Comparison of merging strategies for building machine learning models on multiple independent gene expression data sets

J. Krepel, Magdalena Kircher, Moritz Kohls, K. Jung
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引用次数: 1

Abstract

High‐dimensional gene expression data are regularly studied for their ability to separate different groups of samples by means of machine learning (ML) models. Meanwhile, a large number of such data are publicly available. Several approaches for meta‐analysis on independent sets of gene expression data have been proposed, mainly focusing on the step of feature selection, a typical step in fitting a ML model. Here, we compare different strategies of merging the information of such independent data sets to train a classifier model. Specifically, we compare the strategy of merging data sets directly (strategy A), and the strategy of merging the classification results (strategy B). We use simulations with pure artificial data as well as evaluations based on independent gene expression data from lung fibrosis studies to compare the two merging approaches. In the simulations, the number of studies, the strength of batch effects, and the separability are varied. The comparison incorporates five standard ML techniques typically used for high‐dimensional data, namely discriminant analysis, support vector machines, least absolute shrinkage and selection operator, random forest, and artificial neural networks. Using cross‐study validations, we found that direct data merging yields higher accuracies when having training data of three or four studies, and merging of classification results performed better when having only two training studies. In the evaluation with the lung fibrosis data, both strategies showed a similar performance.
在多个独立基因表达数据集上构建机器学习模型的合并策略比较
人们经常研究高维基因表达数据,因为它们能够通过机器学习(ML)模型分离不同的样本组。与此同时,大量此类数据是公开的。已经提出了几种对独立基因表达数据集进行元分析的方法,主要集中在特征选择步骤,这是拟合ML模型的典型步骤。在这里,我们比较了合并这些独立数据集的信息来训练分类器模型的不同策略。具体来说,我们比较了直接合并数据集的策略(策略A)和合并分类结果的策略(策略B)。我们使用纯人工数据的模拟以及基于肺纤维化研究中独立基因表达数据的评估来比较两种合并方法。在模拟中,研究的数量、批效应的强度和可分离性是不同的。比较采用了五种通常用于高维数据的标准机器学习技术,即判别分析、支持向量机、最小绝对收缩和选择算子、随机森林和人工神经网络。使用交叉研究验证,我们发现当有三个或四个研究的训练数据时,直接数据合并产生更高的准确性,当只有两个训练研究时,合并分类结果表现更好。在肺纤维化数据的评估中,两种策略显示出相似的性能。
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