4.1 Article

Integrative analysis of transcriptomic and proteomic data of Shewanella oneidensis: missing value imputation using temporal datasets

期刊

MOLECULAR BIOSYSTEMS
卷 7, 期 4, 页码 1093-1104

出版社

ROYAL SOC CHEMISTRY
DOI: 10.1039/c0mb00260g

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资金

  1. National Human Genome Research Institute (NHGRI) Center of Excellence in Genomic Sciences of the National Institutes of Health (NIH) [5 P50 HG002360]
  2. National Science Foundation (NSF) from the Division of Graduate Education [NSF/DGE 0538701]
  3. US Department of Energy Office of Science, Biological and Environmental Research
  4. US Department of Energy [DE-AC05-00OR22725]
  5. NATIONAL HUMAN GENOME RESEARCH INSTITUTE [P50HG002360] Funding Source: NIH RePORTER

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Despite significant improvements in recent years, proteomic datasets currently available still suffer from large number of missing values. Integrative analyses based upon incomplete proteomic and transcriptomic datasets could seriously bias the biological interpretation. In this study, we applied a non-linear data-driven stochastic gradient boosted trees (GBT) model to impute missing proteomic values using a temporal transcriptomic and proteomic dataset of Shewanella oneidensis. In this dataset, genes' expression was measured after the cells were exposed to 1 mM potassium chromate for 5, 30, 60, and 90 min, while protein abundance was measured for 45 and 90 min. With the ultimate objective to impute protein values for experimentally undetected samples at 45 and 90 min, we applied a serial set of algorithms to capture relationships between temporal gene and protein expression. This work follows four main steps: (1) a quality control step for gene expression reliability, (2) mRNA imputation, (3) protein prediction, and (4) validation. Initially, an S control chart approach is performed on gene expression replicates to remove unwanted variability. Then, we focused on the missing measurements of gene expression through a nonlinear Smoothing Splines Curve Fitting. This method identifies temporal relationships among transcriptomic data at different time points and enables imputation of mRNA abundance at 45 min. After mRNA imputation was validated by biological constrains (i.e. operons), we used a data-driven GBT model to impute protein abundance for the proteins experimentally undetected in the 45 and 90 min samples, based on relevant predictors such as temporal mRNA gene expression data and cellular functional roles. The imputed protein values were validated using biological constraints such as operon and pathway information through a permutation test to investigate whether dispersion measures are indeed smaller for known biological groups than for any set of random genes. Finally, we demonstrated that such missing value imputation improved characterization of the temporal response of S. oneidensis to chromate.

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