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Multiclass Lung Cancer Diagnosis by Gene Expression Programming and Microarray Datasets

机译:基因表达编程和微阵列数据集的多类肺癌诊断

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There are various types of lung cancer and they can be differentiated by the cell size as well as the growth pattern. They are all treated differently. Classification of the various types of lung cancer assists in determining the specified treatments to decrease the fatality rates. In this paper, we broaden the analysis of lung by using gene expression data, binary decomposition strategies and Gene Expression Programming (GEP) technique, aiming at achieving better classification performance. Classification performance was assessed and compared between our GEP models and three representative machine learning techniques, SVM, NNW and C4.5 on real microarray Lung tumor datasets. Dependability was evaluated by the cross-informational collection validation. The evaluation results demonstrate that our technique can achieve better classification performance in terms of Accuracy, standard deviation and range under the recipient working trademark bend. The proposed technique in this paper provides a helpful tool for Lung cancer classification.
机译:肺癌的类型多种多样,可以通过细胞大小和生长方式来区分。他们都被不同地对待。对各种类型的肺癌进行分类有助于确定特定的治疗方法以降低死亡率。在本文中,我们通过使用基因表达数据,二元分解策略和基因表达编程(GEP)技术拓宽了对肺的分析,旨在获得更好的分类性能。在真实的微阵列肺肿瘤数据集上,我们的GEP模型与三种代表性的机器学习技术SVM,NNW和C4.5之间的分类性能得到了评估和比较。通过跨信息收集验证来评估可靠性。评估结果表明,我们的技术可以在接受者工作商标弯曲下的准确性,标准偏差和范围方面实现更好的分类性能。本文提出的技术为肺癌分类提供了有用的工具。

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