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Random forest: A reliable tool for patient response prediction

机译:随机森林:患者响应预测的可靠工具

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The goal of classification is to reliably identify instances that are members of the class of interest. This is especially important for predicting patient response to drugs. However, with high dimensional datasets, classification is both complicated and enhanced by the feature selection process. When designing a classification experiment there are a number of decisions which need to be made in order to maximize performance. These decisions are especially difficult for researchers in fields where data mining is not the focus, such as patient response prediction. It would be easier for such researchers to make these decisions if either their outcomes were chosen or their scope reduced, by using a learner which minimizes the impact of these decisions. We propose that Random Forest, a popular ensemble learner, can serve this role. We performed an experiment involving nineteen different feature selection rankers (eleven of which were proposed and implemented by our research team) to thoroughly test both the Random Forest learner and five other learners. Our research shows that, as long as a large enough number of features are used, the results of using Random Forest are favorable regardless of the choice of feature selection strategy, showing that Random Forest is a suitable choice for patient response prediction researchers who want to do not wish to choose from amongst a myriad of feature selection approaches.
机译:分类的目标是可靠地标识是兴趣类别的实例。这对于预测对药物的患者反应尤为重要。但是,通过高维数据集,分类既由特征选择过程也复杂且增强。在设计分类实验时,存在许多需要进行的决定,以便最大化性能。这些决定对于数据挖掘不是焦点的领域的研究人员特别困难,例如患者响应预测。这些研究人员可以更容易,如果选择其结果或其范围减少,通过使用学习者可以减少这些决定的影响。我们提出随机森林,一个受欢迎的集合学习者,可以服务这个角色。我们进行了一个涉及19个不同的特征选择排名的实验(由我们的研究团队提出和实施)彻底测试随机森林学习者和其他五位学习者。 Our research shows that, as long as a large enough number of features are used, the results of using Random Forest are favorable regardless of the choice of feature selection strategy, showing that Random Forest is a suitable choice for patient response prediction researchers who want to不希望在无数的特征选择方法中选择。

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