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Improved Classification of Lung Cancer Using Radial Basis Function Neural Network with Affine Transforms of Voss Representation

机译:利用径向基函数神经网络和Voss表示的仿射变换改进肺癌分类

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摘要

Lung cancer is one of the diseases responsible for a large number of cancer related death cases worldwide. The recommended standard for screening and early detection of lung cancer is the low dose computed tomography. However, many patients diagnosed die within one year, which makes it essential to find alternative approaches for screening and early detection of lung cancer. We present computational methods that can be implemented in a functional multi-genomic system for classification, screening and early detection of lung cancer victims. Samples of top ten biomarker genes previously reported to have the highest frequency of lung cancer mutations and sequences of normal biomarker genes were respectively collected from the COSMIC and NCBI databases to validate the computational methods. Experiments were performed based on the combinations of Z-curve and tetrahedron affine transforms, Histogram of Oriented Gradient (HOG), Multilayer perceptron and Gaussian Radial Basis Function (RBF) neural networks to obtain an appropriate combination of computational methods to achieve improved classification of lung cancer biomarker genes. Results show that a combination of affine transforms of Voss representation, HOG genomic features and Gaussian RBF neural network perceptibly improves classification accuracy, specificity and sensitivity of lung cancer biomarker genes as well as achieving low mean square error.
机译:肺癌是导致全球大量与癌症相关的死亡案例的疾病之一。低剂量计算机断层扫描是肺癌筛查和早期发现的推荐标准。但是,许多诊断出的患者会在一年内死亡,这使得寻找替代方法来筛查和早期发现肺癌至关重要。我们介绍了可以在功能性多基因组系统中进行分类,筛选和早期检测肺癌受害者的计算方法。分别从COSMIC和NCBI数据库中收集了先前报道的肺癌突变频率最高的十个生物标志物基因样本和正常生物标志物基因序列,以验证计算方法。根据Z曲线和四面体仿射变换,定向直方图(HOG),多层感知器和高斯径向基函数(RBF)神经网络的组合进行实验,以获得适当的计算方法组合,以改善肺的分类癌症生物标志物基因。结果表明,Voss表示的仿射变换,HOG基因组特征和高斯RBF神经网络的组合可显着提高肺癌生物标记基因的分类准确性,特异性和敏感性,并实现较低的均方差。

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