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Performance analysis of classifiers for colon cancer detection from dimensionality reduced microarray gene data

机译:从维度降低微阵列基因数据的结肠癌检测分类器的性能分析

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Cancer disease is accountable for many deaths that are over 9.6 million in 2018 and roughly one out of six deaths occur because of cancer worldwide. The colon cancer is the second prominent source of death of around 1.8 million cases. This research is inclined to detect the colon cancer from microarray dataset. It will aids the experts to distinguish the cancer cells from normal cells for appropriate determination and treatment of cancer at earlier stages that leads to increase the survival rate of the patients. The high dimensionality in microarray dataset with less samples and more attributes creates lag in the detection capability of the classifier. Hence there is a need for dimensionality reduction techniques to preserve the significant genes that are prominent in the disease classification. In this article, at first ANOVA method used to select the best genes and then principal component analysis (PCA) and fuzzy C-means clustering (FCM) techniques are further employed to choose relevant genes. The PCA and FCM features are classified using model, discriminant, regression, hybrid, and heuristic-based classifiers. The attained results show that the heuristic classifier with PCA features is encapsulated an average classification accuracy of 97.92% for classifying both the colon cancer and normal samples. Also, for FCM features, the Heuristic classifier is maintained at an average classification accuracy of 99.48% and 97.92% for classifying the colon cancer and normal samples, respectively. The Heuristic classifier outperforms with high accuracy than all other classifiers in the classification of colon cancer.
机译:癌症疾病对2018年超过960万的死亡是负责任的,并且由于全世界癌症发生了大约一六种死亡。结肠癌是第二个突出的死亡来源约为180万个病例。该研究倾向于从微阵列数据集检测结肠癌。它将有助于专家将癌细胞与正常细胞区分开,以在早期的阶段进行适当的测定和治疗,导致患者的存活率增加。微阵列数据集中的高维度,具有较少的样本和更多属性在分类器的检测能力中创建滞后。因此,需要维度降低技术,以保护在疾病分类中突出的重要基因。在本文中,首先用于选择最佳基因的ANOVA方法,然后是主要成分分析(PCA)和模糊C-MEAREL聚类(FCM)技术进一步用于选择相关基因。使用模型,判别,回归,混合动力和基于启发式的分类器分类PCA和FCM功能。达到的结果表明,具有PCA特征的启发式分类器封装了97.92%的平均分类精度,用于分类结肠癌和正常样品。此外,对于FCM特征,启发式分类器分别保持平均分类精度为99.48%和97.92%,分别分类结肠癌和正常样本。启发式分类器比结肠癌分类中的所有其他分类器高精度高。

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