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Cancer prognosis using support vector regression in imaging modality

机译:支持向量回归在影像学方式中的癌症预后

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摘要

The proposed techniques investigate the strength of support vector regression (SVR) in cancer prognosis using imaging features. Cancer image features were extracted from patients and recorded into censored data. To employ censored data for prognosis, SVR methods are needed to be adapted to uncertain targets. The effectiveness of two principle breast features, tumor size and lymph node status, was demonstrated by the combination of sampling and feature selection methods. In sampling, breast data were stratified according to tumor size and lymph node status. Three types of feature selection methods comprised of no selection, individual feature selection, and feature subset forward selection, were employed. The prognosis results were evaluated by comparative study using the following performance metrics: concordance index (CI) and Brier score (BS). Cox regression was employed to compare the results. The support vector regression method (SVCR) performs similarly to Cox regression in three feature selection methods and better than Cox regression in non-feature selection methods measured by CI and BS. Feature selection methods can improve the performance of Cox regression measured by CI. Among all cross validation results, stratified sampling of tumor size achieves the best regression results for both feature selection and non-feature selection methods. The SVCR regression results, perform better than Cox regression when the techniques are used with either CI or BS. The best CI value in the validation results is 0.6845. The best CI value corresponds to the best BS value 0.2065, which were obtained in the combination of SVCR, individual feature selection, and stratified sampling of the number of positive lymph nodes. In addition, we also observe that SVCR performs more consistently than Cox regression in all prognosis studies. The feature selection method does not have a significant impact on the metric values, especially on CI. We conclude that the combinational methods of SVCR, feature selection, and sampling can improve cancer prognosis, but more significant features may further enhance cancer prognosis accuracy.
机译:所提出的技术使用影像学特征来研究支持向量回归(SVR)在癌症预后中的优势。从患者中提取癌症图像特征并将其记录到审查数据中。为了将检查数据用于预后,需要将SVR方法适应不确定的目标。通过采样和特征选择方法的结合证明了两个主要乳房特征(肿瘤大小和淋巴结状态)的有效性。在抽样中,根据肿瘤大小和淋巴结状态对乳腺癌数据进行分层。采用了三种类型的特征选择方法,包括无选择,单个特征选择和特征子集正向选择。通过比较研究使用以下绩效指标评估预后结果:一致性指数(CI)和Brier评分(BS)。使用Cox回归比较结果。支持向量回归方法(SVCR)在三种特征选择方法中的性能与Cox回归相似,并且比通过CI和BS测量的非特征选择方法的Cox回归更好。特征选择方法可以提高通过CI测量的Cox回归性能。在所有交叉验证结果中,对于特征选择和非特征选择方法,肿瘤大小的分层采样均获得最佳回归结果。与CI或BS一起使用时,SVCR回归结果比Cox回归性能更好。验证结果中的最佳CI值为0.6845。最佳CI值对应于最佳BS值0.2065,这是通过SVCR,单个特征选择和阳性淋巴结数目分层采样的组合获得的。此外,我们还观察到,在所有预后研究中,SVCR的表现均比Cox回归更为一致。特征选择方法对度量值(特别是对CI)没有重大影响。我们得出的结论是,SVCR,特征选择和采样的组合方法可以改善癌症的预后,但是更重要的特征可以进一步提高癌症的预后准确性。

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