide an R package so that our framework and approach can be applied to evaluate other methods and datasets.
机译:有关不同生物形态(RNA,染色质等)之间关系的知识可以帮助我们进一步了解生物成分相互作用的过程。多组学数据集的现成可用性已导致开发了许多方法,用于识别跨生物形式的共同变异的来源。但是,由于大多数方法是无监督的,因此就一致性而言,很难评估这些方法的性能。我们提出了使用交叉验证方法评估过度拟合和一致性的稀疏多规范相关分析(Sparse mCCA),基于角度的关节和个体变异解释(AJIVE)和多组学因子分析(MOFA)的比较。大样本数据集和小样本数据集都用于评估性能,而排列的空数据集则通过应用我们的框架和方法来识别过度拟合。在大样本环境中,我们发现所有方法都显示出一致性,并且没有过度拟合;但是,在小样本量设置中,AJIVE提供了最稳定的结果。我们提供一个R包,以便我们的框架和方法可以应用于评估其他方法和数据集。

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