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Prediction of liver cancer development risk in genotype 4 hepatitis C patients using knowledge discovery modeling

机译:使用知识发现模型预测基因4型丙型肝炎患者的肝癌发展风险

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Hepatitis C is a primary reason for the liver cancer, which is a leading cause of death. The objective of this paper is to predict the hepatitis C infection progression into cirrhosis or liver cancer. For the prediction of the disease progression, a knowledge discovery framework is proposed consisting of three phases: preprocessing, data mining and prediction. While the preprocessing phase focuses on the discretization of the training data, the data mining phase focuses on mining patients' records using a rule based classifier built by the proposed algorithm to generate a set of unique rules. Eventually, the predictor uses the rules to predict patients' disease progression. Experimentation on 1908 chronic hepatitis C Egyptian patients with 27 extracted features collected from blood samples were used to train the model, with other 406 patients' cases for testing which showed accuracy 99.5 %.
机译:丙型肝炎是肝癌的主要原因,而肝癌是死亡的主要原因。本文的目的是预测丙型肝炎感染进展为肝硬化或肝癌。为了预测疾病的进展,提出了一个知识发现框架,该框架由三个阶段组成:预处理,数据挖掘和预测。预处理阶段着重于训练数据的离散化,而数据挖掘阶段着重于使用由所提出的算法构建的基于规则的分类器来挖掘患者的记录,以生成一组唯一的规则。最终,预测器使用规则来预测患者的疾病进展。对1908名慢性丙型肝炎患者进行了实验,从血液样本中提取了27种特征进行了训练,其余406例患者的测试结果为99.5%。

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