August 3, 2020
Journal Article

Meta-analysis of peptides to detect protein significance

Abstract

Shotgun assays are widely used in biotechnologies to char- acterize large molecules, which are hard to be measured as a whole directly. For instance, in Liquid Chromatography Mass Spectrometry (LC-MS) shotgun experiments, proteins in biological samples are digested into peptides, and then peptides are separated and measured. However, in proteomics study, investigators are usually interested in the performance of the whole proteins instead of those peptide fragments. In light of meta-analysis, we propose an adaptive thresholding method to select informative peptides, and combine peptide-level models to protein-level analysis. The meta-analysis procedure and modeling rationale can be adapted to data analysis of other types of shotgun assays.

Revised: September 30, 2020 | Published: August 3, 2020

Citation

Zhang Y., Z. Ouyang, W. Qian, R.D. Smith, W. Wong, and R.W. Davis. 2020. Meta-analysis of peptides to detect protein significance. Statistics and It's Interface 13, no. 4:465-474. PNNL-SA-152554. doi:10.4310/sii.2020.v13.n4.a4