基于随机森林特征选择的微阵列表达数据分析方法

Pub Date : 2015-07-01 DOI:10.1504/IJDMB.2015.070852
Dengju Yao, Jing Yang, Xiaojuan Zhan, Xiaorong Zhan, Zhiqiang Xie
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引用次数: 21

摘要

生物信息学研究中的高维数据和大量冗余特征对特征选择产生了迫切的需求。本文提出了一种新的基于随机森林的特征选择方法,该方法采用分层特征空间的思想,结合广义序列后向搜索和广义序列前向搜索策略。使用随机森林变量重要性评分对特征进行排序,并使用不同的分类器作为特征子集评估函数。在白血病、前列腺癌、乳腺癌、神经癌和DLBCL等5个微阵列表达数据集上进行检验,SVM分类器在这些数据集上的平均准确率分别为100%、95.24%、85%、91.67%和91.67%。结果表明,该方法不仅提高了分类精度,而且大大减少了特征选择过程的计算时间。
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A novel random forests-based feature selection method for microarray expression data analysis
High-dimensional data and a large number of redundancy features in bioinformatics research have created an urgent need for feature selection. In this paper, a novel random forests-based feature selection method is proposed that adopts the idea of stratifying feature space and combines generalised sequence backward searching and generalised sequence forward searching strategies. A random forest variable importance score is used to rank features, and different classifiers are used as a feature subset evaluating function. The proposed method is examined on five microarray expression datasets, including leukaemia, prostate, breast, nervous and DLBCL, and the average accuracies of the SVM classifier in these datasets are 100%, 95.24%, 85%, 91.67%, and 91.67%, respectively. The results show that the proposed method could not only improve the classification accuracy but also greatly reduce the computation time of the feature selection process.
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