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Feature Selection for Lung Cancer Detection Using SVM Based Recursive Feature Elimination Method

机译:基于支持向量机的递归特征消除方法在肺癌检测中的特征选择

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Cancer is the uncontrolled growth of abnormal cells, which do not carry out the functions of normal cells. Lung cancer is the leading cause of death due to cancer in the world. The survival rate of cancer is about 15%. In order to improve the survival rate, we need an early detection method. In this study, we propose a new method for early detection of lung cancer using Tetrakis Carboxy Phenyl Porphine (TCPP) and well-known machine learning techniques. Tetrakis Carboxy Phenyl Porphine (TCPP) is a porphyrin that is able to label cancer cells due to the increased numbers of low density lipoproteins coating the surface of cancer cells and the porous nature of the cancer cell membrane.In our previous work we studied the performance of well know machine learning techniques in the context of classification accuracy on Biomoda internal study. We used 79 features related to shape, intensity, and texture. We obtained an accuracy of 80% using the current feature set. In order to improve the accuracy of our method, we performed feature selection on these 79 features. We used Support Vector Machine (SVM) based Recursive feature Elimination (RFE) method in our experiments. We obtained an accuracy of 87.5% using reduced 19 feature set.
机译:癌症是异常细胞的失控生长,这些异常细胞无法发挥正常细胞的功能。肺癌是世界范围内因癌症导致死亡的主要原因。癌症的存活率约为15%。为了提高生存率,我们需要一种早期发现方法。在这项研究中,我们提出了一种使用Tetrakis羧基苯基卟啉(TCPP)和著名的机器学习技术早期检测肺癌的新方法。 Tetrakis Carboxy Phenyl Porphine(TCPP)是一种卟啉,由于覆盖在癌细胞表面的低密度脂蛋白数量增加以及癌细胞膜的多孔性而能够标记癌细胞,在我们之前的工作中我们研究了其性能Biomoda内部研究中,在分类准确性的背景下了解众所周知的机器学习技术。我们使用了79个与形状,强度和纹理有关的功能。使用当前功能集,我们获得了80%的精度。为了提高我们方法的准确性,我们对这79个特征进行了特征选择。我们在实验中使用了基于支持向量机(SVM)的递归特征消除(RFE)方法。使用减少的19个功能集,我们获得了87.5%的精度。

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