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Prediction Errors in Learning Drug Response from Gene Expression Data – Influence of Labeling Sample Size and Machine Learning Algorithm

机译:从基因表达数据学习药物反应中的预测错误–标记样本量和机器学习算法的影响

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摘要

Model-based prediction is dependent on many choices ranging from the sample collection and prediction endpoint to the choice of algorithm and its parameters. Here we studied the effects of such choices, exemplified by predicting sensitivity (as IC50) of cancer cell lines towards a variety of compounds. For this, we used three independent sample collections and applied several machine learning algorithms for predicting a variety of endpoints for drug response. We compared all possible models for combinations of sample collections, algorithm, drug, and labeling to an identically generated null model. The predictability of treatment effects varies among compounds, i.e. response could be predicted for some but not for all. The choice of sample collection plays a major role towards lowering the prediction error, as does sample size. However, we found that no algorithm was able to consistently outperform the other and there was no significant difference between regression and two- or three class predictors in this experimental setting. These results indicate that response-modeling projects should direct efforts mainly towards sample collection and data quality, rather than method adjustment.
机译:基于模型的预测取决于许多选择,范围从样本收集和预测终点到算法及其参数的选择。在这里,我们研究了这种选择的效果,以预测癌细胞系对多种化合物的敏感性(以IC50表示)为例。为此,我们使用了三个独立的样本集合,并应用了几种机器学习算法来预测药物反应的各种终点。我们将样本收集,算法,药物和标签组合的所有可能模型与相同生成的空模型进行了比较。化合物之间治疗效果的可预测性各不相同,即可以预测某些药物的反应,而不是全部药物的反应。样本收集的选择和样本量一样,在降低预测误差方面起着重要作用。但是,我们发现,在该实验环境中,没有一种算法能够始终如一地胜过其他算法,并且回归与两级或三级预测变量之间没有显着差异。这些结果表明,响应模型项目应将工作重点直接放在样本收集和数据质量上,而不是方法调整上。

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