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首页> 外文期刊>Journal of biomedical informatics. >Can-Evo-Ens: Classifier stacking based evolutionary ensemble system for prediction of human breast cancer using amino acid sequences
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Can-Evo-Ens: Classifier stacking based evolutionary ensemble system for prediction of human breast cancer using amino acid sequences

机译:Can-Evo-Ens:基于分类器堆叠的进化集成系统,使用氨基酸序列预测人类乳腺癌

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摘要

The diagnostic of human breast cancer is an intricate process and specific indicators may produce negative results. In order to avoid misleading results, accurate and reliable diagnostic system for breast cancer is indispensable. Recently, several interesting machine-learning (ML) approaches are proposed for prediction of breast cancer. To this end, we developed a novel classifier stacking based evolutionary ensemble system "Can-Evo-Ens" for predicting amino acid sequences associated with breast cancer. In this paper, first, we selected four diverse-type of ML algorithms of Naive Bayes, K-Nearest Neighbor, Support Vector Machines, and Random Forest as base-level classifiers. These classifiers are trained individually in different feature spaces using physicochemical properties of amino acids. In order to exploit the decision spaces, the preliminary predictions of base-level classifiers are stacked. Genetic programming (GP) is then employed to develop a meta-classifier that optimal combine the predictions of the base classifiers. The most suitable threshold value of the best-evolved predictor is computed using Particle Swarm Optimization technique. Our experiments have demonstrated the robustness of Can-Evo-Ens system for independent validation dataset. The proposed system has achieved the highest value of Area Under Curve (AUC) of ROC Curve of 99.95% for cancer prediction. The comparative results revealed that proposed approach is better than individual ML approaches and conventional ensemble approaches of AdaBoostMl, Bagging, GentleBoost, and Random Subspace. It is expected that the proposed novel system would have a major impact on the fields of Biomedical, Genomics, Proteomics, Bioinformatics, and Drug Development. (C) 2015 Elsevier Inc. All rights reserved.
机译:人类乳腺癌的诊断是一个复杂的过程,特定指标可能会产生阴性结果。为了避免产生误导性的结果,准确而可靠的乳腺癌诊断系统必不可少。最近,提出了几种有趣的机器学习(ML)方法来预测乳腺癌。为此,我们开发了一种基于分类器堆叠的新型进化集成系统“ Can-Evo-Ens”,用于预测与乳腺癌相关的氨基酸序列。在本文中,首先,我们选择了朴素贝叶斯,K最近邻,支持向量机和随机森林这四种不同类型的ML算法作为基层分类器。这些分类器使用氨基酸的物理化学特性分别在不同的特征空间中训练。为了利用决策空间,对基础级分类器的初步预测进行了堆叠。然后,采用遗传规划(GP)来开发一种元分类器,该元分类器可以最佳地组合基本分类器的预测。使用粒子群优化技术计算最佳演化的预测变量的最合适阈值。我们的实验证明了Can-Evo-Ens系统对于独立验证数据集的鲁棒性。所提出的系统已达到ROC曲线的曲线下面积(AUC)最高值99.95%,可用于癌症预测。比较结果表明,提出的方法优于AdaBoostM1,Bagging,GentleBoost和Random Subspace的单个ML方法和常规集成方法。预计拟议的新型系统将对生物医学,基因组学,蛋白质组学,生物信息学和药物开发领域产生重大影响。 (C)2015 Elsevier Inc.保留所有权利。

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