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首页> 外文期刊>International Journal of Applied Engineering Research >Application of Machine Learning to Determine the Characteristics of Adjacent Normal Tissues in Liver Cancer
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Application of Machine Learning to Determine the Characteristics of Adjacent Normal Tissues in Liver Cancer

机译:机器学习在肝癌中确定相邻正常组织特征的应用

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摘要

This study applies machine learning methods to gene expression data from normal tissue of patients with liver cancer to predict whether this tissue is 'healthy', 'cirrhotic' (liver damage), 'non tumor', or 'tumor'. The method is based on using Principle Component Analysis (PCA) combined with the Regularized Least Squares (RLS) classifier. The results show a high accuracy with 10-fold cross validation for discrimination among tissue types. Results indicate the capability of gene expression profiling to successfully discriminate between tumor tissue and normal tissue, however there is a clear and strong overlap between non-tumor tissue and cirrhotic tissue. Further, we used the same classification model to predicate the probability of detecting each class separately. Tumor gene expression can be predicated successfully.
机译:本研究将机器学习方法应用于来自肝癌患者的正常组织的基因表达数据,以预测这种组织是否“健康”,“肝硬化”(肝脏损伤),“非肿瘤”或“肿瘤”。 该方法基于使用原理分量分析(PCA)与正则化最小二乘(RLS)分类器组合。 结果表明,具有10倍的交叉验证,用于组织类型的歧视。 结果表明基因表达分析成功区分肿瘤组织和正常组织之间的能力,然而在非肿瘤组织和肝硬化组织之间存在明显且强的重叠。 此外,我们使用相同的分类模型来谓词单独检测每个类的概率。 肿瘤基因表达可以成功地预测。

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