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Missing value imputation in high-dimensional phenomic data: imputable or not and how?

机译:高维特征数据中的缺失值插补:是否可插补以及如何插补?

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摘要

BackgroundIn modern biomedical research of complex diseases, a large number of demographic and clinical variables, herein called phenomic data, are often collected and missing values (MVs) are inevitable in the data collection process. Since many downstream statistical and bioinformatics methods require complete data matrix, imputation is a common and practical solution. In high-throughput experiments such as microarray experiments, continuous intensities are measured and many mature missing value imputation methods have been developed and widely applied. Numerous methods for missing data imputation of microarray data have been developed. Large phenomic data, however, contain continuous, nominal, binary and ordinal data types, which void application of most methods. Though several methods have been developed in the past few years, not a single complete guideline is proposed with respect to phenomic missing data imputation.
机译:背景技术在复杂疾病的现代生物医学研究中,通常会收集大量人口统计和临床变量(在此称为表型数据),并且在数据收集过程中不可避免会出现缺失值(MV)。由于许多下游统计和生物信息学方法都需要完整的数据矩阵,因此插补是一种常见且实用的解决方案。在诸如芯片实验之类的高通量实验中,对连续强度进行了测量,并且许多成熟的缺失值插补方法已经得到开发和广泛应用。已经开发了许多用于丢失微阵列数据的数据归因的方法。但是,大型特征数据包含连续,名义,二进制和有序数据类型,这使大多数方法无法应用。尽管在过去的几年中已经开发了几种方法,但是对于表型缺失数据归因,没有提出一个完整的准则。

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