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Applying a Radiomics Approach to Predict Prognosis of Lung Cancer Patients

机译:应用放射组学方法预测肺癌患者的预后

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Radiomics is an emerging technology to decode tumor phenotype based on quantitative analysis of image features computed from radiographic images. In this study, we applied Radiomics concept to investigate the association among the CT image features of lung tumors, which are either quantitatively computed or subjectively rated by radiologists, and two genomic biomarkers namely, protein expression of the excision repair cross-complementing 1 (ERCC1) genes and a regulatory subunit of ribonucleotide reductase (RRM1), in predicting disease-free survival (DFS) of lung cancer patients after surgery. An image dataset involving 94 patients was used. Among them, 20 had cancer recurrence within 3 years, while 74 patients remained DFS. After tumor segmentation, 35 image features were computed from CT images. Using the Weka data mining software package, we selected 10 non-redundant image features. Applying a SMOTE algorithm to generate synthetic data to balance case numbers in two DFS ("yes" and "no") groups and a leave-one-case-out training/testing method, we optimized and compared a number of machine learning classifiers using (1) quantitative image (QI) features, (2) subjective rated (SR) features, and (3) genomic biomarkers (GB). Data analyses showed relatively lower correlation among the QI, SR and GB prediction results (with Pearson correlation coefficients < 0.5 including between ERCC1 and RRM1 biomarkers). By using area under ROC curve as an assessment index, the QI, SR and GB based classifiers yielded AUC = 0.89±0.04, 0.73±0.06 and 0.76±0.07, respectively, which showed that all three types of features had prediction power (AUC>0.5). Among them, using QI yielded the highest performance.
机译:放射线学是一种基于对放射线图像计算出的图像特征进行定量分析来解码肿瘤表型的新兴技术。在这项研究中,我们应用Radiomics概念研究了由放射科医师定量计算或主观评估的肺部肿瘤CT图像特征与两个基因组生物标记之间的关联,即切除修复交叉互补1(ERCC1)的蛋白质表达。 )基因和核糖核苷酸还原酶(RRM1​​)的调节亚基,可预测肺癌患者术后的无病生存期(DFS)。使用了包括94位患者的图像数据集。其中20例在3年内复发,而74例仍为DFS。肿瘤分割后,从CT图像计算出35个图像特征。使用Weka数据挖掘软件包,我们选择了10个非冗余图像功能。应用SMOTE算法生成综合数据以平衡两个DFS(“是”和“否”)组中的案例编号,并采用留一案例的训练/测试方法,我们使用以下方法优化和比较了许多机器学习分类器: (1)定量图像(QI)特征,(2)主观评级(SR)特征和(3)基因组生物标记(GB)。数据分析显示,QI,SR和GB预测结果之间的相关性相对较低(Pearson相关系数<0.5,包括ERCC1和RRM1生物标记之间的相关性)。通过使用ROC曲线下的面积作为评估指标,基于QI,SR和GB的分类器得出的AUC分别为0.89±0.04、0.73±0.06和0.76±0.07,这表明这三种类型的特征都具有预测能力(AUC> 0.5)。其中,使用QI可获得最高的性能。

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