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An efficient gene selection method for microarray data based on LASSO and BPSO

机译:基于套索和BPSO的微阵列数据有效基因选择方法

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BACKGROUND:The main goal of successful gene selection for microarray data is to find compact and predictive gene subsets which could improve the accuracy. Though a large pool of available methods exists, selecting the optimal gene subset for accurate classification is still very challenging for the diagnosis and treatment of cancer.RESULTS:To obtain the most predictive genes subsets without filtering out critical genes, a gene selection method based on least absolute shrinkage and selection operator (LASSO) and an improved binary particle swarm optimization (BPSO) is proposed in this paper. To avoid overfitting of LASSO, the initial gene pool is divided into clusters based on their structure. LASSO is then employed to select high predictive genes and further calculate the contribution value which indicates the genes' sensitivity to samples' classes. With the second-level gene pool established by double filter strategy, the BPSO encoding the contribution information obtained from LASSO is improved to perform gene selection. Moreover, from the perspective of the bit change probability, a new mapping function is defined to guide the updating of the particle to select the more predictive genes in the improved BPSO.CONCLUSIONS:With the compact gene pool obtained by double filter strategies, the improved BPSO could select the optimal gene subsets with high probability. The experimental results on several public microarray data with extreme learning machine verify the effectiveness of the proposed method compared to the relevant methods.
机译:背景:用于微阵列数据成功选择的主要目标是找到可以提高准确性的紧凑且预测的基因子集。尽管存在大量的可用方法,选择最佳基因子集,用于准确分类仍然非常具有挑战性,对癌症的诊断和治疗仍然非常具有挑战性。结果:在不滤除临界基因的情况下获得最高预测的基因子集,基因选择方法本文提出了至少绝对绝对收缩和选择操作员(套索)和改进的二元粒子群优化(BPSO)。为避免套索过度,初始基因池基于它们的结构分成簇。然后使用套索来选择高预测基因并进一步计算表明对样本类的基因的贡献值。利用由双滤波器建立的二级基因池,改善了从套索获得的贡献信息的BPSO得到改善以进行基因选择。此外,从钻头变化概率的角度来看,定义了一种新的映射功能,以指导颗粒的更新,以选择改进的BPSO的更新中的预测基因。结论:通过双滤波器策略获得的紧凑基因库,改进BPSO可以选择具有高概率的最佳基因子集。与极端学习机的若干公共微阵列数据的实验结果验证了与相关方法相比提出的方法的有效性。

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