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Missing value imputation for microRNA expression data by using a GO-based similarity measure

机译:使用基于GO的相似性度量值对microRNA表达数据进行缺失值估算

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摘要

BackgroundMissing values are commonly present in microarray data profiles. Instead of discarding genes or samples with incomplete expression level, missing values need to be properly imputed for accurate data analysis. The imputation methods can be roughly categorized as expression level-based and domain knowledge-based. The first type of methods only rely on expression data without the help of external data sources, while the second type incorporates available domain knowledge into expression data to improve imputation accuracy.In recent years, microRNA (miRNA) microarray has been largely developed and used for identifying miRNA biomarkers in complex human disease studies. Similar to mRNA profiles, miRNA expression profiles with missing values can be treated with the existing imputation methods. However, the domain knowledge-based methods are hard to be applied due to the lack of direct functional annotation for miRNAs. With the rapid accumulation of miRNA microarray data, it is increasingly needed to develop domain knowledge-based imputation algorithms specific to miRNA expression profiles to improve the quality of miRNA data analysis.
机译:背景缺失值通常存在于微阵列数据概况中。代替丢弃表达水平不完整的基因或样品,需要正确估算缺失值以进行准确的数据分析。插补方法可以大致分为基于表达水平和基于领域知识的两类。第一种方法仅依靠表达数据而无需外部数据源,而第二种方法将可用的领域知识整合到表达数据中以提高插补准确性。近年来,microRNA(miRNA)微阵列已得到广泛开发并用于在复杂的人类疾病研究中鉴定miRNA生物标志物。与mRNA谱相似,具有缺失值的miRNA表达谱可以用现有的插补方法进行处理。但是,由于缺少miRNA的直接功能注释,因此很难应用基于领域知识的方法。随着miRNA微阵列数据的快速积累,越来越需要开发特定于miRNA表达谱的基于领域知识的插补算法,以提高miRNA数据分析的质量。

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