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Assisting the Non-invasive Diagnosis of Liver Fibrosis Stages using Machine Learning Methods

机译:使用机器学习方法协助肝纤维化阶段的非侵入性诊断

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Fibrosis is a significant indication of chronic liver diseases often due to hepatitis C Virus. It is becoming a global concern as a result of the rapid increase in the number of HCV infected patients, the high cost and flaws associated with the assessment process of liver fibrosis. This study aims to determine the features that significantly contribute to the identification of the stages of liver fibrosis and to generate rules to assist physicians during the treatment of the patients as a clinically non-invasive approach. Also, the performance of different Multi-layered Perceptron (MLP), Random Forest, and Logistic Regression classifiers are estimated and compared for the full and reduced feature sets. Decision Tree produced 28 rules in contrast with previous research work where 98002 rules had been generated from the same dataset with an accuracy rate of approximately 99.97%. The resulting rules of this study achieved a prediction accuracy for the histological staging of liver fibrosis of 97.45%. Among all the machine learning methods, MLP achieved the highest accuracy rate.
机译:纤维化通常是由于丙型肝炎病毒引起的慢性肝脏疾病的重要标志。由于感染HCV的患者人数迅速增加,费用高昂以及与肝纤维化评估过程相关的缺陷,这已成为全球关注的问题。这项研究旨在确定对肝纤维化分期的鉴定有显着贡献的特征,并制定规则以临床无创方法在治疗患者期间协助医师。同样,针对完整和精简特征集,估计并比较了不同的多层感知器(MLP),随机森林和逻辑回归分类器的性能。与先前的研究工作相比,决策树生成了28条规则,以前的研究工作是从同一数据集中生成98002条规则,准确率约为99.97%。这项研究得出的规则对于肝纤维化的组织学分期达到了97.45%的预测准确性。在所有的机器学习方法中,MLP达到了最高的准确率。

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