Journal ArticleUnknown
A New Approach of Outlier-robust Missing Value Imputation for Metabolomics Data Analysis
Authors
Author Affiliations
University of Rajshahi
Published InCurrent Bioinformatics
Year2017
Citations16
Abstract
Background: Metabolomics data generation and quantification are different from other types of molecular “omics” data in bioinformatics. Mass spectrometry (MS) based (gas chromatography mass spectrometry (GC-MS), liquid chromatography mass spectrometry (LC-MS), etc.) metabolomics data frequently contain missing values that make some quantitative analysis complex. Typically metabolomics datasets contain 10% to 20% missing values that originate from several reasons, like analytical, computational as well as biological hazard. Imputation of missing values is a very important and interesting issue for further metabolomics data analysis. </P><P> Objective: This paper introduces a new algorithm for missing value imputation in the presence of outliers for metabolomics data analysis. </P><P> Method: Currently, the most well known missing value imputation techniques in metabolomics data are knearest neighbours…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.