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The Application of Feature Selection in Hepatitis B Virus Reactivation

机译:特征选择在乙型肝炎病毒再激活中的应用

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This article aims at finding the risk factors for hepatitis B virus (HBV) reactivation after the precise radiotherapy in patients with primary liver cancer (PLC). We use sequential forward selection and sequential backward selection to extract features which would be combined into an optimal feature subset, and then establish Bayesian and support vector machine (SVM) classification model. We use sequential forward selection to select the key features and find that the AFP, HBV DNA levels, outer margin of radiotherapy, times of radiotherapy, split method were the risk factors of HBV reactivation. The accuracy of the key features with Bayesian classifier reached to 80.65% by using 5 fold cross validation and with SVM reached to 79.84% by using 10 fold cross validation. Besides, we use sequential backward selection find that KPS score, HBV DNA level, outer margin of radiotherapy, tumor stage TNM, equivalent biometric were the risk factors of HBV reactivation, meanwhile, the accuracy of Bayesian classifier can be reached to 85.77% by using fold cross validation and with SVM classifier can be reached to 87.31% by using 10 fold cross validation. The accuracy of original feature with Bayesian classifier reached to 71.42% by using 10 fold cross validation and with SVM classifier reached to 78.10% by using 5 fold cross validation. The experimental results showed that the key feature subset has a better classification performance than the initial feature set clearly.
机译:本文旨在在原发性肝癌(PLC)患者的精确放疗后发现乙型肝炎病毒(HBV)重新激活的危险因素。我们使用顺序前进选择和顺序后退选择来提取将组合成最佳特征子集的特征,然后建立贝叶斯和支持向量机(SVM)分类模型。我们使用顺序前进选择来选择关键特征,并发现AFP,HBV DNA水平,放射疗法的外缘,放射疗法,分裂方法是HBV再激活的危险因素。通过使用5倍交叉验证和SVM达到80.65%的贝叶斯分类器的关键特征的准确性通过10倍交叉验证,SVM达到79.84%。此外,我们使用顺序后向选择发现KPS评分,HBV DNA水平,放射疗法外部边缘,肿瘤阶段TNM,等效生物识别是HBV重新激活的危险因素,同时,贝叶斯分类器的准确性可以通过使用达到85.77%通过使用10倍交叉验证,可以达到交叉验证和使用SVM分类器。使用10倍交叉验证和使用5倍交叉验证,使用10倍交叉验证和SVM分类器达到71.42%的原始功能的准确性达到71.42%。实验结果表明,关键特征子集具有比清晰的初始特征更好的分类性能。

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