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首页> 外文期刊>International Journal of Computational Science and Engineering >Missing value imputation in DNA microarray gene expression data: a comparative study of an improved collaborative filtering method with decision tree based approach
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Missing value imputation in DNA microarray gene expression data: a comparative study of an improved collaborative filtering method with decision tree based approach

机译:DNA微阵列基因表达数据中缺少价值局息:基于决策树的改进协作滤波方法的比较研究

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摘要

DNA microarray is used to study the expression levels of thousands of genes under various conditions simultaneously. Unfortunately, microarray experiments can generate datasets with multiple missing values. In this work, the approach proposed first (CFBRSTFDV), uses fuzzy difference vector (FDV) along with rough set based collaborative filtering that helps to estimate the missing values. Later on, we have also proposed a decision tree based approach combined with genetic algorithm GADTreeImpute to impute the same missing values. We have applied our proposed algorithms on three benchmark datasets, i.e., yeast gene expression data, human tumour cell and prostate cancer dataset. We have first measured the performance of both these proposed approaches by using RMSE metric. Later on the estimation is also validated by using classification process and the performance is measured by the metrics like % of classification accuracy, precision, recall, etc.
机译:DNA微阵列用于同时在各种条件下研究成千上万基因的表达水平。 不幸的是,微阵列实验可以生成具有多个缺失值的数据集。 在这项工作中,先提出的方法(CFBRSTFDV),使用模糊差向量(FDV)以及基于粗糙的协作滤波,有助于估计缺失值。 稍后,我们还提出了一种基于树的决策方法与遗传算法GadtreeImpute相同,以赋予相同的缺失值。 我们在三个基准数据集,即酵母基因表达数据,人肿瘤细胞和前列腺癌数据集上应用了我们所提出的算法。 我们首先通过使用RMSE指标来测量两种方法的性能。 稍后还通过使用分类过程验证估计,并且通过分类准确度,精度,召回等的%衡量的度量来验证性能。

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