Evaluation of linear models and missing value imputation for the analysis of peptide-centric proteomics

肽中心蛋白质组学分析的线性模型和缺失值估算评估

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作者:Philip Berg, Evan W McConnell, Leslie M Hicks, Sorina C Popescu, George V Popescu

Background

Several

Conclusion

Identifying PTMs in large-scale datasets is a problem with distinct characteristics that require new methods for handling missing data imputation and differential proteome analysis. Linear models in combination with multiple-imputation could significantly outperform a t-test-based decision method.

Results

Our methodology includes variance stabilization, normalization, and missing data imputation to account for the large dynamic range of PTM measurements. It also corrects biases from an enrichment protocol and reduces the random and systematic errors associated with label-free quantification. The performance of the methodology is tested by performing proteome-wide differential PTM quantitation using linear models analysis (limma). We objectively compare two imputation methods along with significance testing when using multiple-imputation for missing data.

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