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Survival prediction of squamous cell head and neck cancer patients based on radiomic features selected from lung cancer patients using artificial neural network

机译:基于肺癌患者使用人工神经网络的鳞状特征的鳞状细胞头和颈部癌患者的存活预测

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The goal of this study was to investigate the survival prediction of squamous cell head and neck cancer (SCHNC) patients by using radiomic features that were selected using an artificial neural network (ANN). We employed computed tomography (CT) images of 86 squamous cell lung cancer (SCLC) patients for the feature selection, and 30 SCHNC patients for a test of the selected features. 486 radiomic features, i.e., statistic, texture, wavelet-based features, were extracted from the tumor regions in the CT images. The ANN was constructed for selecting 10 features that could classify the SCLC patients into shorter and longer survival groups than 2 years. The features were selected based on weights with strong links between the features and predicted survival in ANN. The survival times of the SCHNC patients, who were divided into two groups with respect to the median of each of the top 10 ranked features, were estimated using a Kaplan-Meier method. The statistical significant differences between survival curves of the two groups were assessed for the 10 features using a log-rank test. The homogeneity feature of the wavelet-based HHL image (HHL_Homogeneity) demonstrated a statistically significant difference (p < 0.01) between the two groups of SCHNC, but the other 9 features did not. Our results suggest that the 2-year survival of the SCHNC patients could be predicted by using at least the radiomic feature selected among the features for SCLC patients using the ANN-based feature selection approach.
机译:本研究的目标是通过使用使用人工神经网络(ANN)选择的射系特征来研究鳞状细胞头和颈部癌症(SCHNC)患者的存活预测。我们采用了86个鳞状细胞肺癌(SCLC)患者的计算机断层扫描(CT)图像进行特征选择,30例SCHNC患者进行了选择的选定特征。从CT图像中的肿瘤区域提取486辐射瘤特征,即统计,质地,基于小波的特征。构建了ANN,用于选择10个功能,可以将SCLC患者分类为比2年更短,更长的存活组。基于具有在ANN中的特征和预测生存之间的强的重量选择的特征。使用KAPLAN-MEIER方法估计,SCHNC患者的存活时间被分成两组的中位数,估计了一个KAPLAN-MEIER方法。使用对数秩检验评估两组存活曲线的统计差异。基于小波的HHL图像(HHL_Homeneity)的同质性特征在两组SCHC之间表现出统计学上显着的差异(P <0.01),但其他9个功能没有。我们的研究结果表明,通过使用基于ANN的特征选择方法的SCLC患者的特征中选择的射致患者,可以预测2年的SCHNC患者的存活。

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