首页> 外文会议>International Conference on Computational Science and Its Applications(ICCSA 2007) pt.3; 20070826-29; Kuala Lumpur(MY) >Chronic Hepatitis and Cirrhosis Classification Using SNP Data, Decision Tree and Decision Rule
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Chronic Hepatitis and Cirrhosis Classification Using SNP Data, Decision Tree and Decision Rule

机译:使用SNP数据,决策树和决策规则对慢性肝炎和肝硬化进行分类

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摘要

A machine learning technique, decision tree, is used to predict the susceptibility to two liver diseases, chronic hepatitis and cirrhosis, from single nucleotide polymorphism(SNP) data. Also, it is used to identify a set of SNPs relevant to those diseases. The experimental results show that a decision tree is able to distinguish chronic hepatitis from normal with accuracy of 69.59% and cirrhosis from normal with accuracy of 76.72% and the C4.5 decision rule is with accuracy of 69.59% for chronic hepatitis and 79.31% for cirrhosis. The experimental results show that decision tree is a potential tool to predict the susceptibility to chronic hepatitis and cirrhosis from SNP data.
机译:决策树是一种机器学习技术,用于根据单核苷酸多态性(SNP)数据预测对两种肝病(慢性肝炎和肝硬化)的易感性。此外,它还用于识别与这些疾病相关的一组SNP。实验结果表明,决策树能够区分慢性肝炎和正常肝炎,准确度为69.59%,肝硬化和正常肝炎,准确度为76.72%,C4.5决策规则对于慢性肝炎的准确度为69.59%,对于肝炎为79.31%。肝硬化。实验结果表明,决策树是从SNP数据预测慢性肝炎和肝硬化易感性的潜在工具。

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