基于回归的微阵列缺失数据输入

T. Bayrak, H. Oğul
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引用次数: 4

摘要

在分析微阵列实验结果时,由于不同的实验条件导致缺失值是一个常见的问题。虽然存在许多估算方法,但基于回归模型的比较研究非常有限。特别是,相关向量机(RVM),一种最近被证明在各个领域有效的回归方法,到目前为止还没有被考虑用于微阵列数据的缺失值插入。在本研究中,我们对基于回归的模型进行了比较研究,包括线性回归、k近邻回归和RVM,这些模型使用了通过微阵列技术从乳腺癌、结肠癌和前列腺癌组织中获得的数据。使用留一(或Jackknife)过程进行验证。为了衡量模型的性能,我们使用Spearman相关系数(CC)。结果表明,具有高斯核的RVM在某些情况下优于其他回归模型。
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Microarray missing data imputation using regression
Having missing values due to several experimental conditions is a common problem in analyzing the results of microarray experiments. Although many imputation methods exist, comparative studies based on regression based models are very limited. Particularly, Relevance Vector Machine (RVM), a recent regression method shown to be effective in various domains, has not been considered so far for missing value imputation in microarray data. In this study, we present a comparative study between regression based models, including linear regression, k-nearest neighbor regression and RVM that uses data obtained from breast, colon and prostate cancer tissues through the microarray technology. The leave-one-out (or Jackknife) procedure is applied for the validation. To measure the performance of the model we used Spearman correlation coefficient (CC). The results reveal that RVM with a Gaussian kernel outperforms other regression models in some cases.
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