支持向量机-递归特征消除(SVM - RFE)筛选乳腺癌MicroRNA表达特征

Amazona Adorada, Ratih Permatasari, P. W. Wirawan, A. Wibowo, Adi Sujiwo
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引用次数: 10

摘要

癌症仍然是当今人类的一个主要问题,因为它是世界上最大的死亡原因之一。基于2012年的GLOBOCAN数据。在美国,乳腺癌是世界上妇女死亡率最高的癌症,死亡率为14.7%,总死亡人数为521人。, 907从3。, 548年。,全世界有190例癌症病例。癌症的高死亡率是由于没有及早发现癌症造成的。microrna在调节细胞分裂周期中发挥着重要作用。细胞凋亡。衰老。、迁移和细胞侵袭。,以及转移。与正常乳房相比,乳腺癌中的microRNA表达呈现出一种模式。,从而表明其作为潜在诊断标记物的作用。然而。然而,并不是所有的microRNA谱在癌症检测中都有重要作用。在本文中。采用支持向量机-递归特征消除(SVM-RFE)和单变量选择方法对乳腺癌中microRNA表达进行特征选择。通过多次实验,选出10个排名最高的特征;因此。,有望获得作为乳腺癌独特特征的独特特征。根据实验结果。本研究获得了推荐的用于癌症分析和生物标志物的基本MicroRNA特征。
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Support Vector Machine - Recursive Feature Elimination (SVM - RFE) for Selection of MicroRNA Expression Features of Breast Cancer
Cancer is still a major problem for people today because it is one of the biggest causes of death in the world. Based on GLOBOCAN data in 2012., breast cancer accounted for the world's largest cancer mortality rate in women by 14.7% with total deaths amounting to 521., 907 from 3., 548., 190 cases of cancer in the world. The high mortality rate is affected by the absence of sufficient early detection of cancer. MicroRNAs play an essential role in regulating cell division cycles., apoptosis., senescence., migration and cell invasion., and metastasis. The expression of microRNA in breast cancer shows a pattern compared to normal breasts., thus indicating its role as a potential diagnostic marker. However., not all microRNA profiles have a significant role in cancer detection. In this paper., we applied the support vector machine - recursive feature elimination (SVM-RFE) and univariate selection for feature selection of microRNA expression in breast cancer. Several experiments were conducted to select ten features with the highest ranking; therefore., it is expected to obtain a unique feature as a unique feature of breast cancer. Based on experimental results., this study obtained recommended the essential MicroRNA features for cancer analysis and biomarkers.
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