基于DNA序列集成预测肝癌的研究

L. Muflikhah, N. Widodo, W. Mahmudy, Solimun
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引用次数: 3

摘要

慢性乙型肝炎病毒(HBV)感染与肝癌密切相关。病毒的DNA序列被整合到人类基因组中并影响细胞周期。$HBx$是一种病毒基因,它负责为生存而复制,尽管它有很高的突变率。机器学习方法是生物分析的一种有效方法,广泛应用于诊断预测。本研究旨在利用基于HBV DNA序列的机器学习方法预测肝癌。然而,数据的不平衡影响了学习方法的性能评估,特别是在敏感性和特异性方面。因此,本文提出了集成方法来提高预测性能。我们比较了几种分类器方法,包括朴素贝叶斯,GLM, KNN, SVM和C5.0决策树。结果表明,该方法准确率为88.4%,灵敏度为88.4%,特异性为91.4%,具有较高的评价性能值。
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Prediction of Liver Cancer Based on DNA Sequence Using Ensemble Method
Chronic hepatitis B virus (HBV) infection is strongly associated with liver cancer. The DNA sequence of the virus is integrated into the human genome and affected the cell cycle. $HBx$ is a virus gene that is responsible to replicate for survival even though it has a high mutation rate. Machine learning methods are an effective way in biological analysis and are widely used in diagnosis to make a prediction. This study is addressed to predict liver cancer using a machine learning method based on the DNA sequence of HBV. However, unbalanced data impacts the performance evaluation of the learning method, especially for sensitivity and specificity. Therefore, this paper is proposed the ensemble method to improve the performance of prediction. We compare several classifier methods including Naive Bayes, GLM, KNN, SVM, and C5.0 Decision Tree. The results show that the ensemble method achieves a high evaluation performance value with an accuracy rate of 88.4%, a sensitivity rate of 88.4%, and a specificity rate of 91.4%.
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